genetic studies of two inherited human phenotypes: hearing...
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Comprehensive Summaries of Uppsala Dissertationsfrom the Faculty of Medicine 990
_____________________________ _____________________________
Genetic Studies of Two Inherited Human Phenotypes: Hearing Loss and Monoamine Oxidase Activity
BY
JORUNE BALCIUNIENE
ACTA UNIVERSITATIS UPSALIENSISUPPSALA 2001
Dissertation for the Degree of Doctor of Philosophy (Faculty of Medicine) in Medical Genetics at
Uppsala University in 2001
ABSTRACT
Balciuniene, J. 2001. Genetic Studies of Two Inherited Human Phenotypes: Hearing Loss and Monoamine Oxidase
Activity. Acta Universitatis Upsaliensis. Comprehensive Summaries of Uppsala Dissertations from the Faculty of
Medicine 990. 62pp. Uppsala. ISBN 91-554-4917-4.
This thesis focuses on the identification of genetic factors underlying two inherited human phenotypes: hearing loss
and monoamine oxidase activity.Non-syndromic hearing loss segregating in a Swedish family was tested for linkage to 13 previously reported
candidate loci for hearing disabilities. Linkage was found to two loci: DFNA12 (11q22-q24) and DFNA2 (1p32). A
detailed analysis of the phenotypes and haplotypes shared by the affected individuals supported the hypothesis ofdigenic inheritance of hearing disability in the Swedish family. Mutation screening of α-tectorin, a gene residing
within the DFNA12 region revealed a mutation of a conserved amino acid (Cys to Ser), that segregated with thedisease. The identification of the mutation added support to the involvement of α-tectorin in hearing disabilities. In
contrast, no mutations were identified in two candidate genes at the DFNA2 locus, that were reported to cause
hearing loss in other families. It is possible that the DFNA2 locus contains a third, not yet identified, hearing lossgene.
Monoamine oxidase A (MAOA) and B (MAOB) catalyze the degradation of certain neurotransmitters in the centralnervous system and are associated with specific behavioral and neuropsychiatric human traits. Activity levels of
both monoamine oxidases (MAO) are highly variable among humans and are determined by unknown geneticfactors. This study investigated the relationship of different MAO alleles with MAO mRNA levels and enzyme
activity in human brain. Several novel DNA polymorphisms were identified in a group of Swedish individuals.
Haplotypes containing several closely located MAOA polymorphisms were assessed in Asian, African, andCaucasian populations. The haplotype distribution and diversity pattern found among the three populations
supported the occurrence of a bottleneck during the dispersion of modern humans from Africa.Allelic association studies conducted on post-mortem human brain samples, revealed the association between a SNP
in the MAOB intron 13, and different levels of both MAO enzyme activities. This suggested that this SNP is inlinkage disequilibrium with at least one novel functional DNA polymorphism that controls MAO enzyme activities
in human brain. The identification of functional polymorphisms regulating the activity of these enzymes will help to
elucidate the involvement of MAO in human behavior and neuropsychiatric conditions.
Key words: linkage analysis, hearing loss, digenic inheritance, allelic association, monoamine oxidase, humangenetic diversity
Jorune Balciuniene, Department of Genetics and Pathology, Section of Medical Genetics, Rudbeck Laboratory, SE-
751 85 Uppsala, Sweden
© Jorune Balciuniene 2001
ISSN 0282-7476
ISBN 91-554-4917-4
Printed in Sweden by Tryck & Medier, Uppsala Universitet, Uppsala 2001
We dance around in a ring and suppose,
but the secret sits in the middle and knows.
Robert Frost
LIST OF PUBLICATIONS
This thesis is based on the following original publications, which will be referred to in the text bytheir Roman numerals:
I. Balciuniene J, Dahl N, Borg E, Samuelsson E, Koisti MJ, Pettersson U, Jazin EE (1998)Evidence for digenic inheritance of nonsyndromic hereditary hearing loss in a Swedishfamily. Am J Hum Genet 63: 786-93.
II. Balciuniene J, Dahl N, Jalonen P, Verhoeven K, Van Camp G, Borg E, Pettersson U,Jazin E (1999) Alpha tectorin involvement in hearing disabilities: One gene - twophenotypes. Human genetics 105: 211-16.
III. Balciuniene J, Syvänen A-C, McLeod HL, Pettersson U, Jazin E (2001) The geographicdistribution of monoamine oxidase haplotypes supports bottleneck during the dispersionof modern humans from Africa. Journal of Molecular Evolution, in press.
IV. Balciuniene J, Emilsson L, Oreland L, Pettersson U, Jazin EE (2001) A SNP in intron 13of Monoamine Oxidase B is associated with altered enzyme activity of both Monoamine
Oxidases in human brain. Manuscript.
Reprints were made with permissions from the publishers.
Table of contents
HUMAN DIVERSITY ........................................................................................................................................................1
GENE DISCOVERY...........................................................................................................................................................3
GENETIC MAPPING.............................................................................................................................................................3
Recombination .............................................................................................................................................................6
DNA markers................................................................................................................................................................6
Linkage analysis...........................................................................................................................................................8Parametric linkage analysis: LOD score method..................................................................................................................... 8
Non-parametric linkage analysis ............................................................................................................................................ 11
Linkage disequilibrium (allelic association) mapping .............................................................................................11Linkage disequilibrium phenomenon ...................................................................................................................................... 11
Allelic association studies: basic principles ........................................................................................................................... 12
POSITIONAL CANDIDATES ...............................................................................................................................................16Physical mapping.......................................................................................................................................................16
Identification of transcripts .......................................................................................................................................16
MUTATION IDENTIFICATION............................................................................................................................................17
FUNCTIONAL STUDIES .....................................................................................................................................................17IMPLICATIONS..................................................................................................................................................................18
HEARING AND HEARING IMPAIRMENT ...............................................................................................................19
HEARING MECHANISM.....................................................................................................................................................19HEARING LOSS.................................................................................................................................................................22
Genes causing hearing impairment...........................................................................................................................23
HUMAN MONOAMINE OXIDASES............................................................................................................................25
PROTEIN STUDIES ............................................................................................................................................................25
GENETIC STUDIES ............................................................................................................................................................26The MAO genes and identified polymorphisms ........................................................................................................26
Allelic association studies of the monoamine oxidase genes ...................................................................................29Association to enzyme activity and/or mRNA levels............................................................................................................... 29
Association to behavioral and neuropsychiatric human phenotypes .................................................................................... 29
AIMS....................................................................................................................................................................................33
PART I. HEARING DISABILITIES.......................................................................................................................................33
PART II. MONOAMINE OXIDASE ACTIVITY .....................................................................................................................33
PRESENT INVESTIGATIONS.......................................................................................................................................34
PART I. HEARING DISABILITIES.......................................................................................................................................34
Family I. Results ........................................................................................................................................................34DFNA12 locus .......................................................................................................................................................................... 35DFNA2 locus ............................................................................................................................................................................ 36
Family II. Results .......................................................................................................................................................38
Discussion: three puzzles...........................................................................................................................................38I. Phenotypic variation............................................................................................................................................................. 38
II. α-Tectorin............................................................................................................................................................................ 39
III. DFNA2................................................................................................................................................................................ 39
Future directions........................................................................................................................................................40
PART II. MONOAMINE OXIDASE ACTIVITY .....................................................................................................................40
Results ........................................................................................................................................................................41
Discussion: MAO genetic variation ..........................................................................................................................42I. Implications for human evolution and linkage disequilibrium studies .............................................................................. 42
II. Implications for functional variation.................................................................................................................................. 44
Future directions........................................................................................................................................................45
ACKNOWLEDGEMENTS..............................................................................................................................................46
REFERENCES...................................................................................................................................................................48
Abbreviations11q22 chromosome 11, long arm, region 2, band 21p32 chromosome 1, short arm, region 3, band 2A/C/G/T adenine/cytosine/guanine/thymineBLAST Basic Local Alignment Search Toolbp base paircDNA complementary DNAcM centiMorganCNS central nervous systemCSF cerebrospinal fluidCys or C cysteinedB decibel
DFNA12 autosomal dominant deafness locus 12DFNA2 autosomal dominant deafness locus 2DNA deoxyribonucleic acidEST expressed sequence tagGJB gap junction protein, betaHUGO Human Genome OrganizationHz (kHz) hertz (kilohertz)IBD identical by descentkb kilobaseKCNQ4 potassium channel, voltage-gated, subfamily q, member 4LOD logarithm of the odds ratio
MAO monoamine oxidaseMAOA monoamine oxidase AMAOB monoamine oxidase BMb megabasemRNA messenger ribonucleic acidPCR polymerase chain reactionRFLP restriction fragment length polymorphismRNA ribonucleic acidSer or S serineSNP (SNPs) single nucleotide polymorphism (more than one SNP)TECTA α-Tectorin
VNTR variable number of tandem repeatsZ LOD scoreΘ theta, recombination fraction
Human diversity
Human genetic material consists of two sets of 3x109 nucleotides. It has been suggested that 1 in
250 to 1 in 1000 nucleotides are different among two DNA sequences taken at
random120,22,112,207. This gives a minimum of 3x106 differences between two randomly taken
human haploid genomes. Assuming that the differences are due to two equally frequent alleles of
the same 3x106 nucleotides in all human beings, it would lead to 23x106 different combinations of
haploid genomes. In comparison, there are about 234 haploid human genomes currently living on
the Earth. Apparently, none of the living or deceased humans who emerged from differentzygotes had the same sequence of nucleotides. Our appearance and other physical or mentalcharacteristics are products of our genes and the environment. Some of these characteristics arepurely genetic, like eye color, some of them are purely environmental, like teeth brushing habit,but most of them are the result of the combined action between genetics and environment, likebody weight or height. Human genetics studies human characteristics that are at least partlycaused by genetic determinants.
The predicted number of genes in the human genome ranges from 35 000 to 120 000 genes43,92.
Careful analysis of the complete human genome after the completion of the HUGO project willprovide the final number of genes. Meanwhile, assuming that the average length of a geneincluding introns is 10 kb, this would suggest that genes occupy 10%- 40% of the humangenome, while coding sequences (assuming an average protein size of 500 amino acids) make uponly 2-6% of the genome. DNA variation in coding sequences as well as in regulatory elementsmay alter the gene expression and, therefore, give rise to variability at the protein level. As weknow, proteins are the main determinants in the development and maintenance of our organism.Consequently, variation in proteins leads to changes in our physical and mental characteristics(phenotype or trait). These phenotypes may be neutral for individual fitness, like size of ears orthickness of hair, or be disadvantageous like various kinds of disorders, e.g. haemophilia ormental retardation. Further classification of human inherited phenotypes is based on the number
of genes or the presence of environmental factors that are required to produce the phenotype.Also important are the genomic locations of the genes: mitochondria, autosomes or sexchromosomes, and the inheritance pattern of the phenotype: dominant, semi-dominant orrecessive (Figure 1).Most of the phenotypes, like body height, rheumatoid arthritis or schizophrenia, are products of acombined action of several genetic loci and environmental factors, i.e. multifactorial or complextraits. Most often such phenotypes display a wide spectrum of overlapping characteristics amonghumans. Moreover, some of them, like body weight or blood pressure, are present in all humansand have a continuous pattern of values (quantitative phenotype).
Figure 1. Classification of inherited human phenotypes.
Genetic variation also provides information about the evolutionary history of our species128.
DNA is constantly being subjected to mutagenic factors, such as DNA replication errors or
mutagenic chemical attacks. The probability of a mutation is around 2.5x10-8 mutations per
nucleotide117. Usually, a specific mutation occurs in a single person. Its chances to survive (andspread) in future generations depends on the probability that it is transmitted to successivegenerations. For neutral mutations (without effect on individual fitness) this chance corresponds
to the probabilities for mendelian segregation. In many cases, the more frequent and broadlydistributed a mutation is, the earlier in history it has occurred (i.e. the older it is). The geneticcomposition of modern humans living today contains numerous DNA differences of varyingfrequencies. Having determined DNA sequences for a number of individuals from differenthuman populations, one can trace back the genealogy of the sequences and find the most
probable ancestral sequence70. The time passed since the appearance of the ancestral sequence(ancestor) will be reflected in the number of differences accumulated, while the geographical
Autosomal X-linked gene is on gene is on autosome X chromosome Mitochondrial
gene is in mitochondrial genome
Y-linkedgene is on
Y chromosome
MonogenicCaused by one gene
Multifactorial(Complex)
Caused by several genes and environmental factors
OligogenicCaused by several genes
Dominantmanifest in
heterozygotes
Recessivemanifest in homozygotes
Semi-Dominantintermediate between
hetero - and homozygotes
Neutral or Pathological
Human InheritedPhenotypes
location will point to the place of the ancestral origin. On the other hand, the number andfrequency of mutations will also depend on selection acting on the mutation or loci linked to it,as well as demographic events like population bottlenecks, expansion or migration that occurred
during human history59. With help of mathematical modeling, one can predict an expected
pattern of human genetic diversity under certain evolutionary and demographic conditions, andcompare it with the observed pattern. The information obtained can help to uncover the modernhuman evolution. We do not yet have the technical possibilities to examine the complete pictureof the DNA variation among humans. Nonetheless, a lot of helpful data can be extracted by
studying variation of different genes scattered throughout the genome128. So far, most of thestudies investigating DNA variation in different regions of the human genome point to theAfrican origin of modern humans followed by a subsequent migration and settlement to the rest
of the world171.All in all, inherited human variation is the object for two disciplines: human molecular evolutionand human molecular genetics. The first discipline uses DNA variation to determine our
evolutionary history, while the second discipline aims to dissect genetic components beyond ourphenotypes that are virtual determinants of our life quality.
Gene discovery
Phenotypic variation is the first aspect that we notice in humans. It troubles us if it imposes ahandicap and awakens our curiosity if it is harmless but extreme. This variation is the ultimaterequirement for genetic studies that attempt to find genes lying behind it. If there are no solidindications about proteins that are involved in the phenotype under study, and if the inspection ofchromosomes in the affected individuals does not result in the detection of any grosschromosomal aberrations, the outline of the gene discovery process in human beings can besummarized as it shown in Figure 2.
Genetic mapping
The aim of genetic mapping is to position unidentified genetic loci relative to known positionswithin the genome. Two main statistical approaches are linkage analysis and linkage
disequilibrium (allelic association) analysis. The first one analyzes recombination events infamilies to determine whether two genetic loci are close to each other, while the second approachattempts to identify the non-random association of specific alleles at different loci in apopulation.
Figure 2. Main steps of a gene discovery process in humans. Continues on the next page
1
2
3
Critical region
Clonecontigs
Transcripts
Constructionof haplotypes
Genotyping
Genetic mapping
Physical mapping
123
Pol
ymor
ph
ic m
arke
rs
or
Explore Human Genome databases:Draft Human Genome Browser http://genome.ucsc.edu/goldenPath/hgTracks.htmlHuman Genome sequencing http://www.ncbi.nlm.nih.gov/genome/seq/etc
Figure 2. Main steps of a gene discovery process in humans.
Mutation identification
Functional studies
Sequencing
Genomic organization and sequence
Monogenic traits were the first to be studied by human geneticist and statistical methodology for
such investigation was proposed as early as in 1922 (for a historical review see ref172). Since theearly seventies, the rapid development in DNA screening techniques accelerated gene discoveryprocess of monogenic traits. In contrast, studies of complex human traits had to wait for more
sophisticated statistical methodologies and DNA techniques, and many discoveries are yet to bemade.
Recombination
As a rule, each of us humans has 46 chromosomes: two homologous sets of 22 autosomal
chromosomes and a pair of sex chromosomes. To each of our children, we transfer a set ofautosomes and a sex chromosome. However, the exact DNA content will differ in eachtransferred set. This is because of two events that occur during gametogenesis: independentassortment of parental chromosomes (when one chromosome of each homologous pair israndomly distributed to the gametes) and recombination (meiotic crossover). During therecombination, two homologous chromosomes, each consisting of two chromatids, exchangeDNA segments in a random manner (Figure 3). As a result, new “mosaic” chromosomes thatcontain DNA segments from both of the parental chromosomes are formed. The recombination ismore likely to occur between loci that are further apart. Therefore, the recombination frequency(Θ) between two loci can be used to estimate the distance between the loci. This distance is
called genetic distance and it is measured in centimorgans (cM). One percent of recombination(Θ=0.01) is defined as 1 cM. Roughly, it is approximated that 1 cM = 1 Mb, but it differs
substantially between different regions in the genome41. Two loci located on differentchromosomes segregate independently (=are not linked) and the recombination frequencybetween them is 50% (Θ=0.5). This is because there is a 50% chance for two independent
chromosomes to end up in the same gamete. For linked loci the recombination frequency will belower than 0.5 (Θ<0.5).
DNA markers
Recombination events (and recombinant individuals) in human pedigrees can be spotted trackingthe segregation of chromosomal fragments through generations. This can be easily achieved bymonitoring familial segregation of a specific genetic locus (DNA marker) that has more than oneallelic variant among humans, i.e. polymorphic marker. One can determine which marker allelesare present in the parents and which alleles have been transmitted to the offspring (Figure 4).This is possible only if the parents are heterozygous for the studied polymorphism. Therefore,
the more alleles a certain polymorphism has, the more information it can provide to scorerecombinants. This marker characteristic is called informativeness, and it is usually reflected bytwo measures called marker heterozygosity (H) and polymorphism information content (PIC) thatcan be estimated using the following formulas:
pi and pj denote allele frequencies of i and j alleles, respectively.The human genome contains a variety of polymorphic markers: microsatellites (di-, tri-, ortetranucleotide repeats), variable number of tandem repeats (VNTR or minisatellites) and singlenucleotide polymorphisms (SNPs).
Figure 3. Meiotic crossover. Each homologous chromosome consists of two sister chromatids. Three different
genetic loci are indicated by different letters. Every locus consists of two alleles that are denoted by capital andsmall case letters. A recombination occurred between loci B and C and generated two recombinant sister
chromatids.
A
B
C
a
b
c
a
b
c
A
B
C
A
B
C
a
b
c
a
b
c
A
B
C
Two homologues chromosomes
Crossing-over Two recombinant chromatids
A
B
c
a
B
c
a
C
b
A
B
C
a
b
c
H p PIC p p pii
n
ii
n
ij i
n
i
n
j= − = − −= = = +=∑ ∑ ∑∑1 1 22
1
2
1
2
11
2 and ,
For genetic mapping purposes, the genomic position of a DNA marker should be determined. Aset of ordered DNA markers scattered throughout the genome constitutes a marker map. Markermaps may differ in the method used to order and estimate the distance between markers. Ingenetic maps, distance and order of DNA markers are based on recombination analysis. DNAmarker maps are used to locate a gene causing a certain phenotype in the human genome (this is
called genome scan or genome-wide mapping). Usually, for initial mapping purposes, a set ofmarkers spaced at 10 cM distance is sufficient. The HUGO project has generated up to 10 000
highly polymorphic genetic markers and placed them on a map25,26. In parallel, The SNPconsortiuma has released a map that contains around 300 000 SNPs. Microsatellite markers are agood choice for genome-wide mapping as they are highly polymorphic and are easy to genotypeby fluorescent PCR-based methods. On the other hand, SNPs, though being bi-alellic, are veryabundant in the human genome and can be genotyped by high-throughput DNA chip technology.Moreover, because of their abundance and low mutability, SNPs can be the best choice for finemapping and/or linkage disequilibrium studies.
Linkage analysis
Parametric linkage analysis: LOD score method
The inheritance pattern of monogenic phenotypes can provide information on certaincharacteristics of a gene that causes this phenotype. For instance, it can give clues on whether thegene is autosomal or sex-linked and whether one phenotype-causing allele (if dominantphenotype) or two phenotype-causing alleles (if recessive phenotype) are present in theindividuals manifesting the phenotype. In other words, we can assume a certain genetic modelfor the studied trait. Further analysis will depend on the assumed model and it is calledparametric linkage analysis.Let’s assume that we have a family with a dominant condition (Figure 4). In this case, weassume that affected individuals harbor one trait-causing allele (for recessive trait both allelesshould be trait-causing) in an unknown gene. Members of the family are genotyped for a set ofpolymorphic markers spread throughout the genome, and the proportion of recombinant
individuals between marker alleles and the envisioned trait allele is estimated. As we see, person4 has inherited a disease from his mother (person 1) together with alleles “3” at the polymorphicloci A, B and C. Then, affected person 6 is non-recombinant as it has inherited the “3” alleles atall the three polymorphisms. Similarly, individuals 5, 7 and 9 are also non-recombinant as theyhave inherited alleles “4” for A, B and C loci, that come from the healthy grandfather. In
a http://snp.cshl.org/
contrast, affected persons 8 and 10 are recombinants, as they have received alleles “4” at the lociC and A, respectively, that are coming from the healthy grandfather. In general, a DNA marker islikely to be linked to a disease gene if the recombination fraction between them is less than 50%(Θ< 0.5). In the drawn case, the disease gene is in complete linkage with marker B, as they have
not recombined. Moreover, one can determine boundaries of a chromosomal fragment that islikely to contain a trait gene (gray bars), i.e. the fragment that consists of markers with Θ=0 and
is bordered in each side by DNA markers that have recombined with the trait locus. We see thatin this pedigree, the disease allele has not recombined with alleles at marker B, but recombinedwith alleles at loci A and C. Therefore, we conclude that the disease gene lies between the DNAmarkers A and C.
Figure 4. Recombination analysis in a hypothetical family. Letters “A”, “B”, and “C” denote three polymorphic
DNA markers, with several alleles indicated in different numbers. Individuals manifesting a certain phenotype (inthis case, a disease) are shown in black symbols. The disease is inherited in an autosomal dominant manner. “D”
denotes an allele that causes the disease, while “+” is a normal allele. Alleles on the same chromosome constitute ahaplotype that is represented as a vertical bar. Gray-filled bars represent the disease-associated haplotype.
Identification number for each individual is given below a symbol.
1 4
+ + D +
+ + + D + + + D + + + D
1 2 3 4
1 4 2 3 1 4 2 4 2 4 1 3
1 4 2 3 1 4 2 3 2 4 1 41 4 2 3 1 4 2 3 2 4 1 3
1 2 3 41 2 3 4
AB
CGene
AB
CGene
3 4
5 6 7 8 9 10
3 2 1 4
3 2 1 43 2
AB
CGene
1 2
+ +D +
However, a recombination rate of Θ< 0.5 can also be observed for unlinked loci just by chance.
Therefore, it is important to perform statistical calculations to evaluate the significance of theobserved results. Usually, the statistics LOD score (Logarithm of the ODds) is calculated forthese purposes. LOD score (Z) is a logarithm of likelihood ratio that compares the probability ofobserved recombinants and non-recombinants in a family given that a marker and a trait loci arelinked (at certain recombination fraction Θ) versus the probability that the marker and the trait
gene are not linked. In an ideal situation, when recombinants (R) and non-recombinants (N) inthe family can be determined unambiguously, LOD score can be estimated by the followingformula:
In the example above, LOD score for marker B at Θ=0 will be:
Z≥3 is considered a significant evidence for linkage between a tested marker and a trait locus.Z≥3 means that the probability of the observed family genotypes assuming linkage is 1000 morelikely compared to the probability under no linkage and this Z value corresponds to asignificance level of p=0.05. LOD scores are being computed for a range of Θ and the maximum
Z is selected. Z<-2 is considered to be a significant evidence for no linkage (exclusion criteria).For genome-wide mapping, Z≥3.3 is required to achieve a corresponding significance level of
p=0.0584.In our hypothetical case, marker B gave Z=1.8 and this is less than the accepted significance
criteria (Z≥3), though it is the maximum that can be achieved with this family. This means thatthe sample material should be increased: either more members belonging to the same familyshould be identified, or additional families with the same phenotype should be ascertained toobtain statistically significant results.Scoring of the recombinant individuals in human pedigrees is not a trivial task. The DNAmarkers used are not always informative enough to unambiguously determine the recombinants.Also, very often some family members are missing and their genotypes have to be inferred.Nowadays, the scoring of recombinants is being done by a variety of sophisticated computerprograms that can be chosen depending on the collected family material and the phenotype
studied105,126,172. The LINKAGE package of programs86 is the most often used especially forsimpler, for instance monogenic, traits. There are also other programs available like Genetic
ZR N
R N=−
≤ <+lg
( )( . )
, .Θ Θ
Θ1
0 50 0 5 where
ZΘ= +=−
0
0 6
0 6
0 1 00 5
lg( )
( . )= lg64 = 1.8
Analysis Software (GASa), MENDEL85, and VITESSE124 that can perform similar LOD scorecalculations.
Non-parametric linkage analysis
For the above described LOD score method, one should a priori assume a model for a trait-causing gene. However, this is not trivial for complex phenotypes, as they are products of manygenes and environmental factors. Therefore, segregation analysis of a complex phenotype in afamily may not yield information on the underlying genotype. Also, it may be difficult to judgewhich individuals are clearly unaffected, since some individuals can carry the same traitgenotype as affected but do not manifest trait characteristics (non-penetrant). In this case, onecan use model-free or non-parametric linkage analysis methods that do not require an explicitlyspecified genetic model for a trait. These analyses use only affected relative pairs (usually sib-
pairs) and investigate what is the frequency of marker alleles, that are coming from the same
ancestor (identical by descent (IBD)), among the affected pairs46. If affected individuals have amarker for which certain IBD alleles are shared more often among affected individuals that itwould be expected by chance, the marker may be linked to the trait gene(s). If a quantitativephenotype is studied, IBD allele sharing can be investigated in individuals with extreme
phenotypic values144. Again, several computer programs can be implemented for these purposes:
ASPEX154, MAPMAKER/SIBS80, and GENEHUNTER79.
Linkage disequilibrium (allelic association) mapping
Linkage disequilibrium phenomenon
Linkage disequilibrium is defined as a non-random association between specific alleles at two or
more loci. In other words, specific alleles at two or more loci are in linkage disequilibrium ifthey appear together more frequently than what is predicted from individual frequencies of thealleles by Hardy-Weinberg distribution. Most often, linkage disequilibrium is generated by amutation that, due to genetic drift or natural selection, expands in a population. Alleles of otherloci, that are on the same chromosome as the mutation, will be transmitted together as ahaplotype, and thus will be in linkage disequilibrium. Alleles that are farther apart from themutation will be quickly separated by meiotic recombination as they pass through generations,while closest loci will stay in linkage disequilibrium with the mutation longer. When the time
aAvailable at ftp://ftp.ebi.ac.uk/pub/software/linkage_and_mapping
goes on, there will be enough recombination events to shear all the loci initially linked to themutation, and eventually linkage equilibrium will be reached. Therefore, linkage disequilibriumis strongest for the alleles that have occurred recently. In a population, linkage disequilibrium isa dynamic process, as new mutations are being generated constantly followed by their expansion,and eventually it decays due to recombination. Another cause for linkage disequilibrium in a
population can be a sizable migration from the outside, that can bring in new haplotypes usuallywith new alleles or alleles that are different in frequency compared to the existing alleles. Also,some other demographic events, such as population stratification, may mimic the presence oflinkage disequilibrium in a population.
Allelic association studies: basic principles
Linkage disequilibrium analysis (or allelic association studies) can be performed on a genomewide scale to map an unknown phenotype-causing gene, or can be used to test the relationship
between alleles at a specific candidate gene and a certain phenotype. In contrast to linkageanalysis, allelic association mapping can be performed on unrelated affected individuals comingfrom the same population. The basic assumption is that a certain phenotype in tested individuals
is due to the same mutation, i.e. IBD allele of a phenotype-causing gene174. The simplest form ofallelic association analysis is case-control studies, where the distribution of alleles at a variableDNA locus is compared between a sample of unrelated cases (individuals with a certainphenotype) and a sample of well-matched controls.Let’s consider a study that investigates the relationship between a certain phenotype and acandidate gene. To achieve this, polymorphic loci in the gene are identified and they are testedfor association with the phenotype. As a rule, association between a tested polymorphism and a
certain phenotype can be detected, if the tested allele has a direct functional effect on a testedphenotype (functional variant), or if it lies in a close vicinity to an unknown functional mutation,i.e. is in linkage disequilibrium (Figure 5). If the tested DNA variant causes the phenotype, it willbe present in a group of cases, but it will not be present among the control individuals, and theinterpretation of the findings will be straightforward. However, in the case that the tested DNAvariant does not have an effect on the phenotype but rather serves as a marker for an unknownfunctional variant, i.e. is located in the vicinity, the results of the association studies may not beas clear-cut. Figure 5 shows a DNA marker with two alleles indicated as solid and open circles.The functional DNA variant (solid triangle) occurred on one of the chromosomes with the“solid” marker allele. Consequently, three types of non-recombinant chromosomes (haplotypes)will be present in the population: the functional variant together with the “solid” allele, and two
types of chromosomes that differ in the alleles (solid and open circles) at the marker locus but donot contain the functional variant. In a case-control study, the cases will have under-representation of the “open” allele (if any), while controls will contain both marker alleles.
Figure 5. Allelic association. Each bar represents a single chromosome. The solid triangle indicates a functional
variant that causes a certain phenotype. The circles represent a neutral SNP: the solid circle indicates an allele that is
on the same chromosome as the functional variant, while the open circle denotes alternative alleles at the SNP locus.
In general, the success of such allelic association studies will rely on the degree of linkagedisequilibrium between a functional variant and the linked neutral marker. In turn, the degree oflinkage disequilbrium among the two variants will depend on the mutation rate of the variants,the rate of recombination between them, their frequency and their age.Most of the association studies use microsatellites and/or minisatellites because they are the mostinformative DNA polymorphisms. In some cases, these markers themselves may have a direct
effect on the expression of a gene product28. Expanded tri-nucleotide repeats are excellent
examples of polymorphisms shown to cause a variety of neurological disorders such as
Huntington’s disease, and fragile-X syndrome139. However, if repeat polymorphisms do notrepresent functionally significant DNA variants, but serve as markers for hidden causativepolymorphisms, their use in allelic association studies of complex disorders may be quite limited(Figure 6A). The mutation rate of mini/microsatellites on average is 7x10-3 per gamete/per
generation68,12. This is a high mutation rate compared to 2.5x10-8 per nucleotide for non-
repeated sequences117. Over generations, the higher mutation rate for mini/microsatellites wouldintroduce new alleles linked to the same functional variant obscuring association studies (Figure6A). Usage of other types of DNA polymorphisms, such as small deletions or SNP, may be
better. SNP have also the advantage of frequent occurrence throughout the genome, and they are
amenable to automation83,193. Similar to mini/microsatellites, they can represent functionalvariants as such, or can serve as markers for a presence of unknown phenotype-related alleles.Another limitation to association studies may emerge if recombination has occurred between thefunctional variant and an initially linked marker allele (Figure 6B). In this case, the initiallinkage disequilibrium between the marker and the functional variant may be destroyed. Thus,the distribution of the marker alleles may even out between cases and controls, and noassociation would be detected.
Cases
Controls
Figure 6. Two genetic events that disturb the allelic association between two linked variable loci. A) The
tandem open triangles represent repeats in different alleles of a microsatelite marker. The functional variant (solidtriangle) is linked to the microsatelite alleles. During evolution, an allele with three repeats may mutate (to two or
four repeats). Consequently, all three marker alleles will segregate on the same chromosome as the functional
variant, and therefore, all three will be present among cases. B) The circles indicate alleles of a SNP. Recombinationmay occur between the functional variant and an initially linked SNP allele. Consequently, both SNP alleles will
segregate with the functional variant.
The frequency of the analyzed DNA marker, in many cases proportional to its evolutionary age,will play a significant role in the detection of association. For example, if a DNA polymorphismhas occurred on the same chromosome as the functional variant but much later during evolution,it will be very rare among cases. Consequently, a much larger sample of cases would be requiredto reach statistically significant association.Simultaneous analysis of several linked DNA markers (e.g. SNPs) covering the candidate region
should be used to decrease the problems of association studies mentioned above (Figure 7). As itis seen in the figure, the independent analysis of two DNA markers, symbolized as squares andcircles, would not have revealed the existing association with a functional variant (symbolized assolid triangles). Analysis of a third marker, illustrated with diamonds, would expose theassociation only if a very large sample of cases was analyzed. Detection of the functionalpolymorphism can be more efficient if, instead of testing individual DNA markers, combinedhaplotypes generated with these three markers are analyzed simultaneously for association with a
A) DNA marker mutation B) Recombination
phenotype. In Figure 7, two specific haplotypes would be detected in a group of cases but not incontrols, indicating the presence of a functional polymorphism that is in linkage disequilibriumwith these two particular haplotypes. The problem may be the correct determination of thehaplotypes, especially when the genotypes from the parents are missing. A collection of
computer programs, such as GENEHUNTER79, SIMCROSS, SIMWALK195, and
TRANSMIT24, may be used to estimate haplotypes given genotype information.Another problem of such studies is to obtain well-matched controls. The solution can beprovided by family-based linkage disequilibrium approaches, such as transmission
disequilibrium (TDT)162 or haplotype relative risk (HRR)173 tests. Both approaches, in a slightlydifferent manner, use parental alleles that were not transmitted to the affected offspring as acontrol population.In general, an allelic association approach is more widely used to dissect the genetic basis ofcomplex phenotypes. Many different genetic loci together with diverse environmental factorsmay interplay to produce a given complex phenotype. This makes the allelic association mapping
even more complicated. Many additional parameters will influence the power of such allelicassociation studies. For example, the density of tested SNPs at a given candidate locus, theproportion of variance of a given phenotype attributable to a causative polymorphism within thetested locus, the size of a tested sample, the sampling scheme, and the selection of a statisticaldesign are some of the factors that determine the success of an association
mapping174,78,101,153,172,197.
Figure 7. Use of haplotypes for association studies. Each bar symbolizes a single haplotype. The circles, the
squares, and the diamonds, represent three neutral polymorphic loci that are being tested for association with a
certain phenotype caused by an unknown functional variant indicated by the solid triangle. Cases would contain onlyhaplotypes 1 and 2, that carry the functional variant.
Cases
Controls
1
2
3
4
Positional candidates
Once the genetic location of a trait-causing gene has been mapped, one should identify all thegenes residing in this region and screen them for mutations in affected individuals. Upon theaccomplishment of the Human Genome Project, identification of genes located in the candidateregions will be a simple task, as all human DNA sequences will be available in genomedatabases. However, just a year ago (1999), the situation was not so smooth and one had to spenda lot of efforts to identify all genes in the candidate region.
Physical mapping
After having mapped a trait gene to a chromosomal region as narrow as possible (optimally 1 cMdistance), one should locate the gene physically in the genome, i.e. to find a DNA clone(s) thatspans over the mapped region. A variety of ordered human DNA clones (referred as physicalmap) corresponding to a specific chromosomal location are available. The most handy ones areclones in yeast artificial chromosomes (YAC) that contain up to 2 Mb DNA insert, while clones
in bacterial artificial chromosomes (BAC) hold up to 300 kb DNA inserts. After a relevant YACor BAC clones have been obtained, the next step is to identify all genes that are present in theseDNA fragments.
Identification of transcripts
Methods used to identify genes in a given DNA sequence are based on generalized features thatdistinguish coding elements from non-coding. These features are the ability to produce EST(expressed sequence tag), a high degree of conservation among species, and the presence of CpGislands.Potential genes can be identified by bioinformatic approaches. Special computer programs such
as GRAIL2180 and GENSCAN16 can predict genes and CpG islands in a DNA sequence. A lotof information can be obtained by searching for homology to expressed sequences, such as EST,full-length mRNA and/or proteins, deposited to different databases (BLAST searcha). Also,
comparative sequence analysis by using programs such as ALFRESCO67 or PIPMAKER155 can
help to discover genes known in other species, or to identify unknown evolutionary conservedsequences that are likely to contain functionally important DNA elements.
a http://www.ncbi.nlm.nih.gov:80/blast/
Having identified all the possible transcripts in the chromosomal region of interest, the next stepis to select candidate gene(s) relevant for the studied trait. Common sense and knowledge ofother biological aspects of the studied trait or similar traits can give some clues about function orexpression pattern of the “hunted” gene or suggest potential molecular pathways in which thecandidate gene may be involved. Also, knowledge on genes involved in similar traits in model
organisms can be extremely helpful in pointing to a candidate human gene.
Mutation identification
The selected candidate gene(s) can be screened for DNA variants (mutations) that may cause the
phenotype. One can sequence regions that are important for the gene function (such as promoter,coding regions, splice sites). Any type of mutations, e.g. deletions, insertions, missensemutations, nonsensse mutations, splice site mutations, frameshift mutations, and dynamicmutations, can produce the phenotype. For monogenic pathological conditions one would expectthe identified mutation to be present in affected individuals but not in controls. However, forcomplex traits, the same DNA variant can be frequent in the control group. Therefore, theidentification of a trait-associated mutation makes the selected gene a stronger candidate, butadditional proof is required. For example, a strong proof can be provided if human mutationsintroduced by genetic manipulations into a model animal would result in a phenotype similar tothe human trait under investigation.
Functional studies
Validation of a candidate gene leads to the next stage of research that attempts to unravel thefunction of the gene. Useful hints on gene function can be gained by searching in electronicdatabases, for example by BLASTa, for sequences with known function that are homologous tothe DNA sequence or protein sequence of the candidate gene. Also, some computer programs
(some are available at Pedro's BioMolecular Research Toolsb) can scan the gene for the presenceof DNA or protein motifs that are good predictors for a specific function. Studies of mRNAexpression patterns in human derived material would also provide information on the function.This information can be related to what tissues or cells express the gene, in which developmentalor differentiation stage the gene is expressed, what external stimuli does the gene respond to andso on. Methods that can be used for transcript expression studies are Northern blot analysis, in
situ hybridization203, DNA microarray hybridization151, mRNA differential display93, and 5’-
a http://www.ncbi.nlm.nih.gov:80/blast/bhttp://www.public.iastate.edu/~pedro/research_tools.html
nuclease assay19. In addition, human derived samples can be used to investigate expression ofthe encoded protein that can be visualized using specific antibodies in immunocytochemical,immunofluorescent or Western blot methods. Moreover, various methods, such as DNase I
footprinting50 and gel retardation assay156 can identify DNA sequences that bind proteins. Yeast
two-hybrid system44 is a very powerful approach to find other proteins that physically interactwith the protein encoded by the gene. The mentioned approaches can discover gene function at acellular level, though would not tell anything about the function at the whole organism level.The function of a gene at the organism level can be studied in model organisms, such asnematode, fruitfly, zebrafish, frog, or mouse. An animal with altered function of a studied genecan be constructed. For example, it is possible to shut off the gene completely (knockout) or to
shut it off only in specific tissues and/or specific time points (conditional gene knockout100).Also, it is possible to over-express the gene (to insert extra copies of the gene), to express itectopically, or to insert an altered form of a gene to a model animal. Consequent phenotypes of
such gene alterations can provide additional information on the function of a gene. The drawbackof such studies is that some genes may not be present in animals. If present, they may befunctionally unimportant or may have a divergent role. Also, the lack of some genes may notproduce a phenotype at all or may result in embryonic lethality. Moreover, phenotypes such asbehavior may be very difficult to interpret, and the information obtained may not always beapplicable to humans.
Implications
The identification of a gene involved in a certain phenotype and the discovery of its functionmay contribute substantially to the progress in medicine. New molecular procedures that wouldimprove clinical and prenatal diagnosis as well as genetic counseling can be invented. Moreover,a disease-causing gene is a direct target for new therapeutic agents or gene therapies. This is theultimate goal when the genetic cause of a disease is identified.Lastly, knowledge on genes involved in any phenotype broadens our horizons on basic molecularmechanisms that rule our bodies, minds and consequently destinies.
Hearing and hearing impairment
Hearing mechanism
Ear structures first appeared in fish over 400 million years ago131. It is speculated that hearinghas evolved for a better survival in an environment where one is constantly threatened of beingeaten: hearing enables to “detect and localize” moving objects without seeing or physicallycontacting them. For us humans, hearing was also the prerequisite in developing and maintainingour speech.
Figure 8. Sound and its physical characteristics.
Sound (Figure 8) is propagated as a wave in a physical medium (gas, liquid or solid) and is theresult of a variation in atmospheric pressure. Normally, humans can hear sounds ranging from 20to 20 000 Hz, with the highest sensitivity in the range between 1000-4000 Hz.
Ear is an organ that has evolved to catch these mechanical waves and to transform them into asignal (electrical signal) that can be understood by the brain. The ear consists of three parts:outer, middle and inner ear (Figure 9).Sound waves are captured by the outer ear (auricle) and are passed through the external acousticduct to the tympanic membrane. Vibration of the tympanic membrane induced by a sound istransmitted through the three ossicles: malleus, incus, and stapes, to the oval window of the innerear. The inner ear consists of the bony and the membraneous labyrinths. The bony labyrinth isfilled with fluid called perilymph and it is comprised of three major parts: cochlear, vestibule andsemicircular canals.
Loudness=Amplitude=
Sound pressure level (dB)= 20lg(P/20µPa)
Pitch =Frequency (Hz)
= 1/T
Sound
Period ofcycle (T)
Time
Pre
ssu
re (
P)
Figure 9. Structure of the human ear. Adapted from Petit (1996)133.
The auditory machinery is located in the cochlear, while the vestibular system resides insemicircular canals, utricle and saccule. The membranous labyrinth resides inside the bonylabyrinth and is filled with endolymph.The cochlear duct, the membranous part of the cochlear, contains the organ of Corti (Figure 10)
that harbors the main sensory components of the auditory system. The mechanical energygenerated by a sound wave is converted into electrical impulse by hair cells that are located onthe basilar membrane of the organ of Corti. The hair cells are of two types: inner and outer. Eachhair cell contains a bundle of actin filled stiff microvilli, called stereocilia, that are connectedwith each other by actin links (Figure 11). Tips of the stereocilia are covered by acellulargelatinous membrane referred to as tectorial membrane. Vibration of the basilar membranecaused by an oscillation of the perilymph induces sheering of the tectorial membrane (Figure 11,depolarization). This causes a deflection of the stereocilia that results in mechanical opening ofunidentified potassium channels (Figure 11). Potassium ions flux into the hair cell through theopened channels and switch the influx of calcium ions. This triggers the release of
Vestibularapparatus
Tympanicmembrane
Cochlearduct
External ear Middle ear
Inner ear
Ovalwindow
Cochlear
Perilymph
Endolymph
Utricle
Saccule
Semicircularcanals
External acoustic duct
Osicles
neurotransmitters from the hair cell that activate the acoustic nerve conducting the actionpotential to the auditory cortex.
Figure 10. Crossection of the cochlea duct. Adapted from Willems, PJ (2000)201.
Figure 11. Transduction process of a in a hair cell. Three stages of a hair cell activity are represented: resting,
depolarized and repolarized phase. See the text for more detail explanation.
Scala vestibuli
Scala tympani
Scala media
Basilarmembrane
Inner haircell
Outer haircells
Cochlearnerve
Tectorialmembrane
Supportingcells
Striavascularis
Organ ofcorti
K+
K+
K+
K+
K+
K+
K+
K+
K+
K+
K+
Ca+ K+
K+
K+
K+
K+
K+
K+
K+
K+
K+
K+
Endolymph
Stereocilia
Nerve
Synapticvesicles
Connexinchannels
Basilarmembrane
Actinlinks
K+
K+
Perilymph
Potassiumchannel
Supportingcells
Tectorialmembrane
Depolarization RepolarizationResting
Ca+
Ca+Ca+
Ca+
A pattern of action potential encodes certain characteristics of the sound, such as intensity,frequency, and time course. The cells repolarize when potassium ions exit the cells through gapjunctions to the supporting cells and subsequently to the endolymph (Figure 11, repolarization).The inner hair cells act only as receptor cells that transmit electrical signals to the cochlear nerveleading to the auditory cortex. The outer hair cells, in addition to receptor function, amplify the
sound induced motion of the basilar membrane, therefore increasing hearing sensitivity. Eachhair cell is specific to certain sound frequencies. Therefore, damage of different hair cells resultsin inability to detect different sounds. For a detailed description of the hearing mechanism,
see65,122.
Hearing loss
Hearing loss is one of the most frequent sensory disorders in humans133. Its negative influenceon individual’s life quality highly depends on the severity of the illness and the age of onset. Ifthe disease develops early in childhood, it will prevent acquisition of speech and this, in turn,will effect cognition and psychosocial development.Classification of hearing loss is based on several different criteria (Table 1). The incidence of
pre-lingual deafness is 1 in 1000 newborn. Of them, 60% have a genetic cause104. Of the genetic
cases, 30% constitute syndromic hearing loss111. The prevalence of post-lingual hearing lossincreases with age: it affects 1% of young adults, 10% of persons at the age of 60, and 50% of
persons at the age of 75 and older160. It has been estimated that 85% of pre-lingual hearing loss
is due to recessive mutations133. In general, autosomal dominant forms of hearing loss showdifferent disease course compared to recessive forms. Recessive forms tend to manifest as
congenital (pre-lingual) non-progressive severe to profound or profound hearing loss168, whilepost-lingual progressive mild to severe hearing impairment prevails among dominant
cases182,185.
Several tests are used to assess the nature and severity of hearing impairment. Audiometry is abasic test that evaluates hearing loss severity, frequencies affected, and which ear structures areinvolved. During this test, a person is presented with certain pure tones of several differentfrequencies. The softest level of sound that a person can hear (hearing threshold in decibels (dB))is recorded, and the data is plotted in a graph called audiogram. Other tests include impendanceaudiometry that evaluates the integrity and function of the ear structures, electrocochleographyand evoked-response audiometry that directly measures electrical response of the ear or brain to
a sound stimulus148.
Table 1. Classification of hearing impairment. As presented in Willems, PJ (2000)201.
Criteria Classification Description
Nongenetic Environmental factors, e.g. infectiousdiseases, acoustic trauma, ototoxic drugs
Cause
Genetic Monogenic (autosomal:dominant andrecessive; X-linked, mitochondrial),oligogenic, multifactorial
Syndromic Present together with other phenotypes, e.g.
blindness, pigmentary defects, goiterManifestation
Non-syndromic Solely hearing loss
Prelingual Develops before speech acquisitionOnset
Postlingual Develops after speech acquisition
Conductive Defect in outer or middle ear
Sensorineural Defect in inner ear or neurotransduction
Type of ear defect
Mixed Conductive and sensorineural
Mild Loss of 21-40 dB
Moderate Loss of 41-60 dB
Severe moderate Loss of 61-80 dB
Severe Loss of 81-100 dB
Severity
Profound Loss of >100 dB
Low <500 Hz
Middle 501-2000 Hz
Frequencies affected
High >2000 Hz
Genes causing hearing impairment
Genetic hearing impairment is highly diverse among humans. Various types of mendeliangenetic transmission have been observed in families with non-syndromic hearing loss. It hasbeen postulated that several dozens of genes may be responsible for hearing impairment in
different families111. A comprehensive and constantly updated summary of achievements inhearing loss mapping and gene identification can be viewed at the Hereditary Hearing
Homepagea181. Several reviews have also been published72,201. Briefly, up to 30 different lociresponsible for autosomal dominant hearing loss, 28 genes responsible for autosomal recessive
a http://dnalab-www.uia.ac.be/dnalab/hhh/
forms of the loss, and 5 genes linked to X-chromosome have been mapped. Among them, 15genes have been identified (Table 2). For many of these genes, different mutations have beenfound in a number of different families. Mutations in Connexin 26 (GJB2) are one of the most
common causes for congenital deafness explaining almost 50% of the cases137. In addition,
GJB2 is mutated in 10% of the sporadic congenital cases89.
Table 2. Genes responsible for non-syndromic hearing impairment.
Gene Function
Connexin 26 (GJB2)Connexin 31 (GJB3)Connexin 30 (GJB6)
Gap junction proteins that enablesexchange of small molecules between cells
Myosin 7AMyosin 15
Involved in intracellular transport, cellularmovement, muscular contraction and etc
KCNQ4 Potassium channel
α-tectorin; COCH gene Extracellular matrix proteins
POU3F4; POU4F3 Transcription factors
Pendrin Iodide and chloride ions transport
Diaphanous Involved in maintenance of cytoskeleton
Otoferlin Probably transport of membrane vesicles
Collagen COL11A2 Probably one of the components of thetectorial membrane
ICERE-1 Unknown
Another interesting observation is that different mutations in the same gene can result in differentforms of hearing loss. For example, different allelic variants of the Connexin 26 can cause either
recessive74 or dominant hearing loss38. Similarly, different mutation in Myosin7A can result in
recessive or dominant form of hearing impairment96,97 or can cause Usher syndrome that is
characterized by hearing impairment and blindness196. More strinkingly, different alleles of
GJB3 can underlie recessive/dominant non-syndromic hearing loss205,98 or can cause a skin
disease erythrokeratodermia variabilis142.
Even more genes have been identified for syndromic forms of hearing impairment. Currently, upto 30 such genes are known, and more information can be obtained in the Hereditary Hearing
Homepagea or in recent reviews45,53,178.Identification of genes causing hearing impairment contributes to our knowledge on themolecular mechanism of the hearing machinery, how it develops, functions and dysfunctions.
a http://dnalab-www.uia.ac.be/dnalab/hhh/
Also, it provides better molecular tools in clinical and prenatal diagnostics as well as geneticcounseling. To date, only few treatments are available: hearing aids that amplify sound, andcochlear or auditory brainstem implants that stimulate cochlear nerve or auditory nuclei.Hopefully, in a near future, new approaches for treatment will emerge from efforts to replacedefective cochlear genes using virus-mediated gene transfer as well as to induce regeneration of
inner ear sensory hair cells102.
Human monoamine oxidases
Protein studies
Monoamine oxidases (MAO) are enzymes localized in the outer mitochondrial membrane thatcatalyze the oxidative deamination of biogenic and xenobiotic amines, including severalneurotransmitters. There are two isoenzymes, MAOA and MAOB, that differ in their substratespecificity, sensitivity to inhibitors, cellular localization and are encoded by two separate genes.MAOA preferentially degrades serotonine, norepinephrine and is selectively inhibited byclorgyline, while MAOB is more efficient to metabolize phenylethylamine and benzylamine and
is selectively inhibited by deprenyl (for reviews see ref192,199,157). Both enzymes are present invarious tissues throughout the body with the highest levels in liver and brain. However, sometissues predominantly express one type of MAO: placenta expresses mainly MAOA, while
platelets and lymphocytes posses only MAOB activity176,56,158. In human brain, MAOA
predominates in catecholaminergic neurons, while MAOB prevails in serotonergic neurons,
histaminergic neurons, and astrocytes198,150,149.The ability of monoamine oxidases to metabolize neurotransmitters suggests their role in theetiology of human behavioral traits and neuropsychiatric disorders. It was found that MAOA
inhibitors are effective to treat mental depression99 and anxiety disorders35, while MAOB
inhibitors delay progression of Alzheimer’s175 and Parkinson’s diseases164. Furthermore, it hasbeen reported that deficiency of MAOA in humans leads to borderline mental retardation and
increased impulsive behavior in parallel to abnormal metabolism of neurotransmitters14,15,13.
Also, transgenic mice lacking the MAO genes manifest similar behavioral and neurochemical
disturbances as described for humans18,57.Most of the studies investigated the relationship between platelet MAOB enzyme activity levelsand certain phenotypes. Platelets were used for these analyses because they are easier to obtainthan other human tissues. Low levels of platelet MAOB enzyme activity have been associatedwith behavioral traits such as sensation seeking, monotony avoidance,
aggressiveness152,47,1,194,163, suicide109,189,190, alcoholism169,6,167,40,39, as well as psychiatric
conditions like schizophrenia and affective disorder114,204,147,200. On the other hand, increasedlevels of platelet MAOB enzyme activity were found in patients with Parkinson’s and
Alzheimer’s disease2,34,165,8. However, no causal relationships for the associations have been
established so far, and not all the subsequent studies yielded congruent results. Moreover, nocorrelation was found between MAOB enzyme activity in platelets and brain of the same
individuals202,206, indicating a distinct MAOB control in brain and in blood. Later, it has beenhypothesized that platelet MAOB enzyme activity serves as a genetic marker for the functionalcapacity of some central neurotransmitter system, most likely serotonergic, that is actually
underlying differences in certain human behaviors or mental states125.The monoamine oxidase enzyme activity levels in peripheral tissues have been extensivelystudied. The stable activity levels of the isoenzymes among control individuals vary substantially
reaching over 30-fold differences for the platelet MAOB enzyme activity115 and up to 100-fold
differences for the MAOA enzyme activity measured in skin fibroblast20. Several studies haveindicated that the variation of the enzyme activities is substantially determined by genetic
components121,11,141,132.
The identification of the MAOA and MAOB genes23,159 opened the possibility to explore thephenotypic effects caused by genetic variation of these genes among humans.
Genetic studies
The MAO genes and identified polymorphisms
The MAOA and MAOB genes reside adjacent to each other on the X chromosome (Xp11.23-
11.4) in a tale-to-tale orientation, and are separated by 50 kb of non-coding DNA134,76,91,23. At
the amino acid level, the human MAO enzymes share 70% identity4. They are postulated to have
originated from a duplication of the ancestral MAO gene more than 500 million years ago55.Both of the genes contain 15 coding exons and exhibit identical structure of exon-intron
organization55.Several DNA polymorphisms in the MAOA and MAOB genes have been described (Table 3 and
4, respectively). In contrast to the MAO repeat polymorphisms that were widely spread andhighly variable among all human populations, most of the identified SNPs were found only inparticular populations. For example, seven out of ten SNPs at the MAOB gene have beenidentified in African-American or/and Native-American populations but were not detected inCaucasians and Asians (Table 4). Only one SNP in the intron 13 (No. 9 in Table 4) was found in
all populations. The polymorphisms at the MAOA exons 4, 9 and 15 described by Tivol et al177
had a frequency of 3 to 4% in the studied geographically undefined population (see Table 3).
This indicates that only a few of the polymorphic sites found up to date at the MAOA and theMAOB genes are informative in the majority of the human populations. Moreover, in spite of theextensive efforts of many studies that screened the coding part of the genes in order to detectfunctional DNA changes, most likely none of the identified exonic polymorphisms have afunctional effect. Only one exonic substitution in the exon 15 of the MAOA gene (Table 3)
results in a neutral amino acid change (lysine to arginine), while the others are silentsubstitutions.
Table 3. Summary of published polymophisms at the MAOA gene.
No. Polymorphism Genomicpositiona
cDNApositionb
Frequency Population Ref.
1 a 30-bp VNTR Exon 1 - 1.2 kbc Highly
variable
Widespread 146
2 a 23-bp VNTR intron 1 Highly
variable
Widespread 60
3 a (CA)n
dinucleotide
repeat
intron 2 Highly
variable
Widespread 7
4 MspI RFLP 5’ non-coding
region
30% not defined 127
5 A to C exon 4: 70 bp 435 4% not defined 177
6 T to G exon 8: 96 bp 941 40%
3%
Caucasians, Asians
Africans
62,17,
5
7 Deletion AACAT Exon 9 - 139bp 40%
3%
Caucasians, Asians
Africans
5
8 A to T exon 9: 71bp 1076 3% not defined 177
9 G to A Exon 10 - 46bp 40%
8%
Caucasians, Asians
Africans
5
10 A to G Exon 12 + 69 bp 60%
70%
Caucasians, Asians
Africans
5
11 C to T exon 14: 36 bp 1460 40%
30%
Caucasians, Asians
Africans
177,5
12 A to G (Lys-Arg) exon 15: 122 bp 1609 3% not defined 177
a The genomic position of a polymorphic locus located in an exon is shown in base pair distance from the first
nucleotide of the given exon. The position of an intronic locus is given in base pair distance from the nearest exon:“-“ indicates the location upstream of the 5’ end from the given exon, while “+” indicates the location downstream
from the given exon.b According to Bach et al. (1988)4
c The distance is approximate
Table 4. Summary of published polymorphisms at the MAOB gene.
No. Polymorphism Genomic positiona Frequency Population Ref.
1 (GT)n repeat Exon3 -264 bp Highly
variable
Widespread 77
2 A to G Exon 5: 18 bp 20% Native-American 161
3 A to G Exon 6 : 130 bp 30% African-American 161
4 C to T Exon 7 -15 bp 30% African-American 161
5 A to G Exon 10: 28 bp 30% African-American 161
6 deletion of 7
consecutive C
Exon 10 +42 bp 30% African-American 161
7 A to G Exon 10 +140 bp <1% Swedish
8 T to C Exon 11 -52 bp 30% African-American 161
9 A to G Exon 14 -36 bp 25%
50%
80%
Asians
Caucasians
Africans
61,5
10 T to C Exon 15 -3 bp 30%
20%
African-American
Native-American
161
11 C to T Exon 15: 51 bp <5% diverse sample 161,1
7
The high degree of conservation of the MAO genes suggests strong functional constrain thathampered accumulation of amino acid changes during evolution. Most probably, if there is aDNA change that affects enzyme activity, it should be located in regulatory or other non-codingregions of the genes. Only one polymorphism has been proposed to have an effect on theexpression of the gene. This has been suggested for the 30 bp VNTR in the MAOA promoter,
that has alleles with 3, 3.5, 4 and 5 copies of the repeats among the general population146. Twoindependent studies conducted promoter fusion and transfection experiments where a coresequence of the MAOA promoter with variable number of the 30 bp repeats was fused to aluciferase reporter gene and transfected into several cell lines, including neuroblastoma cell lines.The experiments indicated that the construct with 3 copies of the repeats had a significantlylower luciferase activity compared to the constructs with 4 copies. These findings suggested a
regulatory role of the VNTR locus on the transcriptional activity of the MAOA promoter161,36.However, the functional effect of the VNTR locus should be assessed in human brain.
a The genomic position is indicated in the same manner as in the Table 3.
Allelic association studies of the monoamine oxidase genes
Association to enzyme activity and/or mRNA levels
One way of looking for a presence of a functional variant that alters expression of the encodedprotein, is to analyze the correlation between different alleles of the gene and different proteinlevels in a large number of samples. Figures 12 and 13 summarize this type of studies conductedfor the MAOA and MAOB genes, respectively. For example, the MAOA activity levels in skinfibroblasts were found to correlate with specific alleles of the MspI, exon 8 and exon 14
polymorphisms at the MAOA gene62. A specific haplotype formed by alleles “MspI-“, “T”, and“C”, was clearly over-represented among samples with low MAOA enzyme activity, whilesamples with high MAOA enzyme activity displayed a mixture of several haplotypes. Also, 3copies of the repeat at the VNTR locus in the promoter region was associated with lower MAOA
activity compared to 4 copies of the repeat in skin fibroblasts of 11 individuals37. This is inagreement with previous data from gene fusion and transfection experiments mentioned above.However, only one study has attempted to investigate the effect of the VNTR on the MAOAactivity in the central nervous system (CNS). In this study, the concentration of monoaminemetabolites in cerebrospinal fluid (CSF) was measured. CSF metabolite levels should reflect the
monoamine turnover in the brain69. They found that females (N=37) with at least one copy of theallele with 4 repeats displayed a higher metabolite concentration level. In contrast, a non-significant opposite tendency was detected in males (N=51). The authors suggested a possiblesexual dimorphism in the regulation of the MAOA in brain. They also cautioned for spuriousfindings due to the weak statistical power of the studied sample. For the MAOB gene (Figure13), association analysis between alleles at the (GT)n polymorphism in intron 2 and MAOB
activity measured in platelets of 41 males yielded negative results54. In contrast, another studyreported significant but weak differences in the platelet MAOB activity, associated to different
alleles of the polymorphism at the MAOB intron 13, in a sample of 55 males52. No attempts to
identify the presence of the MAOB functional polymorphism in brain were reported.
Association to behavioral and neuropsychiatric human phenotypes
Identification of the DNA variants boosted studies attempting to investigate the associationbetween DNA polymorphisms in MAO genes and candidate human phenotypes. The MAOAgene gained more popularity among these types of studies due to several reasons. MAOAdeficiency leads to more prominent behavioral and neurochemical alterations compared to the
lack of MAOB, both in humans and in transgenic mice90. Also, a more consistent support for the
presence of a functional DNA variant, which influences enzyme activity, was presented for the
MAOA gene62,37. And most importantly, some evidence suggests a functional role for the
VNTR polymorphisms at the MAOA promoter146,36,37. The MAOA gene has been studied for
its association with phenotypes such as alcoholism, mood disorders, panic attacks, andobsessive-compulsive disorders (Figure 12). The majority of the studies investigating the MAOBgene focused on the relationship of the gene to Parkison’s disease (Figure 13). As seen in thefigures, conflicting association findings were reported for almost all of the phenotypes studied.For example, several different studies suggested a link between (CA)n polymorphism at theMAOA gene and alcoholism (Figure 13). However, the longer alleles were associated with
alcoholism in a sample of Euro-American and Afro-American males187, but only a single
specific allele was linked to alcoholism in another cohort of Euro-Americans129 as well as in
Chinese64. Moreover, an investigation of the MAOA gene exon 14 variants among alcoholic
subjects living in Taiwan led to contradictory findings in different sub-populations studied64.
Figure 12. Summary of allelic association studies investigating the MAOA gene. Only phenotypes that havebeen reported to be influenced by the MAOA gene variants are shown. The arrows indicate positive findings to the
analyzed phenotype, while the crossed arrows indicate lack of association. The numbers indicate the polymorphism
that yielded the results, and they correspond to the numbers listed in the Table 3. Different symbols representdifferent type of DNA markers: “���“ indicates a VNTR, “��“ denotes dinucleotide polymorphism, “�“
represents single nucleotide polymorphism.
MAOAgene
Bipolardisorder
Obsessive-compulsive
disorder 1
Alcoholism
Panic disorder
2
13
63
Parkinson’sdisease 3
MAOA activity
In fi
brob
last In brain
Monoamine Metabolites
in CSF11
46
11
Aggression
11
6
11
1143
3 11
114
31
1
36
11
1
Figure 13. Summary of allelic association studies investigating the MAOB gene. Only phenotypes that have
been reported to be influenced by the MAOB gene variants are shown. The arrows indicate positive findings to theanalyzed phenotype, while the crossed arrows indicate lack of association. The numbers indicate the polymorphism
that yielded the results, and they correspond to the numbers listed in the Table 4. Different symbols representdifferent type of DNA markers: “��“ denotes dinucleotide polymorphism, “�“ represents single nucleotide
polymorphism.
Studies that investigated the relationship between the MAOA genetic variation and mooddisorders (bipolar and unipolar) have also provided conflicting observations. Most of the positive
association were observed for the (CA)n polymorphism in the MAOA94,73,145,51,95,136.
However, there were opposite reports as well33,123,113,130,179. A meta-analysis performed on acombined sample of Caucasian and Japanese populations discovered significant differences in
the (CA)n allele distribution among bipolar cases compared to controls51. However, the twopopulations showed different alleles associated with a higher risk of the disease.
The association of the VNTR polymorphism and panic disorder was proposed in one study36 but
not detected in another58. Similar discrepancies emerged between different studies investigating
MAOBgene
Parkinson’sdisease
9
1Alcoholism
1
MAOB activity
1
1
9
1
9
1
9
allelic association of polymorphisms at the MAOA gene with aggression186,103 and Parkinson’s
disease82,63,119,135,30.Studies that analyzed the relationship between polymorphisms at the MAOB locus and
Parkinson’s disease have also reported antagonistic findings. Allelic association of susceptibilityto Parkinson disease with "A" allele at the polymorphic site in intron 13 of the MAOB gene was
suggested in a study performed among Caucasians82. However, it was not replicated in a
Japanese population nor in an Australian cohort110,107, and more surprisingly, the "G" allele was
related to Parkinson’s disease in another sample of Caucasians61,29. Another marker in theMAOB gene, the (GT)n microsatellite in the MAOB intron 2, also resulted in opposite findingsconcerning the association to the susceptibility to Parkinson disease in different populations
studied119,118,107,108. Similar controversies were reported for association of the MAOB
polymorphisms and alcoholism129,166.A major statistical weakness for the association studies is that most of them do not adjust thesignificance threshold for the number of statistical tests performed (Bonferroni correction). Mostlikely, after correction for multiple testing, many of the reported association results would not besignificant. Moreover, the low statistical power in some of them may be due to small samplesize.On the other hand, the contradictory association findings are not so surprising, if they are viewedin the context of the differences in genetic composition of different populations, the age of thepolymorphisms and their frequencies in different populations. These are the factors determiningthe success for allelic association studies as discussed earlier.Dinucleotide repeat polymorphisms have been used in many association studies (Figure 12 and
13), but as it was discussed in a previous section, this type of markers may be unfit to discoveran unknown functional variant because of their high mutation rate. Reports where association isfound to only a few markers out of several linked markers tested are also anticipated, given thedifferent ages of the polymorphims tested and the different physical distances in relationship tothe unknown functional variant. Moreover, studies reporting association of the same phenotypeto different alleles at a certain polymorphism are also possible (e.g. Parkinson’s disease andintron 13 polymorphisms in MAOB gene) given that the polymorphism used is not functional,and that the tested samples come from different populations that are likely to have distinctpattern of linkage disequilibrium.
Aims
Part I. Hearing disabilities
� To genetically map gene(s) causing hereditary hearing loss in two large Swedish pedigrees.
� To perform a mutation screening of candidate genes for hearing disabilities that map withinthe identified genomic location(s) for hearing loss in the Swedish families.
Part II. Monoamine oxidase activity
� To identify a set of DNA polymorphisms in the genes for Monoamine Oxidases that arefrequent in the Swedish population.
� To investigate the association between the characterized DNA polymorphisms and MAOmRNA levels and /or protein activity in human brain.
Present investigations
Part I. Hearing disabilities
Family I. Results
A Swedish family I (Figure 14) with non-syndromic progressive bilateral sensorineural hearing
loss was ascertained. We observed that affected family members differed in the severity ofhearing impairment and age of onset for the disease. One group of individuals manifested asevere hearing loss with onset in the first decade of life (Type I), while another group ofindividuals expressed a mild hearing decrease with the onset in the second or third decades oflife (Type II). Meticulous description of the hearing loss in the family I was presented
elsewhere9.
Figure 14. A Swedish pedigree I with non-syndromic hearing loss.
?
?
UnavailableModerate to severe hearingloss with high frequenciesmost impaired
Mild hearing loss atfrequencies 4-6 kHzUnaffected
1 2
1 1098765432 131211 14 15 16 17
6 7 8 9 10 11 12 13 141 2 3 4 5
?Abnormalaudiogram
I
II
III
Paper I prensents the results of a linkage study, where 13 candidate loci for autosomal dominantnon-syndromic hearing loss (NSHL) have been tested for linkage to hearing loss in the family.Surprisingly, we found significant linkage (Z>3) for markers at candidate locus DFNA12(11q22-q24) and suggestive linkage (Z>2) for markers at locus DFNA2 (1p32). These results
suggested digenic inheritance of hearing loss in the family. For the chromosome 11 locus, wenarrowed down the reported candidate region for the DFNA12 locus from 36 to 12 cM. Thedisease-associated haplotype on chromosome 1 spanned over 6 cM region and overlapped withthe candidate region delimited in some other families with hearing loss mapped to DFNA2.Moreover, we observed that individuals with severe hearing loss inherited both disease-associated haplotypes, on chromosome 1 and chromosome 11, while mildly affected individualspossessed only one of the haplotypes. This finding suggests that two genes segregate togetherwith the hearing impairment in the family and the presence of both of them results in aggravatedhearing loss compared to the hearing loss caused by each of the genes separately.
DFNA12 locus
Paper II describes the results of a mutation screening in a candidate gene residing at one of thecandidate regions (DFNA12), reported for the Swedish family in the Paper I.The human α-tectorin (TECTA) gene was cloned and mapped within the DFNA12 candidate
region at the same time as we were conducting our investigations66,188. α -Tectorin gene is
expressed only in the inner ear138. It encodes a noncollagenous protein of extracellular matrixcalled tectorial membrane that participates in the mechano-transduction of a sound (Figure 11).TECTA protein is very conserved among different species. Moreover, different domains of theprotein show strong homology to other known proteins: entactin G1, zonadhesin protein or D-
type repeats of the von Willebrand factor and zona pellucida protein (Figure15)143,87.During our investigations, several missense mutations were reported by others to segregate with
deafness in some families188. We performed a mutation analysis of the TECTA gene in theSwedish family I and identified four amino acid changes (Figure 15). One of the changesresulted in a cysteine to serine (C1057S) replacement, in the zonadhesin domain of TECTA,which segregated with the disease haplotype on chromosome 11 and was not present in a controlpopulation. This results in the replacement of a cysteine that is conserved between the mouse andthe human proteins. Moreover, the replaced Cys was also conserved among four internal repeatsof the zonadhesin/von Willebrand factor domain of the TECTA protein. Based on findings from
functional biochemical studies of von Willebrand factor88,106,191, we hypothesize that thereplacement of the Cys in TECTA can cause a change in the cross-linking of the protein. The
Figure 15. Schematic structure of α-Tectorin protein. α-Tectorin protein consists of several domains that are
homologous to other known proteins. Locations of the reported amino acid are shown. The bold arrowheads indicate
substitutions that are associated to a hearing loss in the different families tested188,3,116, while the thin arrowheadsindicate possibly neutral amino acid changes.
identification of the mutation in the Swedish family provides additional evidence for theinvolvement of TECTA in hearing disabilities.
DFNA2 locus
Two genes, KCNQ4 and GJB3, have been cloned and shown to be responsible for hearing loss insome of the families linked to the DFNA2 locus. KCNQ4 is a member of the potassium channel
gene family81 and GJB3 is a gap junction protein ß-3 (connexin 31)205. A mutation in KCNQ4
was found in a family with autosomal dominant hearing loss. It was shown that the mutation
abolished the potassium currents and exerted a strong dominant-negative effect81. Later, more
ENT ZPPartial entactin G1 domain Zona pellucida domain
Von Willebrand factor D repeats/Zonadhesin like domains
Hydrophobicregion
Ser/pro/thre rich domain
ENT 0 1 2 3 4 ZPG
ly37
1Arg
Ala
932V
al
Cys
1057
Ser
Ser2
100T
hr
Cys
1619
Ser
972
ST
OP
Tyr
1870
Cys
Leu
1820
Phe
Gly
1824
Asp
Swedish family
Other families
families with mutations in the KCNQ4 were reported32,170,184. Similarly, several families with
hearing loss have been found to harbor different mutations in the GJB3 gene205,98.To find out whether GJB3 and/or KCNQ4 are responsible for hearing loss in the Swedish
pedigree, the coding regions of the genes were sequenced in two members (severely affected andhealthy) of the family (for KCNQ4: Kubisch et al., unpublished data; for GJB3: Balciuniene etal., unpublished data). However, we did not find any mutations in the coding sequences of thegenes. Moreover, the KCNQ4 gene was later localized outside the region of linkage onchromosome 1. Genes for two additional gap junction proteins, GJB4 and GJB5, were found tobe located in a vicinity of the GJB3 gene. However, sequence analysis of the coding regions forthese two genes did not reveal any mutation in the Swedish family. The possibility remains thatadditional gene(s) involved in hearing disabilities are clustered in this region.
Figure 16. A Swedish pedigree II with non-syndromic hearing loss.
?
?
?
?
?
?
?
?
?
? Abnormal audiograms
Severe to profound hearingloss with higherfrequencies most affected
Severe hearing loss starting atfrequencies >2000Hz
Mild to severe hearingloss with higherfrequencies most affected
1 2
1 2 3 4 5 6 7 8 9
1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20 21 2322
19181514 161312
3332313029282726252423222119181716151413121110987654321 34
176 7 8 9 10 111 2 3 4 5
V
I
III
II
IV
?
?
? ?
Unaffected
Suspected environmental damage
Dimmedsymbols Unavailable
** * *
*
Family II. Results
In parallel to the analysis of the family I, we have investigated another Swedish family (familyII, Figure 16) with sensorineural bilateral post-lingual hearing loss. Phenotypic examinationrevealed three different types of hearing loss segregating among the affected family members: asevere hearing loss over all frequencies (Figure 16, black filled symbols), a severe loss atfrequencies higher than 2 kHz (Figure 16, black filled symbols with white dots), a mild to severehearing loss most pronounced at higher frequencies (Figure 16, white filled symbols with blackdots). The onset of the disease was around 10 years of age.We have also performed a linkage analysis for DNA markers residing at thirteen candidate
regions for autosomal dominant hearing impairment reported by then. However, none of thegenotyped markers showed linkage to the hearing loss in this family.
Discussion: three puzzles
I. Phenotypic variation
As it was mentioned earlier, hearing impairment is a very variable phenotype among differenthuman pedigrees. Moreover, a considerable phenotypic variation inside families can also beobserved, particularly for post-lingual hearing loss. The two Swedish families presented in this
work are good examples of such intra-familial variability. In addition, an Indonesian family wasalso reported where some of the affected members displayed a severe hearing loss at allfrequencies, some of them manifested hearing loss only for high frequencies, while some of the
persons had hearing threshold decrease only for certain frequencies31. A similar pattern of
phenotypic variation was observed in a French family21.What factors can contribute to this phenotypic variation?Various environmental factors, such as ototoxic drugs, exposure to high noise and variousinfections play a significant role in shaping individual hearing capabilities. On the other hand,the phenotypic variation may have a genetic reason. The same gene may respond differently to a
different genetic background, or there may be an additional major genetic factor that interactswith the causative gene. As we have shown, the Swedish family I probably exemplifies a casewhere additive interaction of mutations in two genes produces the severe form of hearing loss.The presence of more than one defective gene contributing to the phenotypic variation in thesame family would not be surprising, taking into account a large number of genes expected to beinvolved in hearing process, and a high prevalence of the disorder among humans. Also,assortative mating among deaf individuals in earlier generations leads to an enrichment ofdefective genes in later generations.
A different gene interaction hypothesis has been proposed in a consanguineous Pakistanianfamily with recessive deafness linked to 4q28. There were 15 individuals coming from differentbranches of the pedigree that were homozygous for the disease haplotype. However, seven ofthem did not manifest hearing impairment. Later it was found that these non-penetrantindividuals shared a haplotype on 1q23 and it was hypothesized that this region contains a
modifier gene that suppresses the hearing loss phenotype140.Nevertheless, identification of the gene aggravating hearing loss in the Swedish family, and thegene suppressing the deafness in the Pakistanian family, will help to resolve the puzzle of thephenotypic variation in these families and encourage similar kind of detailed studies in others.
II. α-Tectorin
Identification of the Cysteine to Serine mutation in TECTA, that segregated with hearing loss inthe Swedish family, but not in a control population, provides good support for the association ofthis gene to the disease. However, the proof that the mutation is causing the disease can beachieved only if the functional effect of the mutation is demonstrated. α-Tectorin is a very
conserved protein among different species. It has been estimated that human and mouse α-
Tectorin share 95% identity at the amino acid sequence level188. This suggests that the gene hasa very conserved evolutionary function and similar changes may produce similar phenotypicconsequences among different species. Moreover, all mutations identified in several humanpedigrees result in a change of a conserved amino acid between mouse and human TECTAproteins. Therefore, a transgenic mouse with a specific human mutation in the TECTA gene orwith the entire mutant human gene would be a very promising model to unravel the functionaleffect of the TECTA mutations. It can also provide clues about why different TECTA mutations
result in different hearing loss phenotypes among humans188,116.
III. DFNA2
The DFNA2 locus contains two genes: KCNQ4 and GJB3 that have been implicated in hearingimpairment in some families, but none of them is mutated in the Swedish family. This suggeststhat there may be a third gene present. The possibility of the third gene is also supported by thepresence of an Indonesian family with a hearing disability locus that maps to the same candidate
region as the Swedish family and does not harbor a mutation in any of the two genes183. Inaddition, we have sequenced the coding regions of two other gap junction proteins, GJB4 and
GJB5, lying in a vicinity of the GJB3 gene, and failed to detect mutations in these genes. It maybe that the functional DNA mutation resides in the non-coding part of the GJB genes. We havenot investigated the non-coding regions of these genes.
Recently, a draft assembly over the clones sequenced by the Human genome project was
released and is constantly being updated75. The investigation of the genomic sequencessurrounding the DFNA2 region delimited in the Swedish family resulted in several findings. Firstof all, I discovered that the GJB genes lie outside the delimited region. This fact, provided that
the order of the clones is correct, unequivocally excludes them as susceptibility candidates in theSwedish family. Also, the region contains several known genes such as glutamate receptor 7(GRIK3), nucleolar GTPase, axonemal dynein light chain (hP28), and some predicted gene-likesequences. The region has several gaps, not yet sequenced, that may contain additional genes.
Future directions
Family I. The typing of additional individuals belonging to the family I would be extremelyhelpful in clarifying the issue on the possible involvement of two genes in the hearing loss trait.However, no additional members of the family are available to date. Therefore, the alternativeapproach is to identify other genes that reside in the candidate region, and screen them formutations in the family I. However, the implication of the same gene in the Indonesian familyand/or other families would be necessary to substantiate the evidence for a third candidate genefor hearing disabilities in the DFNA2 locus. In parallel, functional studies using animal modelsdefective for both genes: TECTA and the potential DFNA2 gene, may shed light on theinteraction mechanism.
Family II. As we discussed earlier, there is a considerable amount of phenotypic variation amongthe affected members of the family. Also, some individuals married into the family (Figure 16,individuals III:8, IV:10 and III:4) have a decreased hearing sensitivity. This poses the risk thattheir genes could underlie the hearing loss in their children, and therefore, their children mightnot be suitable subjects for linkage analysis. Considering all these limitations, we concluded thatthe currently available family material is not sufficient to obtain significant results in a genome-wide scan. On the other hand, the material may be sufficient to follow-up already reportedcandidate regions, or regions that will be identified in the future.
Part II. Monoamine oxidase activity
The goal was to investigate whether genes encoding MAOA and MAOB have an effect on thevariation of MAO mRNA levels and/or enzyme activities observed in humans. We identifiedDNA polymorphisms in the MAO genes and investigated their association with MAO mRNAand/or enzyme activity levels.
Results
Paper III describes novel DNA variants in the MAOA and MAOB genes. Furthermore, thenewly identified variants provide new information on the evolutionary history of modernhumans.The sequences of exonic and flanking intronic regions of these two genes were determined in agroup of Swedish males. The sequence analysis revealed several novel bi-allelic polymorphismsin the MAO genes. Since both of the genes reside on the X chromosome, and only males werestudied, we were able to define the haplotypic relationship between the identified allelic variants.We investigated the diversity and geographical distribution of haplotypes that contained five
closely located and very frequent MAOA polymorphisms, in a sample of Caucasians, Asians,and Africans. We found only two common haplotypes with similar frequencies in Caucasian andAsian populations. However, only one of the two haplotypes was also the most frequent inAfricans, while the other haplotype was present in only one African male. In general, Africansshowed greater diversity of haplotypes and displayed 5 of 6 possible non-recombinanthaplotypes for these 5 positions. This profound change in haplotype number and frequenciesfrom African to non-African populations supports a possible bottleneck during the dispersion ofmodern humans from Africa.
Paper IV reports a study investigating the involvement of MAO genes in the regulation of MAOmRNA expression levels and enzyme activity in human brain.
Three polymorphic variants were investigated: a VNTR located in the MAOA promoter, and twoneutral single nucleotide polymorphisms located in the exon 8 of the MAOA (A-SNP8) and inthe intron 13 of the MAOB (B-SNP13). mRNA expression levels and enzymatic activities of theMAO were measured in post-mortem human brain samples. We studied whether the presence ofa certain allele, or a certain haplotype, correlated with different mRNA expression levels and/orprotein activities of the MAO found in these brain samples. In addition, we studied the linkbetween MAOB alleles and MAOB protein activity in platelets. We found a significantassociation (p=0.02) between B-SNP13 alleles and MAOB protein activity in human brain butnot in blood. These results suggested a different MAOB control in brain compared to blood.Also, we show that MAOB activity is significantly higher (p=0.006) in the brain of patients withAlzheimer’s disease compared to a control population. Moreover, we provide evidence for a
functional DNA variant that lies on a specific MAOA haplotype, and that is likely to have aninhibitory effect on the MAOA protein activity in human brain.
Discussion: MAO genetic variation
I. Implications for human evolution and linkage disequilibrium studies
We identified five frequent polymorphic loci at the coding and flanking intronic regions of theMAO genes. These variants spanned over a relatively short distance (approximately 12 kb) andwere present in all major human populations tested. Recombination events within short stretchesof DNA are less likely to occur, thus the evolutionary relationship among such DNA sequencescan be determined more reliably than for long DNA sequences reshuffled by recombination. A
distinct distribution of the non-recombinant haplotypes among the three major populations wasobserved. The African population presented several non-recombinant haplotypes, including aputative ancestral haplotype, while Asians and Caucasians displayed only two types ofhaplotypes. This haplotype distribution pattern supports earlier suggestions that the oldest human
population originated in Africa (for a review, see ref70). In addition, we observed that thefrequency of the two non-recombinant haplotypes found in Asians and Caucasians was similarbetween these two populations, while it differed dramatically in Africans. This implies thatAsian and Caucasian populations originated from the same ancestor, and probably suffered apopulation bottleneck soon after the split from the ancestral African population. However, ourdata do not allow to distinguish between the types of bottleneck that could have occurred. Two
possible types are demographic or selective27. Demographic bottlenecks, such as epidemics,famines, migration etc., would leave imprints on many loci of the genome. In contrast, abottleneck caused by selection for the tested loci or closely linked loci would be restricted to asmall genomic region. Some of genetic loci may have undergone both types of bottlenecks, andthis would make the inference about their evolutionary history even more difficult. Thepossibility of demographic events shaping the genetic diversity of the MAOA locus is alsosupported by another study that investigated the DNA variation of a non–coding 10 kb sequence
on Xq13.371. Similar to the MAOA gene, this region is also close to the X chromosomecentromere, but lies on the opposite arm than the MAOA locus. Representatives from all major
linguistic groups were sequenced. The authors also reported a higher genetic diversity inAfricans than in other populations. Moreover, they observed one haplotype that was specific toAsians, and they speculated that this haplotype could be due to some past demographic events.However, their findings can also be explained by the action of natural selection.The description of haplotype variation existing among different populations can also revealimportant information for the proper design of allelic association studies. For example, thedistinct population distribution of the non-recombinant haplotypes observed in the MAOA locusindicates a different linkage disequilibrium pattern among the three populations. Consequently, it
Figure 17. Evolutionary relationship among current non-recombinant African haplotypes for five MAOApolymorphisms. The horizontal bars represent 5 different haplotypes for five variable positions in the MAOA gene(No. 6, 7, 9, 10, and 11, in Table 3). “T”,”G”,”A”,”C” denote nucleotides found in the variable positions, “ins” and
“del” are abbreviations for “insertion” and “deletion” of an AACAT sequence, respectively. The haplotype 1 is theputative ancestral haplotype. The two most frequent haplotypes among Africans are framed in bold. The asterisk “*”
denotes the two main haplotypes found in Asians and Caucasians. A part of the “T,ins,G,A,T” chromosomes carry a
putative functional variant indicated as solid triangle “�”.
suggests that alleles of the same closely located polymorphisms would not yield similarassociation findings in different populations.In Figure 17, the possible evolutionary relationship among identified African non-recombinanthaplotypes is indicated. Let's assume that a hypothetical functional variant occurred on one of thechromosomes carrying haplotype 2. In this case, a case-control study performed on Caucasiansand Asians would show clear allelic association of the functional polymorphism with any of thefive polymorphic loci. However, among Africans, the allelic association would strongly dependon the sample size selected for the study and the variant tested. Moreover, the presence ofrecombinant haplotypes will make the association picture even more blurred.
T ins G C G
G del T A
T ins T A
T ins C G A
*
* T ins T G
Cases
Controls
A
A
A
1
2 3
2
4
5
T ins T G A
The power of association studies may be improved by analyzing haplotypes comprising severalclosely located polymorphic markers. However, the number of DNA variants described for theMAO genes is relatively small, and some of the variants are rare and restricted to a specificpopulation. This suggests that some populations will contain only few and most probablyinfrequent haplotypes for the given polymorphisms. Therefore, a panel of new DNA
polymorphisms, that are common in the studied populations, would be advantageous. Also, largesets of samples should be investigated to increase the chance to detect smaller effects of theMAO in complex human phenotypes.
II. Implications for functional variation
The lack of clear evidence for functional variants influencing MAOA and MAOB activity inhuman brain is the main caveat for allelic association studies attempting to decipher thecontribution of the MAO genes to complex behavioral and neuropsychiatric human traits. We
investigated the functional effect of MAO polymorphims in human brain by examining a set ofpost-mortem male brain samples. We studied the relationship of the variation in MAO genes totwo phenotypes: mRNA levels and enzyme activity. Theoretically, this strategy can provideclues on two questions: are there functional DNA variants that control the MAO gene function?If so, do they act at the transcriptional or post-transcriptional level? DNA variants showingassociation to mRNA expression levels, but not to protein activity, may seem less important forthe variability of candidate human phenotypes. Indeed, proteins are the final determinants for theexpression of most phenotypes. However, it has been reported that different pharmacological,physiological or other non-genetic agents can influence substantially MAO activity in
humans199. For instance, a 20-40% reduction of both MAO activities was reported in the brain of
living smokers compared to non-smokers or ex-smokers10,48,49. This would suggest that MAOactivity measured at a certain time point may not reflect the regulatory effects exerted on thegenes. Consequently, the association between enzymatic activity and DNA polymorphismswould be missed. Similarly, an allelic association to protein activity, but not mRNA expressionlevels, may indicate the presence of a functional DNA variant influencing post-transcriptionalregulation of the genes.The most important finding presented in our study is the association between the neutralpolymorphism in the intron 13 of the MAOB gene and MAOB activity in brain but not in blood.However, the information on smoking habits was not available for the individuals that were thedonors of the brain autopsies. Therefore, we could not correct our association findings for the
effect of smoking. On the other hand, the difference between the MAOB activity levels found inindividuals with different alleles is unlikely to be greatly affected by smoking, unless thesusceptibility to smoking is associated to the tested intron 13 polymorphism.
The positive association between the MAOB polymorphism and MAOB activity in brain, but notin platelets, suggest the presence of a DNA variant that has functional importance in brain. Thisis not unexpected, given a distinct regulation of the MAOB activity in platelets and in brain as it
was proposed earlier202,206,42. Moreover, it stresses the importance to investigate the functional
effect of a given DNA variant in the relevant tissue for the phenotype of interest.A functional effect of the VNTR in the MAOA promoter was clearly demonstrated in cellcultures with transfected reporter constructs. However, our study performed on human brainsamples, together with another study that investigated the link between MAOA polymorphisms
and MAO metabolite levels in CSF could not detect the same effect69. Several explanations arepossible. It may be that the VNTR does not have such a profound effect on MAOA activity inhuman brain and an additional functional variant is present in this gene as we have suggested(Paper IV). An alternative is that the MAOA activity measurements in these two studiesperformed in brain autopsies and in cerebrospinal fluid do not reflect the activity in the livingbrain. Another explanation may be that due to a small sample size, the two studies did not have
enough power to reach statistically significant results for small changes in activity.In any case, for more definitive conclusions about the presence of the functional MAO variationsin human brain, additional investigations performed on larger sample sets and in different humanpopulations are needed. A specific sampling strategy that would decrease the effect of non-genetic factors on MAO variability would be an advantage.
Future directions
The experimental evidence supports the presence of at least one functional polymorphismaffecting MAO activities in brain, but the sequence and position of this variant is not yet known.A large sequencing enterprise can be launched to find DNA differences between individuals withextreme values in the levels of brain MAO activity. Depending on the length of the sequencedfragments, many polymorphic variants will be found. As functional MAO variants are likely tobe located in non-coding regions of the genes, the next difficult task will be to prove thefunctional effect of any of them. In vitro experimental approaches such as DNase footprintingand gel retardation assays can be used to investigate the possibility that the tested polymorphismis located within a protein-binding site. Northern blots would reveal the presence of alternative
transcripts that may be caused by the polymorphism. Gene fusion experiments performed in cellcultures may be useful to investigate the involvement of the given polymorphism intranscriptional regulation of the gene. Transgenic animal models may also complement theevaluation of the phenotypic effect of the candidate functional polymorphism at the wholeorganism level. Finally, allelic association studies between a given polymorphism and alteredprotein expression levels are necessary to evaluate the functional significance of the testedpolymorphism(s) in human tissues.
Acknowledgements
I would like to thank all the past and present members of the Department of Genetics andPathology, Section of Medical Genetics for creating an enjoyable and pleasant atmosphere.Especially, I would like to express my gratitude to:
Professor Ulf Pettersson for opening the gate to Medical Genetics, for your remote but very
supportive and effective supervision, for scientific enthusiasm and inspiration.
Elena Jazin, my latest and closest supervisor, a tough woman with a passion for science andsuccess, for your scientific open-mindedness and inspiration, for your patience, support andunderstanding, for great brainstorming minutes and for the well-timed and very pleasantoutdoors-indoors bowling and hamburger parties.
To all people in the Psychiatric Genetics group:Eva Lindholm for sharing the last never ending meters to the finish, for extremely interestingphilosophical discussions where reality and insanity fuses, for your sincere and analytic
personality and for inventing a new way to change radio channels. Do not analyze this time!..Lina Emilsson for helping me to straighten working relationship with Taqman, for being a veryenergetic and cheerful person and for showing how easy it could be to keep things in order; Anja
Castensson for statistical discussions, growing-up recollections and for verbal enthusiasm to“gympa” passes; Paula Jalonen for teaching me tricks of sequencing and for the help in myprojects.
To other present and past office-mates:Ludmila Elfineh for being a very supportive, warm and caring friend, for frequent talks about thereal life outside the lab and for sharing many moments of happiness and distress;Niklas Nordqvist for relaxed and positive but constructive attitude in all stress-threatening
situations; Hongxing Zhao for teaching me the secret of Chinese kitchen: “it is so simple”;Haitao Yang and Tesfai Emahazion for being helpful and nice persons and for sharing the“radioactive age” of genotyping; Mats Sundvall for sharing his expertise on linkage analysis;Hamid Darban for surviving the room remodeling chaos that I initiated.
My collaborators: Professor Niklas Dahl and Professor Erik Borg for fruitful collaboration onthe hearing loss project, Professor Ann-Christine Syvänen for making the mini-sequencing areality, Professor Lars Oreland for initiating the monoamine oxidase project and Sigrid
Sandberg for the coordination of the collection of "tons" of blood samples.
Martha Alarcón-Riquelme for optimism and enthusiasm in every day life and in science; Bo
Johannesson for fun in anatomizing any scientific problem; Lucia Cavelier for multiple tips onsurviving in foreign countries; Charlotta Olsson, Anette Hagberg, Ludmila Prokunina, Dimitri
Tentler, Anna-Karin Lindqvist, Delal Gemici, Patrik Magnusson, Maritha Mendel-Hartvig, Anh-
Nhi Tran, Dan-Oscar Antson and Kicki Lagerstedt for occasional but pleasant chats.
Elsy Johnsen and Inger Jonasson for keeping the department safe and in order; Britt-Marie
Carlberg for the great parties at your place and for cute “tomtes”; William Schanong forcomputer help; Eddie Lundh, Stig Söderberg, Marcus Lundqvist and Eva Ferngren for all thepractical help; Jeanette Backman, Elisabeth Sandberg and Anette Uselius for arranging the fluentcourse of administrative matters.
The Beijer Foundation for financial support.
All members and associate-members of HUGO’94 group at Clinical Genetics Department in
Umeå University, in particular Kristina Forsman-Semb for introducing me to linkage analysisand for the great time in permanent darkness of Umeå.
Professor Vaidutis Kucinskas, the head of Human Genetics Centre at Vilnius University forintroducing me to the field of human genetics and for creating the opportunity for me to come toSweden. Also, to Ramune Vilkaite, my very first supervisor.
My former and present Lithuanian friends in Uppsala and Stockholm, in particular Arvydas
Kanopka, Jurga Laurencikiene, Evaldas Laurencikas, Egle Miniotiene, Andrius Miniotas andVita Dauksaite for once in a while creating the illusion of being “at home” and for making the“exile” to Sweden more enjoyable.
My parents for the immeasurable love and support and for their devotion to the grandchildrenthat helps them to survive with two scientists as parents...My parents-in-law, especially my mother-in-law for being so helpful when needed.
Finally, to my two treasures – Aiste and Aurimas – for uncovering the secrets of true happiness,and to my husband Darius for love, encouragement and tolerance, for being the perpetuum
mobile in our life.
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