michael pina, salomon garcia journal club presentation biol398-01/s10: bioinformatics laboratory

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Patterns of selection for or against amino acid change among different CD4 T-cell count progressor groups Michael Pina, Salomon Garcia Journal Club Presentation BIOL398-01/S10: Bioinformatics Laboratory March 2, 2010

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Patterns of selection for or against amino acid change among different CD4 T-cell count progressor groups. Michael Pina, Salomon Garcia Journal Club Presentation BIOL398-01/S10: Bioinformatics Laboratory March 2, 2010. Outline. Introduction to the Markham et al. paper - PowerPoint PPT Presentation

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Page 1: Michael Pina, Salomon Garcia Journal Club Presentation BIOL398-01/S10:  Bioinformatics Laboratory

Patterns of selection for or against amino acid change among different CD4 T-cell count progressor groups

Michael Pina, Salomon Garcia

Journal Club PresentationBIOL398-01/S10: Bioinformatics Laboratory

March 2, 2010

Page 2: Michael Pina, Salomon Garcia Journal Club Presentation BIOL398-01/S10:  Bioinformatics Laboratory

Outline

• Introduction to the Markham et al. paper

• Our question about the article

• Methods

• Results

• Conclusion

• Focusing on a newer study

Page 3: Michael Pina, Salomon Garcia Journal Club Presentation BIOL398-01/S10:  Bioinformatics Laboratory

CD4 T-cell count associated with diversity and divergence

• The evolution of the HIV-1 gene was studied in 15 seroconverting participants (intravenous drug users)

• They were selected for differences in the rate of their CD4 T-cell decline

• Rates of diversity and divergence both showed a pattern of increase among the progressor groups

Page 4: Michael Pina, Salomon Garcia Journal Club Presentation BIOL398-01/S10:  Bioinformatics Laboratory

Evolution of the HIV-1 virus in the participants

• Viral evolution among the progressor groups showed a selection for nonsynonymous mutants

• Nonprogressors with low viral loads selected against nonsynonymous mutations

• For the progressor groups, this may have resulted in higher reproduction rates of the virus

Page 5: Michael Pina, Salomon Garcia Journal Club Presentation BIOL398-01/S10:  Bioinformatics Laboratory

HIV-1 variants over the course of the study

• No single variant was dominant across all participants

• Evolution away from a variant was followed by evolution towards a variant

• This may show selection against a predominant strain or the product of independent evolutions within different host environments

Page 6: Michael Pina, Salomon Garcia Journal Club Presentation BIOL398-01/S10:  Bioinformatics Laboratory

The importance of CD4 T-cells

• Differences of CD4 T-cell count reflect not only the quantity of mutations, but differences in the mutations that may be best suited to the host environment

• Higher levels of genetic diversity is most frequently associated with more rapid CD4 T-cell decline

Page 7: Michael Pina, Salomon Garcia Journal Club Presentation BIOL398-01/S10:  Bioinformatics Laboratory

Taking a closer look at the paper

• We wanted to know how the amino acid changes are affecting the interaction between the virus and host environment

• “The overall pattern is one in which viral strains from nonprogressors showed possible selection against amino acid change, while those from progressors showed selection for such change (or against the absence of change).” (Markham et al. 12572)

Page 8: Michael Pina, Salomon Garcia Journal Club Presentation BIOL398-01/S10:  Bioinformatics Laboratory

Our question regarding the paper

• What can the dS-dN value tell us about the selection for/against amino acid change?

• Our hypothesis is that subject 10 will show more nonsynonymous changes and subject 13 will show more synonymous changes.

Page 9: Michael Pina, Salomon Garcia Journal Club Presentation BIOL398-01/S10:  Bioinformatics Laboratory

Methods to find an answer

• Subjects 10 and 13 were chosen because of their quintessential qualities as “rapid progressor” and “nonprogressor”, respectively– They have nearly the same amount of data points

collected over a similar time span

• All of their DNA sequences were obtained from the Bedrock website, in addition to other data from the study

• The online Biology Workbench tools were used for a variety of tasks

Page 10: Michael Pina, Salomon Garcia Journal Club Presentation BIOL398-01/S10:  Bioinformatics Laboratory

CD4 T cell trajectory, diversity, and divergence over time since first seropositive visit (t = 0) in each of the

15 subjects

Page 11: Michael Pina, Salomon Garcia Journal Club Presentation BIOL398-01/S10:  Bioinformatics Laboratory

Statistical calculations

Subject # clones S Theta Min Diff Max Diff

10 49 74 16.3 1.14 20.0

13 26 24 6.43 1.14 9.12

Page 12: Michael Pina, Salomon Garcia Journal Club Presentation BIOL398-01/S10:  Bioinformatics Laboratory

Using the Biology Workbench

• CLUSTALW was used for multiple sequences alignments for all available sequences of subjects 10 and 13– Phylogenetic trees were also generated

• CLUSALDIST was used to generate a distance matrix

Page 13: Michael Pina, Salomon Garcia Journal Club Presentation BIOL398-01/S10:  Bioinformatics Laboratory

Phylogenetic trees for subject 10 and 13

Subject 10 Subject 13

Page 14: Michael Pina, Salomon Garcia Journal Club Presentation BIOL398-01/S10:  Bioinformatics Laboratory

dS-dN values

• Converted to log scale for consistency among data values

• Negative value indicates synonymous mutations

• Positive value indicates nonsynonymous mutations

10 13

.5 - n/a

1 -0.118 -0.861

2 0.530 n/a

3 - -0.333

4 -0.133 1.724

5 -0.447 0.479

6 0.785 -

7 - -

8 n/a -

9 n/a -

10 n/a -

11 n/a -

12 n/a -

13 n/a -

Page 15: Michael Pina, Salomon Garcia Journal Club Presentation BIOL398-01/S10:  Bioinformatics Laboratory

An answer to our question

• It was determined that subjects 10 and 13 do indeed differ in their diversity and divergence as represented visually in their phylogenetic trees and also in our statistical calculations

• The dS-dN values are so similar and limited that it is difficult to say whether or not progressors show a selection for amino acid change

Page 16: Michael Pina, Salomon Garcia Journal Club Presentation BIOL398-01/S10:  Bioinformatics Laboratory

A more recent article

• Functional diversity of HIV-1 envelope proteins expressed by contemporaneous plasma viruses. (Nora et al.)

• Clones carrying unique mutations in V3 often displayed low infectivity

• No correlation was observed between viral infectivity and sensitivity to entry inhibitors (such as CD4)

• Genetic evidence supports the idea that purifying selection against deleterious mutations is occurring in the env region

Page 17: Michael Pina, Salomon Garcia Journal Club Presentation BIOL398-01/S10:  Bioinformatics Laboratory

References

• Markham RB, Wang WC, Weisstein AE, Wang Z, Munoz A, Templeton A, Margolick J, Vlahov D, Quinn T, Farzadegan H, and Yu XF. Patterns of HIV-1 evolution in individuals with differing rates of CD4 T cell decline. Proc Natl Acad Sci U S A 1998 Oct 13; 95(21) 12568-73

• Nora T, Bouchonnet F, Labrosse B, Charpentier C, Mammano F, Clavel F, and Hance AJ. Functional diversity of HIV-1 envelope proteins expressed by contemporaneous plasma viruses. Retrovirology 2008 Feb 29; 5 23. doi:10.1186/1742-4690-5-23

• A special thanks to Dr. Dahlquist for answering our questions along the way!