hcs- screening for toxicity (arch toxicol)
TRANSCRIPT
ORGAN TOXICITY AND MECHANISMS
P. J. O’Brien Æ W. Irwin Æ D. Diaz Æ E. Howard-Cofield
C. M. Krejsa Æ M. R. Slaughter Æ B. Gao
N. Kaludercic Æ A. Angeline Æ P. BernardiP. Brain Æ C. Hougham
High concordance of drug-induced human hepatotoxicity with in vitrocytotoxicity measured in a novel cell-based model using high contentscreening
Received: 30 April 2005 / Accepted: 1 March 2006 / Published online: 6 April 2006� Springer-Verlag 2006
Abstract To develop and validate a practical, in vitro,cell-based model to assess human hepatotoxicity poten-tial of drugs, we used the new technology of high contentscreening (HCS) and a novel combination of criticalmodel features, including (1) use of live, human he-patocytes with drug metabolism capability, (2) preincu-bation of cells for 3 days with drugs at a range ofconcentrations up to at least 30 times the efficaciousconcentration or 100 lM, (3) measurement of multipleparameters that were (4) morphological and biochemical,(5) indicative of prelethal cytotoxic effects, (6) represen-tative of different mechanisms of toxicity, (7) at the singlecell level and (8) amenable to rapid throughput. HCS isbased on automated epifluorescence microscopy andimage analysis of cells in a microtiter plate format. Theassay was applied to HepG2 human hepatocytes culturedin 96-well plates and loaded with four fluorescent dyesfor: calcium (Fluo-4 AM), mitochondrial membranepotential (TMRM), DNA content (Hoechst 33342) todetermine nuclear area and cell number and plasmamembrane permeability (TOTO-3). Assay results werecompared with those from 7 conventional, in vitrocytotoxicity assays that were applied to 611 compoundsand shown to have low sensitivity (<25%), althoughhigh specificity (�90%) for detection of toxic drugs. For243 drugs with varying degrees of toxicity, the HCS,sublethal, cytotoxicity assay had a sensitivity of 93% andspecificity of 98%. Drugs testing positive that did notcause hepatotoxicity produced other serious, human or-
gan toxicities. For 201 positive assay results, 86% drugsaffected cell number, 70% affected nuclear area andmitochondrial membrane potential and 45% affectedmembrane permeability and 41% intracellular calciumconcentration. Cell number was the first parameter af-fected for 56% of these drugs, nuclear area for 34% andmitochondrial membrane potential for 29% and mem-brane permeability for 7% and intracellular calcium for10%. Hormesis occurred for 48% of all drugs with po-sitive response, for 26% of mitochondrial and 34% nu-clear area changes and 12% of cell number changes.Pattern of change was dependent on the class of drug andmechanism of toxicity. The ratio of concentrations for invitro cytotoxicity to maximal efficaciousness in humanswas not different across groups (12±22). Human toxicitypotential was detected with 80% sensitivity and 90%specificity at a concentration of 30· the maximal effica-cious concentration or 100 lM when efficaciousness wasnot considered. We conclude that human hepatotoxicityis highly concordant with in vitro cytotoxicity in thisnovel model and as detected by HCS.
Keywords HCS Æ Hepatotoxicity Æ Human ÆSublethal Æ Multi-parameter
Introduction
Drug-induced liver injury is a major cause of attrition inpreclinical and clinical drug development, and when adrug reaches the market. Hepatotoxicity is the mostfrequent reason cited for labelling drugs with a blackbox warning, and for withdrawal of an approved drug(Fung et al. 2001). Hepatotoxicity accounts for one-third to one-half of cases of acute liver failure (Andradeet al. 2004; Kaplowitz 2001; Lewis 2002; Russo et al.2004), and for 15% of associated liver transplantations.Hepatic reactions occur in less than 1 per 10,000 personsexposed, in individuals using therapeutic doses after a
P. J. O’Brien (&) Æ M. R. Slaughter Æ P. Brain Æ C. HoughamSafety Sciences Europe, Pfizer Global Research and Development,Sandwich Laboratories, Sandwich, EnglandE-mail: [email protected]: +44-1304-651224
W. Irwin Æ D. Diaz Æ E. Howard-Cofield Æ C. M. Krejsa Æ B. GaoCEREP, Seattle, WA, USA
N. Kaludercic Æ A. Angeline Æ P. BernardiUniversity of Padua, Padua, Italy
Arch Toxicol (2006) 80: 580–604DOI 10.1007/s00204-006-0091-3
variable latency period, and are usually considered to beidiosyncratic (Kaplowitz 2005). They typically occur ona background of a higher rate of mild, asymptomaticand transient liver injuries, such as indicated by athreefold increase in serum alanine aminotransferase(ALT) greater than the upper limit of normal.
Human hepatotoxicity has not been predictable be-cause of its low concordance with either standard invitro cytotoxicity screening assay results (O’Brien et al.2003; Xu et al. 2004) or regulatory animal study findings(Olson et al. 1998, 2000). Whereas conventional cyto-toxicity assays frequently have more than 80% speci-ficity, they have less than 25% sensitivity for detection ofhuman hepatotoxicity potential (O’Brien et al. 2003; Xuet al. 2004). Along with hypersensitivity and cutaneousreactions, hepatotoxicity has the poorest correlationwith regulatory animal toxicity tests (Olson et al. 1998,2000). In only approximately half of the new pharma-ceuticals that produced hepatotoxicity in clinical drugdevelopment was there any concordance with animaltoxicity studies (Olson et al. 1998, 2000). This contrastedremarkably with the high correlation between animaland human toxicities affecting the cardiovascular, he-matologic and gastrointestinal systems.
Despite the poor predictivity, there is reasonableunderstanding of the general pathophysiological mech-anism of most drug-induced hepatotoxicities (Boelsterli2003a, b; Jaeschke et al. 2002; Lee 2003; Xu et al. 2004).Also, there are in vitro methods available for detectionof the various pathogenetic mechanisms. The majormechanistic classifications of hepatotoxicity includeinhibition of mitochondrial function, disruption ofintracellular calcium homeostasis, activation of apop-tosis, oxidative stress, inhibition of specific enzymes ortransporters and formations of reactive metabolites thatcause direct toxicity or immunogenicity.
Conventional cytotoxicity assays have had poor sen-sitivity for several reasons (Xu et al. 2004). Firstly, theyhave measured lethal events in late stages of toxicity,despite that serious toxicities may not be lethal bythemselves or that detection of this advanced endpointmay be not be possible with drugs of limited solubility.Secondly, in vitro cytotoxicity frequently takes severaldays to express itself (Slaughter et al 2002; Lewis et al.2003; Xu et al. 2004; Schoonen et al. 2005a, b) and mostcytotoxicity assays do not include preincubation of cellswith drugs for multiple days. Most assays evaluate onlyone endpoint, whereas there are multiple mechanisms oftoxicity that need to be tested for by different methods,including use of morphological and biochemical orfunctional parameters. Measurements need to be madedirectly at the individual cell level to minimize artefactand ensure they reflect cell effects. Cells need to be humanand with capacity to metabolise drugs. Finally, tests needto be conducted at concentrations of drugs that are rel-evant to concentrations having efficacious effects in vivo.
High content screening (HCS) may be an importantpredictive tool for application of the above mechanisticunderstanding to drug discovery for the assessment of
compound potential for human hepatotoxicity (O’Brienet al. 2003; Xu et al. 2004; Abraham et al. 2004; Giuli-ano et al. 2003), and for optimisation and prioritisationof a compound’s safety. HCS is a recent advance in theautomation of quantitative epifluorescence microscopyand image analysis, and in the application of microflu-orescent, multiprobe technology (Abraham et al. 2004;Giuliano et al. 2003; Haskins et al. 2001; Plymale et al.1999). It enables kinetic monitoring in vitro of live cellsin real time for multiple cellular biomarkers of processesthat are critically involved in the pathogenesis of toxic-ity. These include inner mitochondrial membrane po-tential, intracellular free Ca2+ membrane permeability,as well as nuclear number and size (Giuliano et al. 2003;Haskins et al. 2001; Plymale et al. 1999).
This study tested the hypothesis that clinical occur-rence of human hepatotoxicity concorded with in vitrocytotoxicity assessed in a cell-based model with a novelcombination of critical features and using HCS.
Materials and methods
Materials
Chemicals and supplies
HepG2 cells that had undergone 84 passages were ac-quired from the American type cell culture(ATCC;#HB-8065) and stored in liquid nitrogen as alocal cell bank for distribution as needed. Dulbecco’smodified eagle’s medium (DMEM;#21969–035), fetalbovine serum (FBS;#10108–165), L-glutamine (#25030–024) and penicillin–streptomycin mixture (#15140–122)were acquired from Gibco, Invitrogen. Poly-D-lysinehydrobromide (PDL, MW = 30,000–70,000,#P7280)and non-essential amino acids mixture (#M7145) wereacquired from Sigma. All dyes were from molecularprobes. Black-walled, 96-well plates with lids were ob-tained from packard (Packard ViewPlate#6005182). Allother drugs and chemicals were acquired from Sigma-Aldrich unless stated otherwise, and were of the highestpurity possible.
Cell culture
Human hepatocellular carcinoma cells (HepG2) weresubcultured less than ten times after being acquired fromthe local cell bank. Their doubling time was 29±3 h.They were grown according to ATCC instructions(http://www.lgcpromochem.com/atcc/) in flat-bottomedculture flasks (T25), with bottom surface areas of25 cm2. The flasks were manually coated with PDL andthe cells grown in DMEM supplemented with 10% heat-inactivated FBS, 1% penicillin–streptomycin, 2 mMglutamine and 1% non-essential amino acids mixture.Cells were grown in a standard, cell culture incubator at37�C and 5% CO2 with a water reservoir for humidity
581
control. Cell counts were determined by hemocytometryfor addition of cells to 96-well plates.
Drugs and controls
Drugs that have been marketed for use in man wereclassified into four categories according to the severity ofhuman hepatotoxicity they produce. Severe humanhepatotoxicity was ascribed to drugs producing morethan 1% frequency of increased serum ALT plus two ofeither (1) jaundice, (2) more than three reports of liverfailure, or (3) a black box warning. Moderate humanhepatotoxicity was ascribed to drugs producing 0.1–1%frequency of increased serum ALT plus either jaundiceor a label of occurrence of adverse effect. Non-toxic orminimally toxic drugs were defined as those with lessthan 0.1% frequency of increased ALT, and associatedwith no clinical symptoms. The fourth category con-sisted of drugs that were not known to be hepatotoxicbut were known to have other organ toxicities. Addi-tionally, a wide selection of toxic chemicals and chemi-cals known to be non-toxic were tested.
Twelve drugs were selected to represent drugs causingidiosyncratic hepatotoxicity: acetaminophen, diclofenac,felbamate, hydralazine, leflunomide, methyldopa, mino-cycline, nitrofurantoin, rifampicin, sulindac, terbinafineand valproate (Kaplowitz 2005). Eighteen drugs wereselected to represent drugs causing toxicity by virtue oftheir metabolism to reactive metabolites: acetamino-phen, chloramphenicol, danazol, diclofenac, flutamide,ibuprofen, imipramine, indomethacin, isoniazid, hydral-azine, nitrofurantoin, piroxicam, procainamide, sulpha-methoxazole, tacrine, tamoxifen, terbinafine andvalproate (Kalgutkar et al. 2005).
HCS analyser specifications and settings
Plates were analysed by epifluorescence microscopyusing an automated, microplate-reading analyser (Ki-netic-Scan� HCS Reader, KSR; Cellomics, Pittsburgh,PA). The system is equipped with an incubator tomaintain constant temperature, CO2 and humidityduring analysis. The instrument enables fully automatedmonitoring of fluorescence intensity at four wavelengthsas well as image analysis (Compartmental Analysis
Bioapplication) and data viewing (Cellomics vHCSTM:View)
The imaging system of the KSR (Carl Zeiss) wascontrolled entirely via a personal computer (Dell Preci-sion 650 Workstation), with dual (Xenon) 2.0 GHzprocessors, with 4 Gb of random access memory (RAM)and 4 Gb of virtual memory allocation. Of the morethan 600 cellular ratios calculated per field, only 10 wereselected for this study. The KSR computer RAM andvirtual memory were upgraded to 4,000 MB each toimprove performance. Image and database files werespooled to and stored on a remotely located server,which required approximately 2 GB storage space per
96-well plate. To avoid possible conflicts with the Cel-lomics software, no other software was loaded onto thecomputer excepting for computer virus scanning.
Unless stated otherwise, fluorescence was monitoredkinetically for the four dyes for 3 h with a single cell countmade at the end of the assay. The 20· objective was usedto collect images for all four fluorescence channels withan appropriate filter set (XF93). Dyes were excited andtheir fluorescence monitored at excitation and emissionwavelengths of, respectively: (1) 365±25 and515±10 nm for Hoechst 33342 on channel 1, (2) 549±4and 600±12.5 nm for TMRM on channel 2, (3) 475±20and 515±10 nm for fluo-4 on channel 3 and (4) 655±15and 730±25 nm for TOTO-3 on channel 4. The channelsfor TMRM and fluo-4 were set to auto-exposure. Withthis feature, the exposure time is automatically deter-mined based on the cellular fluorescence of negativecontrol wells, and then set constant for the whole plate.The exposure for Hoechst was fixed to 100 ms for con-venience. Exposure for TOTO-3 was set to a fixed expo-sure of 1 s. In the standard assay, each well is monitoredat four fields-of-view per well each hour for 3 h.
The KSR’s incubator was set to 37�C and maintainedat 5% carbon dioxide. Microplate lids were left on theassay plate during kinetic monitoring to prevent evap-oration. A study of evaporation occurring when lidswere not placed on plates indicated losses of 21±4% ofwell volume.
Cell counts were made after monitoring fluorescencesfor 3 h. Ten fields per well were imaged and analysedusing the 10· objective. Fluorescence from an average of41 cells using the 20· objective was measured for each ofthe four microscopic fields-of-view per well. Controlwells had more cells, whereas wells with toxic doses ofdrugs had many fewer cells measured per field,depending on the cytotoxicity of the drug.
Methods
Conventional cytotoxicity assay methods
Seven independent, conventional cytotoxicity methodswere evaluated for their sensitivity and specificity fordetection of human hepatotoxicity. For all, positive testresults were considered to be those that produce at leasta 50% effect in the assay at a concentration of 30 lM.New DNA synthesis was assayed by liquid scintillationdetection of pulse incorporation of 3H-thymidine(Meselson and Stahl 1958). New protein synthesis wasassayed by liquid scintillation of pulse-incorporation of14C-methionine (Colombo et al. 1965). Glutathionedepletion was assayed by fluorometric detection ofmonobromobimane-conjugated, buthionine sulfoxi-mine-inhibitable cytoplasmic thiols (Barhoumi et al.1995). Superoxide secretion was assayed by spectro-photometric detection of cytochrome c reduction (Lo-rico et al. 1986). Caspase-3 activity was assayed byspectrophotometric detection of DEVD-pNA substrate
582
cleavage (Gurtu et al. 1997). Membrane integrity wasassayed by fluorometric detection of ethidium homodi-mer-DNA conjugation in response to membrane dam-age (Levesque et al. 1995). Cell viability was assayed inHepG2 cells for 48 h by fluorometric detection ofreduction of resazurin (Alamar Blue) to resorufin inresponse to mitochondrial activity (Nociari et al. 1998).
HCS, sublethal, cytotoxicity assay method For pre-liminary studies, the HCS assay was conducted imme-diately after addition of drugs to cells. However, inmost cases, the HCS assay was conducted after a per-iod of preincubation of the cells with drug. Usually,this was for 3 days, although the effects of incubationfor 7 days were also determined. For studies in whichthere was no preincubation of drugs and cells, drugeffects were tested only to 100 lM. However, forpreincubation of drugs and cells, the drug effects weretested to at least 100 lM and to a minimum concen-tration of 30 times the maximum total concentration(Cmax) of drugs reported circulating at the therapeuticdose. The effects of protein binding were not consid-ered for determining the maximum concentration fortesting. Protein binding of drugs would be minimal inthe assay, because of the low content of plasma proteinin the culture medium.
Drugs were initially dissolved as concentrated stocksolutions in water or DMSO. When DMSO was used todissolve drugs, it was added to the same final concen-tration of 0.5% (volume/volume) for all wells used fordetermining the drug response.
In a preliminary experiment with 16 toxic drugs theoptimal time for treatment of cells prior to assay wasdetermined. Cells were preincubated with the drug for0, 3 or 7 days. Initial seeding densities of the cells wereadjusted so that there would be sufficient cells foranalysis but not overgrowth of cells: 5,000, 3,000 and1,000 cells per well, respectively. For all other experi-ments, cells were treated for a period of 3 days beforethe assay. For determining drug effects without prein-cubation, the assay was started at drug addition andcells were analysed every 36 min for ten determina-tions; six determinations were used for preincubatedcells. In this preliminary experiment, cells were analy-sed for only one microscopic field-of-view. The firsttime point is not included in the figures since thedilution effect of adding the drug to the cells obscuredany drug effects; thus the first time point illustrated is36 min after drug addition.
Preparation of plates for HCS, sublethal, cytotoxicityassay Depending on the duration of drug exposure,1,000–5,000 cells in 100 ul media were added to eachwell of a 96-well plate (‘‘cell plate’’) and incubated for16–24 h, which ensured attachment of the cells to thebottom of the plate before drug treatment. Prior to drugaddition, 50 ul of media were removed from each well.Drugs were added in 100-ul volumes to each well from a
separate 96-well plate (‘‘drug plate’’). This was preparedwith 1.5-fold the final drug concentration needed in thecell plate. Each row had a different drug whose con-centration halved from serial dilution, from the highestconcentration in column 12 to the lowest in column 2.Wells in column 1 had no drug added.
Incorporation of fluorescent probes for HCS, sublethal,cytotoxicity assay Cells were simultaneously loadedwith 0.8 lM Hoechst 33342, 20 nM TMRM, 1 lM fluo-4 AM and 1 lM TOTO-3. Cells were loaded in mediacontaining 10% FBS for 1 h at 37�C.
Data capture The following data were collected. Nu-clear size was defined as the area of Hoechst 33342 flu-orescence and measured as the mean object size forchannel 1 in the nuclear region. Cellular mitochondrialmembrane potential was defined as the TMRM fluo-rescence intensity in punctate cytosolic regions aroundthe nucleus and was measured as the mean ring spotaverage intensity for channel 2. To assess intracellularfree calcium concentration, Fluo-4 fluorescence intensitywas measured in a large intracellular circular regioncentered at the nucleus as the mean circular averageintensity for channel 3. To assess plasma membranepermeability, TOTO-3 fluorescence intensity in the nu-clear region was measured as the mean circular averageintensity for channel 4. Selected object count was usedfor cell counting.
Quality control For positive controls, three chemicalswith known effects were added in triplicate to each plateto confirm quality of testing for the plate and to deter-mine the maximum responses for TMRM, Fluo-4 andTOTO-3 dyes. The three chemicals used were: themitochondrial uncoupler FCCP (100 lM), the calciumionophore ionomycin (10 lM) and the membrane-per-turbing detergent, Triton X-100 (0.05%). Column 1 ofeach row contained drug solvent but no drug, and wasused as a negative control. Fluorescence values for up to3 of the 11 wells with the same drug were consideredoutliers and excluded if there were more than two cv’s(of the repeated measure of controls–see section onassessment of precision) different from those of bothadjacent wells. Tests in which more than three of thewells had outlying values, or wherever there wereequivocal results, were repeated.
Data reduction and statistical analysis The dose-re-sponse relationship for each parameter was quantifiedwhere possible using the IC50, the concentration causing50% inhibition. For most compounds, the standard doseresponse curve of drug dose was used to model the re-sponse. Data curves were generated using least-squaresfitting routines with IC50 values determined using vari-able-slope, sigmoidal, curve-fitting routines, using a logscale for the drug dose on the horizontal axis and a
583
linear scale for the response on the vertical axis. Thiswas the four-parameter logistic curve versus logarithm.However for 43% of compounds with a positive testresponse, there was hormesis (low dose enhancement). Amodified version of the Brain and Cousens (1989) curvewas used to model this response. The hormesis doseresponse equation used is presented as Eq. (1) below.
y ¼ ðC þ A�DoseÞ
1þ 1þ 2�AC � expðIC50Þ
� �DoseIC50
� �B� �þ Bottom
Both curves were fitted using non-linear regression(which uses least squares) and the compound IC50’sestimated where possible. The precision of the IC50’s wasalso found where possible, and can be presented as thepercentage coefficient of variation. The regressions werecarried out using the statistical packages Genstat andGraphpad Prism.
Assessment of predictivity Sensitivity is the proportionof toxic drugs testing positive, TP/(TP+FN), where TPis the number of toxic compounds testing positive andFN is the number of toxic drugs testing negative.Specificity is the proportion of non-toxic drugs testingnegative, TN/(TN+FP), where TN is the number ofnon-toxic drugs testing negative and FP is the number ofnon-toxic drugs testing positive.
Assessment of assay imprecision Imprecision was studiedin order to distinguish between a drug effect and randomvariation or artefact. Imprecision could occur at fourlevels: the cell, the field of view, the well and the plate.Accordingly, the imprecision in parameter measure-ments was determined: (a) from cell to cell within field-of-view; (b) from field-of-view to field-of-view withinwell; (c) from well to well within plate and (d) from plateto plate. In order to compare the different sources ofimprecision, each type was estimated based on a similarnumber of measures and this estimate was repeated asimilar number of times. For this comparison ofimprecision sources, each parameter measure was madeseven times, except when limited by the number ofmeasures made. This limitation occurred across field-of-view because only four fields-of-view were used per well.The imprecision was defined as the SD divided by themean. Each imprecision estimate was made seven timesand was expressed as the mean ± SD.
KSR parameter variance between control wells onthe same plate and between control wells on differentplates was evaluated after three days. Negative controlwells were used for assessing nuclear area, cell count andTMRM. Positive control wells were used for assessingcalcium after addition of 10 lM ionomycin and forassessing membrane permeability after addition of0.25% Tween 20. Plates used were OP17, OP18, OP19,OP20, OP21, OP22. To determine variance betweenplates, the CV of the well means for each of the six plates
was calculated. Outliers were defined as values morethan three standard deviations away from the mean ofthe others, and were excluded, resulting in some platesnot being used and a smaller n. For every control well,mean, SD and CV were calculated for each plate. Theaverage CV was then used to determine variance be-tween wells.
Definition of positive and negative test responses The re-sult of the HCS sublethal cytotoxicity assay of a com-pound is reported in terms of the (1) degree of positivity,(2) the ratio (TI) of the lowest cytotoxic concentration tothe total, maximal drug concentration (Cmax) in serumthat is associated with efficacy (where this information isavailable) and (3) the concentrations at which clear ef-fects are first observed with each parameter.
Discrimination of a positive test result in the HCSassay was based on several criteria. Firstly, drug-inducedeffects had to be greater than the variance in the measureof the parameter across wells within plate. When achange was two and four times, respectively, the cv fordetermination of that parameter in controls, the testresult was designated positive or strongly positive. Forthose compounds where biphasic changes (hormesis, seebelow) were identified in cell number, nuclear area andmitochondrial potential, the change had to be from thebaseline level of the signal and not from the maximalpoint of increase in the signal. Drugs producing astrongly positive test were considered to be markedlycytotoxicity. Secondly, at least two parameters had toshow this effect. Thirdly, there needed to be clear dem-onstration of a concentration-response relationship forthe parameter. This included occurrence of the effect inat least one successively higher concentration, and ab-sence of the effect in at least one lower concentration.Alternatively, if the effect occurred at the end of theconcentration range, then its occurrence was supportedby an effect in at least one other parameter within oneconcentration point on the dose-response curve. Bi-phasic effects were identified by a clear increase by twocv followed by a clear decrease. Finally, the magnitudeof the effect had to be considered biologically relevant.
When the parameter change was between 1 and 2 cvs,test results were considered to be equivocal and weaklypositive. A negative test result was designated to be aresult where the above were absent, there was not adose-response relationship, and all differences frombaseline and control values were less than one CV, un-less these could be unequivocally attributed to anexperimental artefact affecting the well in question.
Results
Conventional cytotoxicity assays and their predictivity
Table 1 compares the predictivity of various conven-tional cytotoxicity assays (see Materials and methods)
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applied to 611 drugs: 42 drugs causing severe hepato-toxicity, 283 drugs causing moderate hepatoxicity and286 non-hepatotoxic drugs. Table 1 demonstrates thatthese assays have only half the sensitivity that regulatoryanimal tests have. Although the in vitro assays were stillrelatively insensitive at detecting hepatotoxicity, theywere highly specific, so that when drugs tested positive inthese assays there was high probability that the drugproduced human toxicity.
Comparison on the performance of the conventionalcytotoxicity assays with the new multiparametric assay(Table 2) on identical compounds indicated similar re-sults as when the conventional assays were applied to thelarger data set of 611 drugs.
Although none of the conventional assays for cyto-toxicity had adequate concordance with in vivo humantoxicity, there were notable differences between assays.The assay with greatest sensitivity, 19%, for detection ofhuman toxicity potential was glutathione depletion,being twice as sensitive as the next most effective assays,namely DNA synthesis, as assessed by tritiated thymi-dine incorporation, and cell viability, as assessed bymitochondrial redox cycling activity. The caspase-3induction test for apoptosis, protein synthesis, super-oxide induction test for oxidative stress and the mem-brane integrity test were simply ineffective.
Cellular effects in the HCS, sublethal, cytotoxicity assay
When cells were seeded prior to incubation with drugs,3,000 cells were added per well. This corresponds toabout 500 cells in ten fields at the 10· objective used forthe cell count. This number did not change significantlyon the following day when incubation began, indicatingthat the stresses of plating had a cytostatic effect. In thefour Channel Assay using a 20· objective this seedingdensity corresponds to 12 cells per field. This data can beused to assess whether a drug is merely halting cells intheir cell cycle, or actually killing them (i.e. cytostaticversus cytotoxic). Cell counts at Day 0 (i.e. 24 h afterplating) were slightly more than the theoretical amountthat should be counted when they are first plated.
Typical cytotoxic changes are illustrated in Fig. 1.See HCS analyser specifications and settings for detailson settings and procedures for image analysis. Fura-zolidone-induced decreases in cell number, nuclear areaand mitochondrial membrane potential are readily visi-ble, as are the increases in cell calcium and plasmamembrane permeability.
Effects of duration on preincubation of cells with drugson cytotoxicity
HCS assays for drug-induced cytotoxicity conducted on23 toxic drugs and 6 non-toxic drugs at concentrationsup to 100 lM were far more effective when cells werepreincubated with drugs prior to testing. Assays inwhich cells had not been preincubated with the drug,produced positive test results for only 17% of the toxicdrugs (Fig. 2, top). However, cytotoxicity was seen for70% of these toxic drugs after preincubation at up to100 lM for 3 days (Fig. 2, bottom). Toxic effects wereinduced after 3 days preincubation by amodiaquine,cerivastatin, diclofenac, fenfluramine, furazolidone,kanamycin, pamidronate, primaquine, pyrmethamine,rosiglitazone, tacrine and zidovudine. Cytotoxicity wasnot seen, even after 3 days of incubation with up to100 lM, for acetaminophen, cisapride, erythromycin,isoniazide, lamivudine, sulphanilamide and vidaribine.However, in subsequent studies (Table 2) in which thesesix drugs were tested to higher concentrations of up to30-fold the Cmax, cytotoxicity was also detected foracetaminophen, erythromycin and lamivudine. Therewere no effects detected for any of the non-toxic drugstested: flufenamate, flumazenil, glimepiride and zom-epirac. Effects were not found for foscarnet nor primi-done, although in later studies in which thesecompounds were tested to 30-fold Cmax, their toxicitywas revealed.
Preincubation of cells with toxic drugs for 3 daysproduced a fourfold greater frequency of change thanwhen cells were not preincubated with drugs. Toxicity ofthe following drugs was not detectable without prein-cubation with cells for 3 days: amodiaquine, cerivasta-tin, diclofenac, fenfluramine, foscarnet, furazolidone,
Table 1 Predictivity of drug-induced human hepatotoxicity byconventional, in vitro cytotoxicity assays and by regulatory animaltesting in vivo
Sl. no. Predictive test Sensitivity Specificity
1 DNA synthesis 10 922 Protein synthesis 4 973 Glutathione depletion 19 854 Superoxide induction 1 975 Caspase-3 induction 5 956 Membrane integrity 2 997 Cell viability 10 928 Combination of above tests 1, 3, 7 25 839 Regulatory animal toxicity studies 52 –
Sensitivity (percentage of hepatotoxic drugs detected) and speci-ficity (percentage of drugs testing positive that are hepatoxic) aretabulated for seven conventional, cytotoxicity in vitro assays, forthe optimal combination of these assays, and for regulatory, invivo, animal toxicity studies. The in vitro tests were applied to 611drugs, including: (a) 42 drugs causing severe human hepatotoxicity,defined as producing more than 1% frequency of increased serumALT plus at least two of either jaundice, more than three reports ofliver failure or a black box warning; (b) 283 drugs producingmoderate human hepatotoxicity, defined as producing 0.1–1%frequency of increased serum ALT, plus jaundice or a label ofoccurrence of adverse effect and (c) 286 drugs producing negligiblehuman hepatotoxicity, defined as less than 0.1% frequency of in-creased ALT and absence of clinical symptoms. Sensitivity forregulatory animal toxicity studies is based on retrospective exam-ination of outcomes in animal studies for drugs found in clinicalstudies to produce human hepatotoxicity (Olson et al. 2000)
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Table
2Cytotoxic
effects
ofdrugscausinghumantoxicity
Sl.no
Drug
Toxicity
Old
tests
HCS
test
First
signal
Cell
number
Mitochondrial
potential
Ca
Mem
perm
Nuclear
area
Cmax
(lM)
TI
PPB
(%)
Mechanism
Severelyhepatotoxic
drugs
1i,r A
cetaminophen
X,FH,H
I,Ht
�Str
+#
500
›4,000
fl4,000
––
7,800
130
48
OS
2Aminosalycilate
0.005,W
,XJ
�+
#24
›750
fl100
––
–49
0.5
68
IM
3Amitryptilline
<10,H
,C,LD
�+
#13
50
25
50
50
0.3
43
95
4Amiodarone
0.25,BBW,H
+Str
+#
6›2
5fl
100
13
25
25
0.81
799
OP
5Amodiaquine
Wd,FH,H
I+
Str
+C
25
50
13
25
25
0.42
31
95
IM
6Cerivastatin
Wd,I,H
ND
Str
+#,M
0.1
›1.6
fl0.1
›0.8
fl0.2
0.4
1.6
0.03
399
M,Ca,A
p
7CyclosporinA
>3,C,H
t+
Str
+M
25
2›
13
13
13
0.2
10
93
OS
8Danazol
50,W
�Str
+#,N
13
50
›100
fl25
50
13
0.16
81
9Dantrolene
0.012,BBW,H
,X,LD
�Str
+#
25
100
50
50
50
7.9
385
IM
10
i,r D
iclofenac
0.04,W
,H,FH,J
�Str
+#
16
›126
fl250
–126
126
›4.2
499
OP,A
p
11
Didanosine
65,BBW,H
,FH,X
ND
+#
2›
––
––
12
0.2
5M
12
Disulfiram
H,FH,X
+Str
+#
13
25
25
25
25
5.4
250
OS
13
Efavirenz
8,H
tND
Str
+#
50
100
100
100
100
13
499.5
M
14
Etoposide
20,H
,HI,
ND
Str
+#,N
0.5
505
16
40.5
›17
0.03
96
Syn
15
i,r Felbamate
BBW,X
,FH,H
�Str
+M
315
160
›–
–315
42
424
IM
16
Fialuridine
Wd,X
,Ht
ND
Str
+#
2–
–500
125
›1
2M
17
Flutamide
<1,w,H
,C,J,X
,FH
�Str
+#,C,M
,P50
50
50
50
–6
890
M
18
Indomethacin
W,FH,X
,I�
+N
190
47
––
2›
60.3
90
IM,OS
19
Imipramine
<22,H
,LD,C
�Str
+#
0.8
›50
fl100
50
50
50
0.6
1100
IM,M
20
r Isoniazide
20,BBW,X
,FH,H
�+
M–
50
fl–
––
40
10
IM,OS
21
Itraconazole
XND
+M
20.2
–2
30.4
0.5
99.8
IM
22
Ketoconazole
40,BW,X
,H,C
+Str
+N
100
25
›100
fl25
50
13
›50
fl7
299
M
23
Ketorolac
BW,FH,H
,C�
Str
+M,N
,CP
430
›220
›220
220
220
70.25
99
IM
24
Labetalol
W,I,H
,FH,X
,C,H
I�
Str
+N
13›100
fl50
›50
100
60.4
15
50
25
Lamivudine
4,BBW,X
,�
+#
125
––
––
17
736
M
26
Mercaptopurine
40,W,
++
N–
––
–0.2
10.2
19
Syn
27
Methapyrilene
Ht
�+
M–
150
––
–115
1.4
M,O
P
28
Methotrexate
BW,H
t,I,Ci,F
ND
Str
+#,N
0.02
––
–0.02
0.02
1Syn
29
i,r M
ethyldopa
W,I,H
,FH
ND
Str
+All
330
330
330
330
330
11
30
15
30
i Minocycline
W,I,H
,B�
+#
13
25
––
50
›8
276
IM,M
31
Niacin
<5,W
,FH,C
,JND
+#,N
3800
›7500
––
3800
›126
30
32
Nim
esulide
X,H
tND
+#,N
340
680
1370
1370
340
15
23
99
M
33
i Nitrofurantoin
W,X
,H�
Str
+N
12
50
50
50
0.7
›6
0.1
62
IM,OS,M
34
Novobiocin
BBW,I
�Str
+#,P
100
400
400
100
400
1100
IM
35
Phenylbutazone
Wd
�+
#,M
,C6,600
6,600
›13,000
fl6,600
––
438
15
99
36
r Piroxicam
2,W
,H,X
�+
#,N
5160
––
5›
51
99
37
Propythiouracil
<30,W
,H,FH,J
�+
#25
––
––
42
0.6
85
IM
38
Pyrazinamide
W,I,
ND
+#
2400
›4800
›–
––
325
750
49
Stavudine
BBW,H
,FH
ND
Str
+#
250
–500
1,000
–4
63
5M
40
i Sulindac
<1,W
,H,X
�Str
+M
285
140
––
570
›19
894
IM,OS
41
i,r V
alproate
44,BBW,B,X
�Str
+#
1,000
4,000
›–
4,000
8,000
540
293
OS,M
42
Zileuton
W,H
tND
+#
100
––
––
17
694
OS
Sensitivity
20%
100%
Moderately
hepatotoxic
drugs
43
Aspirin
I,H,H
t�
Str
+M,C,N
6,250
1,300
1,300
6,250
1,300
1,650
0.8
30
OS,M
44
Azathioprine
<1,B,H
t�
+#
0.8
––
25
–0.34
230
OS
45
Bupropion
<1,W
,C,H
,LD
�HiTI�
#300
1,200
600
600
600
0.5
600
84
586
Table
2(C
ontd.)
Sl.no
Drug
Toxicity
Old
tests
HCS
test
First
signal
Cell
number
Mitochondrial
potential
Ca
Mem
perm
Nuclear
area
Cmax
(lM)
TI
PPB
(%)
Mechanism
46
Captopril
W,I,H
,B�
+N
––
––
55
›110
fl4
14
30
47
Ceftazidim
eI,C
+Str
+#
12
24
48
48
48
220
0.05
21
48
Chloramphenicol
C,J,H
I�
Str
+#
260
––
––
57
553
OS
49
Chlorpromazine
0.75,
ND
Str
+#
325
13
13
60.5
698.5
IM,M
50
Ciprofibrate
I,H,H
I�
+#
100
––
––
520
M
51
Clofibrate
I,Hm,C
�+
M14,000
7,100
›–
––
470
15
M
52
Colchicine
HI,
ND
+#,N
0.1
––
–0.1
0.016
640
53
Cyclophosphamide
J�
+#,N
2,300
––
–2,300
›143
16
13
54
Diethylcarbamazine
X,H
,HI
�Weak+
#100
––
––
1.3
77
055
Doxorubicin
<1,H
,C+
Str
+#,C,P
0.1
1›2
fl0.1
0.1
0.4
0.2
0.5
76
OS,M
56
Enalapril
W,I,H
,B,C
ND
+N,M
100
1.6
›–
–1.6
0.4
455
M
57
r Erythromycin
W,I,H
,c,J,LD
�+
#1.6
50
›–
––
11
0.15
84
OS
58.
Ethylestrenol
Ht
�+
#6
–100
–100
32
C
69
r Estradiol
W,C,J
+HiTI�
#,N
25
50
––
25
›0.0006
42,000
98
C
60
Famotidine
<1,C,J
�+
M–
3–
–25
0.3
10
17
61
Fenofibrate
0.063,W
,H,C
�Str
+#
250
–1,000
1,000
1,000
25
10
99
M
62
Furazolidone
C,H
I�
Str
+#
625
25
50
100
41.5
M
63
r Furosemide
C,J
�Str
+M
1,100
570
2,300
2,300
2,300
16
35
99
M
64
Fusidic
Acid
B,H
t,C
�+
M–
516
––
–17
30
95
65
Glyburide
I,H,C
�+
M50
2›
–100
50
›0.2
10
99.8
66
i,r H
ydralazine
0.005,H
HI,C,
ND
Str
+#,N
67
135
›270
–75
513.5
87
IM
67
Ibuprofen
<1,H
,J�
+#
50
––
––
250
0.2
99
IM,M
68
Ifosfamide
0.03,B,C
�+
#1,500
––
––
203
80
69
Isotretinoin
0.15,W
,HND
+#,M
100
100
813
70
Ketoprofen
H,C,LD
�Str
+M
47
3–
––
15
0.2
98.7
71
i,r Leflunomide
0.05,W
,B+
+#
25
––
––
340
0.07
99.3
IM
72
Lovastatin
0.019,W
,H,C
ND
+N
1.6
›25
fl3
›100
fl13
60.4
0.01
40
95
M,Ap
73
Mesalamine
I,H,B,FH,C,H
I�
+#
610
––
25
›12
0.5
50
IM
74
Methacycline
H,C
�+
#13
50
––
–5
385
75
Naproxen
<1,FH,H
I,C
ND
HiTI�
M,N
100
50
›–
–50
0.2
250
99
IM
76
Nizatidine
I,H,H
I,C
�+
N–
––
–26
47
35
77
Norfloxacin
1.6,H
�Str
+N
28
7–
–0.5
›8
0.8
18
IM
78
Paclitaxel
0.19,B,H
IND
Str
+#
0.1
–50
50
25
›4.3
0.02
94
79
Paroxetine
I,H,FH,H
I+
Str
+#
0.8
›25
fl13
6.3
13
13
0.2
495
M
80
Pravastatin
0.045,W
,H,B,H
IND
HiTI�
#100
––
––
0.1
1,000
50
Ap
81
r Procainamide
I,H,C
ND
Str
+N
630
630
›630
–320
12
27
18
IM
82
Pyrimethamine
C,J,H
IND
Str
+#
3–
10
10
10
›100
fl3.3
1Syn
83
Quinacrine
H+
Str
+C
23
0.4
33
10.4
90
84
Quinidine
H,H
I,Ht
ND
Str
+C
830
0.5
115
90.06
90
M
85
Quinine
H+
Str
+#,P,C,N
36
70
36
36
36
19
293
86
i Rifampicin
W,I,H
++
N50
–100
100
13
›9
181
87
Rosuvastatin
<0.5,
++
N0.4
›0.4
›1.6
fl3›
50
–0.2
›0.4
fl1.6
›6fl
0.01
20
M,Ca,Ap
88
Sim
vastatin
0.05,W
,HND
+#,M
,N0.2
›50
fl0.2
›0.9
fl3›5
0fl
66
0.2
fl0.9
›3fl
0.02
10
94
M,IM
99
r Sulfamethizole
W,H
�+
M–
1000
––
–222
590
90
r Sulfamethoxazole
W,H
,B,C,J,H
I�
+#
1,100
›–
––
–217
562
IM,M
91
r Sulfaphenazole
ND
+N
100
100
––
50
78
0.6
92
r Tacrine
0.29,W
,H,B,H
t�
Str
+N
25
50
›100
fl50
25
13
›50
fl0.1
130
55
OS,M
93
r Tamoxifen
W,I,H
,B,C,H
I+
Str
+N
100
›25
–25
0.4
›25
fl0.4
198
M
587
Table
2(C
ontd.)
Sl.no
Drug
Toxicity
Old
tests
HCS
test
First
signal
Cell
number
Mitochondrial
potential
Ca
Mem
perm
Nuclear
area
Cmax
(lM)
TI
PPB
(%)
Mechanism
94
i,r Terbinafine
C,J,H
t,LD
ND
Str
+#
36
66
13
40.8
99
95
Terfenadine
I,H,C,J
HiTI�
C6
63
613
0.01
300
CA
96
Tetracycline
I,Ht,C
�+
M,C,P
–560
560
560
–9
62
65
IM
97
Tolazamide
C�
+N
50
––
–2
90
0.02
94
98
Tolbutamide
X,C,J
�+
#30
––
––
590
0.05
96
99
Trifluoperazine
H,C
+HiTI�
C13
25
613
13
0.003
2,000
99
100
Warfarin
I,H,C,J
�+
#,M
,N100
100
––
100
714
99
IM
101
i Zarfirlukast
W,H
tND
+M,N
100
13
–100
13
›1
13
99
102
Zidovudine
BW,H
,HI
�Str
+#
63
–500
––
416
25
M
Sensitivity
24%
88%
Non-toxic
drugs
103
Acetylcysteine
HI
�–
––
––
––
1,900
>1
80
104
Aminobenzoate
�–
––
––
––
50
>30
105
Bambuterol
�–
––
––
––
0.015
>6,700
45
106
Betaine
�–
––
––
––
940
>30
107
Biotin
�–
––
––
––
<1
>100
108
Bisacodyl
�–
M–
100
––
0.15
667
109
Buspirone
1ND
–#,N
100
––
–100
0.01
1,000
95
110
Carbidopa
+–
#520
––
––
2260
36
111
Citicoline
�–
––
––
––
700
>30
112
Cromolyn
I(poss
Alerg)
�–
––
––
––
0.016
>6,600
68
113
Cyanocobalamin
�–
#,M
0.4
0.4
––
0.8
0.001
400
114
Dexamethasone
�–
M,N
100
50
––
50
›0.23
217
77
115
Dim
ethylsulfoxide
ND
–#
35,000
70,000
–70,000
70,000
<1,000
>30
116
Diphenhydramine
�–
#1,300
2,500
2,500
2,500
2,500
0.3
4,200
98.8
117
Flumazenil
+–
P–
––
50
–0.1
500
45
118
Eserine
ND
–M
–6
›–
––
0.22
>450
M
119
Fexofenadine
ND
––
––
––
0.57
>175
120
Folate
ND
––
––
––
–3.4
>30
121
Folinic
acid
ND
––
––
––
–3
>30
122
Glimepiride
H(1
case),C
�–
#,P
100
––
100
–0.73
>137x2
99
123
Isoproterenol
ND
–#
6›1
00
fl–
––
–0.006
1,000
68
124
Isosorbidedinitrate
�–
––
––
––
0.0008
130,000
28
125
Ketotifen
�–
#,P,C
50
100
›50
50
100
0.0001
500,000
126
Moxisylyte
ND
–M
–100
›–
––
1.65
>61
127
Myo-inositol
ND
––
––
––
22
>30
128
Oxyphenonium
ND
–M,N
–100
––
100
0.3
300
129
Pargyline
ND
–#
100
––
––
0.3
333
130
Picotamide
ND
+M
13
2100
100
6›
50
0.04
131
Pinacidil
ND
–#,M
,N100
100
––
100
›0.17
588
40
132
Pioglitazone
�–
––
––
––
2.6
>38
99
M
133
Praziquantel
�–
––
––
––
1.8
>56
80
134
Propranolol
HI
––
C,P,N
50
–25
25
25
0.1
250
87
135
Pyridoxine
ND
––
––
––
–1.1
>91
136
Rosiglitazone
ND
–#
50
100
––
80
0.67
>75x10
100
M
137
Thiamine
ND
––
––
––
–6.8
>30
588
Table
2(C
ontd.)
Sl.no
Drug
Toxicity
Old
tests
HCS
test
First
signal
Cell
number
Mitochondrial
potential
Ca
Mem
perm
Nuclear
area
Cmax
(lM)
TI
PPB
(%)
Mechanism
Specificity
88%
97%
Drugstoxic
toother
organs
138
Astem
izole
CA
+HiTI�
All
66
66
60.01
600
97
IM
139
Bezafibrate
I�
+#
50
––
––
17
395
M
140
Bupivacaine
Myo
ND
+#,C
6–
6–
–0.7
996
OS
141
Caffeine
�+
#1,250
––
2,500
2,500
›42
30
36
142
Capreomycin
I,R,O
ND
Str
+#
150
›300
––
–40
4143
Chloroquine
I,HI
+Str
+#,C
626
›50
fl6
13
13
0.48
13
61
144
Chlorpheniramine
ND
+N
50
50
›100
fl100
–0.4
›6fl
0.2
272
145
Ciglitizone
ND
+M
–3
––
6›
50.6
M
146
Cisapride
I,H,CA
�HiTI-
––
––
––
0.12
>810
98
CA
147
Clioquinol
�+
#,N
64
2,000
500
2,000
64
69
1148
Dipyrone
�+
#,P
1,000
––
1,000
–34.5
29
60
IM,Ag
149
Fenfluramine
�+
#6
25
50
50
50
0.1
60
30
Card
150
Flufenamate
�Str
+M,N
–100
––
100
›46
290
151
Flucytosine
I,HI,LD
ND
Str
+#,P
6–
–6
–780
0.008
RM,Syn
152
Fluvastatin
0.011,W
,Myo
ND
Str
+C
1.6
3›6
fl13
›50
fl0.8
1.6
13
0.45
299
M,Ap
153
Foscarnet
5,R
�+
C,N
4,400
8,700
›17000
fl2,200
8,700
2,200
580
420
R
154
Gentamycin
R,O
ND
+N
185
–185
185
95
›13
728
R
155
Halothane
ND
+N
13
3–
–2
›10
1RM,OS
156
Indoprofen
ND
+#
2,100
––
––
72
30
99
157
Isoxicam
H,D
,GI
ND
False�
––
––
––
20
97.7
IM
158
Kanamycin
HI,R,O
�+
#,M
11
11
––
25
›47
0.2
0Trans
159
Lidocaine
CNS
�+
M1,300
300
2,500
2,500
2,500
36
870
IM
160
Mem
antine
N�
Str
+#
25
50
100
100
–0.2
125
161
Metform
inPan
ND
+M
1,700
220
––
440
116
2162
Metoclopramide
I,Ht
�+
N–
50
––
13
0.4
32
65
163
Menadione
+Str
+#
613
13
13
25
51
OS
164
Mevastatin
ND
+N
30.2
›0.4
fl3›
0.4
13
0.1
›0.2
flAp
165
Mibefradil
Wd
ND
Str
+#
0.4
›6fl
66
50
61.1
0.4
Ca
166
Nialamide
CNS
ND
Str
+N
––
––
100
14
7167
Nicotine
ND
+M
27
0.4
––
100
0.09
55
168
Nocodazole
ND
+#
0.1
–25
25
0.4
0.5
0.2
169
Nomifensine
ND
+#
100
––
––
1.2
83
170
Pamidronate
R�
Str
+#
3›1
00
fl100
100
100
–11
0.3
30
Trans
171
Phenacetin
ND
+#
25
100
––
100
›12
233
R
172
Phenform
inND
+#,M
13
13
––
25
›0.63
21
20
LA
173
Pim
ozide
I+
Str
+#,C,P
613
66
13
0.11
55
99
174
Primaquine
�+
#,
350
25
25
50
0.11
27
175
Primidone
�+
#350
690
––
–23
15
20
176
Propythiouracil
�Str+
M630
313
––
1,300
42
7177
Sodium
chloride,
mM
ND
Str
+N
13
100
50
50
3›
145
NA
0.1
178
Streptomycin
R,O
�+
M1,600
780
––
–52
15
50
179
Streptozocin
ND
?N
––
––
100
›180
Sulfabenzamide
�?
#25
100
––
181
Sulfanilamide
�?
M,P
–100
–100
––
70
IM
182
Telenzipine
�+
M–
1–
–3
›0.02
50
183
Tem
ozolomide
BM
�+
#50
––
––
68
Syn
589
Table
2(C
ontd.)
Sl.no
Drug
Toxicity
Old
tests
HCS
test
First
signal
Cell
number
Mitochondrial
potential
Ca
Mem
perm
Nuclear
area
Cmax
(lM)
TI
PPB
(%)
Mechanism
184
Theophylline
I,H
�+
N–
––
–25
85
0.3
56
185
Topiramate
X,CNS
ND
+#,M
300
300
›20
15
13
186
Vancomycin
ND
+#,M
285
285
›19
15
187
Vidarabine
I,B
�+
N100
50
––
617
0.35
25
M
188
Vincamine
HI,CA
ND
HiTI�
M–
100
›–
––
0.44
230
Hem
189
Zalcitabine
ND
+#
63
––
500
–0.37
170
4M
190
Zomepirac
�False�
-–
––
––
5.6
92
R,IM
191
Zonisamide
ND
+N
––
––
624
0.25
50
Sensitivity
14%
92%
Positive
controls:chem
icals
causingtoxicity
192
Acetamidofluorene
ND
+#,M
100
100
––
–NA
NA
193
Aflatoxin
B1
ND
Str
+#
0.1
0.2
›3.2
3.2
0.2
›NA
NA
OS
194
Alloxan
ND
+M
100
NA
NA
OS
195
Allyalcohol
ND
+N
–3
––
0.4
›NA
NA
196
Benzopyrene
ND
Str
+#
0.1
1.6
›1.6
0.8
1.6
NA
NA
197
BetaineHCl(acidic)
ND
Str
+#
7,100
28,000
––
–NA
NA
198
Bromobenzene
ND
+#
100
––
––
NA
NA
OS
199
p-Bromophenol
ND
+#
630
2,500
1,300
1,300
1,300
NA
NA
200
Buthionine
ND
+M
50
0.2
–50
–NA
NA
OS
201
Butylhydroxytoluene
ND
+#
50
––
––
NA
NA
OS
202
Carbontetrachloride
ND
+N
–50
›–
–0.8
NA
NA
OS
203
Chloroform
ND
+#
100
––
––
NA
NA
OS
204
m-C
resol
ND
+M
–0.8
––
3NA
NA
205
p-C
resol
ND
+M,N
50
0.2
––
0.2
›NA
NA
206
CytochalasinB
ND
Str
+N
20.8
350
0.1
NA
NA
207
CytochalasinD
ND
Str
+#
0.4
100
100
50
6NA
NA
208
Diaminotriazole
ND
Str
+N
3,100
––
–1,560
NA
NA
209
Dichloroethylene
ND
Str
+M,N
–25
›–
–25
NA
NA
210
r Diethylm
aleate
ND
+N
50
25
––
13
NA
NA
OS
211
r Dim
ethylform
amide
ND
+#,N
313
625
3NA
NA
212
Diquat
ND
Str
+#
13
50
50
100
100
NA
NA
OS
213
Ethionine
ND
+N
––
––
3NA
NA
M
214
r Eugenol
ND
+M
–13
›–
––
NA
NA
OS
215
FCCP
ND
Str
+N
25
50
50
50
13
›NA
NA
M,O
S
216
Form
aldehyde
ND
+M,N
–25
›–
–25
NA
NA
217
Galactosamine
ND
Str
+#
780
12,500
13,000
1,600
13,000
NA
NA
Syn
218
Glucosamine
ND
Str
+N
750
––
–5
›NA
NA
219
Hydrochloricacid
ND
Str
+#
10
›–
––
–NA
NA
220
Ionomycin
ND
Str
+M
0.16
0.04
0.08
0.08
0.16
NA
NA
Ca
221
Isopropylphenol
ND
+#,M
100
100
––
–NA
NA
222
Malonic
acid
ND
+#
2,500
––
––
NA
NA
M
223
Methoxyphenol
ND
+N
50
––
–13
NA
NA
224
Monensin
ND
Str
+#
0.1
–0.8
1.6
0.8
NA
NA
M
225
Napthylisothiocyanate
ND
+#,M
,C,P
100
100
100
100
NA
NA
226
Nitrosodim
ethylamine
ND
+M,N
100
6–
–6
›NA
NA
227
Nitroproprionic
acid
ND
+#
600
––
2,500
–NA
NA
228
Pentachlorophenol
ND
+M,N
25
6–
100
6NA
NA
OS
229
Pyrazinamide
ND
Str
+#,M
19,000
19,000
––
–NA
NA
590
Table
2(C
ontd.)
Sl.no
Drug
Toxicity
Old
tests
HCS
test
First
signal
Cell
number
Mitochondrial
potential
Ca
Mem
perm
Nuclear
area
Cmax
(lM)
TI
PPB
(%)
Mechanism
230
Rotenone
ND
Str
+#,P
0.1
0.2
60.1
0.4
50
0.002
M,O
S
231
Ryanodine
ND
False�
-–
––
––
NA
NA
Ca
232
Sodium
hydroxide
ND
+#
5,000
––
––
NA
NA
233
Taurocholic
ND
+N
––
––
25
NA
NA
M
234
Taurodeoych
olic
ND
+N
1,250
2,500
––
310
NA
NA
M
235
Taurolithoch
olic
ND
+N
310
––
–156
NA
NA
M
236
Thioacetamide
ND
+M
100
6–
––
NA
NA
237
Trichloroethylene
ND
+M
100
6–
––
NA
NA
Sensitivity
ND
98%
Negative
controls:chem
icals
non-toxic
tohumans(atconcentrationupto
100
lM)
238
3-A
cetamidophenol
ND
––
––
––
–NA
NA
239
Ascorbate
�–
––
––
––
NA
NA
240
Culture
media
ND
––
––
––
–NA
NA
241
Ethanol
ND
––
––
––
–NA
NA
242
Lactose
ND
––
––
––
–NA
NA
243
Sorbitol
�–
––
––
––
NA
NA
Overall
sensitivity
(drugs)
21%
93%
Overall
specificity
(drugs)
90%
98%
About243drugsandcompoundsare
tabulated(column1)in
differentcategories
ofhumantoxicityandcomparedwithrespectto
howthey
tested
inconventionalcytotoxicityassays(column3),thetoxicitythey
produce
(column2),andhow
they
tested
intheHCS,sublethal,cytotoxicityassay(columns4–10).Drugsandcompoundsare
categorisedaccordingto
theirhumanhepatotoxicityas:
(1)severelyand(2)
moderately
hepatotoxic
drugs,(3)non-toxic
drugs,(4)chem
icalstoxicto
other
organs,(5)toxic
chem
icals,and(6)non-toxic
chem
icals.ResultsfortheHCScytototoxicityassayare
tabulatedfortestoutcome
anddegreeofpositivityin
column4,parameter
affectedatthelowestconcentrationin
column5,andin
columns6–10fortheconcentrationscausingeff
ects
oncellnumber,mitochondrialmem
branepotential,
intracellularionised
calcium
concentration,mem
branepermeabilityandnucleararea,respectively.Themaxim
alplasm
atotalconcentrationofdrugsassociatedwitheffi
cacy
(Cmax)isindicatedin
column11.The
ratiooflowestcytotoxicconcentrationto
Cmaxisindicatedin
column12(TI).Thepercentageofdrugthatisboundto
plasm
aproteinsisalsoindicated(column13),andwhereknownthecellularmechanism
of
cytotoxicity(column14).ThesensitivitiesoftheconventionalassaysandtheHCSassayare
indicatedin
therow
atthebottom
ofthelist
ofdrugsin
each
category
ND
notdetermined,NA
notapplicable,?nottested
to30
·Cmaxandtherefore
diagnosisuncertain.Mechanismsoftoxicityare
designated
asfollows:
Apapoptosis;
Cacalcium
dyshomeostasis,
Card
cardiotoxicity,Hem
hem
atologic,IM
immune-mediated,LA
lactic
acidosis,M
mitochondrial,OPoxidativephosphorylation,OSoxidativestress,SynDNA-synthesis,Transmem
branetransporter
inhibition,
Superscriptiidiosyncratichepatotoxicity,Superscriptrreactivemetabolite,
›signalincreased.Toxicities(column2and14):thenumber
inthiscolumnrefers
tothe%
incidence
ofpatients
withincreasedliver
functiontests,
Agagranulocytosis,
Bhyperbilirubinem
ia,H
hepatitis,
BBW
black
boxwarning,BM
myelotoxic,BW
boxed
warning,CA
cardiacarrhythmia;C
cholestasis,
Cicirrhosis,
Ddermatotoxic,F
fibrosis,FH
fulm
inatinghepatitis,GIgastrointestinaltoxicity,HIHepatocellularinjury
(withnecrosis),Hm
hepatomegaly,Hthepatotoxicity,Iincidence
ofelevatedliver
functiontests(but%
notgiven),J
jaundice,
LD
liver
dysfunction,Myomyotoxic,N
neurotoxic,O
ototoxic,Panpancreatic,
Rrenotoxic,Ststeatosis,W
regulatory
warning,Wdwithdrawn,X
deaths
591
pamidronate, primaquine, pyrimethamine, rosiglitazone,sulphanilamide and tacrine.
Preincubation of cells for 7 days resulted in prepa-rations from which little data could be obtained. Cell
counts obtained were highly variable and substantiallyreduced. This was attributed to the low seeding density,combined with lengthy preincubation time, resulting inthe clonal expansion of small numbers of cells intoirregular clumped colonies for which individual cellscould not be distinguished.
Based on the low frequency of detection of toxicitywithout drug preincubation and on the clumping of cellsgrown for 7 days, a three-day exposure protocol wasselected for standardisation of the assay protocol for thecollection of data reported in Tables 2 and 3 and Fig. 2(bottom), 3 and 4. In Table 2, cytotoxic effects of drugsin conventional and the new multiparametric assay aretabulated.
Time-course of cytotoxic change
Above a threshold drug concentration, cytotoxic effectsprogressively increased with time of incubation duringthe 3.4 h period that the cells were monitored for. Theseeffects occurred more rapidly, and followed a dose-re-sponse pattern. The threshold concentration producingeffect, the magnitude of the effect, the sequence in whichparameters were affected and whether they were in-creased or decreased, varied across drugs.
With the exception of TMRM, cell fluorescenceintensities were constant over time for the negativecontrols and for cells exposed to drugs not producingacute toxicity, or exposed at non-toxic concentrations oftoxic drugs. Fluorescence of TMRM decreased gradu-ally over time, possibly due to its extrusion by thep-glycoprotein transporter, and/or to photobleaching.Toxic effects were considered to occur only when therate of change of fluorescence was unmistakeably greaterthan for the negative controls.
In Fig. 3, the time course of change in fluorescenceparameters is indicated at the critical concentrationwhere each drug produced toxic effects. Effects aredemonstrated for a representative single cell and for apopulation of cells for each drug at the concentrationproducing toxicity. The patterns of change are quitesimilar for single cells and populations of cells, althoughthe former is more precise in determining the sequenceof events. For example, for amiodarone and dantrolene,individual cell data confirmed that calcium was the last
Fig. 1 Photomicrographs of furazolidione-induced changes inprelethal cytotoxicity parameters. Effects of preincubation ofHepG2 cells with 100 lM furazolidone, compared to controls,respectively, on nuclear area (a, b), mitochondrial membranepotential (c, d), calcium (e, f), membrane permeability (g, h) and cellnumber (i, j). Furazolidone produced a marked reduction in cellnumber, nuclear area, and mitochondrial membrane potential, andmarked increases in intracellular calcium and membrane perme-ability. See HCS analyser specifications and settings for details ofinstrument settings and procedures. Circular outlines indicate theareas within cells in which fluorescence intensity is measured. Cellsare viewed with the 20· objective for fluorescence intensityquantitation and the 10· objective for cell counting
b
592
parameter to change, and that mitochondrial membranepotential change substantially preceded membrane per-meability change.
As TMRM is known to be a substrate for the multi-drug resistance (MDR) p-glycoprotein that extrudescations, the drug concentration causing fluorescenceincrease was compared to the concentration at which thedrug inhibits MDR. Maximal TMRM fluorescence in-creases were 100, 200, 0 and 150% by, respectively,amiodarone, paroxetine, dantrolene and astemizole.
Although all four of these drugs inhibit MDR, there wasnot a correlation between the degree of TMRM increaseand potency of inhibition, 34, 16, 22 and 89%, respec-tively.
Antiproliferative effect could only be measured inassays in which cells were exposed to drug for multipledays. For the four drugs that produced effects with andwithout preincubation for multiple days (acetamino-phen, mibefradil, quinine and cerivastatin), the mostconspicuous difference in patterns of parameter change
10
20
30
Nuc
lear
are
a
Amiodarone
0200400600
TM
RM
0255075
100
Flu
o-4
0300
600
900
TO
TO
-3
Paroxetine
0
50
100
150
Cel
l C
ount
0.1
0.4
1.6
6.4 25 10
00 0.1
0.4
1.6
6.4 25 10
00
Dantrolene
0.1
0.4
1.6
6.4 25 10
00
Astemizole
0.1
0.4
1.6
6.4 25 10
00
0.1
0.4
1.6
6.4 25 10
00 0.1
0.4
1.6
6.4 25 10
00 0.1
0.4
1.6
6.4 25 10
00 0.1
0.4
1.6
6.4 25 10
00
Drug Concentration (uM)
10
20
30
Nuc
lear
are
a
Acetaminophen
0
200
400
600
TM
RM
0
200
400
600
Flu
o-4
0
750
1500
2250
TO
TO
-3
Mibefradil
0
50
100
150
Cel
l C
ount
Quinine Cerivastatin
Drug Concentration (uM)
Fig. 2 Cytotoxic effects ofspecific drugs before and after3-day preincubation of cellswith drugs. Combinedconcentration-response andtime-course of changes areshown in cell proliferation,mitochondrial function,intracellular calciumhomeostasis, cell membranepermeability and nuclear areafor drugs producing immediatetoxicity without preincubation(top half; amiodarone,paroxetine, dantrolene,astemizole) and for drugsproducing toxicity after 3-daypreincubation of drugs and cells(bottom half; acetaminophen,mibefradil, quinine,cerivastatin). At eachconcentration indicated, ninemeasurements onapproximately 40 cells in asingle field-of-view were madewith 36 min intervals fornuclear area (Hoechst 33342;top), mitochondrial membranepotential (TMRM; second fromtop), intracellular ionised Ca(Fluo-4; third from top),plasma membrane permeability(TOTO-3; second from bottom)and cell number (bottom). Thewells without drug additionserved as negative controls. Theeffects of FCCP for TMRM,Tween-20 for TOTO-3 andnuclear area and ionomycin forFluo-4 served as positivecontrols. Toxic effects occur atthe concentration producing adownward time-curve forTMRM (greater than thatoccurring for the negativecontrol) or nuclear area or anupward time-curve for Fluo-4or TOTO-3. Data is expressedas mean ± SEM
593
was the effect of cell number (Fig. 3). This was the leastaffected of the measured parameters with acute toxicity.With chronic toxicity, it was the parameter affected atthe lowest toxic concentration of dantrolene and aste-mizole and at intermediate toxic concentrations foramiodarone.
Sequence and direction of drug-induced change (Fig. 3)
The sequence of change in parameters was similar withthe four different drugs that caused toxicity without theneed for preincubation (Fig. 2, top). Nuclear area usu-ally changed early and marginally, then mitochondrialpotential, with or without permeability change, thenpermeability change if it had not already occurred andfinally Ca effects occurred last. Three of the four drugs,excepting dantrolene, had dual and opposing effects onTMRM fluorescence, showing an initial increase fol-lowed by a decrease. This dual biphasic effect was alsonoted for nuclear area for amiodarone and paroxetine(see Hormesis).
For amiodarone, the sequence of change in the dose-response curves (Fig. 2) was TMRM fluorescenceincrease at 0.2–0.8 lM, nuclear shrinkage at 6 lM,
mitochondrial inhibition at 13 lM, plasma membranepermeabilisation at 50 lM, then Ca rise at 100 lM.Potential was decreased by one-third at 13 lM, and bytwo-thirds at 25 lM and higher. However, at lowerconcentrations than this, potential was increased pro-gressively up to 100% at 12 lM. Nuclear area decreasedby 10% at 6 lM, 15% at 13 lM and by 30% at 100 lM.Membrane permeability was increased to about half ofthat of the positive controls at 100 lM. Cell counts werenot adversely affected.
Paroxetine was tested on the same plate as amioda-rone. The sequence of changes were: nuclear shrinkageat 3–6 lM, TMRM fluorescence increase at 6 lM,mitochondrial inhibition at 25–50 lM, permeabilisationat 25–50 lM, Ca rise at 100 lM and cell count decreaseat 50–100 lM. Nuclear area decreased 10% at 3 lM,15% at 6 lM and 30% at 25 lM. TMRM signal in-creased by 20% at 6 lM and by 80% at 25 lM. At50 lM, it rose over time by 200% to its maximum valueand then fell to half of its baseline value; at 100 lM itfell to zero. Membrane permeability started to increaseat 25 lM, reached half-maximal values at 50 lM andmaximal values at 100 lM. Calcium rose a slightamount and only at 100 lM. Cell counts apparentlydecreased mildly at 50 and 100 lM.
Table 3 Sources of imprecision in HCS, sublethal, cytotoxicity assay
Imprecision due to well and plate variation
KSR assay parameter Variation between wellswithin plate
Variation between plates
(% CV) N (% CV) N
Mitochondrial membrane potential 9.36±1.33 7 14.60 5Nuclear area 5.16±1.80 7 6.99 6Calcium 7.25±4.15 3 18.35 4Membrane permeability 9.30±7.02 3 16.64 6Cell count 16.45±4.30 7 16.10 5
Imprecision due to field-of-view and cell variations (data for representative plate OP18)
KSR assay parameter Variation between fields Variation between cells Variation betweenwells
(% CV)±SD N (% CV)±SD N (% CV) N
Mitochondrial membrane potential 8.50±4.04 4 30.23±10.44 7 9.83 7Nuclear area 2.84±1.24 4 17.13±8.14 7 6.03 7Calcium 10.28±0.02 4 41.57±20.17 7 5.67 3Membrane permeability 9.02±3.96 4 35.74±9.47 7 10.65 3Cell count 29.81±9.25 10 N/A N/A 21.47 7
The cell-to-cell, field-to-field, well-to-well and plate-to-plate imprecisions are compared for the parameters measured in the HCS assay.Imprecision due to well and plate variation. For well-to-well variance, a mean, SD, and CV were calculated for every control well for eachassay parameter. An average CV was then used to show the well-to-well variance for that parameter. Plate-to-plate variance was thenestimated using the well-to-well data for each plate. The well-to-well mean for each assay parameter for all six plates was averaged and aCV calculated. This CV value then shows the plate-to-plate variance for each parameter. Imprecision due to field-of-view and cellvariations (data for representative plate OP18): To estimate the field-to-field variance, the average value of each parameter for eachindividual field was calculated for all seven control wells on the plate. This gave a CV for each well, which when averaged gave the field-to-field variance for that plate. For nuclear area, TMRM, calcium and membrane permeability for four fields were used (as this was themaximum number of fields used for the assay), whilst ten fields were used for the cell count analysis. To estimate the cell-to-cell variancethe KSR parameter value for individual cells was recorded. Seven groups of seven cells were randomly chosen (using a random numbergenerator) within the same field of view and within the same well. The mean, SD and CV were then calculated for each group of seven cellsand an average CV value recorded
594
Dantrolene effects were in the sequence: nuclear areadecrease at 6–13 lM, potential decrease at 13 lM andmembrane effects were much less and occurred only at100 lM. There was no clear change in Ca. Cell countswere not adversely affected.
Astemizole effects were in the sequence: TMRM flu-orescence increase at 0.2 lM, nuclear shrinkage at6 lM, permeability increase at 13–25 lM and Ca rise at25 lM. The TMRM signal increased by 50% at 0.2 lM,100% at 1.6 lM and by 150% at 6 lM. However at13 lM it rose over time to this level then fell to baseline.At 25 lM it had decreased 90% from the maximum.Nuclei were apparently, transiently enlarged by 10% at6 lM and shrunk by one-third at 13 and 25 lM.
Membrane permeabilisation began at 13 lM and at25 lM was about one-quarter that of the positive con-trols. Cell counts were not adversely affected.
Hormesis
As occurred without preincubation, some drugs pro-duced dual effects, with increases followed by decreaseson TMRM fluorescence in 26% drugs. This was espe-cially conspicuous for those drugs that were stronginhibitors of the MDR pump (such as cyclosporine Aand quinacrine), where TMRM progressively increasedby approximately 100 and 150%, respectively (from 1.6
Amiodarone 50 uM
0
20
40
60
80
100
120
Hoechst TMRMFluo-4 Toto-3
Paroxetine 100 uM
0
40
80
120
160
Amiodarone 50 uM Cell 28
Paroxetine 100uM Cell 25
Dantrolene100 uM Cell 55
Rel
ativ
e F
luo
resc
ence
Inte
nsi
ty (
arb
itra
ry u
nit
s)
Astemizole 25 uM
0
30
60
90
120
Dantrolene 100 uM
0
20
40
60
80
100
120
Astemizole 25 uM Cell 4
Single Cell Effects:
t1 t2 t3 t4 t5 t6 t7 t8 t9 t1 t2 t3 t4 t5 t6 t7 t8 t9 t10
Time (0- 3 h)
Average Cell EffectsFig. 3 Kinetics of averagedcompared to individual cellularchange for drugs producingacute toxicity. See Fig. 2 fordetails of assay. The patterns ofchange in fluorescences of thedifferent dyes for a populationof cells are similar to that ofindividual cells. However, thesequence of change can be moreprecisely determined at thesingle cell level
595
to 13 lM, and 0.1 to 0.2 lM). Dual effects were alsonoted for cell number for 12% compounds showingpositive responses, and especially for nuclear area, where34% of compounds showing positive response.
Figure 4 (left) demonstrates dual, biphasic responsesfor cell number, nuclear area and mitochondrial mem-brane potential for several drugs. This phenomenon wasseen with 43% drugs and could not be attributed toartefacts of the position of wells within plates.
Hormesis could not be detected for calcium normembrane permeability, likely because measures of
these parameters in healthy cells could only be measuredin one direction.
Sources of imprecision
Cell-to-cell, field-to-field, well-to-well and plate-to-platevariances after 3 days of drug treatment are shown inTable 3. The greatest imprecision was in measurementsbetween cells within field-of-view. Next most variable wasmeasurements between field-of-views, then between
0
125
250
375
500 Amiodoarone
Cel
l Cou
nt
-9 -8 -7 -6 -5 -4 -3 -20
200
400
600
800Ketoconazole
Molar Concentration
TM
RM
Sig
nal
19
22
25
28
31Etoposide
Nuc
lear
Are
a
250
500
750
1000 Cyclosporin A
TM
RM
Sig
nal
16
20
24
28 Diquat
Nuc
lear
Are
a
800
1200
1600
2000 Sulfamethoxazole
Cel
l Cou
nt
-9 -8 -7 -6 -5 -420
40
60
80
100
IC50
= 0.42 uM
SE= 0.16 uM
r2 = 0.92
Cerivastatin (M)
Cel
ls p
er F
ield
0
150
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Fig. 4 Hormesis in dose-response for drug-inducedcytochemical effects. IC50 forcerivastatin-inducedhepatotoxicity. Biphasic dose-response curves occurred clearlyfor cell count, nuclear area andmitochondrial potential.Representative examples areshown. Curve-fitting to thedose-response data forcerivastatin cytotoxicity isshown for each of the fiveparameters assessed, with IC50
indicated as mean and errorestimate
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plates. Measurements between wells within plate wereusually the most precise, varying between wells byapproximately 5% for nuclear area, 10% for mitochon-drial membrane potential, calcium and membrane per-meability and 15% for cell count. Nuclear area was by farthe most precise measurement for all types of variance.Mitochondrial membrane potential was nextmost preciseacross cells, fields-of-view and across plates. Most vari-able of parameters was calcium, especially between cells.
The high variance could be attributed in part to notcollecting data greater than a threshold value that wouldensure only viable cells were assessed (thresholding).Because of the rapid rise and fall in Ca compared to thespeed of analyses, timing of data acquisition once ion-ophore was added was neither precise nor consistent,resulting in counts including dead or dying cells that hadlost fluorescent dye. This could be overcome by ensuringthat positive controls are in wells spread across thewhole of the plate at regular intervals. Because of thetime it takes for the KSR to scan through each well,positive controls are measured approximately 40 minafter addition of ionomycin. Thresholding could also beused for exclusion of dying cells from the cell count.Dead cells are assumed to have lifted off the well surfaceand therefore not counted. Cell count variance is highboth between wells and between plates, due to clumpingof proliferating cells resulting in an uneven distribution.
IC50 Determination
Estimates of IC50 values could be made for those drugsfor which a near complete range of toxic effects could bedetermined in the concentration range studied, up to 30-fold Cmax or 100 lM (Table 4). IC50 values could beobtained for 39 of 82 toxicants (48%). The IC50 washighly correlated with the concentration at which effectswere first seen. For cell number the correlation coeffi-cient was 0.75 (P<0.0001) and the IC50 was 1.27±0.19fold this concentration.
Based on an IC50 analysis, the parameter that wasmost sensitive in detection of cytotoxicity was cell countfor 56% of toxicants. The next most sensitive parameterswere nuclear area and calcium, detecting 33 and 26% oftoxicants, respectively. The least sensitive parameter wasmitochondrial membrane potential. The frequency withwhich a parameter was the most sensitive or second mostsensitive was 73 % each for cell count and nuclear area,48% each for calcium and membrane permeability and28% for mitochondrial membrane potential.
The ranking of the sensitivities of the differentparameters for detection of cytotoxicity was somewhatdifferent when assessed based on determination of IC50
values than when based on the concentration at which aclear effect was detected. Both approaches indicated thatcell number and nuclear area were the most sensitiveparameters. However, mitochondrial membrane poten-tial was ranked as the least sensitive based on IC50 val-ues, whereas membrane permeability was ranked as the
least sensitive based on the parameter to first change.This difference likely reflects the fact that the point offirst clear effect measures low dose enhancement whichapparently delays the point of 50% loss of signal com-pared to baseline.
In Fig. 4 (right), concentration-response curves withIC50 values are shown for each of the five parametersmeasured for cerivastatin. Half-maximal inhibition oc-curred first for cell number at 0.4 lM, then intracellularCa and nuclear area at about 1 lM, then membranepermeability and mitochondrial potential at 2–3 lM.Hormesis is seen to occur for both TMRM and cellnumber resulting in these parameters being affected atdoses of 1 and 0.1 lM, respectively.
Predictivity of the HCS, sublethal, cytotoxicity assay
Comparison of effectiveness of different cytotoxicityparameters
Table 2 demonstrates that cell number was by far theparameter most frequently found to be affected by3 days exposure to toxic drugs and the most sensitiveindicator of cytotoxicity. About 86% of the 201 drugsthat produced a positive test response affected thisparameter, although it was not directly determinedwhether this was from antiproliferative or cell lytic ef-fects. In contrast, only 70% of drugs testing positiveaffected nuclear area and mitochondrial membrane po-tential, and only 45% affected membrane permeabilityand intracellular calcium concentration. Cell numberwas the first parameter affected in 56% of drugs testingpositive, with mitochondrial membrane potential andnuclear area being affected first for 30%, and cell per-meability and calcium affected first for only 10 and 7%,respectively.
Cell permeability was the least sensitive parametersfor detection of cytotoxicity, being the first parameteraffected in only 7% of drugs (Table 1). As for all theparameters, this frequency was independent of theseverity of hepatotoxicity and was the same for toxicitiesaffecting other organs.
The measurement of nuclear size was the most preciseof all parameters. It decreased at toxic concentrations by50% for compounds such as astemizole, chloroquine,chlorpromazine, danazol, disulfiram, furazolidone, ke-toconazol, mibefradil, paroxetine, primaquine, quina-crine, quinidine, quinine, tacrine, tamoxifen andvalproate. It decreased by about 25% for amodiaquine,cyclosporine A, dantrolene, fenfluramine, imipramine,labetalol, methyldopa and novobiocin. However, it in-creased by 20% for niacin, norfloxacin and vidarabine,and by 50% for acetaminophen.
Sensitivity and specificity
The sensitivity for detection of severely hepatotoxic,moderately hepatotoxic and other organ toxic drugs
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was, respectively, 20, 24 and 14% for the conventionalcytotoxicity assays, and 100, 88 and 92% for the mul-tiparameter, HCS cell health assay. Specificity fordetection of organ toxicity was 98% for the 35 non-toxicdrugs and 100% for the 6 different negative controls.Overall sensitivity and specificity were 90 and 98%,respectively, for the multiparametric assay.
Safety margin estimation
The ratio of the cytotoxic concentration in vitro to the invivo concentration associated with efficacy was assumedto provide an indication of the safety margin or thera-peutic index for the drug. This ratio was independent ofwhether toxicity was direct or metabolite-mediated. The
ratio was 12±22 for hepatotoxic compounds testingpositive and 20±34 for compounds toxic to other or-gans.
Variation of assay sensitivity with drug concentration
Assay sensitivity was found to be dependent on theabsolute drug concentration tested and the safety margin(Fig. 5): 30%at 1 lMor aTI of 10 lM; 60%at 30 lMoraTI of 10 lMand 80%at 100 lMor aTI of 30 lM.Plotsof the false positive rate versus the false negative rate, thatis, receiver operating characteristic curves, indicate theoptimal sensitivity that the assay can provide withoutcompromising specificity (Fig. 5). Sensitivity falls offrapidly for specificity greater than about 93%.
Table 4 IC50s for concentration-response curves for drug induced effects on cell proliferation, mitochondrial function, intracellularcalcium homeostasis, cell membrane permeability and nuclear area
Drug Nuclear area Mitochondrial potentialCalcium Membrane permeabilityCell count
Amiodarone 9.8±0.33 19.2±0.42 17.2±0.04 15.8±0.29 25.6±5.2Amodiaquine 20.0±0.25 35.8 13.5 17.6±0.34 24.8Astemizole 2.6±0.49 5.6 4.1 4.1±0.14 10.1±4.9Cerivastatin 1.2±0.16 3.0±0.30 0.9±0.19 2.3±0.11 0.4±0.11Chlorpromazine 12.6 20.7 24.4±3.6 20.8±0.4 6.4±1.0Chloroquine 11.1±0.22 27.2±.02 22.4±0.11 22.9±0.21 16.0±6.3Cyclosporin A 10.1±0.3 >100 35.1 78.8±0.6 14.8±3.8Danazol 58.8±0.1 73.6 43.1±1.7 81.4±0.1 39.2±19.3Dantrolene 52.1±0.4 105.0±0.1 67.1 >100 14.5±31.6Diquat 85.8±6.6 43.2± 5.4 79.2±8.1 75.8±8.2 39.6±11.2Doxorubicin 0.7±0.34 3.1 0.2±0.23 0.4±0.20 0.2±0.03Etoposide >500 534.6 1927±553 772.7±173.3 0.14±0.05Fenfluramine 77.1±10.0 >100 261.8±25.6 195.8±22.1 62.9 ±8.7Fluvastatin 11.9±0.55 92.6±0.20 13.4±0.75 51.6±0.39 106.7Furazolidone 90.9±0.14 86.8±0.74 76.2 58.2±0.12 28.7±13.5Furosemide 2286 4285 2890±181 2360±8 1208±177Imipramine >100 84.9 35.4±0.4 76.6±0.3 153.8Ketoconazole 85.9±13.1 80.2 71.6±0.2 62.2±0.2 89.7±61.2Ketorolac 215.7±77.3 >450 >450 693.3±163.8 247.7±47.2Ketotifene 91.2±15.8 >100 70.0±0.5 86.5±0.7 27.6±6.1Labetalol 95.2±18.6 >100 81.9±1.2 106.0±8.0 80.2±9.0Lovastatin 14.9±0.78 65.5 17.9±1.11 86.3±0.49 104.2±54.1MethylDOPA 257.7±42.8 187.3±23.0 >670 >670 257.4±30.8Mevastatin 25.2±0.7 330.4 24.7±1.0 97.7±2.7 >100Mibefradil 5.8±0.17 5.6 16.9±0.60 29.5 8.8±2.4Novobiocin 397.3±89.2 202.0±49.9 458.9±18.7 227.3±52.6 183.2±19.9Pamidronate 52.9 70.1 110.0±0.1 63.3 63.2±15.7Paroxetine 7.1 4.7±0.93 14.3±0.05 7.7 17.6±4.4Picotamide >100 12.5±5.4 93.3±51.6 104.5±67.2 19.6±3.8Primaquine 28.1 27.8 58.9±0.08 55.2±0.14 31.4±11.6Propranolol 13.9±0.41 >100 57.7 61.6 49.0±10.4Pyrimethamine 212.3±128.2 >100 124.2±10.8 77.8±3.8 3.8±0.6Quinacrine 2.3±0.18 2.6±0.51 1.4±0.31 2.7±0.32 1.4±0.17Quinidine 72.8 118.8±26.2 118.3±8.2 102.5±1.5 14.7±2.4Quinine 38.3 ±2.8 65.0±26.8 >600 40.5±1.3 22.3±2.4Simvastatin 16.1±0.42 51.7 18.2±0.56 40.2 51.4±25.0Sodium chloride >100 mM 71.6 mM 106.6 mM 95.1 mM 20.0 mMTacrine 54.3 99.8 58.3±0.06 87.5 37.2±18.1Valproic acid 6546±1309 >16200 >16200 15930±915 1520Most sensitive assay (%) 33 15 26 5 562nd most sensitive (%) 38 13 20 44 181st or 2nd most sensitive (%) 72 28 46 49 74
Values are reported as mean or, when there was sufficient data, mean ± SE. The parameter with the lowest and second lowest IC50 for eachdrug is indicated in bold lettering or by italics, respectively
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Discussion
Conventional cytotoxicity assays
This study demonstrates that conventional cytotoxicityassays have poor concordance with human toxicity. Thispoor predictivity of cell-based assays for in vivo toxicitylikely reflects at least in part on the lateness of the pointin the sequence of pathogenic events that they assess(Table 2). Assays that target late events in the process ofcell injury, when the cell is near death, are more likely tomiss toxicities that require chronic exposure or exertadverse but non-lethal effects. Many of the conventionalcytotoxicity assays (e.g. LDH release, cell rupture,membrane blebbing) are for late-stage toxicity and cel-lular events associated with a lethal apoptotic or necroticeffect (Jaeschke et al. 2002; Olson et al. 2000). Such as-says have low sensitivity (Table 1) for detection of ad-verse cellular effects and furthermore provide littlemechanistic understanding of the toxicologic effects inhumans. Conversely, assays that provide early assess-ment of specific toxicologic mechanisms in cells (Ta-ble 2), prior to the onset of the late stages of non-specificdegeneration and apoptotic or necrotic death, shouldtheoretically have greater predictive power and extrap-olatability across models and species. While these ret-
rospective analyses support the value of conventional invitro cytotoxicity screens in identification of the‘‘overtly’’ toxic compounds, it points to the need offurther refinement in the method to predict subtle orsub-lethal adverse events that account for the majorityof side effect profiles of human pharmaceuticals.
Although none of the conventional cytotoxicity as-says had adequate concordance with in vivo humantoxicity, it is important to note which of the endpointsused by these tests were most predictive. Glutathioneassay for oxidative stress was by far the most sensitive(Table 1), supporting the proposal of the important roleof oxidative stress in drug toxicity (Xu et al. 2004). Thetwo indicators that were next most sensitive were theAlamar Blue assay for mitochondrial reductive activityand the DNA assay for cell proliferation, both havingsensitivities an order of magnitude greater than the testsfor membrane integrity, protein synthesis, superoxideand caspase-3. These findings support the inclusion inthe HCS assay of parameters reflective of cell prolifer-ation, mitochondrial function and oxidative stress. Thelatter though is currently not yet incorporated into HCSscreening, although studies are under way to do this(Phillips et al. 2005).
An additional important finding in this study ofconventional cytotoxicity assays is that multiple anddifferent early measurements of toxicity mechanisms are
Frequency Distribution of CytotoxicConcentration for Toxic Drugs
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Fig. 5 Balancing assay sensitivity with specificity in definingdiagnostic cut-off cytotoxic drug concentrations relative to effica-cious concentration (TI). Receiver-operator characteristic curve forTI from 102 hepatotoxicants and the 23 non-toxic drugs for whicha TI was determined are plotted. Curve was only slightly differentwhen all toxicants were included. A cutoff TI of 100 gave 93%specificity and 90% specificity. Area under the curve (AUC) was
0.92, corresponding to a toxic drug have 92% probability of havinga higher TI than a non-toxic drug. Frequency distribution curvesshow the proportion of toxic drugs that are identified at increasingcut-off cytotoxic concentrations or TI’s (cytotoxic concentration/efficacious concentration [Cmax]) and indicate that a cut-off basedon TI has superior diagnostic value than based on concentrationalone
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critical for detection of human toxicity potential. Pre-dictivity was additive for several of the conventionalassays when combined, e.g. mitochondrial activity, glu-tathione and cell proliferation. The data from the HCScytotoxicity assay also indicate the need for measure-ment of multiple, independent and early mechanisms ofcytotoxicity. As well, similar conclusion that multipledifferent toxicity endpoints need to be measured hasrecently been made by others (Schoonen et al. 2005a, b).
Retrospective analysis of the predictivity of testingstrategies using a set of marketed drugs that have al-ready been screened for those that were thought to betoxic, can only result in substantial underestimation.However, such approach provides a common ground forcomparisons across testing strategies. Thus, whereaspredictivity for human hepatotoxicity (Table 1 and 2) ofregulatory animal toxicity testing, conventional cyto-toxicity tests and HCS sublethal cytotoxicity tests mustnecessarily be underestimated using this approach, thisunderestimation should be proportionately the same forall testing strategies assessed.
Predictivity of the HCS, sublethal cytotoxicity assay
Hormesis
The concentration-response curves for many drugs withtoxic effects were characterised by early positive re-sponses in cell proliferation, nuclear area and mito-chondrial potential, prior to negative responses in theseparameters. Hormetic effects were seen only after 3 daysof preincubation with drug, with the exception ofmitochondrial membrane potential, for which biphasiceffects occurred acutely as well as after preincubation(see Fig. 2). The occurrence of these positive responsesprior to degenerative effects is suggestive of them beingcompensatory, adaptational and protective (Olson et al.2001; Calabrese and Baldwin 2002). The basis for thehormetic effect on nuclear area is unknown, but mayrelate to a specific inhibition of the cell cycle in whichnuclear area is increased followed by a degenerative ef-fect in which the nucleus shrinks. The hormetic effectsfor cell proliferation and mitochondrial potential re-sulted in IC50 values being higher (see Fig. 4, right) be-cause they were defined as the concentration at whichbasal activities were decreased by 50% rather than theconcentration at which maximal activities were de-creased by 50%.
Hormesis was found for approximately half thedrugs, for nuclear area in 34% of the 136 drugs affectingit, for mitochondrial membrane potential in 26% of the141 drugs affecting this parameter, but for cell number inonly 12% of the 173 drugs affecting it.
Requirement for exposure to drugs for multiple days
The current study clearly demonstrates that preincuba-tion of cells with drugs for multiple days is typically
needed for expression of their toxicity. Predictivity wasincreased by an order of magnitude by preincubatingcells with drugs for 3 days. This finding reasonably ex-plains why sensitivity of the HCS cytotoxicity assay is anorder of magnitude greater than that of conventionalcytotoxicity assays. Support of this can be found in re-cent work where cells were preincubated with drugs for3 days then subjected to conventional cytotoxicity as-says performed independently (Schoonen et al. 2005a,b). This finding of the effect of preincubation of cells anddrugs for multiple days is also consistent with our pre-vious observations (Slaughter et al. 2002; O’Brien et al.2003; Xu et al. 2004) and recent studies by Schoonenet al. (2005a, b). Whereas the preincubation time wasnot titrated, the finding that cell proliferation was themost highly sensitive (although least specific) indicatorof toxicity, indicates that preincubation should extendover multiple doubling times.
Identification of idiosyncratic hepatotoxicityand hepatotoxicity due to reactive metabolites
The HCS sublethal cytotoxicity assay correctly identifieddrugs that produce toxicity via metabolites and drugsthat produced idiosyncratic hepatotoxicity. Surprisingly,after 3 days of pre-incubation with drug, the assay wasable to detect toxicity thought to be mediated by reactivemetabolites of the parent drug equally as well as fordrugs that produced their toxicity directly. Most of thesetoxicities are thought to be caused by formation ofreactive metabolites that are frequently linked withoxidative stress (Kalgutkar et al. 2005). Also surprisingwas that the assay was able to detect most of the 12drugs that have been associated with idiosyncratic hep-atotoxicity. It is noteworthy, however, that there wererelatively few drugs that were clear in these categories.Cell count was affected by all of these compounds andmitochondrial membrane potential and nuclear area wasaffected by 11 of them. Calcium and membrane perme-ability was affected by only half of them.
Most sensitive parameters are cell proliferation,mitochondria and nuclear area; membrane permeabilityand calcium are least sensitive
Cell proliferation inhibition in most cases preceded thechanges in other parameters. The high sensitivity of thisparameter may reflect its dependency on the normalfunctioning of a wide range of physiological processes.On the other hand, this sensitivity comes at the expenseof specificity for the toxicologic mechanism. It is note-worthy that cell proliferation was assessed by measure-ment of cell number, which could be affected not only byeffects on cell proliferation but also by cell death. Thus adecrease in cell number could be attributed to a cyto-static effect or both. However, in most cases, cell pro-liferation was affected prior to any discernible effect onthe sub-lethal cytotoxicity parameters, indicating that
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the effects on cell number were sub-lethal rather thanlethal. Results from this study support the idea thatcytostatic effects are a consistent and early effect of sub-lethal cytotoxicity. However, cytostatic effects may oc-cur in the absence of cytotoxic effects, as is shown byeffects of specific inhibitors of cell proliferation that haveno other adverse effects, such as azathioprine, colchi-cines, cyclophosphamide and methotrexate. Thus,additional measures of adverse effects on cells are nee-ded to interpret the cytostatic effect. These drugs did,however, affect the nuclear area at the same time as cellnumber.
Nuclear area was found to have comparable sensi-tivity as cell count for detection of toxicants. The leastsensitive parameter, based on occurrence of a significantchange, indicated that cell membrane permeability wasleast sensitive. However, ranking of parameters’ sensi-tivities for cytotoxicity detection based on IC50 valuesindicated that mitochondrial membrane potential wasthe least sensitive. The basis for these contradictoryfindings likely relates to the hormesis effect occurring inthe dose-response relationship for mitochondrial mem-brane potential but not detected for membrane perme-ability. Based on the FCCP control well results from arandom analysis of ten plates, the background signalcontributes to 24.4% (SD=8.0%) of the total TMRMsignal. Therefore, the useful dynamic range of the assayto measure mitochondrial uncoupling may limit sensi-tivity.
The finding that membrane permeability and intra-cellular calcium were the least sensitive parameters isexpected on the basis that membrane integrity andmaintenance of an intact barrier to the extracellularmilieu are essential for cell function and are maintainedwith highest priority by the cell. Rise in intracellularcalcium is an important final event in the live of a cell. Itis noteworthy that a more sensitive dye with greateraccuracy and precision for measurement of intracellularcalcium at basal levels, rather than at cytotoxic levels,may be a more effective biomarker for cytotoxicity. Forexample, studies with indo-1 have shown that there maybe subtle elevations in resting intracellular calcium andimpairments in calcium regulatory capacity with geneticand toxicologic cellular pathologies (O’Brien et al. 1989,1990).
Whereas intracellular calcium was the second leastsensitive parameter for detection of toxic effect, it was anearly indicator for several classes of drugs, such as thestatins (cerivastatin, fluvastatin, mevastatin), local ana-esthetics, (bupivacaine, lidocaine), antimalarials (amo-diaquine, chloroquin, quinacrine, quinidine, quinine),neuroleptics (amitryptilline, trifluoperazine, paroxetine),anthracyclines (doxorubicin), amiodarone, tacrine andcaptopril. The basis for this early involvement of cal-cium dyshomeostasis is uncertain, but may relate to themechanism of cytotoxicity.
Cell membrane permeability change was an early ef-fect in only 7% of drugs causing a positive response, e.g.doxorubicin, pimozide, dipyrone, flucytosine, foscarnet,
novobiocin, rotenone and sulphanilamide. Such disrup-tion of the barrier to the extracellular medium inevitablyproduced immediate and rapid increases in mitochon-drial permeability and in intracellular calcium. In con-trast, mitochondrial changes did not produce immediateand rapid changes in cell membrane permeability.
Cytotoxicity test results reported herein are sup-ported by the literature. Comparison of the HCS resultswith those for 7 conventional, independent, cytotoxicityassays from recent studies by Schoonen et al. (2005a, b)is possible because of overlap for 30 of the drugs andcompounds studied (acetaminophen, amiodarone, aspi-rin, benzopyrene, bromobenzene, carbon tetrachloride,chlorpromazine, colchicine, cyclophosphamide, dantro-lene, dexamethasone, diclofenac, diethylmalemide,doxorubicin, erythromycin, estradiol, flutamide, genta-mycin, imipramine, indomethacin, isoniazide, ketoco-nazole, labetalol, nitrofurantoin, quinidine, rotenone,sulphaphenazole, tacrine, tamoxifen, tetracycline).There was high correlation of results between studies forall parameters, especially Alamar Blue, glutathione andmembrane permeability (r�0.8), although lesser withDNA, ATP and NADPH (r�0.6) and least with reactiveoxygen species (r=0.46). This correlation supports thefindings of the current study, especially for use of amitochondrial function biomarker and glutathione.
Assessment of human toxicity potential: TI, PPB, AUC
The significance of the cytotoxic signals should beinterpreted in terms of the ratio of cytotoxic concen-tration to the concentration causing efficacy. The latterwas estimated by comparing with the maximal totalconcentration of the drug in human serum that is asso-ciated with administration of the drug at an efficaciousdose. However, the degree of plasma protein bindingwas not considered in this study. As there is only onetenth as much plasma protein in the in vitro systemcompared to in vivo, significant protein binding wouldbe expected to result in an overestimate of the circulatingfree drug compared to in vitro, with consequent pro-portionate underestimate of the safety margin andoverestimate of the toxicity potential. For example,rosiglitazone’s safety margin was underestimated with-out consideration of the high plasma protein binding.Thus, this ratio should be considered an estimate of theminimal safety margin. Finally, in this context, the bestestimates of safety margin for most drugs should bebased on drug exposure to free concentration per unittime (i.e. area under the concentration time curve,AUC). However, these values were not available for thein vitro studies.
The risk associated with a low safety margin needs tobe considered with respect to the indication and to thedose being used. Lower safety margins will be acceptedfor drugs intended for treatment of life-threatening dis-eases for which there are no equivalent alternatives.Lower safety margins may also be accepted for drugs in
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which the ingestion is limited by the bulk required fortoxicity or by side-effects such as vomiting.
It may also be relevant to interpret the significance ofthe signal based on the degree of change and the numberof parameters affected, and the mechanism and thesteepness of the concentration-response curve.
Application of prelethal cytotoxicity testing
Whereas drug-induced cytotoxicity may indicate poten-tial for in vivo human hepatotoxicity, it is not predictiveof such. Cytotoxic effects in vivo may be limited or evenaggravated, compared to those occurring in vitro.Cytotoxicity models are limited by their incompletemodelling of the cell type’s structure and function as itoccurs in vivo, by their incomplete modelling of othercell types and of cell functions and interactions within atissue, organ, systems and whole body, e.g. (a) drugproperties, concentrations, protein binding and trans-port may differ in vivo; (b) pharmacokinetic character-istics of absorption, distribution, metabolism andexcretion can have a major influence on which targetorgan is affected and the severity of toxicity; (c) toxicitiesoccurring at the tissue or organ level such as cholestasis,cataractogenesis and myelotoxicity cannot be effectivelypredicted from cellular systems; (d) toxicities may occursecondarily to direct cytotoxicity and due to the inter-action of organs and systems, and other processes suchas inflammation, immune-mediated hypersensitivity,plasma volume expansion and endocrine effects.
Prelethal cytotoxicity assay as first tier of laboratorytesting for organ toxicity potential Although cytotoxicityassays cannot predict human hepatotoxicity and cannotbe unequivocally used for ‘‘go - no go’’ decision-makingin the progression of drug discovery, they neverthelesshave value. Knowledge of the cytotoxicity of drugs earlyin drug discovery can create opportunities for rankingand prioritizing, or developing alternatives with lowertoxicity potential and can also flag the need for furtherscholarship and experimental safety assessments if thecompound is to progress to preclinical development.Such assessments would need to include conduct ofmore mechanism-specific, or possibly tissue-specific, invitro assays, as well as in vivo animal studies. These invitro models may also provide valuable mechanisticunderstanding of the toxicity.
Cytotoxicity testing throughput Throughput is animportant consideration in assessment of the practicalityof an assay to be implemented for screening compoundsin drug discovery. Throughput of the assay in whichcells are exposed for 3 days to 12 concentrations of eachdrug then measured at three different time points over3 h is 14 drugs per standard workweek for a singleoperator. However, the assay can be abbreviated so thatonly one time point is measured and only one or a few
concentrations are measured (such as the minimallyacceptable multiple of the concentration at efficacy thatwould have no effect) then throughput can be increasedup to many hundreds of assays per week. Furtherthroughput enhancement would likely require adapta-tion of the assay to a 384 well-plate format.
Optimal drug concentration and safety margin for pre-dicting human toxicity potential The current study indi-cates the concentration of drug needed for assessment ofhuman toxicity potential. At a concentration of 30 lM,60% of drugs with human toxicity potential were iden-tified, whereas 100 lM identified about 80% (Fig. 5).These concentrations are considerably lower, that is theassay is more sensitive, than previous reported assays(Bugelski et al. 2000; Schoonen et al. 2005a, b).Assessment of toxicity potential was more accuratewhen the concentration of drug tested was based onmultiples of the total efficacious concentration (Cmax formarketed drugs), with 80% of cytotoxicities being de-tected at a concentration of 30 times the efficaciousconcentration, Cmax. In the current study, toxicitiesoccasionally went undetected by the HCS cytotoxicitytest when the Cmax had not been determined and thedrug was not tested up to 30-fold the efficacious con-centration.
False test results in the HCS prelethal cytotoxicityassay Examination of the false positives and negativesmay provide understanding of what toxicities the HCScytotoxicity assay is not relevant for. As described above,idiosyncratic heptoxicants and heptotoxicities attributedto reactive metabolites were detected. However, therewere several specific examples of toxicities that were notdetected in the current study. For some of these drugtoxicities, this could be attributed to the specific knowneffect of the drug on molecular targets that are not foundin heptocytes. For example, the assay applied to HepG2cells did not detect cholestatic effects of estradiol, cal-cium-channel effects of ryanodine, potassium channeleffects of astemizole and terfenadine, renal toxicity ofzomepirac, dermatotoxicity of isoxicam and hematologictoxicity of vincamine. Additionally, the human toxicitypotential was not detected at relevant concentrationsin the HCS cytotoxicity assay for bupropion, diethyl-carbamazine, naproxen, pravastatin and trifluopera-zine. Furthermore, whereas picotamide is essentiallynontoxic, it was found to be highly toxic in the cyotoxicityassay. The number of such false test results was too smallto draw definitive conclusions, and additional workwould be needed to confirm these proposals.
Limitations and need for further studies
Although the HCS sub-lethal cytotoxicity assay hadgreater than 90% concordance with human toxicities, itfailed to detect up to 10% of these. The basis for the
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failure of the HCS cytotoxicity test for the other drugs isunknown, but may be partly attributable to eitherincomplete metabolic competence of the cell-basedmodelused or else to toxicities being caused by, or mediated by,extra-hepatocytic effects that require involvement ofsome other molecular transporter or process, cell, tissue,organ or system that cannot be represented by a hepa-tocyte cell line model. However, that the assay was posi-tive for most drugs that produce their toxicities by areactive metabolite argues against metabolic competencebeing significantly limiting. The extrahepatic toxicitiesmay involve (a) cytokine, growth factor or hormoneproduction, (b) immune-mediated toxicity and (c) extra-hepatocytic, tissue-specific transporters which are foundin hepatobiliary or renal tubular cells.
Metabolic competence Developing further metaboliccompetence, either by using extracellular incubation ofdrugs with S9 microsomal fractions, or by using cellsthat are more competent metabolically, may enhancepredictivity. Primary human hepatocytes would theo-retically provide the best model of metabolic competencefor cytotoxicity assays. However, current culture meth-ods in 96-well plates do not stabilise the phenotype ofprimary cells and prevent their rapid dedifferentiationover the several days of incubation needed for most drugtoxicities to be expressed. Furthermore, primary cells arealso less suitable for cytotoxicity assessment because oftheir low rates of cellular proliferation, which is the mostsensitive measure of hepatotoxicity potential.
Given the need for a proliferating cell model forpredictive cytotoxicity studies, the effectiveness of thechoice of HepG2 cells as a cell line to use is supported byother studies. Schoonen et al. (2005a, b) found themslightly more predictive than HeLa, ECC-1 and CHO-k1cells. Others have made similar findings (Bugelski et al.2000). However, a cell line with metabolic competenceand morphology more representative of the in vivo statewould likely further enhance the predictivity of cyto-toxicity assays.
Data processing We have identified two areas whereimprovement in analysis would result in increased effi-ciency with regard to performing larger scale cytotox-icity screens on a routine basis. First, the number ofcellular measurements generated by the image analysisalgorithms used far exceeded those relevant for this as-say. This required handling and archiving of more datathan was required. We are currently pursuing the use ofstreamlined assay algorithms that generate only the re-quired assay output. In addition, we are investigatingways to further automate data analysis of large volumesof kinetic data, especially the calculation of IC50 valuesusing user-definable mathematical models.
Assay refinement The Cellomics KSR was used suc-cessfully to apply automated HCS assays to investigate a
large set of experimental variables including cell platingdensity, cytotoxic indicators, drugs, drug concentrationsand incubation times. However, further improvementmay be obtainable by refinement and optimisation ofcell culture factors such as cell substrate, media and drugreplacement during preincubation, and assessment ofdrug transport and stability. Imprecision will likely bedecreased and diagnostic sensitivity improved by refine-ment of culture conditions to facilitate cell attachmentand more uniform spreading across the well surface,and by reducing evaporation and uneven heating andoxygenation of wells from the edges to the center of theplates.
Further studies are needed to define optimal strate-gies for cytofluorescent monitoring of relevant cytotox-icity biomarkers. The current study indicates significantroom for improvement in dye and parameter choice,especially with respect to membrane permeability andalso intracellular calcium concentration, at least asmeasured with a non-ratiometric dye with relatively lowcalcium-binding affinity compared to basal, intracellularconcentration of calcium. The effectiveness and mecha-nistic information of the HCS cytotoxicity assay may beenhanced by replacement of these dyes with others thatcould measure glutathione or reactive oxygen species,lysosomal mass, safety-signal transduction, additionalmorphological cell features, cell cycle information indi-cated by nuclear staining or the mass, reductive activityor DNA content of mitochondria. The specific need toincorporate an oxidative stress biomarker is also indi-cated by the results herein on conventional cytotoxicityassays, our preliminary studies currently underway(Phillips et al. 2005), and by the importance of oxidativestress in drug-induced toxicity (Xu et al. 2004).
Further studies are also needed to distinguish artefactfrom toxic response from adaptive responses (eg mito-chondrial potential dyes); to better model in vivo met-abolic competency; to sensitise to cytotoxicity andfurther enhance assay sensitivity; and to quantitatepredictivity and correlation with human hepatotoxicityand its mechanistic basis. Finally, more non-toxic drugsneed to be tested to more accurately assess the frequencyof false positives and the appropriate safety margin tointerpret cytotoxicity.
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