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GenomeWideAssociationStudyforBinomiallyDistributedTraits:
ACaseStudyforStalkLodginginMaize
EsperanzaShenstoneandAlexanderE.LipkaDepartmentofCropSciences
UniversityofIllinoisatUrbana-Champaign
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UnifiedMixedLinearModel(MLM)inGWAS
2Yu et al. (2006)
AdaptedfromA.Lipka
Phenotype of ithindividual
Grand Mean
Fixed effects: account for population structure
Marker effect
Observed SNP alleles of ith individual
Random effects: account for familial relatedness
Random errorterm
Measures relatedness between individuals
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AssumptionsoftheUnifiedMLM
Whatdowedoiftheseassumptionscannotbemet?(Example:Binomiallydistributeddata)
3Yu et al. (2006)
AdaptedfromA.Lipka
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BinomialDistribution:#SuccessesinnIndependentSuccess/FailureTrials
MixedLogisticRegressiondoesnotrequirenormalityorequalvariancesConductGWASbyfittingalogisticregressionmodelateachSNP
LogitLinkfunction:Thenaturallog-oddsofasuccess
Thegrandmean
Problem:Fittingthismodelisextremelycomputationallyintensive!!!
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Purpose
Developamulti-modelGWASapproachthatwillallowmixedmodelGWAStobeconductedonbinomially
distributedtraits
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StalkLodgingInMaize
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StalkStrength
Disease/Pests
EnvironmentalFactors
5-20%yieldlossesworldwide
Flint-Garciaetal.,2003
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DataCollection- 2016
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TwoRepsoftheGoodman-Bucklerdiversitypanelwereplantedusingincompleteblockdesign
TheentireexperimentwasinoculatedwithGoss’swilt
Inthisexperimenttherewasnocorrelationbetweendiseaseandlodging
TheJamannLabatUIUC
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LodgingPhenotyping
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Standcount NumberofPlantsLodged
NumberofplantsNotlodged
LodgingScore(PercentLodged)
23 6 17 26%BeginningofGrowingSeasonEndofgrowingseason
Above:Diagramdepictingoneplot(rep)ofonetaxainthefield
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TreatLodgingDataasaBinomialSetupofBinomial Whywethinkbinomialisan
appropriateapproximationforlodging
Theexperimentconsistsofnrepeatedtrials
Withineachplot,eachplantisatrial
Eachtrialhastwooutcomes:successorfailure
Success: planthaslodgedFailure: Planthasnotlodged
Theprobabilityofsuccess, π,isthesameoneverytrial
Theprobabilityofaplantlodging,π,isthesamewithinaplot
Thetrialsareindependent Oneplantlodgingwillnotchangethelikelihoodofanotherplantlodging
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Multi-ModelApproach
10
Model1FitLogisticRegressionModel
Controlsforpopulation
structureonlyIdentifypeak
SNPs
Model2FitaMixedLinearModelControlsforpopulation
structureandrelatednessIdentifypeak
SNPs
Model3FitMixedLogistic
RegressionModel
UsingPeakSNPsfromModel1andModel2
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LogisticRegressionIdentified~50%ofMarkerstobeSignificant
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Thetop2,796SNPsfromthismodelweresubset
RStudioChromosome
PeakSNPPossibleSNPsofinterest
Motivation:mixedlogisticregressionmodelcanfit2,796modelsin<1day
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UnifiedMLMIdentifiedNoSignificantSignals
12GAPITLipkaetal.,2012
Chromosome
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MixedLogisticRegressionIdentifies68%ofSNPsIdentifiedinLogisticRegression
toBeSignificant
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SAS9.4PROCGLIMMIX
Accountingforfamilialrelatednesshelpedrefinelocationofputativegenomicregions
SignalscoincidewiththosepreviouslyidentifiedfortraitsrelatedtolodgingChromosome
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SimulationStudyinGoodman-BucklerDiversitypanel:
Determinewhichparametersofthebinomialdistributioncontributethemosttoidentificationofgenomic
signals
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Assign SNP from 4K Set to be QTN
Simulate binomial distributed trait
QTN Effect size Stand count per plot Grand mean
Simulate Data~100 “Traits”
Fit logistic regression model at each of 55K SNPs
ProposedMethodologyforSimulationStudy
Foreachtraitineachsetting:Assessedgenomicpositionsof“top100”markerswithstrongestassociations
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HowdoesthetotalnumberofplantsinaplotaffectQTNdetection?
StandCount:10
Proportionoftimesdetected:1.0
Model1
Top100SNPsfromeachtraitusedtocreatethisfigure
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HowdoesthetotalnumberofplantsinaplotaffectQTNdetection?
StandCount:15
Proportionoftimesdetected:1.0
Model1
Top100SNPsfromeachtraitusedtocreatethisfigure
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HowdoesthetotalnumberofplantsinaplotaffectQTNdetection?
StandCount:20
Proportionoftimesdetected:1.0
Model1
Top100SNPsfromeachtraitusedtocreatethisfigure
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HowdoesthetotalnumberofplantsinaplotaffectQTNdetection?
StandCount:25
Proportionoftimesdetected:1.0
Model1
Top100SNPsfromeachtraitusedtocreatethisfigure
StandcountdoesnotappeartoaffectourabilitytodetectQTN
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HowdoesgrandmeanaffectQTNdetection?
GrandMean=0;P{Success}=0.5Proportionoftimesdetected:1.0
Model1
Top100SNPsfromeachtraitusedtocreatethisfigure
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HowdoesgrandmeanaffectQTNdetection?
GrandMean=1;P{Success}=0.73Proportionoftimesdetected:1.0
Model1
Top100SNPsfromeachtraitusedtocreatethisfigure
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HowdoesgrandmeanaffectQTNdetection?
GrandMean=3;P{Success}=0.95Proportionoftimesdetected:0.82
Model1
Top100SNPsfromeachtraitusedtocreatethisfigure
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HowdoesgrandmeanaffectQTNdetection?
GrandMean=5;P{Success}=0.99
Proportionoftimesdetected:0.10
Model1
Top100SNPsfromeachtraitusedtocreatethisfigure
GrandmeanvaluesaffectsourabilitytodetectQTN
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FutureDirectionsAnyphenotypethatmeasures#successesinaplotofn plantscouldtheoreticallyusetheseapproaches- Trytodesignexperimentsthatresultinabaselineprobabilityofsuccessof0.5
HowcanwefitmixedlinearmodelsinacomputationallyefficientmanneronaWindows/Maccomputer?- Temporarysolution:multi-modelapproachisreasonable- Trytostrivefor:writesoftwarethatusesthescoretest
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Acknowledgements
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CommitteeMembersDr.AlexanderE.LipkaDr.TiffanyJamannDr.MartinBohnDr.PatBrown
TheJamannLabJulianCooper
TheLipkaLabBrianRiceAngelaChen
GraduateStudentsAmandaOwings
DepartmentofCropSciencesatUIUC
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Model1vs.Model2Comparison
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VaryingAdditiveEffectSizes(SameAssignedQTN)
Additiveeffectsize0.5onchromosome8
Proportiontimedetected:0.93
Additiveeffectsize0.1onchromosome8
Proportionoftimesdetected:0.07
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SummaryofResultsAbletoidentifytwosignificantSNPsintheBPregionofMaizeStalkStrengthQTL
Lietal.,2014,Flint-Garciaetal.,2003,Huetal.,2012PeakSNPsonChromosome7wereinthesamelocationasthemostrobustmarkerassociationwithRPR
Piefferetal.,2013AsignificantSNPonChromosome1wasinthesameregionasacandidategeneforMediterraneanCornBorerstalkdestructionsusceptibility
Samayoaetal.,2015
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HighLDDecayObservedAroundPeakSNPonChromosomeSeven
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LimitingFactorsofThisStudyStalklodgingisaputativelylowheritabilitytraitNorepeatabilityacrossreplications
OnlyoneyearofdataincludedinthisanalysisOnlyoneenvironment
MissingdataVariousfactorscontributed
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SummaryofProjectLogisticRegressioniscomputationallyintensiveApproximately30secondstorun1SNPinSAS~17.36daystorun50,000SNPs
Model1andModel2areusedtoidentifywhichSNPsarefitusingthecompletelogisticregressionmodel(Model3)ThenumberofSNPstoincludeisdependentoncomputationalpoweravailable
StalkLodgingdatawasusedtotestthisapproachSomePeakSNPsidentifiedareinthesameregionasQTLassociatedwithstalkstrength,andacandidategeneforMCBStalkDamage
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DataCollection- 2016
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2Repsofthe282diversitypanelwereplantedusingincompleteblockdesign
TheentireexperimentwasinoculatedwithGoss’swilt
Inthisexperimenttherewasnocorrelationbetweendiseaseandlodging TheJamannLab
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ObservedLodgingintheField
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Taxaclassifiedasnonstiffstalkwerelodgedmoreoften
Taxaclassifiedasstiffstalkwerelodgedthelessoften
Allplotsrepresentedinthisgraphhadatleast10plantslodged
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LodgingScoreResidualsFollowaNon-NormalDistribution
34
The Box-Cox procedure was implemented, and λ=-0.6 was the suggested transformation
Transformation was unsuccessful
352 plots had no lodging
DistributionofLodgingScores
LodgingScoreFreq
uency
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Genome-WideAssociationStudy(GWAS)
SearchthegenomeforgeneticmarkerssignificantlyassociatedwithyourtraitofinterestAllowsfortheidentificationofQTLsregionofthegenomeassociatedwiththetrait
35SingleNucleotidePolymorphism(SNP):Atypeofgeneticmarker
http://knowgenetics.org/snps/
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282DiversityPanel
~75%ofallallelicdiversityinMaize
AdaptedfromFlint-Garciaetal.,2005Romayetal.,2013
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OutlineIntroduction
Genome-WideAssociationonStalkLodginginMaize
SimulationStudy
Conclusions
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UnifiedMixedLinearModelControlsforFalsePositives
38Yuetal.,2006
Simple
Simple
FloweringtimeofMaize(Highpopulationstructure)
EarDiameterofMaize(LowPopulationStructure)
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StalkLodginginMaizePredictinglodgingischallenging
Mostmethodsaredestructiveand/oruseothertraitsasproxies
Canphenotypinglodgingstillyieldinterestingresults?
39
StangerandLauer,2006
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BinomialDataAllowsforLogisticRegression
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Methods
OneSNPsfrom4K markersetwasassignedtobeQTN
Taxafromthe282diversitypanelweresimulatedtoexperiencelodging
The55Kmarkersetwasusedtogenotypethetaxausedinthesimulation
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ObjectivesEvaluatetheefficacyofthethreemodelapproachtomixedlogisticregression
EvaluatetheuseofthediversitypanelforuseinlogisticregressionGWAS
ExaminehowvariableswithinthedataseteffecttheabilitytodetectaQTN
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SimulationStudySettings
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Setting GrandMean
StandCount
Additiveeffectsize
1 0 10 0.92 1 10 0.93 3 10 0.94 5 10 0.95 0 15 0.96 0 20 0.97 0 25 0.9
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Model1identifiesPeakSNPsWhileAccountingforPopulationStructure
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Whatdoeschangingtheinterceptdotoourdata?
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Model3FailedtoConvergeinSASProcGLIMMIXPossiblereasonsforthisfailure:• “therewasnotenoughvariationintheresponsetoattributeanyvariationtotherandomeffect”•EstimatedGmatrixisnotpositivedefinite:“procedureconvergedtoasolutionswherethevarianceoftherandomeffectis0”AlternativeSolution:• UsetheGMMATpackage(Chenetal.2015)(OnlyrunsonUNIXOS)
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Model2
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• Model2mayhavehadenoughpowertosuccessfullydetectQTNdespitemodelassumptionsbeingviolated•Previousstudieshaveshownthatlinearmodelscansometimesbeapproximatedbylogisticregressionmodels
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Conclusion➢TraditionalGWASrequiresnormaldata
➢Logisticregressionhasthepotentialtoanalyzenon-normallydistributedtraits
➢Thebiggestlimitationofusinglogisticregressionisthecomputationalpower
required
➢ SimulationStudyshowtheneedforincreasedvariabilityofphenotypicdata- this
isespeciallyhardtoachieveinabinarytrait
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Model1identifiesPeakSNPsWhileAccountingforPopulationStructure
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BinomialDataAllowsforLogisticRegression
LogisticRegressiondoesnotrequirenormalityorequalvariancesConductGWASbyfittingalogisticregressionmodelateachSNP
LogitLinkfunction:Thenaturallog-oddsofaplantislodgedornotlodged
Thegrandmean
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Model2IdentifiesPeakSNPsWhileControllingforPopulationStructureandRelatedness
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Phenotype of ithindividual
Grand Mean
Fixed effects: account for population structure
Marker effect
Observed SNP alleles of ith individual
Random effects: account for familial relatedness
Random errorterm
Yu et al. (2006)
Measures relatedness between individuals
AdaptedfromA.Lipka
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Model3isFitUsingSubsetofPeakSNPs
53
SAS9.4PROCGLIMMIX
Model3isfitusingtopSNPsfromModel1
Recommendation:NumberofSNPsthatcanberuninapproximately24hours
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ResultsofSimulationStudyinContextofStalkLodgingData
• Itispossiblethatourmodel’sabilitytoaccuratelydetectQTLwascompromisedbecauseofanobservedlowrateoflodging• Canwecontrol•Ifthisbaselineprobabilityoccurs,thentheinabilityofourmodeltodetectQTLmayhavebeenexacerbatedbyaninterceptvaluethatisfarremoved0.
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PeakSNPsthatCoincidewithSignalsAssociatedwithRelatedTraits
TypeofRegionidentified
Chr LocationinLiterature LocationinModel3 Notes
Marker 7 159.4Mb 161.9Mb155.8Mb164.9Mb
ThreemostsignificantSNPsonChr7
qRPR2QTL 2 236.4-237.0Mb 236.8Mb 14th mostsignificantSNPonChr2
qRPR3-1QTL 3 181.1Mb-184.7 181.7Mb182.0Mb 92nd and98th mostsignificantSNPOnChr3