Difference between revisions of "AdvGeneMap2018Commands"

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===Plink - Part 1 - Data QC===
 
===Plink - Part 1 - Data QC===
 +
 
  plink --file GWAS
 
  plink --file GWAS
 
   plink --file GWAS --mind 0.10 --recode --out GWAS_clean_mind
 
   plink --file GWAS --mind 0.10 --recode --out GWAS_clean_mind
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   plink --file GWAS_clean3 --het
 
   plink --file GWAS_clean3 --het
 
   ###### in R
 
   ###### in R
   Dataset <- read.table("plink.het", header=TRUE, sep="", na.strings="NA", dec=".", strip.white=TRUE)
+
   Dataset
  mean(Dataset$F)
+
  sd(Dataset$F)
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  jpeg("hist.jpeg", height=1000, width=1000)
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  hist(scale(Dataset$F), xlim=c(-4,4))
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  dev.off()
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  q()
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  ######
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  plink --file GWAS_clean3 --pheno pheno.txt --pheno-name Aff --hardy
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  ##### in R
+
  hardy = read.table("plink.hwe", header = T)
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  names(hardy)
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  hwe_prob = hardy[which(hardy$P < 0.0000009),]
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  hwe_prob
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  q()
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  ##########
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  plink --file GWAS_clean3 --exclude HWE_out.txt --recode --out GWAS_clean4
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+
  
 
===Plink - Part 2 - Controlling for Substructure===
 
===Plink - Part 2 - Controlling for Substructure===
 +
<nowiki>
 
   plink --file GWAS_clean4 --genome --cluster --mds-plot 10
 
   plink --file GWAS_clean4 --genome --cluster --mds-plot 10
 
   #### in R
 
   #### in R
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   gws_adjusted = aff_C1C2[which(aff_C1C2$P < 0.0000001),]
 
   gws_adjusted = aff_C1C2[which(aff_C1C2$P < 0.0000001),]
 
   gws_adjusted
 
   gws_adjusted
 +
<nowiki>

Revision as of 15:00, 23 January 2018

Plink - Part 1 - Data QC

plink --file GWAS
 plink --file GWAS --mind 0.10 --recode --out GWAS_clean_mind
 plink --file GWAS_clean_mind --maf 0.05 --recode --out MAF_greater_5
 plink --file GWAS_clean_mind --exclude MAF_greater_5.map --recode --out MAF_less_5
 plink --file MAF_greater_5 --geno 0.05 --recode --out MAF_greater_5_clean
 plink --file MAF_less_5 --geno 0.01 --recode --out MAF_less_5_clean
 plink --file MAF_greater_5_clean --merge MAF_less_5_clean.ped MAF_less_5_clean.map --recode --out GWAS_MAF_clean
 plink --file GWAS_MAF_clean --mind 0.03 --recode --out GWAS_clean2
 plink --file GWAS_clean2 --check-sex --out GWAS_sex_checking
 #### in R - open R by simply typing R
 setwd("to_your_working_directory/")
 sexcheck = read.table("GWAS_sex_checking.sexcheck", header=T)
 names(sexcheck)
 sex_problem = sexcheck[which(sexcheck$STATUS=="PROBLEM"),]
 sex_problem
 q()
 ##################################
 plink --file GWAS_clean2 --genome --out duplicates
 #### in R
 setwd("to_your_working_directory/")
 dups = read.table("duplicates.genome", header = T)
 problem_pairs = dups[which(dups$PI_HAT > 0.4),]
 problem_pairs
 problem_pairs = dups[which(dups$PI_HAT > 0.05),]
 myvars = c("FID1", "IID1", "FID2", "IID2", "PI_HAT")
 problem_pairs[myvars]
 q()
 ######
 plink --file GWAS_clean2 --remove IBS_excluded.txt --recode --out GWAS_clean3
 plink --file GWAS_clean3 --het
 ###### in R
 Dataset

Plink - Part 2 - Controlling for Substructure

plink --file GWAS_clean4 --genome --cluster --mds-plot 10 #### in R mydata = read.table("mds_components.txt", header=T) mydata$pch[mydata$Group==1 ] <-15 mydata$pch[mydata$Group==2 ] <-16 mydata$pch[mydata$Group==3 ] <-2 jpeg("mds.jpeg", height=500, width=500) plot(mydata$C1, mydata$C2 ,pch=mydata$pch) dev.off() q() ###### plink --file GWAS_clean4 --pheno pheno.txt --pheno-name Aff --logistic --adjust --out unadj plink --file GWAS_clean4 --genome --cluster --pca 10 header plink --file GWAS_clean4 --pheno pheno.txt --pheno-name Aff --covar plink.eigenvec --covar-name PC1 --logistic --adjust --out PC1 plink --file GWAS_clean4 --pheno pheno.txt --pheno-name Aff --covar plink.eigenvec --covar-name PC1-PC2 --logistic --adjust --out PC1-PC2 #### in R broadqq <-function(pvals, title) { observed <- sort(pvals) lobs <- -(log10(observed)) expected <- c(1:length(observed)) lexp <- -(log10(expected / (length(expected)+1))) plot(c(0,7), c(0,7), col="red", lwd=3, type="l", xlab="Expected (-logP)", ylab="Observed (-logP)", xlim=c(0,max(lobs)), ylim=c(0,max(lobs)), las=1, xaxs="i", yaxs="i", bty="l", main = title) points(lexp, lobs, pch=23, cex=.4, bg="black") } jpeg("qqplot_compare.jpeg", height=1000, width=500) par(mfrow=c(2,1)) aff_unadj<-read.table("unadj.assoc.logistic", header=TRUE) aff_unadj.add.p<-aff_unadj[aff_unadj$TEST==c("ADD"),]$P broadqq(aff_unadj.add.p,"Some Trait Unadjusted") aff_C1C2<-read.table("PC1-PC2.assoc.logistic", header=TRUE) aff_C1C2.add.p<-aff_C1C2[aff_C1C2$TEST==c("ADD"),]$P broadqq(aff_C1C2.add.p, "Some Trait Adjusted for PC1 and PC2") dev.off() gws_unadj = aff_unadj[which(aff_unadj$P < 0.0000001),] gws_unadj gws_adjusted = aff_C1C2[which(aff_C1C2$P < 0.0000001),] gws_adjusted <nowiki>