Rscripts: Difference between revisions
Jump to navigation
Jump to search
(→Fst) |
|||
(6 intermediate revisions by the same user not shown) | |||
Line 9: | Line 9: | ||
##maxMis maximum allowed missing genotypes for a site | ##maxMis maximum allowed missing genotypes for a site | ||
nMis<-rowSums(is.na(geno)) | nMis <- rowSums(is.na(geno)) | ||
freq <- rowMeans(geno,na.rm=T)/2 # get allele frequency | |||
keep<- | keep <- freq>minMaf&freq<(1-minMaf) & nMis<=maxMis # remove sites with non-polymorphic data | ||
freq<-freq[keep] | |||
geno<-geno[keep,] | geno<-geno[keep,] | ||
snp<-nrow(geno) #number of snps used in analysis | snp<-nrow(geno) #number of snps used in analysis | ||
ind<-ncol(geno) #number of individuals used in analuysis | ind<-ncol(geno) #number of individuals used in analuysis | ||
M <- (geno-freq*2)/sqrt(freq*(1-freq)) #normalize the genotype matrix | |||
M <- (geno- | |||
M[is.na(M)]<-0 | M[is.na(M)]<-0 | ||
X<-t(M)%*%M #get the (almost) covariance matrix | X<-t(M)%*%M #get the (almost) covariance matrix | ||
Line 45: | Line 44: | ||
Example | Example | ||
<pre> | <pre> | ||
ind<-c( | ind<-c(100,100,100) | ||
snp<-10000 | snp<-10000 | ||
freq | freq<-cbind(runif(snp),runif(snp),runif(snp)) | ||
l<-lapply(1:length(ind),function(x) matrix(rbinom(snp*ind[x],2,freq[,x]),snp)) | |||
geno<-do.call(cbind,l) | |||
geno<- | |||
e<-eigenstrat(geno) | e<-eigenstrat(geno) | ||
plot(e,col=rep(1:length(ind),ind),xlab="PC1",ylab="PC2") | plot(e,col=rep(1:length(ind),ind),xlab="PC1",ylab="PC2") | ||
</pre> | </pre> | ||
Line 63: | Line 59: | ||
<pre> | <pre> | ||
WC84<-function(x,pop){ | WC84<-function(x,pop){ | ||
x<-x[,!apply(is.na(x),2,any)] | |||
popNam<-sort(unique(pop)) | |||
#number ind each population | #number ind each population | ||
n<-table(pop) | n<-table(pop) | ||
Line 72: | Line 72: | ||
N<-length(pop) | N<-length(pop) | ||
#frequency in samples | #frequency in samples | ||
p<-apply(x,2,function(x,pop){tapply(x,pop,mean)/2},pop=pop) | p<-t(sapply(popNam,function(y) colMeans(x[pop==y,])/2)) | ||
# p<-apply(x,2,function(x,pop){tapply(x,pop,mean)/2},pop=pop) | |||
#average frequency in all samples (apply(x,2,mean)/2) | #average frequency in all samples (apply(x,2,mean)/2) | ||
p_avg<-as.vector(n%*%p/N ) | p_avg<-as.vector(n%*%p/N ) | ||
Line 112: | Line 113: | ||
pop<-rep(1:4,40) | pop<-rep(1:4,40) | ||
res<-WC84(x,pop) | res<-WC84(x,pop) | ||
res$ | res$theta_w | ||
</pre> | </pre> | ||
Latest revision as of 14:25, 12 March 2015
PCA/Eigensoft/Eigenstrat
eigenstrat<-function(geno,maxMis=0,minMaf=0.01){ ## geno: snp x ind matrix of genotypes \in 0,1,2 ##maxMis maximum allowed missing genotypes for a site nMis <- rowSums(is.na(geno)) freq <- rowMeans(geno,na.rm=T)/2 # get allele frequency keep <- freq>minMaf&freq<(1-minMaf) & nMis<=maxMis # remove sites with non-polymorphic data freq<-freq[keep] geno<-geno[keep,] snp<-nrow(geno) #number of snps used in analysis ind<-ncol(geno) #number of individuals used in analuysis M <- (geno-freq*2)/sqrt(freq*(1-freq)) #normalize the genotype matrix M[is.na(M)]<-0 X<-t(M)%*%M #get the (almost) covariance matrix X<-X/(sum(diag(X))/(snp-1)) E<-eigen(X) mu<-(sqrt(snp-1)+sqrt(ind))^2/snp #for testing significance (assuming no LD!) sigma<-(sqrt(snp-1)+sqrt(ind))/snp*(1/sqrt(snp-1)+1/sqrt(ind))^(1/3) E$TW<-(E$values[1]*ind/sum(E$values)-mu)/sigma E$mu<-mu E$sigma<-sigma E$nSNP <- nrow(geno) E$nInd <- ncol(geno) class(E)<-"eigenstrat" E } plot.eigenstrat<-function(x,col=1,...) plot(x$vectors[,1:2],col=col,...) print.eigenstrat<-function(x) cat("statistic",x$TW,"\n")
Example
ind<-c(100,100,100) snp<-10000 freq<-cbind(runif(snp),runif(snp),runif(snp)) l<-lapply(1:length(ind),function(x) matrix(rbinom(snp*ind[x],2,freq[,x]),snp)) geno<-do.call(cbind,l) e<-eigenstrat(geno) plot(e,col=rep(1:length(ind),ind),xlab="PC1",ylab="PC2")
Fst
The same as the faster "fstat" from the geneland package but this script also gives the total variance, variance within individuals, variance within population and variance between populations both on a SNP level and on as a joint estimate.
WC84<-function(x,pop){ x<-x[,!apply(is.na(x),2,any)] popNam<-sort(unique(pop)) #number ind each population n<-table(pop) #number of populations npop<-nrow(n) #average sample size of each population n_avg<-mean(n) #total number of samples N<-length(pop) #frequency in samples p<-t(sapply(popNam,function(y) colMeans(x[pop==y,])/2)) # p<-apply(x,2,function(x,pop){tapply(x,pop,mean)/2},pop=pop) #average frequency in all samples (apply(x,2,mean)/2) p_avg<-as.vector(n%*%p/N ) #the sample variance of allele 1 over populations s2<-1/(npop-1)*(apply(p,1,function(x){((x-p_avg)^2)})%*%n)/n_avg #average heterozygouts # h<-apply(x==1,2,function(x,pop)tapply(x,pop,mean),pop=pop) #average heterozygote frequency for allele 1 # h_avg<-as.vector(n%*%h/N) #faster version than above: h_avg<-apply(x==1,2,sum)/N #nc (see page 1360 in wier and cockerhamm, 1984) n_c<-1/(npop-1)*(N-sum(n^2)/N) #variance betwen populations a <- n_avg/n_c*(s2-(p_avg*(1-p_avg)-(npop-1)*s2/npop-h_avg/4)/(n_avg-1)) #variance between individuals within populations b <- n_avg/(n_avg-1)*(p_avg*(1-p_avg)-(npop-1)*s2/npop-(2*n_avg-1)*h_avg/(4*n_avg)) #variance within individuals c <- h_avg/2 #inbreedning (F_it) F <- 1-c/(a+b+c) #(F_st) theta <- a/(a+b+c) #(F_is) f <- 1-c(b+c) #weigted average of theta theta_w<-sum(a)/sum(a+b+c) list(F=F,theta=theta,f=f,theta_w=theta_w,a=a,b=b,c=c,total=c+b+a) }
#example of use nsnp=10000 x<-matrix(rbinom(160*nsnp,2,0.02),160) pop<-rep(1:4,40) res<-WC84(x,pop) res$theta_w
LD pruning in R
Install R package
wget http://www.popgen.dk/albrecht/misc_Rpackages/Rpakker/pruning_0.51.tar.gz R CMD INSTALL pruning_0.51.tar.gz