# looping over same steps to create a plot

My data set `dart` is a matrix with dimensions 1981 x 278. The first column contains chromosome numbers from 1 to 21, the second column is the marker names and the third is the distances (CM).

The code below plots the LD decay for one chromosome. I want to repeat the same thing for the 21 chromosomes (looping over them).

Any help or comment will be appreciated.

``````dart<- read.csv("dartnonaR.csv")
chr1 <- which(dart[, 1] == 1);
mpos <- dart[chr1,2:3 ];
dart1 <- dart[chr1,];
dim(dart1);
dart2 <- dart1[,-c(1,2,3)];
dart2 <- t(dart2);
r2 <- (cor(dart2))^2;
rownames(r2) <- mpos\$MARKERS;
mark <- rownames(r2);
r2a <- r2;
r2v <- NULL;
distance <- NULL;

for( i in 1:144){
for (j in (i+1):145){
r2v <- c(r2v, r2a[i,j])
distance <- c(distance, abs(mpos[mpos\$MARKERS == mark[i],2] - mpos[mpos\$MARKERS == mark[j],2]) )
cat(i,j,"\n")
}
};
plot(distance, r2v, xlab = "Distance in cM", ylab = "LD in r2");
``````
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Can you post results of `str(dart)`? Or even better, make up a mock data set (see stackoverflow.com/questions/5963269/…). –  Roman Luštrik Nov 25 '11 at 7:24

To combine all plots into one plot, be sure to take a look at ggplot. More specifically the facet_wrap and facet_grid functions. These allow one to make identical plots per category of data, arranging them in a lattice of plots. Combining the plots allows easy comparison and spot trends between the categories.

See http://had.co.nz/ggplot2/facet_grid.html for examples, including nice pictures :).

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This also takes considerably less custom code than using plot(). –  Paul Hiemstra Nov 27 '11 at 11:03

You need to begin the loop over the chromosomes at the moment you generate the subset for chr1.

To loop over all the chromosomes, you could try this. I adapted you code a bit.

``````  dart <- read.csv("dartnonaR.csv") ## read data
savepdf = TRUE
for ( k in 1:21){ ## start loop over chromosomes
chr <- which(dart[, 1] == k); ## assign data from col 1 to chr if equal to k
mpos <- dart[chr, 2:3 ]; ## create mpos
dart_chr <- dart[chr, ]; ## create dart_chr from dart
dart_chr2 <- t(dart_chr[, -c(1, 2, 3)]); ## get genomic data and transpose
r2 <- (cor(dart_chr2))^2;  ## calculate r-square data
rownames(r2) <- mpos\$MARKERS;  ## Add rownames based on marker names
r2v <- NULL; ## initialize values
distance <- NULL; ## initialize values
for( i in 1:length(r2[,1])){
for (j in (i+1):length(r2[1,])){ ## probably, could also be length(r2[1,]) + 1 , I'm not sure.
r2v <- c(r2v, r2[i, j])
distance <- c(distance, abs(mpos[mpos\$MARKERS == rownames(r2)[i], 2] - mpos[mpos\$MARKERS == rownames(r2)[j], 2]) )
cat(i, j, "\n")
}
};
if(savepdf){
pdf(file = paste('ld_decay_chr',k,'.pdf', sep = ''))
plot(distance, r2v, xlab = "Distance in cM", ylab = "LD in r2", main = paste('LD Decay chromosome', k));
dev.off()
}
if(!savepdf){
plot(distance, r2v, xlab = "Distance in cM", ylab = "LD in r2", main = paste('LD Decay chromosome', k));
}
}
``````
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