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-rw-r--r--scripts/rqtl_wrapper.R53
1 files changed, 48 insertions, 5 deletions
diff --git a/scripts/rqtl_wrapper.R b/scripts/rqtl_wrapper.R
index 7518175..20c0e06 100644
--- a/scripts/rqtl_wrapper.R
+++ b/scripts/rqtl_wrapper.R
@@ -9,6 +9,7 @@ option_list = list(
make_option(c("-g", "--geno"), type="character", help=".geno file containing a dataset's genotypes"),
make_option(c("-p", "--pheno"), type="character", help="File containing two columns - sample names and values"),
make_option(c("-c", "--addcovar"), action="store_true", default=NULL, help="Use covariates (included as extra columns in the phenotype input file)"),
+ make_option(c("--covarstruct"), type="character", help="File detailing which covariates are categorical or numerical"),
make_option(c("--model"), type="character", default="normal", help="Mapping Model - Normal or Non-Parametric"),
make_option(c("--method"), type="character", default="hk", help="Mapping Method - hk (Haley Knott), ehk (Extended Haley Knott), mr (Marker Regression), em (Expectation-Maximization), imp (Imputation)"),
make_option(c("-i", "--interval"), action="store_true", default=NULL, help="Use interval mapping"),
@@ -33,6 +34,20 @@ verbose_print <- function(...){
}
}
+adjustXprobs <- function(cross){
+ sex <- getsex(cross)$sex
+ pr <- cross$geno[["X"]]$prob
+ stopifnot(!is.null(pr), !is.null(sex))
+
+ for(i in 1:ncol(pr)) {
+ pr[sex==0,i,3:4] <- 0
+ pr[sex==1,i,1:2] <- 0
+ pr[,i,] <- pr[,i,]/rowSums(pr[,i,])
+ }
+ cross$geno[["X"]]$prob <- pr
+ invisible(cross)
+}
+
if (is.null(opt$geno) || is.null(opt$pheno)){
print_help(opt_parser)
stop("Both a genotype and phenotype file must be provided.", call.=FALSE)
@@ -51,7 +66,7 @@ get_geno_code <- function(header, name = 'unk'){
return(trim(strsplit(header[mat],':')[[1]][2]))
}
-geno_to_csvr <- function(genotypes, trait_names, trait_vals, out, sex = NULL,
+geno_to_csvr <- function(genotypes, trait_names, trait_vals, out, type, sex = NULL,
mapping_scale = "Mb", verbose = FALSE){
# Assume a geno header is not longer than 40 lines
header = readLines(genotypes, 40)
@@ -148,8 +163,12 @@ for (i in 1:length(trait_names)) {
trait_names[i] = paste("T_", this_trait, sep = "")
}
+# Get type of genotypes, since it needs to be checked before calc.genoprob
+header = readLines(geno_file, 40)
+type <- get_geno_code(header, 'type')
+
verbose_print('Generating cross object\n')
-cross_object = geno_to_csvr(geno_file, trait_names, trait_vals, cross_file)
+cross_object = geno_to_csvr(geno_file, trait_names, trait_vals, cross_file, type)
# Calculate genotype probabilities
if (!is.null(opt$interval)) {
@@ -160,16 +179,40 @@ if (!is.null(opt$interval)) {
cross_object <- calc.genoprob(cross_object)
}
+# If 4way, adjust X chromosome genotype probabilities
+if (type == "4-way") {
+ verbose_print('Adjusting genotype probabilities for 4way cross')
+ cross_object <- adjustXprobs(cross_object)
+}
+
# Pull covariates out of cross object, if they exist
-covars = vector(mode = "list", length = length(trait_names) - 1)
+covars <- c() # Holds the covariates which should be passed to R/qtl
if (!is.null(opt$addcovar)) {
- #If perm strata are being used, it'll be included as the final column in the phenotype file
+ # If perm strata are being used, it'll be included as the final column in the phenotype file
if (!is.null(opt$pstrata)) {
- covar_names = trait_names[3:length(trait_names) - 1]
+ covar_names = trait_names[2:(length(trait_names)-1)]
} else {
covar_names = trait_names[2:length(trait_names)]
}
covars <- pull.pheno(cross_object, covar_names)
+ # Read in the covar description file
+ covarDescr <- read.table(opt$covarstruct, sep="\t", header=FALSE)
+ for(x in 1:nrow(covarDescr)){
+ cat(covarDescr[x, 1])
+ name <- paste0("T_", covarDescr[x, 1]) # The covar description file doesn't have T_ in trait names (the cross object does)
+ type <- covarDescr[x, 2]
+ if(type == "categorical"){
+ if(length(table(covars[,name])) > 2){ # More then 2 levels create the model matrix for the factor
+ mdata <- data.frame(toExpand = as.factor(covars[, name]))
+ options(na.action='na.pass')
+ modelmatrix <- model.matrix(~ toExpand + 0, mdata)[,-1]
+ covars <- cbind(covars, modelmatrix)
+ }else{ # 2 levels? just bind the trait as covar
+ verbose_print('Binding covars to covars\n')
+ covars <- cbind(covars, covars[,name])
+ }
+ }
+ }
}
# Pull permutation strata out of cross object, if it is being used