--- title: "qtl2fst user guide" output: rmarkdown::html_vignette vignette: > %\VignetteIndexEntry{qtl2fst user guide} %\VignetteEngine{knitr::rmarkdown} \usepackage[utf8]{inputenc} --- ```{r setup, include=FALSE} knitr::opts_chunk$set(echo = TRUE, fig.width = 7, fig.height = 5) ``` Memory usage can be a big obstacle in the use of [R/qtl2](https://kbroman.org/qtl2/), particularly regarding the QTL genotype probabilities calculated by `calc_genoprob()`. For dense markers in multi-parent populations, these can use gigabytes of RAM. This led us to develop ways to store the genotype probabilities on disk. In the present package, we rely on the [fst package](https://www.fstpackage.org), which includes the option to compress the data. Let's first load the R/qtl2 and R/qtl2fst packages. ```{r, load_packages} library(qtl2) library(qtl2fst) ``` In this vignette, we'll give a quick illustration of the [R/qtl2fst](https://github.com/rqtl/qtl2fst) package using the [iron dataset](https://kbroman.org/qtl2/pages/sampledata.html#f2-intercross) included with [R/qtl2](https://kbroman.org/qtl2/). We'll first load the data. ```{r, load_iron_data} iron <- read_cross2(system.file("extdata", "iron.zip", package="qtl2")) ``` Let's calculate the genotype probabilities and convert them to allele probabilities. ```{r, calc_alleleprob} pr <- calc_genoprob(iron, error_prob=0.002) apr <- genoprob_to_alleleprob(pr) ``` Use the function `fst_genoprob()` to write the probabilities to a fst database. You could do the same thing with the allele probabilities. ```{r write_fst_db} tmpdir <- file.path(tempdir(), "iron_genoprob") dir.create(tmpdir) fpr <- fst_genoprob(pr, "pr", tmpdir, quiet=TRUE) fapr <- fst_genoprob(apr, "apr", tmpdir, quiet=TRUE) ``` The genotype probabilities are saved in a set of files, one per chromosome. There is also an RDS index file, which is a copy of the index object returned by `fst_genoprob()`. ```{r list_files} list.files(tmpdir) ``` You can treat the `fpr` and `fapr` objects as if they were the genotype probabilities themselves. For example, use `names()` to get the chromosome names. ```{r, names_fpr} names(fpr) ``` ### Selecting one chromosome If you selecting a chromosome, it will be read from the fst database and into an array. ```{r, read_chromosome} apr_X <- fapr[["X"]] dim(apr_X) ``` You can also use the `$` operator. ```{r} apr_X <- fapr$X dim(apr_X) ``` ### Subsetting by ind, chr, mar You can subset by individuals, chromosome, and markers, with `subset(object,ind,chr,mar)` or `[ind,chr,mar]`. Just the selected portion will be read, and the fst database will not be altered. ```{r subset_fapr} selected_ind <- subset(fapr, ind=1:20, chr=c("2","3")) dim(fapr) ``` You can also subset with brackets in various ways. ```{r subset_brackets} fapr_sub1 <- fapr[1:20, c("2","3")][["3"]] fapr_sub2 <- fapr[,"2"] fapr_sub23 <- fapr[,c("2","3")] fapr_subX <- fapr[,"X"] ``` You can use a third dimension for markers, but be careful that if you select a subset of markers that excludes one or more chromosomes, those will be dropped. ```{r select_markers} dim(subset(fapr, mar=1:30)) dim(fapr[ , , dimnames(fapr)$mar$X[1:2]]) ``` ### Binding by columns or rows Binding by columns (chromosomes) or rows (individuals) may cause creation of a new fst database if input objects arose from different fst databases. However, if objects are subsets of the same `"fst_genoprob"` object, then it reuses the one fst database. Further, if objects have the same directory and file basename for their fst databases, they will be combined without creation of any new fst databases. See `example(cbind.fst_genoprob)` and `example(rbind.fst_genoprob)` with objects having distinct fst databases. Here's column bind (chromosomes). ```{r cbind_fapr, warning=FALSE} fapr_sub223 <- cbind(fapr_sub2,fapr_sub23) ``` And here's row bind (individuals).. ```{r rbind_fapr} f23a <- fapr[1:20, c("2","3")] f23b <- fapr[40:79, c("2","3")] f23 <- rbind(f23a, f23b) ``` Subset on markers. This way only extracts the selected `markers` from the fst database before creating the array. ```{r subset_markers} markers <- dimnames(fapr$X)[[3]][1:2] dim(fapr[,,markers]$X) ``` This way extracts all markers on `X`, creates the array, then subsets on selected `markers`. ```{r extract_markers_chr_X} markers <- dimnames(fapr$X)[[3]] dim(fapr$X[,,markers[1:2]]) ``` Two `"fst_genoprob"` objects using the same database. Combine using `cbind`. Notice that the order of chromosomes is reversed by joining `fapr2` to `fapr3`. Be sure to not overwrite existing fst databases! ```{r cbind_two_subsets} fapr2 <- fst_genoprob(subset(apr, chr="2"), "aprx", tmpdir, quiet=TRUE) fapr3 <- fst_genoprob(subset(apr, chr="3"), "aprx", tmpdir, quiet=TRUE) fapr32 <- cbind(fapr3,fapr2) dim(fapr32) list.files(tmpdir) ``` ### Looking under the hood Let's look under the hood at an `"fst_genoprob"` object. Here are the names of elements it contains: ```{r names_fapr} names(unclass(fapr)) ``` ```{r fapr_fst_path} unclass(fapr)$fst ``` ```{r ind_chr_mar_pieces} sapply(unclass(fapr)[c("ind","chr","mar")], length) ``` An `"fst_genoprob"` object has all the original information. Thus, it is possible to restore the original object from a `subset` (but not necessarily from a `cbind` or `rbind`). Here is an example. ```{r restore_from_subset} fapr23 <- subset(fapr, chr=c("2","3")) dim(fapr23) dim(fst_restore(fapr23)) ``` ### Paths Use `fst_path()` to determine the path to the fst database. ```{r path_to_fpr} fst_path(fpr) ``` If you move the fst database, or if it's using a relative path and you want to work with it from a different directory, use `replace_path()`. ```{r new_path_to_fpr, warning=FALSE} fpr_newpath <- replace_path(fpr, tempdir()) ``` ### Direct construction of the fst database Since the genotype probabilities can be really large, it's very RAM intensive to calculate all of them and then create the database. Instead, you can use `calc_genoprob_fst()` to run `calc_genoprob()` and then `fst_genoprob()` for one chromosome at a time. ```{r calc_genoprob_fst, warning=FALSE} fpr <- calc_genoprob_fst(iron, "pr", tmpdir, error_prob=0.002, overwrite=TRUE) ``` Similarly, `genoprob_to_alleleprob_fst()` will run `genoprob_to_alleleprob()` and then `fst_genoprob()` for one chromosome at a time. ```{r genoprob_to_alleleprob_fst, warning=FALSE} fapr <- genoprob_to_alleleprob_fst(pr, "apr", tmpdir, overwrite=TRUE) ``` ### Genome scans You can use the `fst_genoprob()` object in place of the genotype probabilities, in genome scans with `scan1()`. ```{r genome_scan} Xcovar <- get_x_covar(iron) scan_pr <- scan1(fpr, iron$pheno, Xcovar=Xcovar) find_peaks(scan_pr, iron$pmap, threshold=4) ``` Similarly for calculating QTL coefficients with `scan1coef()` or scan1blup()`: ```{r coef} coef16 <- scan1coef(fpr[,"16"], iron$pheno[,1]) blup16 <- scan1blup(fpr[,"16"], iron$pheno[,1]) ``` ```{r clean_up_files, include=FALSE} unlink(tmpdir) ```