## ----style-knitr, eval=TRUE, echo=FALSE, results="asis"-------------------- BiocStyle::latex2() ## ----load-purecn, echo=FALSE, message=FALSE-------------------------------- library(PureCN) set.seed(1234) ## ----examplecoverage------------------------------------------------------- bam.file <- system.file("extdata", "ex1.bam", package="PureCN", mustWork = TRUE) interval.file <- system.file("extdata", "ex1_intervals.txt", package="PureCN", mustWork = TRUE) calculateBamCoverageByInterval(bam.file=bam.file, interval.file=interval.file, output.file="ex1_coverage.txt") ## ----examplegc------------------------------------------------------------- interval.file <- system.file("extdata", "ex2_intervals.txt", package = "PureCN", mustWork = TRUE) reference.file <- system.file("extdata", "ex2_reference.fa", package = "PureCN", mustWork = TRUE) calculateGCContentByInterval(interval.file, reference.file, output.file = "ex2_gc_file.txt") ## ----examplegc2------------------------------------------------------------ bed.file <- system.file("extdata", "ex2_intervals.bed", package = "PureCN", mustWork = TRUE) intervals <- import(bed.file) calculateGCContentByInterval(intervals, reference.file, output.file = "ex2_gc_file.txt") ## ----example_files, message=FALSE, warning=FALSE, results='hide'----------- library(PureCN) normal.coverage.file <- system.file("extdata", "example_normal.txt", package="PureCN") normal2.coverage.file <- system.file("extdata", "example_normal2.txt", package="PureCN") normal.coverage.files <- c(normal.coverage.file, normal2.coverage.file) tumor.coverage.file <- system.file("extdata", "example_tumor.txt", package="PureCN") seg.file <- system.file("extdata", "example_seg.txt", package = "PureCN") vcf.file <- system.file("extdata", "example_vcf.vcf", package="PureCN") gc.gene.file <- system.file("extdata", "example_gc.gene.file.txt", package="PureCN") ## ----figuregccorrect, fig.show='hide', fig.width=7, fig.height=4, warning=FALSE---- correctCoverageBias(normal.coverage.file, gc.gene.file, output.file="example_normal_loess.txt", plot.gc.bias=TRUE) ## ----normaldb-------------------------------------------------------------- normalDB <- createNormalDatabase(normal.coverage.files) # serialize, so that we need to do this only once for each assay saveRDS(normalDB, file="normalDB.rds") ## ----normaldbpca----------------------------------------------------------- normalDB <- readRDS("normalDB.rds") # get the best normal best.normal.coverage.file <- findBestNormal(tumor.coverage.file, normalDB) ## ----normaldbpcapool------------------------------------------------------- # get the best 2 normals and average them pool <- findBestNormal(tumor.coverage.file, normalDB, num.normals=2, pool=TRUE, remove.chrs=c("chrX", "chrY")) ## ----targetweightfile1, message=FALSE-------------------------------------- target.weight.file <- "target_weights.txt" createTargetWeights(tumor.coverage.file, normal.coverage.files, target.weight.file) ## ----ucsc_segmental-------------------------------------------------------- # Instead of using a pool of normals to find low quality regions, # we use suitable BED files, for example from the UCSC genome browser. # We do not download these in this vignette to avoid build failures # due to internet connectivity problems. downloadFromUCSC <- FALSE if (downloadFromUCSC) { library(rtracklayer) mySession <- browserSession("UCSC") genome(mySession) <- "hg19" simpleRepeats <- track( ucscTableQuery(mySession, track="Simple Repeats", table="simpleRepeat")) export(simpleRepeats, "hg19_simpleRepeats.bed") # when off-target reads are used, we can provide one of the # whole-genome blacklists tracks # hg19_DukeBlacklist <- track( ucscTableQuery(mySession, # track="Mappability", # table="wgEncodeDukeMapabilityRegionsExcludable")) # export(hg19_DukeBlacklist, "hg19_DukeBlacklist.bed") } snp.blacklist <- "hg19_simpleRepeats.bed" ## ----runpurecn------------------------------------------------------------- ret <-runAbsoluteCN(normal.coverage.file=pool, # normal.coverage.file=normal.coverage.file, tumor.coverage.file=tumor.coverage.file, vcf.file=vcf.file, genome="hg19", sampleid="Sample1", gc.gene.file=gc.gene.file, normalDB=normalDB, # args.setMappingBiasVcf=list(normal.panel.vcf.file=normal.panel.vcf.file), # args.filterVcf=list(snp.blacklist=snp.blacklist, # stats.file=mutect.stats.file), args.segmentation=list(target.weight.file=target.weight.file), post.optimize=FALSE, plot.cnv=FALSE, verbose=FALSE) ## ----createoutput---------------------------------------------------------- file.rds <- "Sample1_PureCN.rds" saveRDS(ret, file=file.rds) pdf("Sample1_PureCN.pdf", width=10, height=11) plotAbs(ret, type="all") dev.off() ## ----figureexample1, fig.show='hide', fig.width=6, fig.height=6------------ plotAbs(ret, type="overview") ## ----figureexample2, fig.show='hide', fig.width=6, fig.height=6------------ plotAbs(ret, 1, type="hist") ## ----figureexample3, fig.show='hide', fig.width=8, fig.height=8------------ plotAbs(ret, 1, type="BAF") ## ----figureexample3b, fig.show='hide', fig.width=9, fig.height=8----------- plotAbs(ret, 1, type="BAF", chr="chr19") ## ----figureexample4, fig.show='hide', fig.width=8, fig.height=8------------ plotAbs(ret, 1, type="AF") ## ----output1--------------------------------------------------------------- names(ret) ## ----output3--------------------------------------------------------------- head(predictSomatic(ret), 3) ## ----output4--------------------------------------------------------------- vcf <- predictSomatic(ret, return.vcf=TRUE) writeVcf(vcf, file="Sample1_PureCN.vcf") ## ----calling2-------------------------------------------------------------- gene.calls <- callAlterations(ret) head(gene.calls) ## ----loh------------------------------------------------------------------- loh <- callLOH(ret) head(loh) ## ----curationfile---------------------------------------------------------- createCurationFile(file.rds) ## ----readcurationfile------------------------------------------------------ ret <- readCurationFile(file.rds) ## ----curationfileshow------------------------------------------------------ read.csv("Sample1_PureCN.csv") ## ----customseg------------------------------------------------------------- retSegmented <- runAbsoluteCN(seg.file=seg.file, gc.gene.file=gc.gene.file, vcf.file=vcf.file, max.candidate.solutions=1, genome="hg19", test.purity=seq(0.3,0.7,by=0.05), verbose=FALSE, plot.cnv=FALSE) ## ----figurecustombaf, fig.show='hide', fig.width=8, fig.height=8----------- plotAbs(retSegmented, 1, type="BAF") ## ----customlogratio, message=FALSE----------------------------------------- # We still use the log-ratio exactly as normalized by PureCN for this # example log.ratio <- calculateLogRatio(readCoverageFile(normal.coverage.file), readCoverageFile(tumor.coverage.file)) retLogRatio <- runAbsoluteCN(log.ratio=log.ratio, gc.gene.file=gc.gene.file, vcf.file=vcf.file, max.candidate.solutions=1, genome="hg19", test.purity=seq(0.3,0.7,by=0.05), verbose=FALSE, normalDB=normalDB, plot.cnv=FALSE) ## ----power1, fig.show='hide', fig.width=6, fig.height=6-------------------- purity <- c(0.1,0.15,0.2,0.25,0.4,0.6,1) coverage <- seq(5,35,1) power <- lapply(purity, function(p) sapply(coverage, function(cv) calculatePowerDetectSomatic(coverage=cv, purity=p, ploidy=2, verbose=FALSE)$power)) # Figure S7b in Carter et al. plot(coverage, power[[1]], col=1, xlab="Sequence coverage", ylab="Detection power", ylim=c(0,1), type="l") for (i in 2:length(power)) lines(coverage, power[[i]], col=i) abline(h=0.8, lty=2, col="grey") legend("bottomright", legend=paste("Purity", purity), fill=seq_along(purity)) ## ----power2, fig.show='hide', fig.width=6, fig.height=6-------------------- coverage <- seq(5,350,1) power <- lapply(purity, function(p) sapply(coverage, function(cv) calculatePowerDetectSomatic(coverage=cv, purity=p, ploidy=2, cell.fraction=0.2, verbose=FALSE)$power)) plot(coverage, power[[1]], col=1, xlab="Sequence coverage", ylab="Detection power", ylim=c(0,1), type="l") for (i in 2:length(power)) lines(coverage, power[[i]], col=i) abline(h=0.8, lty=2, col="grey") legend("bottomright", legend=paste("Purity", purity), fill=seq_along(purity)) ## ----annotatesymbols, message=FALSE, warning=FALSE------------------------- library(TxDb.Hsapiens.UCSC.hg19.knownGene) library(org.Hs.eg.db) .annotateIntervals <- function(gc.gene.file, txdb, output.file = NULL) { gc <- read.delim(gc.gene.file, as.is=TRUE) # misuse this function to convert interval string into data.frame gc.data <- readCoverageFile(gc.gene.file) grGC <- GRanges(seqnames=gc.data$chr, IRanges(start=gc.data$probe_start, end=gc.data$probe_end)) id <- transcriptsByOverlaps(txdb, ranges=grGC, columns = "GENEID") id$SYMBOL <-select(org.Hs.eg.db, as.character(id$GENEID), "SYMBOL")[,2] gc$Gene <- id$SYMBOL[findOverlaps(grGC, id, select="first")] if (!is.null(output.file)) { write.table(gc, file = output.file, row.names = FALSE, quote = FALSE, sep = "\t") } invisible(gc) } .annotateIntervals(gc.gene.file, TxDb.Hsapiens.UCSC.hg19.knownGene) ## ----sessioninfo, results='asis', echo=FALSE------------------------------- toLatex(sessionInfo())