## ----lib------------------------------------------------------------------- suppressPackageStartupMessages(library(CNPBayes)) suppressPackageStartupMessages(library(SummarizedExperiment)) library(ggplot2) ## ----find_cnps------------------------------------------------------------- se <- readRDS(system.file("extdata", "simulated_se.rds", package="CNPBayes")) grl <- readRDS(system.file("extdata", "grl_deletions.rds", package="CNPBayes")) ## ----summary, message=FALSE------------------------------------------------ cnv.region <- consensusCNP(grl, max.width=5e6) i <- subjectHits(findOverlaps(cnv.region, rowRanges(se))) med.summary <- matrixStats::colMedians(assays(se)[["cn"]][i, ], na.rm=TRUE) ## ----model_construction---------------------------------------------------- mp <- McmcParams(nStarts=5, burnin=500, iter=1000, thin=1) ## ----gibbs----------------------------------------------------------------- model.list <- gibbs(model="SB", dat=med.summary, k_range=c(2, 3), mp=mp, max_burnin=400, top=2) ## ----ggfunctions----------------------------------------------------------- model <- model.list[[1]] model chains <- ggChains(model) chains[[1]] chains[[2]] ## ----posteriorPredictive--------------------------------------------------- tab <- posteriorPredictive(model) tab ggPredictive(model, tab) + xlab("median LRR") ## ----cn_model-------------------------------------------------------------- cn.model <- CopyNumberModel(model) ggMixture(cn.model) ## ----probCopyNumber-------------------------------------------------------- probs <- probCopyNumber(cn.model) head(probs) ## ----downsample------------------------------------------------------------ mb <- MultiBatchModelExample tiled.medians <- tileMedians(y(mb), 200, batch(mb)) tile.summaries <- tileSummaries(tiled.medians) tile.summaries ## ----fit_downsample-------------------------------------------------------- model <- gibbs(model="MB", k_range=c(3, 3), dat=tile.summaries$avgLRR, batches=tile.summaries$batch, mp=mp)[[1]] ## ----upSample-------------------------------------------------------------- model2 <- upSample(model, tiled.medians) model2 ## ----copy-number-model----------------------------------------------------- cn.model <- CopyNumberModel(model2) mapping(cn.model) round(head(probz(cn.model)), 2) round(head(probCopyNumber(cn.model)), 2)