#Overview This document describes how to use DEScan2 to detect regions of differential enrichment in epigenomic sequencing data. DEScan2 is an R/Bioconductor based tool, developed for Bioconductor v3.6 and R v3.4.3.
#A typical differential enrichment analysis workflow
library("DEScan2")
library("RUVSeq")
library("edgeR")
##Example data
This analysis will make use of mouse Sono-seq data from mouse chromosome 19. This data is a small portion of data obtained from hippocampus of mice following learning through contextual fear conditioning. The experiment has 4 fear conditioned (FC) and 4 homecage control (HC) replicates. The data was aligned to the mouse genome (mm9) using bowtie2, allowing for multi-mapping reads. Duplicates were removed if present in isolation from duplicated reads relative to genomic location. Aligned data in this example is provided as bed files, but DEScan accepts bam format alignments.
bam.files <- list.files(system.file(file.path("extdata","bam"),
package="DEScan2"),
pattern="bam$", full.names=TRUE)
##Calling peaks for each sample First, peak calling for the samples will be done using the findPeaks function. Bam files are used as input in this case, but bed files work as well (in any case we reccomend to specify a genome code as reference for the data). We will perform this step on a single sample in the interest of time; however, note that a vector of file names can be supplied. If the save flag is set to TRUE the function will produce a sorted bed file for each input file in the folder outputFolder (“peaks” directory is the default). findPeaks implements an adaptive window size scan to find peaks, and requires 2 parameters to define the size of the overlapping windows to be tested for enrichment. Enrichment for each window is calculated relative to minCompWinWidth 5kb, maxCompWinWidth 10kb (local) or the whole chromosome, and the maximum among the three is reported.
Parameter description:
chr if not NULL, a character like “chr#” indicating the chromosomes to use
peaksGRL <- findPeaks(files=bam.files[1], filetype="bam", genomeName="mm9",
binSize=50, minWin=50, maxWin=1000, zthresh=10, minCount=0.1, sigwin=10,
minCompWinWidth=5000, maxCompWinWidth=10000, save=FALSE,
outputFolder="peaks", force=TRUE, onlyStdChrs=TRUE, chr=NULL, verbose=FALSE)
head(peaksGRL)
##Aligning peaks across replicates to produce regions After findPeaks has been run on each sample, the finalRegions function can be used to align overlapping peaks found in multiple samples. Peak files for all the alignment files can be found in the “extdata/peaks” folder. finalRegions will produce a GRanges object containing the locations of the aligned peaks. If the saveFlag is set to TRUE, the function will produce a tab separated value file in the outputFolder.
Parameter description:
peaks.file <- system.file(
file.path("extdata","peaks","RData","peaksGRL_all_files.rds"),
package="DEScan2")
peaksGRL <- readRDS(peaks.file)
regionsGR <- finalRegions(peakSamplesGRangesList=peaksGRL, zThreshold=10,
minCarriers=3, saveFlag=FALSE, outputFolder=NULL, verbose=FALSE)
head(regionsGR)
## GRanges object with 6 ranges and 3 metadata columns:
## seqnames ranges strand | z-score
## <Rle> <IRanges> <Rle> | <numeric>
## chr19.p020_np03_k3 chr19 57220100-57220599 * | 16.3521873140878
## chr19.p021_np06_k6 chr19 57224200-57224799 * | 19.7854222232904
## chr19.p023_np06_k3 chr19 57226800-57228199 * | 18.328051153022
## chr19.p024_np06_k6 chr19 57230800-57231349 * | 25.273156914459
## chr19.p028_np04_k4 chr19 57235750-57236399 * | 13.357911386361
## chr19.p032_np04_k3 chr19 57243400-57244499 * | 14.5673537190538
## n-peaks k-carriers
## <numeric> <numeric>
## chr19.p020_np03_k3 3 3
## chr19.p021_np06_k6 6 6
## chr19.p023_np06_k3 6 3
## chr19.p024_np06_k6 6 6
## chr19.p028_np04_k4 4 4
## chr19.p032_np04_k3 4 3
## -------
## seqinfo: 1 sequence from mm9 genome
The output of this function is a bed-like file with columns indicating genomic coordinates as well as additional columns: AvgZ, average z-score of the peaks combined to form a common region, and NumCarriers, the number of samples a region was present in.
##Counting reads in the final regions The resulting regions can then be used to generate a count matrix using the countFinalRegions function. This function takes the regions to count across (can be any bed like data structure), and the path to files which contain the reads to be counted. Bam files for all the alignment files can be found in the “extdata/bam/” folder. The minimum number of carriers can also be specified in order to speed up the process. In this case we will not specify a minimum number of carriers and will filter after counting. This function is a wrapper for summarizeOverlaps.
bam.path <- system.file(file.path("extdata","bam"), package="DEScan2")
finalRegions <- countFinalRegions(regionsGRanges=regionsGR,
readsFilePath=bam.path, fileType="bam", minCarriers=1,
genomeName="mm9", onlyStdChrs=TRUE, saveFlag=FALSE,
verbose=FALSE)
counts <- SummarizedExperiment::assay(finalRegions)
regions <- SummarizedExperiment::rowRanges(finalRegions)
It returns a SummarizedExperiment object. To obtain the matrix of counts it is necessary to use the assay function. The resulting count matrix contains a row for each region and a column for each sample. This structure is analogous to common RNA-seq data and can be normalized and analyzed with similar tools. Using the function rowRanges the GRanges of the regions will be returned. Using the rownames of the count matrix over the names of the regions, the coordinates of the peaks can be accessed. Moreover, the regions GRanges object can be used to filter out rows of the matrix of counts. Indeed, we will rename and reorder the columns for readability and filter for a minimum of 4 carriers in order to only test relevant regions.
counts <- counts[regions$`k-carriers` >= 4, ]
counts <- counts[rowSums(counts) > 0,]
colnames(counts) <- c("FC1", "FC4", "HC1", "HC4", "FC6", "FC9", "HC6", "HC9")
counts <- counts[,order(colnames(counts))]
head(counts)
## FC1 FC4 FC6 FC9 HC1 HC4 HC6 HC9
## chr19.p021_np06_k6 129 9 50 26 51 46 27 20
## chr19.p024_np06_k6 15 4 21 341 53 56 11 6
## chr19.p028_np04_k4 28 2 33 11 16 25 27 12
## chr19.p036_np04_k4 25 5 18 9 5 43 10 2
## chr19.p043_np04_k4 36 20 42 18 28 48 9 12
## chr19.p048_np04_k4 21 2 4 3 54 36 28 1
##Normalization using RUV
In order to control for “unwanted variation”, e.g., batch, library preparation, and other nuisance effects, the between-sample normalization method RUVs from the RUVSeq package can be utilized. Any normalization method based on total library counts is not appropriate for epigenetic sequencing experiments, as differences in total counts in the count matrix can be due to the treatment of interest.
library(RColorBrewer)
colors <- brewer.pal(3, "Set2")
set <- EDASeq::betweenLaneNormalization(counts, which = "upper")
groups <- matrix(c(1:8), nrow=2, byrow=TRUE)
trt <- factor(c(rep("FC", 4), rep("HC", 4)))
The boxplots of relative log expression (RLE = log-ratio of read count to median read count across sample) and plots of principal components (PC) reveal a clear need for between-sample normalization.
EDASeq::plotRLE(set, outline=FALSE, ylim=c(-4, 4),
col=colors[trt], main="No Normalization RLE")
EDASeq::plotPCA(set, col=colors[trt], main="No Normalization PCA",
labels=FALSE, pch=19)
The parameter k dictates the number of factors of unwanted to variation to remove, in this case we use 4, but this is up for the user to determine. We can see in the PCA plot that after RUVs normalization the first 2 principal components seperate the two groups indicating that the treatment is the major source of variation.
k <- 4
s <- RUVSeq::RUVs(set, cIdx=rownames(set), scIdx=groups, k=k)
EDASeq::plotRLE(s$normalizedCounts, outline=FALSE, ylim=c(-4, 4),
col=colors[trt], main="Normalized RLE")
EDASeq::plotPCA(s$normalizedCounts, col=colors[trt], main="Normalized PCA",
labels=FALSE, pch=19)
##Testing for differential enrichment of regions
Now, we are ready to look for differentially enriched regions, using the negative binomial quasi-likelihood GLM approach implemented in edgeR (see the edgeR package vignette for details). This is done by considering a design matrix that includes both the covariates of interest (here, the treatment status) and the factors of unwanted variation. In the end we get the coordinates of differentially enriched regions by subsetting the regions computed previously.
design <- model.matrix(~0 + trt + s$W)
colnames(design) <- c(levels(trt), paste0("W", 1:k))
y <- edgeR::DGEList(counts=counts, group=trt)
y <- edgeR::estimateDisp(y, design)
fit <- edgeR::glmQLFit(y, design, robust=TRUE)
con <- limma::makeContrasts(FC - HC, levels=design)
qlf <- edgeR::glmQLFTest(fit, contrast=con)
res <- edgeR::topTags(qlf, n=Inf, p.value=0.05)
head(res$table)
## logFC logCPM F PValue FDR
## chr19.p362_np04_k4 2.587 11.83 17.49 0.00003929 0.005186
## chr19.p506_np07_k7 2.005 12.59 11.13 0.00097202 0.047489
## chr19.p254_np07_k5 2.067 13.05 10.93 0.00107929 0.047489
dim(res$table)
## [1] 3 5
regions[rownames(res$table)]
## GRanges object with 3 ranges and 3 metadata columns:
## seqnames ranges strand | z-score
## <Rle> <IRanges> <Rle> | <numeric>
## chr19.p362_np04_k4 chr19 57993950-57994699 * | 18.6356928638869
## chr19.p506_np07_k7 chr19 57619900-57620599 * | 19.7084578663616
## chr19.p254_np07_k5 chr19 57733200-57734949 * | 19.2381044841432
## n-peaks k-carriers
## <numeric> <numeric>
## chr19.p362_np04_k4 4 4
## chr19.p506_np07_k7 7 7
## chr19.p254_np07_k5 7 5
## -------
## seqinfo: 1 sequence from mm9 genome