--- title: "Biscuiteer User Guide" date: "`r BiocStyle::doc_date()`" package: "`r BiocStyle::pkg_ver('biscuiteer')`" output: BiocStyle::html_document: highlight: pygments toc_float: true fig_width: 8 fig_height: 6 vignette: > %\VignetteEngine{knitr::rmarkdown} %\VignetteIndexEntry{Biscuiteer User Guide} %\VignetteEncoding[utf8]{inputenc} --- # Biscuiteer `biscuiteer` is package to process output from [biscuit](https://github.com/zwdzwd/biscuit) into [bsseq](https://bioconductor.org/packages/bsseq) objects. It includes a number of features, such as VCF header parsing, shrunken M-value calculations (which can be used for compartment inference), and age inference are included. However, the task of locus- and region-level differential methylation inference is delegated to other packages (such as `dmrseq`). # Quick Start ## Installing From Bioconductor, ```{r, eval=FALSE} if (!requireNamespace("BiocManager", quietly=TRUE)) install.packages("BiocManager") BiocManager::install("biscuiteer") ``` A development version is available on GitHub and can be installed via: ```{r, eval=FALSE} if (!requireNamespace("BiocManager", quietly=TRUE)) install.packages("BiocManager") BiocManager::install("trichelab/biscuiteerData") BiocManager::install("trichelab/biscuiteer") ``` ## Loading Data `biscuiteer` can load either headered of header-free BED files produced from `biscuit vcf2bed` or `biscuit mergecg`. In either case, a VCF file is needed when loading `biscuit` output. For practical purposes, only the VCF header is for `biscuiteer`. However, it is encouraged that the user keep the entire VCF, as `biscuit` can be used to call SNVs and allows for structural variant detection in a similar manner to typical whole-genome sequencing tools. Furthermore, `biscuit` records the version of the software and the calling arguments used during processing the output VCF, which allows for better reproducibility. NOTE: Both the input BED and VCF files must be tabix'ed before being input to `biscuiteer`. This can be done by running `bgzip biscuit_output.xxx` followed by `tabix -p xxx biscuit_output.xxx.gz`, where `xxx` is either `bed` or `vcf`. Data can be loaded using the `readBiscuit` function in `biscuiteer`: ```{r} library(biscuiteer) orig_bed <- system.file("extdata", "MCF7_Cunha_chr11p15.bed.gz", package="biscuiteer") orig_vcf <- system.file("extdata", "MCF7_Cunha_header_only.vcf.gz", package="biscuiteer") bisc <- readBiscuit(BEDfile = orig_bed, VCFfile = orig_vcf, merged = FALSE) ``` Metadata from the `biscuit` output can be viewed via: ```{r} biscuitMetadata(bisc) ``` If further information about the VCF header is desired, ```{r} metadata(bisc)$vcfHeader ``` ## Combining Results In the instance where you have two separate BED files that you would like to analyze in a single bsseq object, you can combine the files using `unionize`, which is a wrapper around the bsseq function, `combine`. ```{r} shuf_bed <- system.file("extdata", "MCF7_Cunha_chr11p15_shuffled.bed.gz", package="biscuiteer") shuf_vcf <- system.file("extdata", "MCF7_Cunha_shuffled_header_only.vcf.gz", package="biscuiteer") bisc2 <- readBiscuit(BEDfile = shuf_bed, VCFfile = shuf_vcf, merged = FALSE) comb <- unionize(bisc, bisc2) ``` # Analysis Functionality A handful of analysis paths are available in `biscuiteer`, including A/B comparment inference, age estimation from WGBS data, hypermethylation of Polycomb Repressor Complex (PRC) binding sites, and hypomethylation of CpG-poor "partially methylated domains" (PMDs). ## Inputs for A/B Compartment Inference When performing A/B compartment inference, the goal is to have something that has roughly gaussian error. `getLogitFracMeth` uses Dirichlet smoothing to turn raw measurements into lightly moderated, logit-transformed methylated-fraction estimates, which can the be used as inputs to [compartmap](https://bioconductor.org/packages/release/bioc/html/compartmap.html) ```{r} reg <- GRanges(seqnames = rep("chr11",5), strand = rep("*",5), ranges = IRanges(start = c(0,2.8e6,1.17e7,1.38e7,1.69e7), end= c(2.8e6,1.17e7,1.38e7,1.69e7,2.2e7)) ) frac <- getLogitFracMeth(bisc, minSamp = 1, r = reg) frac ``` ## Age Estimation `biscuiteer` has the functionalitity to guess the age of the sample(s) provided using the Horvath-style "clock" models (see [Horvath, 2013](https://genomebiology.biomedcentral.com/articles/10.1186/gb-2013-14-10-r115) for more information). NOTE: The prediction accuracy of this function is entirely dependent on the parameters set by the user. As such, the defaults (as shown in the example below) should only be used as a starting point for exploration by the user. NOTE: Please cite the appropriate papers for the epigenetic "clock" chosen: * For `horvath` or `horvathshrunk` * Horvath, Genome Biology, 2013 * For `hannum` * Hannum et al., Molecular Cell, 2013 * For `skinandblood` * Horvath et al., Aging, 2018 ```{r} ages <- WGBSage(comb, "horvath") ages ``` ## Hypermethylation of PRCs and Hypomethylation of PMDs To generate a shorthand summary of the hypermethylation of PRCs and hypomethylation of PMDs, the `CpGindex` function in `biscuiteer` can be used. ```{r} bisc.CpGindex <- CpGindex(bisc) show(bisc.CpGindex) bisc.CpGindex@hyperMethRegions ```