inst/doc/alzheimersVariantsNearMEF2C.R

## ----setup, include = FALSE-------------------------------------------------------------------------------------------
options(width=120)
knitr::opts_chunk$set(
   collapse = TRUE,
   eval=interactive(),
   echo=TRUE,
   comment = "#>"
)

## ---- eval=TRUE, echo=FALSE-------------------------------------------------------------------------------------------
knitr::include_graphics("igvR-mef2c-Alzheimers-demo-zoomedIn.png")


# Load the libraries we need


## ----loadLibraries,  results='hide'-----------------------------------------------------------------------------------
#  library(igvR)
#  library(MotifDb)
#  library(BSgenome.Hsapiens.UCSC.hg19)
#  library(VariantAnnotation)
#  library(AnnotationHub)

## ----createLoad, results='hide'---------------------------------------------------------------------------------------
#  igv <- igvR()
#  setBrowserWindowTitle(igv, "MEF2C")
#  setGenome(igv, "hg19")

## ----showMEF2C,  results='hide'---------------------------------------------------------------------------------------
#  showGenomicRegion(igv, "MEF2C")

## ----roi,  results='hide'---------------------------------------------------------------------------------------------
#  loc <- getGenomicRegion(igv)
#  margin <- 25000
#  bigger.loc <- with(loc, sprintf("%s:%d-%d", chrom, start-margin, end+margin))
#  mef2c.region <- with(loc, GRanges(seqnames=chrom, IRanges(start=start+margin, end=end+margin)))
#  showGenomicRegion(igv, bigger.loc)

## ----data.frame.track,  results='hide'--------------------------------------------------------------------------------
#  load(system.file(package="igvR", "extdata", "tbl.mef2cGWAS.variants.RData"))
#  tbl.mef2cGWAS.variants.bed <- tbl.mef2cGWAS.variants[, c("CHR", "oldPos", "oldPos", "SNP", "P")]
#  tbl.mef2cGWAS.variants.bed$P <- -log10(tbl.mef2cGWAS.variants.bed$P)
#  colnames(tbl.mef2cGWAS.variants.bed) <- c("chrom", "start", "end", "name", "score")
#  track.gwas <- DataFrameAnnotationTrack("IGAP.gwas", tbl.mef2cGWAS.variants.bed, trackHeight=20, color="darkBlue")
#  displayTrack(igv, track.gwas)
#  
#  tbl.mef2cGWAS.variants.bedGraph <-  tbl.mef2cGWAS.variants.bed[, -4]
#  track.gwas.numeric <- DataFrameQuantitativeTrack("IGAP.gwas.scored", tbl.mef2cGWAS.variants.bedGraph, autoscale=TRUE)
#  displayTrack(igv, track.gwas.numeric)
#  

## ----queryAHforPromoters,  results='hide'-----------------------------------------------------------------------------
#  ah <- AnnotationHub()
#  ah.human <- subset(ah, species == "Homo sapiens")
#  #----------------------------------------------------------------------------------------------------
#  # add refseq promoters, available from RefSeq for each transcript which has been identified
#  #----------------------------------------------------------------------------------------------------
#  ah.human.refseq <- query(ah.human, "RefSeq", "hg19", "RefSeq Genes")
#  
#  # download the first set
#  human.refseq <- ah.human.refseq[[1]]
#  gr.promoters <- promoters(human.refseq, upstream=2000, downstream=200)
#    # get rid of score, itemRgb, thick, blocks columns in the mcols, keeping just the transcript name.
#    # these attributes are meaningful for transcript tracks since those include the represenation
#    # of UTRs, introns and exons.   but a promoter is a stretch of DNA for which those distinctions
#    # do not apply
#  mcols(gr.promoters) <- mcols(gr.promoters)[,1]
#  colnames(mcols(gr.promoters)) <- "name"
#  ov <- findOverlaps(gr.promoters, mef2c.region)
#  gr.mef2c.promoters <- gr.promoters[queryHits(ov)]
#  track.promoters <- UCSCBedAnnotationTrack("promoters", gr.mef2c.promoters, color="darkGreen")
#  displayTrack(igv, track.promoters)

## ----overlapPromotersAndVariants,  results='hide'---------------------------------------------------------------------
#  gr.variants <- GRanges(tbl.mef2cGWAS.variants.bed)
#  ov <- findOverlaps(gr.variants, gr.promoters)
#  gr.variantsInPromoters <- gr.variants[queryHits(ov)]
#  track.variantsInPromoters <-GRangesAnnotationTrack("snpInPromoters", gr.variantsInPromoters,
#                                                     color="red", displayMode="EXPANDED")
#  displayTrack(igv, track.variantsInPromoters)

## ----methylationTracks,  results='hide'-------------------------------------------------------------------------------
#  histone.tracks <- query(ah.human, c("H3K4me3", "Gm12878", "Peak", "narrow"))  # 3 tracks
#  descriptions <- histone.tracks$description
#  titles <- histone.tracks$title
#  colors <- rep(terrain.colors(6), 4)
#  color.index <- 0
#  
#  for(i in seq_len(length(histone.tracks))){
#     name <- names(histone.tracks)[i]
#     color.index <- color.index + 1
#     gr <- histone.tracks[[name]]
#     ov <- findOverlaps(gr, mef2c.region)
#     mef2c.histones <- gr[queryHits(ov)]
#     track.histones <- GRangesQuantitativeTrack(titles[i], mef2c.histones[, "pValue"],
#                                                color=colors[color.index], trackHeight=50,
#                                                autoscale=TRUE)
#     displayTrack(igv, track.histones)
#     } # for track
#  

## ----adniVCF,  results='hide'-----------------------------------------------------------------------------------------
#  vcfFilename <- system.file(package="igvR", "extdata", "mef2c-4kb.vcf")
#  vcf <- readVcf(vcfFilename, "hg19")
#  track.vcf <- VariantTrack("AMPAD VCF", vcf, trackHeight=1000)
#  displayTrack(igv, track.vcf)
#  showGenomicRegion(igv, "chr5:88,175,901-88,181,613")
#  

## ----sessionInfo------------------------------------------------------------------------------------------------------
#  sessionInfo()

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igvR documentation built on Nov. 8, 2020, 7:14 p.m.