title: "gQTLBase: infrastructure for storage and interrogation of eQTL, mQTL, dsQTL etc. archives" author: "Vincent J. Carey, stvjc at channing.harvard.edu" date: "January 2015" output: BiocStyle::html_document: highlight: pygments number_sections: true theme: united toc: true BiocStyle::pdf_document: toc: true number_sections: true
BiocStyle::markdown()
It is well-recognized that cis-eQTL searches with dense genotyping yields billions of test results. While many are consistent with no association, it is hard to draw an objective threshold, and targeted analysis may reveal signals of interest that do not deserve penalization for genome-wide search.
We recently performed a comprehensive cis-eQTL search with the GEUVADIS FPKM expression measures. The most prevalent transcript types in this dataset are
litt = structure(c(15280L, 4853L, 1450L, 1153L, 476L, 114L), .Dim = 6L, .Dimnames = structure(list( c("protein_coding", "pseudogene", "antisense", "lincRNA", "processed_transcript", "IG_V_gene")), .Names = "") ) litt
cis-associated variation in abundance of
these entities
was assessed using 20 million 1000 genomes genotypes with
radius 1 million bases around each transcribed region. There are
185 million SNP-transcript pairs in this analysis. This
package (r Biocpkg("gQTLBase")
) aims to simplify interactive interrogation of
this resource.
The following function takes as argument 'chunk' a list with elements
chr (character token for indexing chromosomes in
genotype data in VCF) and genes (vector of gene identifiers).
It implicitly uses a TabixFile
reference to acquire genotypes
on the samples managed in the r Biocexptpkg("geuvPack")
package.
gettests = function( chunk, useS3=FALSE ) { library(VariantAnnotation) snpsp = gtpath( chunk$chr, useS3=useS3) tf = TabixFile( snpsp ) library(geuvPack) if (!exists("geuFPKM")) data(geuFPKM) clipped = clipPCs(regressOut(geuFPKM, ~popcode), 1:10) set.seed(54321) ans = cisAssoc( clipped[ chunk$genes, ], tf, cisradius=1000000, lbmaf=0.01 ) metadata(ans)$prepString = "clipPCs(regressOut(geuFPKM, ~popcode), 1:10)" ans }
cisAssoc
returns a GRanges
instance with fields relevant to computing
FDR for cis association.
A r CRANpkg("BatchJobs")
registry is created as follows:
flatReg = makeRegistry("flatReg", file.dir="flatStore", seed=123, packages=c("GenomicRanges", "VariantAnnotation", "Rsamtools", "geuvPack", "GenomeInfoDb"))
For any list 'flatlist' of pairs (chr, genes), the following code asks the scheduler to run gettests on every element, when it can. Using the Channing cumulus cloud, the job ran on 40 hosts at a cost of 170 USD.
batchMap(flatReg, gettests, flatlist) submitJobs(flatReg)
This creates a 'sharded' archive of 7GB of results managed by a Registry object.
We have extracted 3 shards from the job for illustration with the
r Biocpkg("gQTLBase")
package.
suppressPackageStartupMessages({ library(BiocGenerics) library(Homo.sapiens) library(stats4) library(IRanges) library(gQTLBase) library(geuvStore2) options(BBmisc.ProgressBar.style="off") })
library(gQTLBase) library(geuvStore2) mm = makeGeuvStore2() mm
mm
here is an instance of the ciseStore
class.
This is a BatchJobs Registry
wrapped
with additional information concerning the
map from identifiers or ranges to jobs in the
registry.
There are various approaches available to get results out of the store. At present we don't want a full API for result-level operations, so work from BatchJobs directly:
loadResult(mm@reg, 1)[1:3]
On a multicore machine or cluster, we can visit job results in parallel.
The storeApply
function uses r CRANpkg("BatchJobs")
reduceResultsList
to transform
job results by a user-supplied function. The reduction events
occur in parallel through r Biocpkg("BiocParallel")
bplapply
over a set
of job id chunks whose character can be controlled through
the n.chunks
parameter.
We'll illustrate by taking the length of each result.
library(BiocParallel) library(parallel) mp = MulticoreParam(workers=max(c(1, detectCores()-4))) register(mp)
lens = storeApply(mm, length) summary(unlist(lens))
It is possible to limit the scope of application by setting the
ids
parameter in storeApply
.
For a known GEUVADIS Ensembl identifier (or vector thereof) we can acquire all cis association test results as follows.
pvec = mm@probemap[1:4,1] # don't want API for map, just getting examples litex = extractByProbes( mm, pvec ) length(litex) litex[1:3]
We also have extractByRanges.
In the gQTLstats package,
we will use the plug-in FDR algorithm of Hastie, Tibshirani and
Friedman Elements of Statistical Learning ch. 18.7, algorithm
18.3. We will not handle hundreds of millions of scores directly
in a holistic way, except for the estimation of quantiles of the observed
association scores. This particular step is carried out
using r CRANpkg("ff")
and
r CRANpkg("ffbase")
packages. We illustrate with our subset of GEUVADIS scores.
allassoc = storeToFf(mm, "chisq") length(allassoc) object.size(allassoc) allassoc[1:4]
Refer to the r Biocpkg("gQTLstats")
package for additional
functions that generate quantile estimates, histograms, and
FDR estimates based on ciseStore
contents and various
filtrations thereof.
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