gatk-3.8/scala/qscript/fullCallingPipeline.q

192 lines
7.9 KiB
Plaintext
Executable File

import org.broadinstitute.sting.gatk.DownsampleType
import org.broadinstitute.sting.gatk.walkers.genotyper.GenotypeCalculationModel.Model
import org.broadinstitute.sting.queue.extensions.gatk._
import org.broadinstitute.sting.queue.QScript
class fullCallingPipeline extends QScript {
qscript =>
@Argument(doc="contigIntervals", shortName="contigIntervals")
var contigIntervals: File = _
@Argument(doc="numContigs", shortName="numContigs")
var numContigs: Int = _
@Argument(doc="project", shortName="project")
var project: String = _
@Input(doc="trigger", shortName="trigger", required=false)
var trigger: File = _
@Input(doc="refseqTable", shortName="refseqTable")
var refseqTable: File = _
@Input(doc="dbsnpTable", shortName="dbsnpTable")
var dbsnpTable: File = _
@Input(doc="Picard FixMateInformation.jar. At the Broad this can be found at /seq/software/picard/current/bin/FixMateInformation.jar. Outside the broad see http://picard.sourceforge.net/")
var picardFixMatesJar: File = _
@Input(doc="intervals")
var intervals: File = _
@Input(doc="bam files", shortName="I")
var bamFiles: List[File] = Nil
@Input(doc="gatk jar")
var gatkJar: File = _
trait CommandLineGATKArgs extends CommandLineGATK {
this.intervals = qscript.intervals
this.jarFile = qscript.gatkJar
}
// ------------ SETUP THE PIPELINE ----------- //
// todo -- the unclean and clean pipelines are the same, so the code can be condensed significantly
def script = {
val projectBase: String = qscript.project
val cleanedBase: String = projectBase + ".cleaned"
val uncleanedBase: String = projectBase + ".uncleaned"
// there are commands that use all the bam files
var cleanBamFiles = List.empty[File]
for ( bam <- bamFiles ) {
// put unclean bams in unclean genotypers
// in advance, create the extension files
val indel_targets = swapExt(bam,"bam","realigner_targets.interval_list")
val cleaned_bam = swapExt(bam,"bam","cleaned.bam") // note-- the scatter is in the definition itself
// create the cleaning commands
val targetCreator = new RealignerTargetCreator with CommandLineGATKArgs
targetCreator.input_file :+= bam
targetCreator.out = indel_targets
val realigner = new IndelRealigner with CommandLineGATKArgs
realigner.input_file = targetCreator.input_file
realigner.intervals = qscript.contigIntervals
//realigner.targetIntervals = targetCreator.out
realigner.targetIntervals = targetCreator.out.getAbsolutePath
realigner.scatterCount = qscript.numContigs
realigner.out = cleaned_bam
realigner.scatterClass = classOf[ContigScatterFunction]
realigner.setupGatherFunction = { case (f: BamGatherFunction, _) => f.jarFile = qscript.picardFixMatesJar }
realigner.jobQueue = "long"
// put clean bams in clean genotypers
cleanBamFiles :+= realigner.out
add(targetCreator,realigner)
}
endToEnd(uncleanedBase,bamFiles)
endToEnd(cleanedBase,cleanBamFiles)
}
def endToEnd(base: String, bamFiles: List[File]) = {
// step through the un-indel-cleaned graph:
// 1a. call snps and indels
val snps = new UnifiedGenotyper with CommandLineGATKArgs
snps.input_file = bamFiles
snps.group :+= "Standard"
snps.annotation :+= "MyHamplotypeScore"
snps.variants_out = new File(base+".vcf")
snps.standard_min_confidence_threshold_for_emitting = Some(10)
snps.min_mapping_quality_score = Some(20)
snps.min_base_quality_score = Some(20)
snps.downsampling_type = Some(DownsampleType.EXPERIMENTAL_BY_SAMPLE)
snps.downsample_to_coverage = Some(200)
// todo -- add input for comps, triggers, etc
if (qscript.trigger != null) {
snps.trigger_min_confidence_threshold_for_calling = Some(30)
snps.rodBind :+= RodBind("trigger", "VCF", qscript.trigger)
}
// todo -- hack -- get this from the command line, or properties
snps.rodBind :+= RodBind( "comp1KG_CEU", "VCF", new File("/humgen/gsa-hpprojects/GATK/data/Comparisons/Unvalidated/1kg_pilot1_projectCalls/CEU.low_coverage.2010_07.sites.hg18.vcf.gz") )
// TODO: what is the 1KG_ALL track?
//snps.rodBind :+= RodBind( "comp1KG_ALL", "VCF", qscript.trigger )
snps.scatterCount = 100
val indels = new UnifiedGenotyper with CommandLineGATKArgs
indels.input_file = bamFiles
indels.variants_out = new File(base+".indels.vcf")
indels.genotype_model = Some(Model.INDELS)
indels.scatterCount = 100
// todo -- add inputs for the indel genotyper
// 1b. genomically annotate SNPs -- slow, but scatter it
val annotated = new GenomicAnnotator with CommandLineGATKArgs
annotated.rodBind :+= RodBind("variant", "VCF", snps.variants_out)
annotated.rodBind :+= RodBind("refseq", "AnnotatorInputTable", qscript.refseqTable)
annotated.rodBind :+= RodBind("dbsnp", "AnnotatorInputTable", qscript.dbsnpTable)
annotated.vcfOutput = swapExt(snps.variants_out,".vcf",".annotated.vcf")
annotated.select :+= "dbsnp.name,dbsnp.refUCSC,dbsnp.strand,dbsnp.observed,dbsnp.avHet"
annotated.rodToIntervalTrackName = "variant"
annotated.scatterCount = 100
// 2.a filter on cluster and near indels
val masker = new VariantFiltration with CommandLineGATKArgs
masker.rodBind :+= RodBind("variant", "VCF", annotated.vcfOutput)
masker.rodBind :+= RodBind("mask", "VCF", indels.variants_out)
masker.maskName = "NearIndel"
masker.clusterWindowSize = Some(20)
masker.clusterSize = Some(7)
masker.out = swapExt(annotated.vcfOutput,".vcf",".indel.masked.vcf")
// todo -- snp cluster args?
// 2.b hand filter with standard filter
val handFilter = new VariantFiltration with CommandLineGATKArgs
handFilter.rodBind :+= RodBind("variant", "VCF", annotated.vcfOutput)
handFilter.rodBind :+= RodBind("mask", "VCF", indels.variants_out)
handFilter.filterName ++= List("StrandBias","AlleleBalance","QualByDepth","HomopolymerRun")
handFilter.filterExpression ++= List("\"SB>=0.10\"","\"AB>=0.75\"","QD<5","\"HRun>=4\"")
handFilter.out = swapExt(annotated.vcfOutput,".vcf",".handfiltered.vcf")
// 3.i generate gaussian clusters on the masked vcf
val clusters = new GenerateVariantClusters with CommandLineGATKArgs
clusters.rodBind :+= RodBind("input", "VCF", masker.out)
//clusters.clusterFile = swapExt(snps.variants_out,".vcf",".cluster")
val clusters_clusterFile = swapExt(snps.variants_out,".vcf",".cluster")
clusters.clusterFile = clusters_clusterFile.getAbsolutePath
clusters.memoryLimit = Some(8)
clusters.jobQueue = "hugemem"
// todo -- args for annotations?
// todo -- args for resources (properties file)
clusters.use_annotation ++= List("QD", "SB", "MyHaplotypeScore", "HRun")
clusters.path_to_resources = "/humgen/gsa-scr1/chartl/sting/R"
// 3.ii apply gaussian clusters to the masked vcf
val recalibrate = new VariantRecalibrator with CommandLineGATKArgs
recalibrate.clusterFile = clusters.clusterFile
recalibrate.rodBind :+= RodBind("input", "VCF", masker.out)
recalibrate.out = swapExt(masker.out,".vcf",".optimized.vcf")
// todo -- inputs for Ti/Tv expectation and other things
recalibrate.target_titv = Some(2.1)
// 3.iii apply variant cuts to the clusters
val cut = new ApplyVariantCuts with CommandLineGATKArgs
cut.rodBind :+= RodBind("input", "VCF", recalibrate.out)
//cut.outputVCFFile = swapExt(recalibrate.out,".vcf",".tranched.vcf")
//cut.tranchesFile = swapExt(recalibrate.out,".vcf",".tranch")
val cut_outputVCFFile = swapExt(recalibrate.out,".vcf",".tranched.vcf")
val cut_tranchesFile = swapExt(recalibrate.out,".vcf",".tranch")
cut.outputVCFFile = cut_outputVCFFile.getAbsolutePath
cut.tranchesFile = cut_tranchesFile.getAbsolutePath
// todo -- fdr inputs, etc
cut.fdr_filter_level = Some(10)
// 4. Variant eval the cut and the hand-filtered vcf files
val eval = new VariantEval with CommandLineGATKArgs
eval.rodBind :+= RodBind("evalOptimized", "VCF", cut_outputVCFFile)
eval.rodBind :+= RodBind("evalHandFiltered", "VCF", handFilter.out)
// todo -- make comp tracks command-line arguments or properties
eval.evalModule ++= List("CountFunctionalClasses", "CompOverlap", "CountVariants", "TiTvVariantEvaluator")
eval.out = new File(base+".eval")
add(snps,indels,annotated,masker,handFilter,clusters,recalibrate,cut,eval)
}
}