Last updated: 2021-07-29
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Knit directory: implementGMSinCassava/
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File | Version | Author | Date | Message |
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Rmd | 66faadb | wolfemd | 2021-07-29 | Set eval=F in the set-up chunk. VERY rough draft. |
Rmd | 9d1f248 | wolfemd | 2021-07-26 | Initial attempts to extract a VCF from the PHG DB for use in downstream analyses. |
From Evan Long
I put the db and config file on workdir of cbsurobbins this command with tassel should export the VCF (Marnin_imputation.vcf)
/workdir/Cassava_HMII_V3_Marning_imputation_6-18-21.db
/workdir/config.txt
Just got to give path to tassel (I would download a recent version of Tassel5 if you haven’t done so)
./tassel-5-standalone/run_pipeline.pl -Xmx10g -debug -configParameters config.txt -HaplotypeGraphBuilderPlugin -configFile config.txt -includeSequences false -includeVariantContexts true -methods genome_upgma_0.001 -endPlugin -ImportDiploidPathPlugin -pathMethodName Marnin_imputation -endPlugin -PathsToVCFPlugin -outputFile Marnin_imputation -endPlugin
# copy from cbsurobbins workdir to my networked storage
cp config.txt ~/
cp Cassava_HMII_V3_Marning_imputation_6-18-21.db ~/
Since Evan was worried about memory, grab a large mem. machine for myself.
cbsulm14…
cd /workdir/
mkdir mw489/
cp ~/config.txt /workdir/mw489/
cp ~/Cassava_HMII_V3_Marning_imputation_6-18-21.db /workdir/mw489/
screen;
cd /workdir/mw489/
git clone https://bitbucket.org/tasseladmin/tassel-5-standalone.git
./tassel-5-standalone/run_pipeline.pl -Xmx500g -debug -configParameters config.txt -HaplotypeGraphBuilderPlugin -configFile config.txt -includeSequences false -includeVariantContexts true -methods genome_upgma_0.001 -endPlugin -ImportDiploidPathPlugin -pathMethodName Marnin_imputation -endPlugin -PathsToVCFPlugin -outputFile Cassava_HMII_V3_Marning_imputation_6-18-21 -endPlugin
cp Cassava_HMII_V3_Marning_imputation_6-18-21.vcf.gz /home/mw489/implementGMSinCassava/data/
[mw489@cbsulm14 mw489]$ ./tassel-5-standalone/run_pipeline.pl -Xmx500g -debug -configParameters config.txt -HaplotypeGraphBuilderPlugin -configFile config.txt -includeSequences false -includeVariantContexts true -methods genome_upgma_0.001 -endPlugin -ImportDiploidPathPlugin -pathMethodName Marnin_imputation -endPlugin -PathsToVCFPlugin -outputFile Cassava_HMII_V3_Marning_imputation_6-18-21 -endPlugin
./tassel-5-standalone/lib/ahocorasick-0.2.4.jar:./tassel-5-standalone/lib/biojava-alignment-4.0.0.jar:./tassel-5-standalone/lib/biojava-core-4.0.0.jar:./tassel-5-standalone/lib/biojava-phylo-4.0.0.jar:./tassel-5-standalone/lib/colt-1.2.0.jar:./tassel-5-standalone/lib/commons-codec-1.10.jar:./tassel-5-standalone/lib/commons-math3-3.4.1.jar:./tassel-5-standalone/lib/ejml-0.23.jar:./tassel-5-standalone/lib/fastutil-8.2.2.jar:./tassel-5-standalone/lib/forester-1.038.jar:./tassel-5-standalone/lib/gs-core-1.3.jar:./tassel-5-standalone/lib/gs-ui-1.3.jar:./tassel-5-standalone/lib/guava-22.0.jar:./tassel-5-standalone/lib/htsjdk-2.23.0.jar:./tassel-5-standalone/lib/ini4j-0.5.4.jar:./tassel-5-standalone/lib/itextpdf-5.1.0.jar:./tassel-5-standalone/lib/javax.json-1.0.4.jar:./tassel-5-standalone/lib/jcommon-1.0.23.jar:./tassel-5-standalone/lib/jfreechart-1.0.19.jar:./tassel-5-standalone/lib/jfreesvg-3.2.jar:./tassel-5-standalone/lib/jhdf5-14.12.5.jar:./tassel-5-standalone/lib/json-simple-1.1.1.jar:./tassel-5-standalone/lib/junit-4.10.jar:./tassel-5-standalone/lib/kotlin-stdlib-1.4.32.jar:./tassel-5-standalone/lib/kotlin-stdlib-jdk7-1.4.32.jar:./tassel-5-standalone/lib/kotlin-stdlib-jdk8-1.4.32.jar:./tassel-5-standalone/lib/kotlinx-coroutines-core-jvm-1.4.3.jar:./tassel-5-standalone/lib/log4j-1.2.13.jar:./tassel-5-standalone/lib/mail-1.4.jar:./tassel-5-standalone/lib/phg.jar:./tassel-5-standalone/lib/postgresql-9.4-1201.jdbc41.jar:./tassel-5-standalone/lib/scala-library-2.10.1.jar:./tassel-5-standalone/lib/slf4j-api-1.7.10.jar:./tassel-5-standalone/lib/slf4j-simple-1.7.10.jar:./tassel-5-standalone/lib/snappy-java-1.1.1.6.jar:./tassel-5-standalone/lib/sqlite-jdbc-3.8.5-pre1.jar:./tassel-5-standalone/lib/trove-3.0.3.jar:./tassel-5-standalone/sTASSEL.jar
Memory Settings: -Xms512m -Xmx500g
Tassel Pipeline Arguments: -debug -configParameters config.txt -HaplotypeGraphBuilderPlugin -configFile config.txt -includeSequences false -includeVariantContexts true -methods genome_upgma_0.001 -endPlugin -ImportDiploidPathPlugin -pathMethodName Marnin_imputation -endPlugin -PathsToVCFPlugin -outputFile Cassava_HMII_V3_Marning_imputation_6-18-21 -endPlugin
[main] INFO net.maizegenetics.plugindef.ParameterCache - load: loading parameter cache with: config.txt
[main] INFO net.maizegenetics.plugindef.ParameterCache - ParameterCache: key: Xmx value: 100G
[main] INFO net.maizegenetics.plugindef.ParameterCache - ParameterCache: key: DP_poisson_max value: .99
[main] INFO net.maizegenetics.plugindef.ParameterCache - ParameterCache: key: mapQ value: 48
[main] INFO net.maizegenetics.plugindef.ParameterCache - ParameterCache: key: splitTaxa value: false
[main] INFO net.maizegenetics.plugindef.ParameterCache - ParameterCache: key: exportMergedVCF value: /tempFileDir/data/outputs/mergedVCFs/
[main] INFO net.maizegenetics.plugindef.ParameterCache - ParameterCache: key: sentieon_license value: cbsulogin2.tc.cornell.edu:8990
[main] INFO net.maizegenetics.plugindef.ParameterCache - ParameterCache: key: maxNodesPerRange value: 30
[main] INFO net.maizegenetics.plugindef.ParameterCache - ParameterCache: key: DP_poisson_min value: .05
[main] INFO net.maizegenetics.plugindef.ParameterCache - ParameterCache: key: mxDiv value: .001
[main] INFO net.maizegenetics.plugindef.ParameterCache - ParameterCache: key: password value: sqlite
[main] INFO net.maizegenetics.plugindef.ParameterCache - ParameterCache: key: includeVariantContexts value: true
[main] INFO net.maizegenetics.plugindef.ParameterCache - ParameterCache: key: configFile value: config.txt
[main] INFO net.maizegenetics.plugindef.ParameterCache - ParameterCache: key: host value: localHost
[main] INFO net.maizegenetics.plugindef.ParameterCache - ParameterCache: key: DBtype value: sqlite
[main] INFO net.maizegenetics.plugindef.ParameterCache - ParameterCache: key: probCorrect value: 0.95
[main] INFO net.maizegenetics.plugindef.ParameterCache - ParameterCache: key: replaceNsWithMajor value: false
[main] INFO net.maizegenetics.plugindef.ParameterCache - ParameterCache: key: minReads value: 0
[main] INFO net.maizegenetics.plugindef.ParameterCache - ParameterCache: key: useDepth value: false
[main] INFO net.maizegenetics.plugindef.ParameterCache - ParameterCache: key: minTaxa value: 1
[main] INFO net.maizegenetics.plugindef.ParameterCache - ParameterCache: key: minTaxaPerRange value: 1
[main] INFO net.maizegenetics.plugindef.ParameterCache - ParameterCache: key: method value: upgma
[main] INFO net.maizegenetics.plugindef.ParameterCache - ParameterCache: key: emissionMethod value: allCounts
[main] INFO net.maizegenetics.plugindef.ParameterCache - ParameterCache: key: maxError value: 0.2
[main] INFO net.maizegenetics.plugindef.ParameterCache - ParameterCache: key: includeVariants value: true
[main] INFO net.maizegenetics.plugindef.ParameterCache - ParameterCache: key: referenceFasta value: /workdir/eml255/Cassava_PHG_Het/Reference/cassavaV6_chrAndScaffoldsCombined_numeric.fa
[main] INFO net.maizegenetics.plugindef.ParameterCache - ParameterCache: key: numThreads value: 20
[main] INFO net.maizegenetics.plugindef.ParameterCache - ParameterCache: key: maxReadsPerKB value: 5000
[main] INFO net.maizegenetics.plugindef.ParameterCache - ParameterCache: key: GQ_min value: 50
[main] INFO net.maizegenetics.plugindef.ParameterCache - ParameterCache: key: minTransitionProb value: 0.001
[main] INFO net.maizegenetics.plugindef.ParameterCache - ParameterCache: key: filterHets value: t
[main] INFO net.maizegenetics.plugindef.ParameterCache - ParameterCache: key: user value: sqlite
[main] INFO net.maizegenetics.plugindef.ParameterCache - ParameterCache: key: DB value: Cassava_HMII_V3_Marning_imputation_6-18-21.db
[main] INFO net.maizegenetics.tassel.TasselLogging - Tassel Version: 5.2.73 Date: June 23, 2021
[main] INFO net.maizegenetics.tassel.TasselLogging - Max Available Memory Reported by JVM: 512000 MB
[main] INFO net.maizegenetics.tassel.TasselLogging - Java Version: 13.0.2
[main] INFO net.maizegenetics.tassel.TasselLogging - OS: Linux
[main] INFO net.maizegenetics.tassel.TasselLogging - Number of Processors: 112
[main] INFO net.maizegenetics.pipeline.TasselPipeline - Tassel Pipeline Arguments: [-fork1, -HaplotypeGraphBuilderPlugin, -configFile, config.txt, -includeSequences, false, -includeVariantContexts, true, -methods, genome_upgma_0.001, -endPlugin, -ImportDiploidPathPlugin, -pathMethodName, Marnin_imputation, -endPlugin, -PathsToVCFPlugin, -outputFile, Cassava_HMII_V3_Marning_imputation_6-18-21, -endPlugin, -runfork1]
net.maizegenetics.pangenome.api.HaplotypeGraphBuilderPlugin
net.maizegenetics.pangenome.hapCalling.ImportDiploidPathPlugin
net.maizegenetics.pangenome.hapCalling.PathsToVCFPlugin
[pool-1-thread-1] INFO net.maizegenetics.plugindef.AbstractPlugin - Starting net.maizegenetics.pangenome.api.HaplotypeGraphBuilderPlugin: time: Jul 25, 2021 20:11:1
[pool-1-thread-1] INFO net.maizegenetics.plugindef.AbstractPlugin -
HaplotypeGraphBuilderPlugin Parameters
configFile: config.txt
methods: genome_upgma_0.001
includeSequences: false
includeVariantContexts: true
haplotypeIds: null
chromosomes: null
taxa: null
[pool-1-thread-1] INFO net.maizegenetics.pangenome.db_loading.DBLoadingUtils - first connection: dbName from config file = Cassava_HMII_V3_Marning_imputation_6-18-21.db host: localHost user: sqlite type: sqlite
[pool-1-thread-1] INFO net.maizegenetics.pangenome.db_loading.DBLoadingUtils - Database URL: jdbc:sqlite:Cassava_HMII_V3_Marning_imputation_6-18-21.db
[pool-1-thread-1] INFO net.maizegenetics.pangenome.db_loading.DBLoadingUtils - Connected to database:
[pool-1-thread-1] INFO net.maizegenetics.pangenome.api.CreateGraphUtils - referenceRangesAsMap: query statement: select reference_ranges.ref_range_id, chrom, range_start, range_end, methods.name from reference_ranges INNER JOIN ref_range_ref_range_method on ref_range_ref_range_method.ref_range_id=reference_ranges.ref_range_id INNER JOIN methods on ref_range_ref_range_method.method_id = methods.method_id AND methods.method_type = 7 ORDER BY reference_ranges.ref_range_id
methods size: 1
[pool-1-thread-1] INFO net.maizegenetics.pangenome.api.CreateGraphUtils - referenceRangesAsMap: number of reference ranges: 65891
[pool-1-thread-1] INFO net.maizegenetics.pangenome.api.CreateGraphUtils - referenceRangesAsMap: time: 0.442794469 secs.
[pool-1-thread-1] INFO net.maizegenetics.pangenome.api.CreateGraphUtils - taxaListMap: query statement: SELECT gamete_haplotypes.gamete_grp_id, genotypes.line_name FROM gamete_haplotypes INNER JOIN gametes ON gamete_haplotypes.gameteid = gametes.gameteid INNER JOIN genotypes on gametes.genoid = genotypes.genoid ORDER BY gamete_haplotypes.gamete_grp_id;
[pool-1-thread-1] INFO net.maizegenetics.pangenome.api.CreateGraphUtils - taxaListMap: number of taxa lists: 70797
[pool-1-thread-1] INFO net.maizegenetics.pangenome.api.CreateGraphUtils - taxaListMap: time: 3.342730091 secs.
[pool-1-thread-1] INFO net.maizegenetics.pangenome.api.VariantUtils - variantIdsToVariantMap: query statement: SELECT variant_id, chrom, position, ref_allele_id, alt_allele_id FROM variants;
[pool-1-thread-1] INFO net.maizegenetics.pangenome.api.CreateGraphUtils - createHaplotypeNodes: haplotype method: genome_upgma_0.001 range group method: null
[pool-1-thread-1] INFO net.maizegenetics.pangenome.api.CreateGraphUtils - createHaplotypeNodes: query statement: SELECT haplotypes_id, gamete_grp_id, haplotypes.ref_range_id, asm_contig, asm_start_coordinate, asm_end_coordinate, genome_file_id, seq_hash, seq_len, variant_list FROM haplotypes WHERE method_id = 9;
[pool-1-thread-1] INFO net.maizegenetics.pangenome.api.CreateGraphUtils - addNodes: number of nodes: 282582
[pool-1-thread-1] INFO net.maizegenetics.pangenome.api.CreateGraphUtils - addNodes: number of reference ranges: 32493
[pool-1-thread-1] INFO net.maizegenetics.pangenome.api.CreateGraphUtils - createHaplotypeNodes: time: 77.564658867 secs.
[pool-1-thread-1] INFO net.maizegenetics.pangenome.api.HaplotypeGraph - Created graph edges: created when requested number of nodes: 282582 number of reference ranges: 32493
[pool-1-thread-1] INFO net.maizegenetics.plugindef.AbstractPlugin - Finished net.maizegenetics.pangenome.api.HaplotypeGraphBuilderPlugin: time: Jul 25, 2021 20:12:26
[pool-1-thread-1] INFO net.maizegenetics.plugindef.AbstractPlugin - Starting net.maizegenetics.pangenome.hapCalling.ImportDiploidPathPlugin: time: Jul 25, 2021 20:12:26
[pool-1-thread-1] INFO net.maizegenetics.plugindef.AbstractPlugin -
ImportDiploidPathPlugin Parameters
pathMethodName: Marnin_imputation
[pool-1-thread-1] INFO net.maizegenetics.pangenome.db_loading.DBLoadingUtils - first connection: dbName from config file = Cassava_HMII_V3_Marning_imputation_6-18-21.db host: localHost user: sqlite type: sqlite
[pool-1-thread-1] INFO net.maizegenetics.pangenome.db_loading.DBLoadingUtils - Database URL: jdbc:sqlite:Cassava_HMII_V3_Marning_imputation_6-18-21.db
[pool-1-thread-1] INFO net.maizegenetics.pangenome.db_loading.DBLoadingUtils - Connected to database:
[pool-1-thread-1] INFO net.maizegenetics.pangenome.hapCalling.ImportDiploidPathPlugin - importPathsFromDB: query: SELECT line_name, paths_data FROM paths, genotypes, methods WHERE paths.genoid=genotypes.genoid AND methods.method_id=paths.method_id AND methods.name='Marnin_imputation'
[pool-1-thread-1] INFO net.maizegenetics.pangenome.hapCalling.ImportDiploidPathPlugin - importPathsFromDB: number of path list: 12140
[pool-1-thread-1] INFO net.maizegenetics.plugindef.AbstractPlugin - Finished net.maizegenetics.pangenome.hapCalling.ImportDiploidPathPlugin: time: Jul 25, 2021 20:34:27
[pool-1-thread-1] INFO net.maizegenetics.plugindef.AbstractPlugin - Starting net.maizegenetics.pangenome.hapCalling.PathsToVCFPlugin: time: Jul 25, 2021 20:34:27
[pool-1-thread-1] INFO net.maizegenetics.plugindef.AbstractPlugin -
PathsToVCFPlugin Parameters
outputFile: Cassava_HMII_V3_Marning_imputation_6-18-21.vcf
refRangeFileVCF: null
referenceFasta: /workdir/eml255/Cassava_PHG_Het/Reference/cassavaV6_chrAndScaffoldsCombined_numeric.fa
makeDiploid: true
positions: null
[pool-1-thread-1] ERROR net.maizegenetics.plugindef.AbstractPlugin - -referenceFasta: /workdir/eml255/Cassava_PHG_Het/Reference/cassavaV6_chrAndScaffoldsCombined_numeric.fa doesn't exist
[pool-1-thread-1] INFO net.maizegenetics.plugindef.AbstractPlugin -
Usage:
PathsToVCFPlugin <options>
-outputFile <Output VCF File Name> : Output file name (required)
-refRangeFileVCF <Reference Range File> : Reference Range file used to subset the paths for only specified regions of the genome.
-referenceFasta <Reference Genome> : Reference Genome.
-makeDiploid <true | false> : Whether to report haploid paths as homozygousdiploid (Default: true)
-positions <Position List> : Positions to include in VCF. Can be specified by Genotype file (i.e. VCF, Hapmap, etc.), bed file, or json file containing the requested positions.
[mw489@cbsulm14 mw489]$ pwd
/workdir/mw489
[mw489@cbsulm14 mw489]$ ls -lht
total 22G
drwxrwxr-x 6 mw489 mw489 4.0K Jul 25 20:09 tassel-5-standalone
-rwxr-x--- 1 mw489 mw489 22G Jul 25 20:03 Cassava_HMII_V3_Marning_imputation_6-18-21.db
-rwxr-x--- 1 mw489 mw489 1.3K Jul 25 20:02 config.txt
[mw489@cbsulm14 mw489]$
cp /workdir/eml255/Cassava_PHG_Het/Reference/cassavaV6_chrAndScaffoldsCombined_numeric.fa ~/
cbsulm08…
cd /workdir/
mkdir mw489/
cp ~/config_mw.txt /workdir/mw489/
cp ~/Cassava_HMII_V3_Marning_imputation_6-18-21.db /workdir/mw489/
cp ~/cassavaV6_chrAndScaffoldsCombined_numeric.fa /workdir/mw489/
screen;
cd /workdir/mw489/;
git clone https://bitbucket.org/tasseladmin/tassel-5-standalone.git;
./tassel-5-standalone/run_pipeline.pl -Xmx500g -debug \
-configParameters config_mw.txt \
-HaplotypeGraphBuilderPlugin -configFile config_mw.txt \
-includeSequences false \
-includeVariantContexts true \
-methods genome_upgma_0.001 \
-endPlugin \
-ImportDiploidPathPlugin \
-pathMethodName Marnin_imputation \
-endPlugin \
-PathsToVCFPlugin \
-outputFile Cassava_HMII_V3_Marning_imputation_6-18-21 \
-endPlugin > extract_vcf_from_phg.log
cp Cassava_HMII_V3_Marning_imputation_6-18-21.vcf.gz /home/mw489/implementGMSinCassava/data/
FAILS: not enough memory. Wrote a *.vcf
with 12140 indivs and 184032 sites. Evan informs to expect ~4M sites. It terimnated on Chr. 1.
Get the sample list using bcftools query
.
bcftools query --list-samples Cassava_HMII_V3_Marning_imputation_6-18-21.vcf > Cassava_HMII_V3_Marning_imputation_6-18-21.samples
cp Cassava_HMII_V3_Marning_imputation_6-18-21.samples ~/
cp ~/Cassava_HMII_V3_Marning_imputation_6-18-21.samples ~/implementGMSinCassava/output/
This is just precautionary. I want to manually compare to the list of taxa I need, then break the job up accordingly. A future pipeline wouldn’t need (or would arleady have) this taxa list.
library(tidyverse); library(magrittr)
<-read.table(here::here("output","samples2keep_IITA_2021May13.txt"),
samples2keepheader = F, stringsAsFactors = F)$V2
<-read.table(here::here("output","Cassava_HMII_V3_Marning_imputation_6-18-21.samples"),
phg_samplesheader = F, stringsAsFactors = F)$V1
table(samples2keep %in% phg_samples)
%in% phg_samples][1:10] samples2keep[samples2keep
!samples2keep %in% phg_samples][1:10] samples2keep[
!phg_samples %in% samples2keep][1:10] phg_samples[
%>%
samples2keep tibble(FullSampleName=.) %>%
separate(FullSampleName,c("SampleID","GBS_ID"),":",remove = F) %>%
semi_join(tibble(SampleID=phg_samples))
%>%
samples2keep tibble(FullSampleName=.) %>%
separate(FullSampleName,c("SampleID","GBS_ID"),":",remove = F) %>%
anti_join(tibble(SampleID=phg_samples))
%>%
samples2keep tibble(FullSampleName=.) %>%
separate(FullSampleName,c("SampleID","GBS_ID"),":",remove = F) %>%
anti_join(tibble(SampleID=phg_samples)) %$%
%>%
FullSampleName write.table(.,here::here("output","samples2keep_notInPHGdb.txt"),row.names = F, col.names = F, quote = F)
Extract haps from VCF with bcftools
library(tidyverse); library(magrittr)
<-"/home/jj332_cas/marnin/implementGMSinCassava/data/"
pathIn<-pathIn
pathOut<-"AllChrom_RefPanelAndGSprogeny_ReadyForGP_72719"
vcfNamesystem(paste0("bcftools convert --hapsample ",
" ",
pathOut,vcfName,".vcf.gz ")) pathIn,vcfName,
Read haps to R
library(data.table)
<-fread(paste0(pathIn,vcfName,".hap.gz"),
hapsstringsAsFactors = F,header = F) %>%
as.data.frame<-fread(paste0(pathIn,vcfName,".sample"),
sampleidsstringsAsFactors = F,header = F,skip = 2) %>%
as.data.frame
Extract needed GIDs from BLUPs and pedigree: Subset to: (1) genotyped-plus-phenotyped and/or (2) in verified pedigree.
<-readRDS(file=here::here("output",
blups"IITA_blupsForModelTraining_twostage_asreml_2021May10.rds"))
%>%
blups select(Trait,blups) %>%
unnest(blups) %>%
distinct(GID) %$% GID -> gidWithBLUPs
<-gidWithBLUPs[gidWithBLUPs %in% sampleids$V1]
genotypedWithBLUPslength(genotypedWithBLUPs) # 7960
<-read.table(here::here("output","verified_ped.txt"),
pedheader = T, stringsAsFactors = F)
<-union(ped$FullSampleName,
pednamesunion(ped$SireID,ped$DamID))
length(pednames) # 4384
<-union(genotypedWithBLUPs,pednames)
samples2keeplength(samples2keep) # 8013
# write a sample list to disk for downstream purposes
# format suitable for subsetting with --keep in plink
write.table(tibble(FID=0,IID=samples2keep),
file=here::here("output","samples2keep_IITA_2021May13.txt"),
row.names = F, col.names = F, quote = F)
Add sample ID’s
<-sampleids %>%
hapidsselect(V1,V2) %>%
mutate(SampleIndex=1:nrow(.)) %>%
rename(HapA=V1,HapB=V2) %>%
pivot_longer(cols=c(HapA,HapB),
names_to = "Haplo",values_to = "SampleID") %>%
mutate(HapID=paste0(SampleID,"_",Haplo)) %>%
arrange(SampleIndex)
colnames(haps)<-c("Chr","HAP_ID","Pos","REF","ALT",hapids$HapID)
Subset haps
<-hapids %>% filter(SampleID %in% samples2keep)
hapids2keep$HapID
hapids2keepdim(haps) # [1] 68814 43717
<-haps[,c("Chr","HAP_ID","Pos","REF","ALT",hapids2keep$HapID)]
hapsdim(haps) # [1] 68814 16031
Format, transpose, convert to matrix and save!
%<>%
haps mutate(HAP_ID=gsub(":","_",HAP_ID)) %>%
column_to_rownames(var = "HAP_ID") %>%
select(-Chr,-Pos,-REF,-ALT)
%<>% t(.) %>% as.matrix(.)
haps saveRDS(haps,file=here::here("data","haps_IITA_2021May13.rds")
To ensure consistency in allele counting, create dosage from haps manually.
<-haps %>%
dosagesas.data.frame(.) %>%
rownames_to_column(var = "GID") %>%
separate(GID,c("SampleID","Haplo"),"_Hap",remove = T) %>%
select(-Haplo) %>%
group_by(SampleID) %>%
summarise(across(everything(),~sum(.))) %>%
ungroup() %>%
column_to_rownames(var = "SampleID") %>%
as.matrixsaveRDS(dosages,file=here::here("data","dosages_IITA_2021May13.rds"))
# > dim(dosages)
# [1] 8013 68814
Apply a MAF filter and lightly LD prune: The number of markers in the “raw” dataset (~68K) is ~3X the number used in the mate selection paper and I think more than is necessary. There is a burden incurred because we have to compute and store in memory (and on disk) \(N_{snp} \times N_{snp}\) recombination frequency matrices.
# library(tidyverse); library(magrittr)
# pathIn<-"/home/jj332_cas/marnin/implementGMSinCassava/data/"
# pathOut<-pathIn
# vcfName<-"AllChrom_RefPanelAndGSprogeny_ReadyForGP_72719"
#
# write.table(tibble(FID=0,IID=samples2keep),
# file=here::here("output","samples2keep_IITA_2021May13.txt"),
# row.names = F, col.names = F, quote = F)
#
# ped2check<-read.table(file=here::here("output","ped2genos.txt"),
# header = F, stringsAsFactors = F)
#
# # pednames<-union(ped2check$V1,union(ped2check$V2,ped2check$V3)) %>%
# # tibble(FID=0,IID=.)
# # write.table(pednames,file=here::here("output","pednames2keep.txt"),
# # row.names = F, col.names = F, quote = F)
cd /home/jj332_cas/marnin/implementGMSinCassava/
export PATH=/programs/plink-1.9-x86_64-beta3.30:$PATH;
plink --bfile data/AllChrom_RefPanelAndGSprogeny_ReadyForGP_72719 \
--keep output/samples2keep_IITA_2021May13.txt \
--maf 0.01 \
--indep-pairwise 50 25 0.98 \
--out output/samples2keep_IITA_MAFpt01_prune50_25_pt98;
Used plink to output a list of pruned SNPs.
Next, subset the columns of haps
and dosages
in R.
library(tidyverse); library(magrittr);
<-readRDS(file=here::here("data","haps_IITA_2021May13.rds"))
haps<-readRDS(file=here::here("data","dosages_IITA_2021May13.rds"))
dosages<-read.table(here::here("output",
snps2keep"samples2keep_IITA_MAFpt01_prune50_25_pt98.prune.in"),
header = F, stringsAsFactors = F)
<-tibble(HapSNP_ID=colnames(haps)) %>%
snps2keepseparate(HapSNP_ID,c("Chr","Pos","Ref","Alt"),remove = F) %>%
mutate(SNP_ID=paste0("S",Chr,"_",Pos)) %>%
filter(SNP_ID %in% snps2keep$V1)
<-haps[,snps2keep$HapSNP_ID]
haps<-dosages[,snps2keep$HapSNP_ID]
dosages
# dim(haps); dim(dosages); haps[1:5,1:10]
saveRDS(haps,file=here::here("data","haps_IITA_filtered_2021May13.rds"))
saveRDS(dosages,file=here::here("data","dosages_IITA_filtered_2021May13.rds"))
# activate multithread OpenBLAS for fast matrix algebra
export OMP_NUM_THREADS=56
<-readRDS(file=here::here("data","dosages_IITA_filtered_2021May13.rds"))
dosages<-predCrossVar::kinship(dosages,type="add")
A<-predCrossVar::kinship(dosages,type="dom")
DsaveRDS(A,file=here::here("output","kinship_A_IITA_2021May13.rds"))
saveRDS(D,file=here::here("output","kinship_D_IITA_2021May13.rds"))
cd /home/mw489/implementGMSinCassava/;
screen;
singularity shell rocker.sif; R
<-readRDS(file=here::here("data","dosages_IITA_filtered_2021May13.rds"))
dosagessource(here::here("code","gsFunctions.R"))
::blas_set_num_threads(56)
RhpcBLASctl<-kinship(dosages,type="domGenotypic")
DsaveRDS(D,file=here::here("output","kinship_domGenotypic_IITA_2021July5.rds"))
cp -r /home/jj332_cas/CassavaGenotypeData/CassavaGeneticMap /home/jj332_cas/marnin/implementGMSinCassava/data/
# activate multithread OpenBLAS for fast matrix algebra
export OMP_NUM_THREADS=56
Creating the map used for Beagle-imputation in 2019: In 2019, I obtained a ICGMC-derived genetic map, I think from Guillaume Bauchet and used it to create a map I’ve been using for imputation, which has 25K markers (Beagle interpolates the map to the markers genotyped in the panel).
However, the recombination frequency matrix and thus cross-variance predictions needs to have all positions for which we have marker effects. It means I have to interpolate a map from the original file cassava_cM_pred.v6.allchr.txt
. See below:
library(tidyverse); library(magrittr)
<-readRDS(file=here::here("data","dosages_IITA_filtered_2021May13.rds"))
dosages# genmap<-tibble(Chr=1:18) %>%
# mutate(geneticMap=map(Chr,~read.table(here::here("data/CassavaGeneticMap",
# paste0("chr",.,"_cassava_cM_pred.v6_91019.map")),
# header = F, stringsAsFactors = F)))
<-read.table(here::here("data/CassavaGeneticMap",
genmap"cassava_cM_pred.v6.allchr.txt"),
header = F, stringsAsFactors = F,sep=';') %>%
rename(SNP_ID=V1,Pos=V2,cM=V3) %>%
as_tibble
<-tibble(DoseSNP_ID=colnames(dosages)) %>%
snps_genmapseparate(DoseSNP_ID,c("Chr","Pos","Ref","Alt"),remove = F) %>%
mutate(SNP_ID=paste0("S",Chr,"_",Pos)) %>%
left_join(genmap %>% mutate(across(everything(),as.character)))
# snps_genmap %>%
# ggplot(.,aes(x=as.integer(Pos),y=as.numeric(cM))) +
# geom_point() +
# theme_bw() +
# facet_wrap(~Chr)
<-function(data){
interpolate_genmap# for each chromosome map
# find and _decrements_ in the genetic map distance
# fix them to the cumulative max to force map to be only increasing
# fit a spline for each chromosome
# Use it to predict values for positions not previously on the map
# fix them AGAIN (in case) to the cumulative max, forcing map to only increase
<-data %>%
data_forsplinefilter(!is.na(cM)) %>%
mutate(cumMax=cummax(cM),
cumIncrement=cM-cumMax) %>%
filter(cumIncrement>=0) %>%
select(-cumMax,-cumIncrement)
<-data_forspline %$% smooth.spline(x=Pos,y=cM,spar = 0.75)
spline
<-predict(spline,x = data$Pos) %>%
splinemapas_tibble(.) %>%
rename(Pos=x,cM=y) %>%
mutate(cumMax=cummax(cM),
cumIncrement=cM-cumMax) %>%
mutate(cM=cumMax) %>%
select(-cumMax,-cumIncrement)
return(splinemap)
}
<-snps_genmap %>%
splined_snps_genmapselect(-cM) %>%
mutate(Pos=as.numeric(Pos)) %>%
left_join(snps_genmap %>%
mutate(across(c(Pos,cM),as.numeric)) %>%
arrange(Chr,Pos) %>%
nest(-Chr) %>%
mutate(data=map(data,interpolate_genmap)) %>%
unnest(data)) %>%
distinct
all(splined_snps_genmap$DoseSNP_ID == colnames(dosages))
# [1] TRUE
saveRDS(splined_snps_genmap,file=here::here("data","genmap_2021May13.rds"))
%>%
splined_snps_genmap mutate(Map="Spline") %>%
bind_rows(snps_genmap %>%
mutate(across(c(Pos,cM),as.numeric)) %>%
arrange(Chr,Pos) %>% mutate(Map="Data")) %>%
ggplot(.,aes(x=Pos,y=cM,color=Map),alpha=0.5,size=0.75) +
geom_point() +
theme_bw() + facet_wrap(~as.integer(Chr), scales='free_x')
Construct a matrix of recombination frequencies at loci for all study loci. Pre-compute 1-2c to save time predicting cross variance.
library(predCrossVar)
<-readRDS(file=here::here("data","genmap_2021May13.rds"))
genmap<-genmap$cM;
mnames(m)<-genmap$DoseSNP_ID
<-1-(2*genmap2recombfreq(m,nChr = 18))
recombFreqMatsaveRDS(recombFreqMat,file=here::here("data","recombFreqMat_1minus2c_2021May13.rds"))
sessionInfo()