freeseek / score

Tools to work with GWAS-VCF summary statistics files

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score

A set of tools to work with summary statistics files following the GWAS-VCF specification. We encourage users to adopt the GWAS-VCF specification rather than the GWAS-SSF specification promoted by the GWAS catalog as the latter is affected by issues and furthermore we believe that many common uses are better addressed by using the more general VCF specification. If you are planning to publish your summary statistics, we encourage you to submit them as GWAS-VCF files or as both GWAS-VCF and as GWAS-SSF files. The latter can be generated from the former with the following command

(echo -e "chromosome\tbase_pair_location\teffect_allele\tother_allele\tbeta\tstandard_error\teffect_allele_frequency\tp_value";
bcftools query -s SM -f "%CHROM\t%POS\t%ALT\t%REF[\t%ES\t%SE\t%AF\t%LP]\n" gwas-vcf.vcf | \
  sed 's/^chr//;s/^X/23/;s/^Y/24/;s/^MT/25/;s/^M/25/;s/\t\./\tNA/g' | awk -F"\t" -v OFS="\t" '{$8=10^(-$8); print}') > gwas-ssf.tsv

If you use BCFtools/liftover in your publication, please cite the following paper from 2024

Genovese G., McCarroll S. et al. BCFtools/liftover: an accurate and comprehensive tool to convert genetic variants across genome assemblies. Bioinformatics 40, Issue 2 (2024). [PMID: 38261650] [DOI: 10.1093/bioinformatics/btae038]

If you use BCFtools/blup or BCFtools/pgs in your publication, please cite the following paper from 2023

Nowbandegani P., O’Connor L.J. et al. (2023) Extremely sparse models of linkage disequilibrium in ancestrally diverse association studies. Nat Genet, 55, 1494–1502. [PMID: 37640881] [DOI: 10.1038/s41588-023-01487-8]

If you use BCFtools/metal in your publication, please cite the following paper from 2010

Willer, C. J., Li, Y. & Abecasis, G. R. (2010) METAL: fast and efficient meta-analysis of genomewide association scans. Bioinformatics 26, 2190–2191. [PMID: 20616382] [DOI: 10.1093/bioinformatics/btq340]

If you use any of the other tools in your publication, please cite this website. For any feedback or questions, contact the author

Examples of how to convert existing summary statistics to polygenic score loadings using BCFtools/munge, BCFtools/liftover, and BCFtools/pgs can be found here

Usage

Polygenic score tool:

Usage: bcftools +score [options] <in.vcf.gz> [<score1.gwas.vcf.gz> <score2.gwas.vcf.gz> ...]
Plugin options:
       --use <tag>               FORMAT tag to use to compute allele dosages: GP, AP, HDS, DS, GT, AS
       --summaries <dir|file>    summary statistics files from directory or list from file
       --q-score-thr LIST        comma separated list of p-value thresholds
       --counts                  include SNP counts in the output table
   -o, --output <file.tsv>       write output to a file [standard output]
       --sample-header           output header for sample ID column [SAMPLE]
   -e, --exclude <expr>          exclude sites for which the expression is true
   -f, --apply-filters <list>    require at least one of the listed FILTER strings (e.g. "PASS,.")
   -i, --include <expr>          select sites for which the expression is true
   -r, --regions <region>        restrict to comma-separated list of regions
   -R, --regions-file <file>     restrict to regions listed in a file
       --regions-overlap 0|1|2   Include if POS in the region (0), record overlaps (1), variant overlaps (2) [1]
   -t, --targets [^]<region>     restrict to comma-separated list of regions. Exclude regions with "^" prefix
   -T, --targets-file [^]<file>  restrict to regions listed in a file. Exclude regions with "^" prefix
       --targets-overlap 0|1|2   Include if POS in the region (0), record overlaps (1), variant overlaps (2) [0]
   -s, --samples [^]<list>       comma separated list of samples to include (or exclude with "^" prefix)
   -S, --samples-file [^]<file>  file of samples to include (or exclude with "^" prefix)
       --force-samples           only warn about unknown subset samples

TSV Summary Statistics Options:
   -c, --columns <preset>        column headers from preset (PLINK/PLINK2/REGENIE/SAIGE/BOLT/METAL/PGS/SSF)
   -C, --columns-file <file>     column headers from tab-delimited file
       --use-variant-id          use variant_id to match variants rather than chromosome and base_pair_location

Examples:
   bcftools +score --use DS -o scores.tsv input.bcf -c PLINK score.assoc
   bcftools +score --use DS -o scores.tsv input.bcf -C colheaders.tsv PGC3_SCZ_wave3_public.clumped.v2.tsv.gz
   bcftools +score --use GT -o scores.tsv --q-score-thr 1e-8,1e-7,1e-6,1e-5,1e-4,0.001,0.01,0.05 input.bcf -c GWAS-SSF PGS000001.txt.gz
   bcftools +score --use DS -o scores.tsv -i 'INFO>0.8 && AF>0.01 && AF<0.99' input.bcf -c GWAS-SSF PGS000001.txt.gz PGS000002.txt.gz

Munge summary statistics tool:

Usage: bcftools +munge [options] <score.gwas.ssf.tsv>
Plugin options:
   -c, --columns <preset>          column headers from preset (PLINK/PLINK2/REGENIE/SAIGE/BOLT/METAL/PGS/SSF)
   -C, --columns-file <file>       column headers from tab-delimited file
   -f, --fasta-ref <file>          reference sequence in fasta format
       --fai <file>                reference sequence .fai index
       --set-cache-size <int>      select fasta cache size in bytes
       --iffy-tag <string>         FILTER annotation tag to record whether reference allele could not be determined [IFFY]
       --mismatch-tag <string>     FILTER annotation tag to record whether reference does not match any allele [REF_MISMATCH]
   -s, --sample-name <string>      sample name for the phenotype [SAMPLE]
       --ns <float>                number of samples
       --nc <float>                number of cases
       --ne <float>                effective sample size
       --no-version                do not append version and command line to the header
   -o, --output <file>             write output to a file [no output]
   -O, --output-type u|b|v|z[0-9]  u/b: un/compressed BCF, v/z: un/compressed VCF, 0-9: compression level [v]
       --threads <int>             use multithreading with INT worker threads [0]
   -W, --write-index[=FMT]         Automatically index the output files [off]

Examples:
      bcftools +munge -c PLINK -f human_g1k_v37.fasta -Ob -o score.bcf score.assoc
      bcftools +munge -C colheaders.tsv -f human_g1k_v37.fasta -s SCZ_2022 -Ob -o PGC3_SCZ.bcf PGC3_SCZ.tsv.gz

Liftover VCFs tool:

Usage: bcftools +liftover [General Options] -- [Plugin Options]
Options:
   run "bcftools plugin" for a list of common options

Plugin options:
   -s, --src-fasta-ref <file>      source reference sequence in fasta format
   -f, --fasta-ref <file>          destination reference sequence in fasta format
       --set-cache-size <int>      select fasta cache size in bytes
   -c, --chain <file>              UCSC liftOver chain file
       --max-snp-gap <int>         maximum distance to merge contiguous blocks separated by same distance [1]
       --max-indel-inc <int>       maximum distance used to increase the size an indel during liftover [250]
       --lift-mt                   force liftover of MT/chrMT [automatically determined from contig lengths]
       --print-blocks <file>       output contiguous blocks used for the liftOver
       --no-left-align             do not attempt to left align indels after liftover
       --reject <file>             output variants that cannot be lifted over
   -O, --reject-type u|b|v|z[0-9]  u/b: un/compressed BCF, v/z: un/compressed VCF, 0-9: compression level [v]
       --write-src                 write the source contig/position/alleles for lifted variants
       --write-fail                write whether the 5' and 3' anchors have failed to lift
       --write-ref                 write the destination reference sequence after liftover

Options for how to update INFO/FORMAT records:
       --flip-tag <string>         INFO annotation flag to record whether alleles are flipped [FLIP]
       --swap-tag <string>         INFO annotation to record when alleles are swapped [SWAP]
       --fix-tags                  fix Number type for INFO/AC, INFO/AF, FORMAT/GP, and FORMAT/DS tags
       --drop-tags <list>          tags to drop when alleles are swapped [.]
       --ac-tags <list>            AC-like tags (must be Number=A,Type=Integer/Float) [INFO/AC,FMT/AC]
       --af-tags <list>            AF-like tags (must be Number=A,Type=Float) [INFO/AF,FMT/AF,FMT/AP1,FMT/AP2]
       --ds-tags <list>            DS-like tags (must be Number=A,Type=Float) [FMT/DS]
       --gt-tags <list>            tags with integers like FORMAT/GT (must be Type=Integer) [INFO/ALLELE_A,INFO/ALLELE_B]
       --es-tags <list>            GWAS-VCF tags (must be Number=A) [FMT/EZ,FMT/ES,FMT/ED]

Examples:
      bcftools +liftover -Ou input.hg19.bcf -- -s hg19.fa -f hg38.fa \
        -c hg19ToHg38.over.chain.gz | bcftools sort -Ob -o output.hg38.bcf -W
      bcftools +liftover -Ou GRCh38_dbSNPv156.vcf.gz -- -s hg38.fa -f chm13v2.0.fa \
        -c hg38ToHs1.over.chain.gz | bcftools sort -Oz -o chm13v2.0_dbSNPv156.vcf.gz -W=tbi

To obtain liftover chain files:
      wget http://hgdownload.cse.ucsc.edu/goldenpath/hg19/liftOver/hg19ToHg38.over.chain.gz
      wget http://ftp.ensembl.org/pub/assembly_mapping/homo_sapiens/GRCh37_to_GRCh38.chain.gz
      wget http://hgdownload.cse.ucsc.edu/goldenPath/hs1/liftOver/hg38ToHs1.over.chain.gz

Meta-analysis tool:

Usage: bcftools +metal [options] <score1.gwas.vcf.gz> <score2.gwas.vcf.gz> [<score3.gwas.vcf.gz> ...]
Plugin options:
       --summaries <file>          list of summary statistics VCFs from file
   -e, --exclude EXPR              Exclude sites for which the expression is true (see man page for details)
   -i, --include EXPR              Select sites for which the expression is true (see man page for details)
       --szw                       perform meta-analysis based on sample-size weighted scheme
                                   rather than inverse-variance weighted scheme
       --het                       perform heterogenity analysis
       --esd                       output effect size direction across studies
       --no-version                do not append version and command line to the header
   -o, --output <file>             write output to a file [no output]
   -O, --output-type u|b|v|z[0-9]  u/b: un/compressed BCF, v/z: un/compressed VCF, 0-9: compression level [v]
   -r, --regions <region>          restrict to comma-separated list of regions
   -R, --regions-file <file>       restrict to regions listed in a file
       --regions-overlap 0|1|2     Include if POS in the region (0), record overlaps (1), variant overlaps (2) [1]
   -t, --targets [^]<region>       restrict to comma-separated list of regions. Exclude regions with "^" prefix
   -T, --targets-file [^]<file>    restrict to regions listed in a file. Exclude regions with "^" prefix
       --targets-overlap 0|1|2     Include if POS in the region (0), record overlaps (1), variant overlaps (2) [0]
       --threads <int>             use multithreading with INT worker threads [0]
   -W, --write-index[=FMT]         Automatically index the output files [off]

Examples:
      bcftools +metal -Ob -o ukb_mvp.gwas.bcf -i ukb.gwas.bcf mvp.gwas.bcf
      bcftools +metal -Ob -o ukb_mvp.gwas.bcf -i 'NS>1000 & AF>0.01 & AF<0.99' ukb.gwas.bcf mvp.gwas.bcf
      bcftools +metal -Ob -o ukb_mvp.gwas.bcf -i 'ID="rs1234" || ID="rs123456" || ID="rs123"' ukb.gwas.bcf mvp.gwas.bcf

Compute polygenic score loadings tool:

Usage: bcftools +pgs [options] <score.gwas.vcf.gz> [<ldgm.vcf.gz> <ldgm2.vcf.gz> ...]
Plugin options:
   -v, --verbose                   verbose output (specify twice to increase verbosity)
       --debug                     output matrix and vectors for one LD block to files in the current directory
       --ldgm-vcfs <list>          List of LDGM-VCF files to use
       --ldgm-vcfs-file <file>     File of list of LDGM-VCF files to use
   -e, --exclude EXPR              Exclude sites for which the expression is true (see man page for details)
   -i, --include EXPR              Select sites for which the expression is true (see man page for details)
       --no-version                do not append version and command line to the header
   -o, --output <file>             write output to a file [no output]
   -O, --output-type u|b|v|z[0-9]  u/b: un/compressed BCF, v/z: un/compressed VCF, 0-9: compression level [v]
   -l, --log <file>                write log to file [standard error]
   -r, --regions <region>          restrict to comma-separated list of regions
   -R, --regions-file <file>       restrict to regions listed in a file
       --regions-overlap 0|1|2     Include if POS in the region (0), record overlaps (1), variant overlaps (2) [1]
   -s, --samples <list>            List of summary statitics to include
   -S, --samples-file <file>       File of list of summary statistics to include
   -t, --targets [^]<region>       restrict to comma-separated list of regions. Exclude regions with "^" prefix
   -T, --targets-file [^]<file>    restrict to regions listed in a file. Exclude regions with "^" prefix
       --targets-overlap 0|1|2     Include if POS in the region (0), record overlaps (1), variant overlaps (2) [0]
       --threads <int>             use multithreading with INT worker threads [0]
   -W, --write-index[=FMT]         Automatically index the output files [off]

Model options:
       --stats-only                only compute suggested summary options for a given alpha parameter
       --seed <int>                seed number for the pseudo-random generator [time(NULL)]
       --average-ld-score <float>  average LD score per marker [72.6]
       --expected-ratio <float>    expected ratio for sigmasqInf correction factor [0.6]
   -a, --alpha-param <float>       alpha parameter [-0.5]
   -b, --beta-cov <float>          frequency-dependent architecture parameter [1e-7]
       --herit-per-marker <float>  heritability per marker for sparse model [1e-7]
   -x, --cross-corr <float>        cross ancestry correlation parameter [0.9]
       --sample-sizes <list>       List of sample sizes for each input summary statistic [estimated from NS/NC/NE fields]
       --max-alpha-hat2 <float>    maximum summary statistics squared marginal effect [0.002]
       --sigmasq-values <list>     sigma square grid values to try [estimated from max-alpha-hat2]
       --sigmasq-weights <list>    sigma square weights values to try [estimated from herit-per-marker]
       --gibbs-iter <int>          number of iterations for the Gibbs sampler [10]
       --gibbs-burn-in <int>       number of burn-in iterations for the Gibbs sampler [2]
       --record-weights            whether to record the Gibbs weight

Linear algebra options:
       --tolerance <float>         Tolerance threshold for the conjugate gradient [1e-10]
       --no-jacobi                 Do not use Jacobi preconditioning when solving linear systems with conjugate gradient
       --factorization <int>       CHOLMOD factorization strategy (0=simplicial, 1=automatic, 2=supernodal) [1]
       --supernodal-switch <int>   CHOLMOD supernodal switch [40]
       --ordering <int>            CHOLMOD ordering method (-1 for AMD, -2 for METIS, -3 for NESDIS) [0]
       --chunk-size <float>        OPENMP chunk size for computing the number of threads to use [128000]

Examples:
      bcftools +pgs --stats-only ukb.gwas.bcf 1kg_ldgm.EUR.bcf
      bcftools +pgs -Ob -o ukb.pgs.bcf -b 5e-8 ukb.gwas.bcf 1kg_ldgm.EUR.bcf
      bcftools +pgs -Oz -o giant.pgs.vcf.gz giant.gwas.vcf.gz 1kg_ldgm.{AFR,EAS,EUR,AMR,SAS}.bcf

Compute best linear unbiased predictor tool:

Usage: bcftools +blup [options] <score.gwas.vcf.gz> [<ldgm.vcf.gz> <ldgm2.vcf.gz> ...]
Plugin options:
   -v, --verbose                   verbose output
       --ldgm-vcfs <list>          List of LDGM-VCF files to use
       --ldgm-vcfs-file <file>     File of list of LDGM-VCF files to use
   -e, --exclude EXPR              Exclude sites for which the expression is true (see man page for details)
   -i, --include EXPR              Select sites for which the expression is true (see man page for details)
       --no-version                do not append version and command line to the header
   -o, --output <file>             write output to a file [no output]
   -O, --output-type u|b|v|z[0-9]  u/b: un/compressed BCF, v/z: un/compressed VCF, 0-9: compression level [v]
   -l, --log <file>                write log to file [standard error]
   -r, --regions <region>          restrict to comma-separated list of regions
   -R, --regions-file <file>       restrict to regions listed in a file
       --regions-overlap 0|1|2     Include if POS in the region (0), record overlaps (1), variant overlaps (2) [1]
   -s, --samples <list>            List of summary statitics to include
   -S, --samples-file <file>       File of list of summary statistics to include
   -t, --targets [^]<region>       restrict to comma-separated list of regions. Exclude regions with "^" prefix
   -T, --targets-file [^]<file>    restrict to regions listed in a file. Exclude regions with "^" prefix
       --targets-overlap 0|1|2     Include if POS in the region (0), record overlaps (1), variant overlaps (2) [0]
       --threads <int>             use multithreading with INT worker threads [0]
   -W, --write-index[=FMT]         Automatically index the output files [off]

Model options:
       --stats-only                only compute suggested summary options for a given alpha parameter
       --average-ld-score <float>  average LD score per marker [72.6]
   -a, --alpha-param <float>       alpha parameter [-0.5]
   -b, --beta-cov <float>          frequency-dependent architecture parameter [1e-7]
   -x, --cross-corr <float>        cross ancestry correlation parameter [0.9]
       --sample-sizes <list>       List of sample sizes for each input summary statistic [estimated from NS/NC/NE fields]

Linear algebra options:
       --tolerance <float>         Tolerance threshold for the conjugate gradient [1e-6]
       --no-jacobi                 Do not use Jacobi preconditioning when solving linear systems with conjugate gradient

Examples:
      bcftools +blup -Ob -o ukb.blup.bcf -b 2e-7 ukb.gwas.bcf 1kg_ldgm.EUR.bcf

Installation

Install basic tools including CHOLMOD (Debian/Ubuntu specific if you have admin privileges)

sudo apt install wget libcurl4 bcftools libopenblas0-openmp libcholmod4 libsuitesparse-dev r-cran-optparse r-cran-ggplot2 r-cran-data.table
if [ ! -f /usr/include/cholmod.h ]; then
  sed 's/^#include "cholmod_/#include "suitesparse\/cholmod_/;s/^#include "SuiteSparse_/#include "suitesparse\/SuiteSparse_/' \
    /usr/include/suitesparse/cholmod.h | sudo tee /usr/include/cholmod.h
fi

See section CHOLMOD for how to install CHOLMOD on other computational environments

Preparation steps

mkdir -p $HOME/bin $HOME/GRCh3{7,8} && cd /tmp

We recommend compiling the source code but, wherever this is not possible, Linux x86_64 pre-compiled binaries are available for download here. However, notice that you will require BCFtools version 1.20 or newer

Download latest version of HTSlib and BCFtools (if not downloaded already)

wget https://github.com/samtools/bcftools/releases/download/1.20/bcftools-1.20.tar.bz2
tar xjvf bcftools-1.20.tar.bz2
wget -P bcftools-1.20 https://raw.githubusercontent.com/DrTimothyAldenDavis/SuiteSparse/stable/{SuiteSparse_config/SuiteSparse_config,CHOLMOD/Include/cholmod}.h

Download and compile plugins code (make sure you are using gcc version 5 or newer)

cd bcftools-1.20/
/bin/rm -f plugins/{score.{c,h},{munge,liftover,metal,blup}.c,pgs.{c,mk}}
wget -P plugins https://raw.githubusercontent.com/freeseek/score/master/{score.{c,h},{munge,liftover,metal,blup}.c,pgs.{c,mk}}
make
/bin/cp bcftools plugins/{munge,liftover,score,metal,pgs,blup}.so $HOME/bin/
wget -P $HOME/bin https://raw.githubusercontent.com/freeseek/score/master/assoc_plot.R
chmod a+x $HOME/bin/assoc_plot.R

As the pgs plugin requires SuiteSparse headers and CHOLMOD binaries to be compiled, if you don't need it you can remove it with

/bin/rm plugins/pgs.{c,mk}

Make sure the directory with the plugins is available to BCFtools

export PATH="$HOME/bin:$PATH"
export BCFTOOLS_PLUGINS="$HOME/bin"

Install the GRCh37 human genome reference, cytoband and chain file

wget -O- ftp://ftp.1000genomes.ebi.ac.uk/vol1/ftp/technical/reference/human_g1k_v37.fasta.gz | \
  gzip -d > $HOME/GRCh37/human_g1k_v37.fasta
samtools faidx $HOME/GRCh37/human_g1k_v37.fasta
bwa index $HOME/GRCh37/human_g1k_v37.fasta
wget -P $HOME/GRCh37 http://hgdownload.cse.ucsc.edu/goldenPath/hg19/database/cytoBand.txt.gz
wget -P $HOME/GRCh37 http://hgdownload.cse.ucsc.edu/goldenpath/hg18/liftOver/hg18ToHg19.over.chain.gz
ref="$HOME/GRCh37/human_g1k_v37.fasta"

Install the GRCh38 human genome reference (following the suggestion from Heng Li), cytoband and chain files

wget -O- ftp://ftp.ncbi.nlm.nih.gov/genomes/all/GCA/000/001/405/GCA_000001405.15_GRCh38/seqs_for_alignment_pipelines.ucsc_ids/GCA_000001405.15_GRCh38_no_alt_analysis_set.fna.gz | \
  gzip -d > $HOME/GRCh38/GCA_000001405.15_GRCh38_no_alt_analysis_set.fna
samtools faidx $HOME/GRCh38/GCA_000001405.15_GRCh38_no_alt_analysis_set.fna
bwa index $HOME/GRCh38/GCA_000001405.15_GRCh38_no_alt_analysis_set.fna
wget -P $HOME/GRCh38 http://hgdownload.cse.ucsc.edu/goldenPath/hg38/database/cytoBand.txt.gz
wget -P $HOME/GRCh38 http://hgdownload.cse.ucsc.edu/goldenpath/hg18/liftOver/hg18ToHg38.over.chain.gz
wget -P $HOME/GRCh38 http://hgdownload.cse.ucsc.edu/goldenpath/hg19/liftOver/hg19ToHg38.over.chain.gz
ref="$HOME/GRCh38/GCA_000001405.15_GRCh38_no_alt_analysis_set.fna"

CHOLMOD

To run the BCFtools pgs plugin that computes polygenic score loadings you will need a working copy of the CHOLMOD library version 4 or newer. To install CHOLMOD on older systems can be tricky. An alternative is to install and run the BCFtools pgs plugin directly on your own machine, which might make the installation easier. Furthermore, as CHOLMOD uses OpenMP for multithreading and BLAS and LAPACK for dense linear algebra routines in the supernodal Cholesky factorization, you have to make sure you are using an OpenMP version of the BLAS library or else multi-threading will perform poorly

To compile the BCFtools pgs plugin you will additionally need access to the CHOLMOD header file cholmod.h and access to binaries for the CHOLMOD library. If you install binaries and libraries using conda, you can install the openblas and suitesparse packages by running:

conda install bcftools 'libopenblas=*=*openmp*' suitesparse

Alternatively, on a Debian/Ubuntu machine CHOLMOD header file cholmod.h is available in libsuitesparse-dev and CHOLMOD binaries are available in libcholmod4. It should be enough to run:

sudo apt install bcftools libopenblas0-openmp libcholmod4 libsuitesparse-dev
sudo apt remove libopenblas0-pthread
sudo ln -s suitesparse/cholmod.h /usr/include/cholmod.h
sudo ln -s suitesparse/SuiteSparse_config.h /usr/include/SuiteSparse_config.h

Notice that you need to make sure you have installed package libopenblas0-openmp rather than libopenblas0-pthread

On a CentOS/RedHat/Fedora machine CHOLMOD header file cholmod.h is available in suitesparse-devel and CHOLMOD binaries are available in libcholmod4. You should be able to run:

sudo yum install bcftools libopenblas-openmp libcholmod4 suitesparse-devel
sudo yum remove libopenblas-pthreads
sudo ln -s suitesparse/cholmod.h /usr/include/cholmod.h
sudo ln -s suitesparse/SuiteSparse_config.h /usr/include/SuiteSparse_config.h

Notice that you need to make sure you have installed package libopenblas-openmp rather than libopenblas-pthreads

Similarly, on a Mac machine with Homebrew it would be enough to install the openblas and suite-sparse packages by running:

brew install bcftools openblas suite-sparse

However, notice that in Homebrew OpenBLAS is compiled with gcc (due to the presence of Fortran code) and uses GCC OpenMP while SuiteSparse is compiled with clang which would instead use LLVM OpenMP. As mixing two different versions of OpenMP is not possible, the maintainers of the SuiteSparse package have opted to compile the package without OpenMP support, despite this being regarded as a mistake by the author of SuiteSparse. Notice that if you are using one of the newer Mac machines with Apple M CPUs, then Homebrew no longer links headers and libraries into /usr/local by default so to use these libraries when you compile new binaries you will have to add headers and libraries manually with:

export CPATH=/opt/homebrew/include
export LIBRARY_PATH=/opt/homebrew/lib

If instead you have to generate CHOLMOD binaries from scratch, you will have to download a SuiteSparse release and install it on your system by using the following instructions:

release=7.1.0
wget https://github.com/DrTimothyAldenDavis/SuiteSparse/archive/refs/tags/v$release.tar.gz
tar xzvf v$release.tar.gz
cd SuiteSparse-$release
sed -i '/GraphBLAS/d' Makefile
CMAKE_OPTIONS="-DBLA_VENDOR=OpenBLAS" make # only make if you want to use Intel MKL in the place of OpenBLAS
sudo make install

Intel MKL

To use CHOLMOD you can simply rely on OpenBLAS. However, we noticed a speed improvement when using Intel MKL binaries (on an Intel CPU). We advise to use Intel MKL only if you absolutely want the fastest implementation possible. Do notice that while Intel MKL is free, it is a proprietary software and it is the responsibility of users to buy or register for community (free) Intel MKL licenses for their products

To install Intel MKL with conda install packages mkl and llvm-openmp

conda install mkl llvm-openmp

On a Debian/Ubuntu machine install packages libmkl-core, libmkl-intel-lp64, libmkl-intel-thread, and libomp5

sudo apt install libmkl-core libmkl-intel-lp64 libmkl-intel-thread libomp5 libmkl-avx2

You can replace libmkl-avx2 with one of libmkl-mc, libmkl-mc3, libmkl-avx, libmkl-avx512, or libmkl-avx512-mic depending on your CPU architecture. If in doubt, install all of them

On a CentOS/RedHat/Fedora install packages intel-mkl and libomp

sudo yum-config-manager --add-repo https://yum.repos.intel.com/mkl/setup/intel-mkl.repo
sudo rpm --import https://yum.repos.intel.com/intel-gpg-keys/GPG-PUB-KEY-INTEL-SW-PRODUCTS-2019.PUB
sudo yum install intel-mkl libomp

Once the required Intel MKL libraries have been installed, you can use these by running

export LD_PRELOAD=/usr/lib/x86_64-linux-gnu/libmkl_core.so:/usr/lib/x86_64-linux-gnu/libmkl_intel_lp64.so:/usr/lib/x86_64-linux-gnu/libmkl_intel_thread.so:/usr/lib/x86_64-linux-gnu/libomp.so.5

before running bcftools +pgs

Column Headers Mappings

Generate column headers mappings from the MungeSumstats Bioconductor package for importing summary statistics (you will need the Rscript binary from conda package r-base, Debian/Ubuntu package r-base-core, CentOS/RedHat/Fedora package R-core, or Homebrew package r)

wget https://raw.githubusercontent.com/neurogenomics/MungeSumstats/master/data/sumstatsColHeaders.rda
(echo -e 'load("sumstatsColHeaders.rda"); write.table(sumstatsColHeaders, "", quote=FALSE, sep="\\t", row.names=FALSE, col.names=FALSE)' | \
  Rscript - | awk -F"\t" -v OFS="\t" '
  ($1~"^ALT" || $1~"^EFF" || $1~"^MINOR" || $1~"^INC" || $1~"T[eE][sS][tT][eE][dD]" || $1=="EA") && $2=="A2" {$2="A1"}
  ($1~"^REF" || $1~"^NON" || $1~"^OTHER" || $1~"^MAJOR" || $1~"^DEC" || $1=="NEA") && $2=="A1" {$2="A2"}
  ($1=="A2FREQ" || $1=="A2FRQ") && $2=="FRQ" {$2="A2FRQ"}
  ($1=="EFFECTIVE_N" || $1=="NEFF") && $2=="N" {$2="NEFF"} {print}'
echo -e "CHR_NAME\tCHR"
echo -e "BP_GRCH38\tBP"
echo -e "CHR_POSITION\tBP"
echo -e "NAME\tSNP"
echo -e "AL1\tA1"
echo -e "AL2\tA2"
echo -e "IMPINFO\tINFO"
echo -e "IMPUTATION\tINFO"
echo -e "R2HAT\tINFO"
echo -e "RSQ\tINFO"
echo -e "minINFO\tINFO"
echo -e "EFFECT_WEIGHT\tBETA"
echo -e "INV_VAR_META_BETA\tBETA"
echo -e "ALL_INV_VAR_META_BETA\tBETA"
echo -e "ALL_META_SAMPLE_N\tN"
echo -e "INV_VAR_META_SEBETA\tSE"
echo -e "ALL_INV_VAR_META_SEBETA\tSE"
echo -e "LOG10_P\tLP"
echo -e "LOG10P\tLP"
echo -e "MLOG10P\tLP"
echo -e "P.SE\tP"
echo -e "INV_VAR_META_P\tP"
echo -e "ALL_INV_VAR_META_P\tP"
echo -e "FREQ_EFFECT\tFRQ"
echo -e "ALL_META_AF\tFRQ"
echo -e "NCAS\tN_CAS"
echo -e "NCON\tN_CON"
echo -e "Weight\tNEFF"
echo -e "NEFFDIV2\tNEFFDIV2"
echo -e "het_isq\tHET_I2"
echo -e "HetISq\tHET_I2"
echo -e "HetISqt\tHET_I2"
echo -e "HomIsq\tHET_I2"
echo -e "het_pvalue\tHET_P"
echo -e "HetPVa\tHET_P"
echo -e "HetPVal\tHET_P"
echo -e "HomP\tHET_P"
echo -e "logHetP\tHET_LP"
echo -e "Direction\tDIRE"
echo -e "DIRE\tDIRE"
echo -e "DIR\tDIRE"
echo -e "EffectDirection\tDIRE") > colheaders.tsv
/bin/rm sumstatsColHeaders.rda

Notice that MungeSumstats assigns A2 rather than A1 as the effect allele, prompting a correction to revert the mapping to what the original munge_sumstats.py had

If your summary statistics file contains headers that cannot be parsed, consider reporting the issue to the MungeSumstats authors

LDGM-VCF Specification

Similar to the GWAS-VCF specification, an LDGM-VCF file is a VCF file whose header must include the following mandatory INFO fields

##INFO=<ID=AA,Number=1,Type=Integer,Description="Ancestral Allele">
##INFO=<ID=AF,Number=A,Type=Float,Description="Allele Frequency">
##INFO=<ID=LD_block,Number=1,Type=Integer,Description="Number of LDGM precision matrix">
##INFO=<ID=LD_node,Number=1,Type=Integer,Description="Node corresponding to variant in the LDGM precision matrix">
##INFO=<ID=LD_diagonal,Number=1,Type=Float,Description="Weight of the node in the LDGM precision matrix">
##INFO=<ID=LD_neighbors,Number=.,Type=Integer,Description="Nodes of the neighbors in the LDGM precision matrix">
##INFO=<ID=LD_weights,Number=.,Type=Float,Description="Weights of the edges in the LDGM precision matrix">

There should be only one alternate allele per line and the AA field must be a number equal to 0 if the ancestral allele is the reference allele and 1 if the ancestral allele is the alternate allele. The LD_block field must be a non-negative integer monotonically increasing across variants and indicating which LDGM matrix a given variant is part of. The LD_node field must be a non-negative integer indicating which node of the LDGM matrix a variant corresponds to. It is allowed for variants in perfect linkage disequilibrium to have the same LD_block and LD_node values. The LD_node numbers across variants do not need to be monotonically increasing and it is okay for some LD_node numbers to be missing from a given LDGM matrix. The LD_diagonal must be a number equal or larger then one. The LD_neighbors and LD_weigths arrays must have the same length. The integer numbers within the LD_neighbors arrays must all greater than the LD_node number, as the LDGM matrix, given its symmetry, must be stored in triangular upper format to save space. The floating point numbers within the LD_weigths arrays must be non-zero

#CHROM POS ID REF ALT QUAL FILTER INFO
chr1 16719 rs62636367 T A . . AA=0;AF=0.0626;LD_block=0;LD_node=4;LD_diagonal=1.55379;LD_neighbors=6,12,21,52;LD_weights=-0.319217,-0.466229,-0.066764,-0.247807
chr1 16841 rs62636368 G T . . AA=0;AF=0.0855;LD_block=0;LD_node=6;LD_diagonal=1.73014;LD_neighbors=12;LD_weights=-0.914626
chr1 16856 rs3891260 A G . . AA=0;AF=0.0308;LD_block=0;LD_node=7;LD_diagonal=1
chr1 16949 rs199745162 A C . . AA=0;AF=0.3668;LD_block=0;LD_node=8;LD_diagonal=3.26079;LD_neighbors=10,18,57,114;LD_weights=-1.6973,-1.10987,-0.135282,-0.048439
chr1 17005 rs201833382 A G . . AA=0;AF=0.0656;LD_block=0;LD_node=9;LD_diagonal=1.14963;LD_neighbors=35,94,5358;LD_weights=-0.332079,-0.185058,-0.1273

Representing the ancestral allele with a number rather than with a string referring to the ancestral allele as done by the International Genome Sample Resource is helpful both to improve processing speed and for compatibility with the operation of left-aligning indels that can be performed with the command bcftools norm --fasta-ref

Variants in perfect linkage disequilibrium with the same LD_block and LD_node values must also have the same LD_neighbors and LD_weights array values, while they can have different AA values. This will cause a slight loss of redundancy as approximately 15% of variants can be considered redundant due to perfect linkage disequilibrium. The signs of the weights of the LDGM matrix refer to the derived alleles, which in approximately 85% of cases is the alternate allele

The ID field does not need to be filled as matrices from and LDGM-VCF file and summary statistics from a GWAS-VCF file will be unequivocally matched using genomic position, reference and alternate alleles

LDGM Matrices

Linkage disequilibrium graphical models (LDGM) precision matrices for 1,361 intervals computed for the GRCh38 genome can be downloaded from here. However, SNP list files are provided without position information, so we need to first recover this information to be able to match the SNPs to the SNPs in a summary statistics file following the GWAS-VCF specification. You can download the LDGM-VCF precision matrices here

The following code will generate updated SNP list files with recovered position information and knowledge of whether the ancestral allele was the reference or the alternate allele by tracing back the steps used to generate the provided SNP lists from the LDGM paper

wget ftp://ftp.ncbi.nlm.nih.gov/snp/organisms/human_9606_b151_GRCh38p7/BED/bed_chr_{1..22}.bed.gz
wget ftp://ftp.1000genomes.ebi.ac.uk/vol1/ftp/data_collections/1000G_2504_high_coverage/working/20201028_3202_phased/CCDG_14151_B01_GRM_WGS_2020-08-05_chr{1..22}.filtered.shapeit2-duohmm-phased.vcf.gz{,.tbi}
wget -O snplist.tar.gz https://www.dropbox.com/sh/raw/1huaxgad2bjjv9a/AAD9YEljtU3TxYum3qPxJIp6a/ldgm/snplist.tar.gz?dl=0
tar xzvf snplist.tar.gz

mkdir -p ids
for chr in {1..22}; do zcat bed_chr_$chr.bed.gz | tail -n+2 | cut -f3,4 | sort -k2,2 > bed_chr_$chr.tsv; done
for chr in {1..22}; do
  for file in snplist/1kg_chr${chr}_[0-9]*_[0-9]*.snplist; do
    lbl=${file%.snplist};
    lbl=${lbl#*1kg_};
    cut -d, -f9 $file | sort | join -1 1 -2 2 - bed_chr_$chr.tsv | tr ' ' ',' > ids/$lbl.csv
  done
done
/bin/rm bed_chr_{1..22}.tsv

mkdir -p afs
inc="AC_EUR_unrel/AN_EUR_unrel>.01 && AC_EUR_unrel/AN_EUR_unrel<=.99 || AC_EAS_unrel/AN_EAS_unrel>=.01 && AC_EAS_unrel/AN_EAS_unrel<=.99 || AC_AMR_unrel/AN_AMR_unrel>=.01 && AC_AMR_unrel/AN_AMR_unrel<=.99 || AC_SAS_unrel/AN_SAS_unrel>=.01 && AC_SAS_unrel/AN_SAS_unrel<=.99 || AC_AFR_unrel/AN_AFR_unrel>=.01 && AC_AFR_unrel/AN_AFR_unrel<=.99"
fmt="%REF,%ALT,%AC_EUR_unrel,%AN_EUR_unrel,%AC_EAS_unrel,%AN_EAS_unrel,%AC_AMR_unrel,%AN_AMR_unrel,%AC_SAS_unrel,%AN_SAS_unrel,%AC_AFR_unrel,%AN_AFR_unrel,%POS\n"
for chr in {1..22}; do
  vcf="CCDG_14151_B01_GRM_WGS_2020-08-05_chr$chr.filtered.shapeit2-duohmm-phased.vcf.gz"
  for file in snplist/1kg_chr${chr}_[0-9]*_[0-9]*.snplist; do
    lbl=${file%.snplist};
    lbl=${lbl#*1kg_};
    reg=${lbl/_/:};
    reg=${reg/_/-};
    bcftools query -f "$fmt" -i "$inc" -r $reg $vcf | \
      awk -F, '{printf "%s,%s,%.4f,%.4f,%.4f,%.4f,%.4f,+,%d\n",$1,$2,$3/$4,$5/$6,$7/$8,$9/$10,$11/$12,$13;
        printf "%s,%s,%.4f,%.4f,%.4f,%.4f,%.4f,-,%d\n",$2,$1,($4-$3)/$4,($6-$5)/$6,($8-$7)/$8,($10-$9)/$10,($12-$11)/$12,$13}' | \
      sed 's/-0/0/g;s/0,/,/g;s/0,/,/g;s/0,/,/g' > afs/$lbl.csv
  done
done

mkdir -p out
for file in snplist/1kg_chr[0-9]*_[0-9]*_[0-9]*.snplist; do
  lbl=${file%.snplist};
  lbl=${lbl#*1kg_};
  awk -F, 'BEGIN {x["site_ids"]="position"; x["NA"]="NA"}
    NR==FNR {x[$1]=$2} NR>FNR {print $0","x[$9]}' ids/$lbl.csv $file | \
  awk -F, -v OFS=, 'BEGIN {y["anc_alleles,deriv_alleles,EUR,EAS,AMR,SAS,AFR,position"]="swap"; last=0}
    NR==FNR {str=$1","$2","$3","$4","$5","$6","$7; if (str in x) x[str]=x[str]","$9; else x[str]=$9; y[str","$9]=$8}
    NR>FNR {str=$2","$3","$4","$5","$6","$7","$8; if ($10=="NA" && str in x) {
    split(x[str],a,","); for (i=1; i<=length(a); i++) if (a[i]>last) {$10=a[i]; break}}
    $11=y[str","$10]; print; last=$10}' afs/$lbl.csv - > out/1kg_$lbl.snplist
done

/bin/rm -r snplist ids afs

With the updated SNP list files we can format the LDGM precision matrices into LDGM-VCF files

wget -O AFR.tar.gz https://www.dropbox.com/sh/raw/1huaxgad2bjjv9a/AADu-h_GZF7FI2FoNJYN9t9Oa/ldgm/AFR.tar.gz?dl=0
wget -O AMR.tar.gz https://www.dropbox.com/sh/raw/1huaxgad2bjjv9a/AADhcJm-THCOX5gpCKqZmvpva/ldgm/AMR.tar.gz?dl=0
wget -O EAS.tar.gz https://www.dropbox.com/sh/raw/1huaxgad2bjjv9a/AADCBA9TrjQoSJiF4fbJ2oLZa/ldgm/EAS.tar.gz?dl=0
wget -O EUR.tar.gz https://www.dropbox.com/sh/raw/1huaxgad2bjjv9a/AAB8i85pOY-XVNPnQ9NUwUaAa/ldgm/EUR.tar.gz?dl=0
wget -O SAS.tar.gz https://www.dropbox.com/sh/raw/1huaxgad2bjjv9a/AADbbgk0VErJ_dXC7D1L-p3ga/ldgm/SAS.tar.gz?dl=0

(echo "##fileformat=VCFv4.2"
echo "##INFO=<ID=AA,Number=1,Type=Integer,Description=\"Ancestral Allele\">"
echo "##INFO=<ID=AF,Number=A,Type=Float,Description=\"Allele Frequency\">"
echo "##INFO=<ID=LD_block,Number=1,Type=Integer,Description=\"Number of LDGM precision matrix\">"
echo "##INFO=<ID=LD_node,Number=1,Type=Integer,Description=\"Node corresponding to variant in the LDGM precision matrix\">"
echo "##INFO=<ID=LD_diagonal,Number=1,Type=Float,Description=\"Weight of the node in the LDGM precision matrix\">"
echo "##INFO=<ID=LD_neighbors,Number=.,Type=Integer,Description=\"Nodes of the neighbors in the LDGM precision matrix\">"
echo "##INFO=<ID=LD_weights,Number=.,Type=Float,Description=\"Weights of the edges in the LDGM precision matrix\">"
echo -e "#CHROM\tPOS\tID\tREF\tALT\tQUAL\tFILTER\tINFO") > tmp.vcf
for anc in AFR AMR EAS EUR SAS; do
  tar xzvf $anc.tar.gz
  (bcftools reheader --fai $HOME/GRCh38/GCA_000001405.15_GRCh38_no_alt_analysis_set.fna.fai --temp-prefix ./bcftools. tmp.vcf
  ls out/1kg_chr[0-9]*_[0-9]*_[0-9]*.snplist | \
    sed 's/out\/1kg_chr//' | \
    sort -t_ -k1,1n -k2,2n | \
    sed 's/^\([0-9]*\)\(_[0-9]*_[0-9]*\)\.snplist$/chr\1 out\/1kg_chr\1\2.snplist '$anc'\/1kg_chr\1\2.'$anc'.edgelist/' | \
    cat -n | \
  while read block chr snpfile edgefile; do
    awk -F, -v anc=$anc -v chr=$chr -v block=$((block-1)) '
      NR==FNR && $1==$2 {x[$1]=$3} NR==FNR && $1!=$2 {y[$1]=y[$1]" "$2; z[$1]=z[$1]" "$3}
      NR>FNR && FNR==1 {for (i=1; i<=NF; i++) f[$i] = i}
      NR>FNR && FNR>1 && ($1 in x || $1 in y) {ref=$(f["anc_alleles"]); alt=$(f["deriv_alleles"]);
      pos=$(f["position"]); aa=0; af=$(f[anc]); node=$(f["index"]); score=x[node];
      if ($(f["swap"])=="-") {ref=$(f["deriv_alleles"]); alt=$(f["anc_alleles"]); aa=1; af=1-af}
      printf "%s\t%d\t.\t%s\t%s\t.\t.\tAA=%d;AF=%f;LD_block=%d;LD_node=%d;LD_diagonal=%s",chr,pos,ref,alt,aa,af,block,node,score
      if ($1 in y) {neighbors=substr(y[$1],2); gsub(" ", ",", neighbors);
      weights=substr(z[$1],2); gsub(" ", ",", weights); printf ";LD_neighbors=%s;LD_weights=%s",neighbors,weights}
      printf "\n"}' $edgefile $snpfile
  done) | bcftools view --no-version -o 1kg_ldgm.$anc.bcf -Ob --write-index
  /bin/rm -r $anc
done
/bin/rm tmp.vcf

You can recover the LDGM matrix in the original format compatible with the LDGM readedgelist function

bcftools query -i "LD_block=135" -f "%LD_node\t%LD_diagonal\t%LD_neighbors\t%LD_weights\n" -r chr2:55438332-59565357 1kg_ldgm.EUR.bcf | \
  awk -F"\t" -v OFS=, '{print $1,$1,$2} $3!="." {split($3,a,","); split($4,b,","); for (i=1; i<=length(a); i++) print $1,a[i],b[i]}' | \
  sort -t, -k1,1n -k2,2n | uniq

To split the LDGM-VCF file in 1,361 LDGM-VCF files containing each block separately

wget -O- https://raw.githubusercontent.com/jmacdon/LDblocks_GRCh38/master/data/deCODE_EUR_LD_blocks.bed | \
  awk 'NR>1 {printf "%s:%d:%d\n",$1,$2,$3}' > EUR_LD_blocks.txt
ulimit -n 2048
bcftools +scatter --no-version -Ob 1kg_ldgm.EUR.bcf -o EUR -S EUR_LD_blocks.txt -o LD_blocks/ -p 1kg_ldgm.EUR.

Currently the LDGMs are affected by three shortcomings that should be addressed in future releases:

  • Variants at the edge of two consecutive LD blocks are shared by both LD blocks
  • MHC region spans multiple LD blocks (block 516, 517, 518, 519, and 520)
  • No LD blocks are assigned for chromosome X

Convert summary statistics

The BCFtools munge plugin, inspired by the MungeSumstats tool from Alan Murphy which is itself inspired by the munge_sumstats.py script in ldsc from Brendan Bulik-Sullivan, allows the majority of summary statitsics files available to the scientific community to be converted to summary statistics files following the GWAS-VCF specification

While being an alternative to MungeSumStats and munge_sumstats.py, the BCFtools munge plugin does not support the same number of features with some differences highlighted in the following table

Feature MungeSumStats BCFtools +munge
outputs GWAS-VCF YES YES
handles either tab or space delimited YES YES
handles header name synonyms YES YES
remove strand-ambiguous SNPs YES NO
check for allele flipping from AF YES NO
check whether A1 or A2 is reference NO YES
assumes as effect allele ... A2 A1

Notice however that for many indels it is impossible to retrieve which allele is the reference allele if the table does not explicitly specify which allele is the reference allele as sometimes both alleles can match the reference sequence, a problem that the VCF specification was designed to solve

To convert a given summary statistics file generated by PLINK you can simply run a command like the following

wget https://raw.githubusercontent.com/neurogenomics/MungeSumstats/master/inst/extdata/ieu-a-298.tsv.gz
bcftools +munge --no-version -c PLINK -f $HOME/GRCh37/human_g1k_v37.fasta -s ieu-a-298 ieu-a-298.tsv.gz

If you want to convert to a different reference genome

zcat ieu-a-298.tsv.gz | \
bcftools +munge --no-version -Ou -c PLINK -f $HOME/GRCh37/human_g1k_v37.fasta -s ieu-a-298 |
bcftools +liftover --no-version -o ieu-a-298.hg38.bcf -Ob --write-index -- \
  -s $HOME/GRCh37/human_g1k_v37.fasta \
  -f $HOME/GRCh38/GCA_000001405.15_GRCh38_no_alt_analysis_set.fna \
  -c $HOME/GRCh38/hg19ToHg38.over.chain.gz

For summary statistics files following a less specific column header format, you can use a comprehensive column headers mapping

wget https://raw.githubusercontent.com/neurogenomics/MungeSumstats/master/inst/extdata/eduAttainOkbay.txt
bcftools +munge --no-version -Ou -C colheaders.tsv -f $HOME/GRCh37/human_g1k_v37.fasta -s eduAttain eduAttainOkbay.txt | \
bcftools +liftover --no-version -Ou -- -s $HOME/GRCh37/human_g1k_v37.fasta \
  -f $HOME/GRCh38/GCA_000001405.15_GRCh38_no_alt_analysis_set.fna \
  -c $HOME/GRCh38/hg19ToHg38.over.chain.gz | \
bcftools sort -o eduAttainOkbay.hg38.bcf -Ob --write-index

For summary statistics files including indels, you will need to provide both references when performing the liftover

wget https://storage.googleapis.com/covid19-hg-public/20201215/results/20210107/COVID19_HGI_10k_SNPs.zip
unzip -p COVID19_HGI_10k_SNPs.zip COVID19_HGI_A2_ALL_20210107.10k.b37.txt.gz | \
bcftools +munge --no-version -Ou -C colheaders.tsv -f $HOME/GRCh37/human_g1k_v37.fasta -s COVID_2021 | \
bcftools +liftover --no-version -Ou -- -s $HOME/GRCh37/human_g1k_v37.fasta \
  -s $HOME/GRCh37/human_g1k_v37.fasta \
  -f $HOME/GRCh38/GCA_000001405.15_GRCh38_no_alt_analysis_set.fna \
  -c $HOME/GRCh38/hg19ToHg38.over.chain.gz | \
bcftools sort -o COVID19_HGI_A2_ALL_20210107.10k.hg38.bcf -Ob --write-index

Liftover VCFs

The BCFtools liftover plugin is inspired by the Picard LiftoverVcf tool, written by Alec Wysoker, Benjamin Bimber, Tim Fennell, and Yossi Farjoun, and allows to liftover VCFs from one reference to another including summary statistics files following the GWAS-VCF specification. Other existing VCF liftover tools are Transanno, Genozip, and CrossMap. Beyond being much faster than the other tools, the BCFtools liftover plugin is the most comprehensive VCF liftover tool with the ability to handle multi-allelic indels and records falling within small gaps of the chain files. To be able to swap reference and alternate alleles for indels when needed, the BCFtools liftover plugin uses the source reference to first extend all the alleles until they have a unique representation that makes it mathematically impossible to match the wrong allele after liftover to the destination reference

There are different chain files that can be used to liftover variants between two reference genome assemblies. Some of the chain files from UCSC are generated using their proprietary toolsets with BLAT alignments as explained here while some are generated using the open source nf-LO pipeline with minimap2 alignments as explained here. Free to use alternatives to the BLAT chain files are provided from Ensembl but the UCSC chain files cover more base pairs than the Ensembl chain files

The BCFtools liftover plugin can be used as follows

wget ftp://ftp.1000genomes.ebi.ac.uk/vol1/ftp/release/20130502/ALL.wgs.phase3_shapeit2_mvncall_integrated_v5c.20130502.sites.vcf.gz{,.tbi}
bcftools +liftover --no-version -Ou ALL.wgs.phase3_shapeit2_mvncall_integrated_v5c.20130502.sites.vcf.gz -- \
  -s $HOME/GRCh37/human_g1k_v37.fasta \
  -f $HOME/GRCh38/GCA_000001405.15_GRCh38_no_alt_analysis_set.fna \
  -c $HOME/GRCh38/hg19ToHg38.over.chain.gz \
  --reject ALL.wgs.phase3_shapeit2_mvncall_integrated_v5c.20130502.sites.reject.bcf \
  --reject-type b \
  --write-src | \
bcftools sort -o ALL.wgs.phase3_shapeit2_mvncall_integrated_v5c.20130502.sites.hg38.bcf -Ob --write-index

If your VCF has been normalized for only including bi-allelic variants, as indels tend to often be multi-allelic for the purpose of a liftover it might be useful to first join these into multi-allelic variants using bcftools norm -m+ and then perform the liftover as follows

bcftools norm --no-version -Ou -m+ 1kGP_high_coverage_Illumina.sites.vcf.gz | \
bcftools +liftover --no-version -Ou -- \
  -s $HOME/GRCh38/GCA_000001405.15_GRCh38_no_alt_analysis_set.fna \
  -f $HOME/hs1/hs1.fa \
  -c $HOME/hs1/hg38ToHs1.over.chain.gz \
bcftools sort -o 1kGP_high_coverage_Illumina.sites.hs1.bcf -Ob --write-index

Variants can then be split back into bi-allelic with the command bcftools norm -m-

Run meta-analysis

The BCFtools metal plugin is inspired by the METAL software written by Goncalo Abecasis and it performs fixed effect meta-analyses from summary statistics following the GWAS-VCF specification using either the inverse-variance weighted (IVW) scheme or the sample-size weighted (SZW) scheme. Both softwares can filter variants, METAL through filtering conditions and BCFtools metal through filtering expressions. There are a few differences between the two approaches though, summarized in the following table

Feature METAL BCFtools +metal
inverse-variance weighted scheme YES YES
sample-size weighted scheme YES YES
heterozygosity test YES YES
filter variants YES YES
genomic control YES NO
corrects for samples overlap YES NO
match variants by ID YES NO
match variants by position NO YES
computes N_eff for binary traits NO YES
input and output GWAS-VCF NO YES
input p-values in log space NO YES
output p-values in log space YES YES
output FreqSE/MinFreq/MaxFreq YES NO
output HetChiSq/HetDf YES NO
output NS/NC/AC NO YES
output sorted variants NO YES
multiple phenotypes at once NO YES

If some missing features are important to you, contact the author to discuss adding options to the BCFtools metal plugin. The latter is meant to function as a simplified version of the original METAL software allowing to perform the most common meta-analyses while inputting and outputting files in a standardized file format. It requires summary statistics to be properly formatted which can be accomplished using bcftools +munge and bcftools +liftover

This is an example to compare how to use the original METAL software and the BCFtools metal plugin

wget http://csg.sph.umich.edu/abecasis/metal/download/GlucoseExample-original.tar.gz
wget http://hgdownload.cse.ucsc.edu/goldenpath/hg17/liftOver/hg17ToHg38.over.chain.gz
tar xzvf GlucoseExample-original.tar.gz
cd GlucoseExample/
echo -e "chr2\t243018229\t0\t0\t0\nchr7\t158628139\t0\t0\t0\nchr11\t134452384\t0\t0\t0" > hg17.fai
bcftools +munge --no-version -Ou -C colheaders.tsv --fai hg17.fai -s glucose DGI_three_regions.txt | \
  bcftools +liftover --no-version -Ou -- \
    -f $HOME/GRCh38/GCA_000001405.15_GRCh38_no_alt_analysis_set.fna -c hg17ToHg38.over.chain.gz | \
  bcftools sort -Ob -o DGI_three_regions.bcf
zcat MAGIC_FUSION_Results.txt.gz | sed '1s/FREQ_EFFECT/FREQ_EFFECT_ALLELE/;s/GEN/1.0/' | \
  bcftools +munge --no-version -Ou -C colheaders.tsv --fai hg17.fai -s glucose | \
  bcftools +liftover --no-version -Ou -- \
    -f $HOME/GRCh38/GCA_000001405.15_GRCh38_no_alt_analysis_set.fna -c hg17ToHg38.over.chain.gz | \
  bcftools sort -Ob -o MAGIC_FUSION_Results.bcf
cat magic_SARDINIA.tbl | sed '1s/AL1/A1/;1s/AL2/A2/' | \
  bcftools +munge --no-version -Ou -C colheaders.tsv --fai hg17.fai -s glucose --ns 4108 | \
  bcftools +liftover --no-version -Ou -- \
    -f $HOME/GRCh38/GCA_000001405.15_GRCh38_no_alt_analysis_set.fna -c hg17ToHg38.over.chain.gz | \
  bcftools sort -Ob -o magic_SARDINIA.bcf
echo DGI_three_regions.bcf MAGIC_FUSION_Results.bcf magic_SARDINIA.bcf | xargs -n1 bcftools index --force

Run the inverse-variance weighted meta-analysis

$ sed -i 's/\r$//;s/^SCHEME   SAMPLESIZE$/# SCHEME   STDERR/;s/^# AVERAGEFREQ ON$/AVERAGEFREQ ON/;s/^ANALYZE$/LOGPVALUE ON\nANALYZE HETEROGENEITY/' metal.txt
$ metal < metal.txt
$ awk 'NR==1 || $8<-7.3' METAANALYSIS1.TBL | column -t
MarkerName  Allele1  Allele2  Freq1   FreqSE  Effect   StdErr  log(P)  Direction  HetISq  HetChiSq  HetDf  logHetP
rs853781    a        g        0.5160  0.0385  -0.1061  0.0192  -7.46   ---        0.0     0.801     2      -0.1739
rs853789    a        g        0.3810  0.0317  -0.1245  0.0200  -9.30   ---        65.3    5.771     2      -1.253
rs537183    t        c        0.5982  0.0536  0.1128   0.0201  -7.73   +++        47.2    3.785     2      -0.8219
rs853787    t        g        0.6184  0.0314  0.1244   0.0201  -9.21   +++        65.8    5.849     2      -1.27
rs560887    t        c        0.3406  0.0345  -0.1359  0.0203  -10.69  ---        74.1    7.712     2      -1.675
rs475612    t        c        0.4014  0.0498  -0.1107  0.0200  -7.49   ---        47.0    3.775     2      -0.8197
rs853773    a        g        0.5037  0.0187  -0.1152  0.0199  -8.16   ---        54.0    4.347     2      -0.944
rs502570    a        g        0.4020  0.0534  -0.1131  0.0201  -7.76   ---        47.5    3.809     2      -0.8272
rs557462    t        c        0.5977  0.0531  0.1126   0.0201  -7.70   +++        46.9    3.767     2      -0.818
rs563694    a        c        0.5977  0.0541  0.1122   0.0201  -7.66   +++        46.4    3.732     2      -0.8103
$ bcftools +metal --het --esd DGI_three_regions.bcf MAGIC_FUSION_Results.bcf magic_SARDINIA.bcf | \
  bcftools query -f "%CHROM\t%POS\t%ID\t%REF\t%ALT[\t%NS\t%ES\t%SE\t%LP\t%AF\t%I2\t%CQ\t%ED]\n" -i 'LP>7.3' -H | \
  sed 's/^# //;s/\[[0-9]*\]//g' | column -t
CHROM  POS        ID        REF  ALT  glucose:NS  glucose:ES  glucose:SE  glucose:LP  glucose:AF  glucose:I2  glucose:CQ  glucose:ED
chr2   168906638  rs560887  T    C    6796        0.135859    0.0202669   10.6914     0.659419    74.0672     1.67469     +++
chr2   168917561  rs563694  C    A    6796        0.112246    0.0200544   7.6616      0.59773     46.4042     0.810315    +++
chr2   168918136  rs537183  C    T    6796        0.112759    0.0200544   7.72579     0.598243    47.1627     0.821946    +++
chr2   168918449  rs502570  A    G    6796        0.113055    0.0200544   7.76289     0.598025    47.4977     0.827192    +++
chr2   168920236  rs475612  T    C    6796        0.110729    0.0200347   7.48671     0.59857     47.0206     0.819742    +++
chr2   168921085  rs557462  C    T    6796        0.112572    0.0200558   7.70135     0.597707    46.9099     0.818032    +++
chr2   168944978  rs853789  A    G    6796        0.124542    0.0200248   9.30184     0.619019    65.343      1.25312     +++
chr2   168945742  rs853787  G    T    6796        0.124445    0.0201217   9.20578     0.618385    65.8059     1.27009     +++
chr2   168949811  rs853781  A    G    6796        0.106109    0.0192413   7.45665     0.48399     0           0.173932    +++
chr2   168957837  rs853773  A    G    6796        0.115158    0.0198751   8.16308     0.496252    53.995      0.944016    +++

Run the sample-size weighted meta-analysis

$ sed -i 's/\r$//;s/^# SCHEME   STDERR$/SCHEME   SAMPLESIZE/;s/^# AVERAGEFREQ ON$/AVERAGEFREQ ON/;s/^ANALYZE$/LOGPVALUE ON\nANALYZE HETEROGENEITY/' metal.txt
$ metal < metal.txt
$ awk 'NR==1 || $8<-7.3' METAANALYSIS1.TBL | column -t
MarkerName  Allele1  Allele2  Freq1   FreqSE  Weight   Zscore  log(P)  Direction  HetISq  HetChiSq  HetDf  logHetP
rs853781    a        g        0.5229  0.0375  6796.00  -5.532  -7.50   ---        0.0     0.156     2      -0.0339
rs853789    a        g        0.3869  0.0310  6796.00  -6.395  -9.79   ---        49.3    3.946     2      -0.8569
rs537183    t        c        0.5884  0.0524  6796.00  5.726   -7.99   +++        31.6    2.923     2      -0.6348
rs853787    t        g        0.6128  0.0307  6796.00  6.401   -9.81   +++        51.0    4.082     2      -0.8864
rs569805    a        t        0.4207  0.0573  6796.00  -5.509  -7.44   ---        24.0    2.630     2      -0.5712
rs560887    t        c        0.3462  0.0336  6796.00  -6.853  -11.14  ---        62.9    5.392     2      -1.171
rs475612    t        c        0.4107  0.0487  6796.00  -5.604  -7.68   ---        29.5    2.835     2      -0.6157
rs579060    t        g        0.5793  0.0573  6796.00  5.506   -7.44   +++        23.9    2.629     2      -0.5708
rs853773    a        g        0.5066  0.0176  6796.00  -5.849  -8.31   ---        19.7    2.490     2      -0.5407
rs508506    a        c        0.4207  0.0573  6796.00  -5.464  -7.33   ---        22.9    2.593     2      -0.563
rs502570    a        g        0.4118  0.0522  6796.00  -5.720  -7.97   ---        30.8    2.889     2      -0.6273
rs552976    a        g        0.4222  0.0579  6796.00  -5.543  -7.53   ---        29.1    2.822     2      -0.6127
rs557462    t        c        0.5880  0.0519  6796.00  5.724   -7.98   +++        29.9    2.854     2      -0.6198
rs486981    a        g        0.4207  0.0573  6796.00  -5.493  -7.40   ---        23.4    2.612     2      -0.5671
rs563694    a        c        0.5878  0.0529  6796.00  5.694   -7.91   +++        31.5    2.919     2      -0.6338
$ bcftools +metal --szw --het --esd DGI_three_regions.bcf MAGIC_FUSION_Results.bcf magic_SARDINIA.bcf | \
  bcftools query -f "%CHROM\t%POS\t%ID\t%REF\t%ALT[\t%EZ\t%LP\t%AF\t%NE\t%I2\t%CQ\t%ED]\n" -i 'LP>7.3' -H | \
  sed 's/^# //;s/\[[0-9]*\]//g' | column -t
CHROM  POS        ID        REF  ALT  glucose:EZ  glucose:LP  glucose:AF  glucose:NE  glucose:I2  glucose:CQ  glucose:ED
chr2   168906638  rs560887  T    C    6.85292     11.1405     0.653848    6796        62.905      1.17076     +++
chr2   168917561  rs563694  C    A    5.69396     7.90614     0.587813    6796        31.4791     0.633814    +++
chr2   168918136  rs537183  C    T    5.72613     7.98824     0.588417    6796        31.5878     0.63482     +++
chr2   168918449  rs502570  A    G    5.72025     7.97318     0.588236    6796        30.7689     0.627312    +++
chr2   168920236  rs475612  T    C    5.60442     7.67995     0.589339    6796        29.4595     0.615667    +++
chr2   168921085  rs557462  C    T    5.72385     7.98239     0.587981    6796        29.9276     0.619779    +++
chr2   168925639  rs486981  A    G    5.49323     7.4038      0.579313    6796        23.4172     0.567091    +++
chr2   168926370  rs569805  A    T    5.50932     7.44343     0.579313    6796        23.9638     0.571168    +++
chr2   168926529  rs579060  G    T    5.50649     7.43645     0.579313    6796        23.9183     0.570826    +++
chr2   168928445  rs508506  A    C    5.46436     7.33295     0.579313    6796        22.8653     0.563034    +++
chr2   168934928  rs552976  A    G    5.54344     7.52786     0.57781     6796        29.1193     0.612712    +++
chr2   168944978  rs853789  A    G    6.39475     9.79368     0.613109    6796        49.3162     0.856871    +++
chr2   168945742  rs853787  G    T    6.4013      9.81231     0.612819    6796        51.0051     0.886407    +++
chr2   168949811  rs853781  A    G    5.53209     7.4997      0.477075    6796        0           0.0338982   +++
chr2   168957837  rs853773  A    G    5.84872     8.30508     0.493419    6796        19.6833     0.540728    +++

Plot results for each study individually and for the inverse-variance weighted meta-analysis meta-analysis

bcftools +metal --no-version --het DGI_three_regions.bcf MAGIC_FUSION_Results.bcf magic_SARDINIA.bcf \
  -o METAANALYSIS1.bcf -Ob --write-index
for pfx in magic_SARDINIA DGI_three_regions MAGIC_FUSION_Results METAANALYSIS1; do
  for reg in chr2:168411820-169393292 chr7:43699132-44694724 chr11:92476687-93473731; do
    assoc_plot.R --cytoband $HOME/GRCh38/cytoBand.txt.gz --vcf $pfx.bcf --region $reg --png $pfx.${reg%:[0-9]*-[0-9]*}.png
  done
done

Compute polygenic score loadings

The BCFtools pgs plugin is inspired by the Graphpred algorithm, written and designed by Pouria Salehi Nowbandegani, Anthony Wilder Wohns, Giulio Genovese, and Luke O’Connor. The method consists of two strategies: first it applies the best linear unbiased prediction (BLUP) model to compute improved polygenic weights starting from summary statistics; then, to avoid the shortcomings of the infinitesimal model that does not correctly model the strong effects of sparse causal markers, it applies a generalization of the SuSiE model using a Gibbs sampler instead of a variational approximation to iteratively refine the prior at SNPs with high residual association statistics. It models LD using sparse matrices derived from LD graphical models (LDGMs), allowing the linear algebra computations to run 10-100x faster than other methods. Compared to older methods such as PRS-CS that solely rely on ~1.3M HapMap3 common (minor allele frequency > 1%) SNPs, it achieves a 5-10% boost by relying instead on ~14M common (minor allele frequency > 1%) SNPs from the 1000 Genomes project high coverage reference panel. It can further model summary statistics from multiple ancestries at the same time

The BCFtools pgs plugin is meant as an alternative to the following methods

  • LDpred Vilhjálmsson, BJ., Yang, J., Finucane, HK., Modeling Linkage Disequilibrium Increases Accuracy of Polygenic Risk Scores. AJHG (2015)
  • lassosum Mak, TSH., Porsch, RM., Choi, SW. et al. Polygenic scores via penalized regression on summary statistics. Genetic Epidemiology (2017)
  • SBLUP Robinson, M., Kleinman, A., Graff, M. et al. Genetic evidence of assortative mating in humans. Nat Human Behav (2017)
  • PRS-CS Ge, T., Chen, CY., Ni, Y. et al. Polygenic prediction via Bayesian regression and continuous shrinkage priors. Nat Commun (2019)
  • JAM Newcombe, PJ., Nelson, CP., Samani, NJ., Dudbridge, F., A flexible and parallelizable approach to genome‐wide polygenic risk scores. Genetic Epidemiology (2019)
  • SBayesR Lloyd-Jones, L.R., Zeng, J., Sidorenko, J. et al. Improved polygenic prediction by Bayesian multiple regression on summary statistics. Nat Commun (2019)
  • DBSLMM Yang, S., Zhou, X. Accurate and Scalable Construction of Polygenic Scores in Large Biobank Data Sets. AJHG (2020)
  • NPS Chun, S., Imakaev, M., Hui, D. et al. Non-parametric Polygenic Risk Prediction via Partitioned GWAS Summary Statistics. AJHG (2020)
  • LDpred2 Privé, F., Arbel, J., Vilhjálmsson, BJ., LDpred2: better, faster, stronger. Bioinformatics (2020)
  • DBSLMM Yang, S., Zhou, X., Accurate and Scalable Construction of Polygenic Scores in Large Biobank Data Sets. AJHG (2020)
  • MegaPRS Zhang, Q., Privé, F., Vilhjalmsson, BJ., Speed, D., Improved genetic prediction of complex traits from individual-level data or summary statistics. Nat Commun (2020)
  • Meta-PRS Albiñana, C., Grove, J., McGrath, JJ. et al. Leveraging both individual-level genetic data and GWAS summary statistics increases polygenic prediction. AJHG (2021)
  • SDPR Zhou, G., Zhao, H. A fast and robust Bayesian nonparametric method for prediction of complex traits using summary statistics. PLOS Genetics (2021)
  • VIPRS Zabad, S., Gravel, S., Li, Y., Fast and accurate Bayesian polygenic risk modeling with variational inference. AJHG (2023)

The Gibbs sampling part of the GraphPred algorithm relies on being able to update and downdate a sparse Cholesky factorization of an input sparse matrix. This task is performed by CHOLMOD, a high performance library for sparse Cholesky factorization, itself part of the SuiteSparse software suite written or co-authored by Tim Davis. CHOLMOD performs the Cholesky factorization of a sparse matrix using a supernodal strategy where some blocks of a sparse matrix are handled as dense blocks and processed using BLAS and LAPACK dense linear algebra routines (SYRK, GEMM, GEMV, POTRF, and TRSM). CHOLMOD supernodal Cholesky factorization is based on external libraries METIS to produce fill reducing orderings for sparse matrices and OpenBLAS for dense linear algebra routines. Both CHOLMOD and OpenBLAS require OpenMP for multithreading, which is provided by either GOMP or LLVM/OpenMP

Before performing a sparse Cholesky factorization, an alternative ordering of the rows and columns must be selected to keep the Cholesky factorization as sparse as possible. Three different strategies can be employed to do so

  • AMD Amestoy, PR., Davis, TA., Duff, IS., An Approximate Minimum Degree Ordering Algorithm. SIAM Journal on Matrix Analysis and Applications (1996)
  • METIS Karypis, G., Kumar, V., A Fast and High Quality Multilevel Scheme for Partitioning Irregular Graphs. SIAM Journal on scientific Computing (1998)
  • NESDIS Chen, Y., Davis, TA., Hager, WW., Rajamanickam, S., Algorithm 887: CHOLMOD, supernodal sparse Cholesky factorization and update/downdate. ACM Trans. on Mathematical Software (2008)

You can control which ordering strategy to use with the option --ordering similarly to how it is done for the MATLAB function analyze

Running the BCFtools pgs plugin requires the following open source components

Software License Authors Function
HTSlib MIT James K. Bonfield, John Marshall, Robert M. Davies, Petr Danecek, and Heng Li input/output
BCFtools MIT Petr Danecek, Heng Li, and Shane McCarthy variant filtering
CHOLMOD LGPL 2.1+ Timothy A. Davis factorization
CHOLMOD/Modify LGPL 2.1+ Timothy A. Davis and William W. Hager. update/downdate
AMD BSD 3-Clause Timothy A. Davis, Patrick R. Amestoy, and Iain S. Duff ordering
METIS Apache George Karypis ordering
OpenBLAS BSD 3-Clause Zhang Xianyi, Martin Kroeker, Werner Saar, and Wang Qian dense linear algebra
GCC OpenMP GPL3 Richard Henderson, Jakub Jelinek multithreading
LLVM/OpenMP NCSA Intel Corporation OpenMP runtime team multithreading

Once the plugin has been installed, it can be used on summary statistics by first estimating two parameters:

  • sigmasqInf/beta-cov: a measure of the infinitesimal model
  • maxEffect/max-alpha-hat2: the strongest effect in the summary statistics to assess the non-infinitesimal model

To evaluate these two parameters, run the plugin as follows:

bcftools +pgs --stats-only <score.gwas.vcf.gz> [<ldgm.vcf.gz> <ldgm2.vcf.gz> ...]

Once you have obtained those two parameters, run the plugin as follows:

bcftools +pgs \
  --no-version \
  --beta-cov <float> \
  --max-alpha-hat2 <float> \
  <score.gwas.vcf.gz> \
  [<ldgm.vcf.gz> <ldgm2.vcf.gz> ...] \
  --output-type z \
  --output <score.pgs.b$b.vcf.gz>

Compute best linear unbiased predictor

The BCFtools blup plugin is inspired by the BLUPx-ldgm software, written and designed by Pouria Salehi Nowbandegani, Anthony Wilder Wohns, and Luke O’Connor, and it will apply the best linear unbiased prediction (BLUP) model to compute improved polygenic weights starting from summary statistics following the GWAS-VCF specification following the MATLAB code from the LDGM repository. This model applies an infinitesimal model for the prior effect sizes, similar to LDpred-inf. This model is only appropriate for very polygenic architectures such as those found in psychiatric diseases. We do not encourage the use of it for other phenotypes

First of all, run the tool with the --stats-only option to evaluate the optimal betaCov parameter:

bcftools +blup --stats-only <score.gwas.vcf.gz> <ldgm.vcf.gz>

Once you have obtained the betaCov parameter you can then generate the BLUP loadings

bcftools +blup \
  --no-version \
  --beta-cov $b \
  <score.gwas.vcf.gz> \
  <ldgm.vcf.gz> \
  --output-type z \
  --output <score.blup.b$b.vcf.gz>

You can also generate BLUP loadings for different values of betaCov and then merge the output GWAS-VCFs into a single GWAS-VCF file that you can then use to compare the performance of different choices for betaCov

Compute polygenic scores

The BCFtools score plugin can input summary statistics files in a variety of formats, including those following the GWAS-VCF specification, those following the GWAS-SSF specification, and more in general most summary statistics files formatted as text tables with a header indicating which column to use. For GWAS-SSF and table summary statistiscs files, BCFtools score will automatically recognize the columns and attempt to match variants by chromosome and position if available and then by marker name if the genomic position is unavailable in the summary statistics file. Multiple summary statistics files can be input at once except you cannot mix GWAS-VCF summary statistics files with other files. If multiple summary statistics are present in a GWAS-VCF, all will be scored independently

One advantage of the BCFtools score plugin is that it can be readily used on imputation VCFs without further format conversion. It will work with Minimac3, Minimac4, Beagle5, and IMPUTE5 output VCFs and more in general with any VCF including any of the following format fields

FORMAT Description
AP1/AP2 ALT allele probability of first/second haplotype
HDS Estimated Haploid Alternate Allele Dosage
GP Estimated Genotype Probability
DS Genotype dosage
GT Genotype

As polygenic scores are only meaningful up to an affine transformation, the BCFtools score plugin adopts the convention that a sample with genotypes matching the reference allele everywhere will receive a score of zero as betas are always assigned exclusively to alternate alleles. This way homozygous reference calls that might be missing from a VCF are guaranteed to not affect the final result in the case of VCFs originating from whole genome sequencing assays

Annotation

One of the advantages of the GWAS-VCF specification is that summary statistics can be easily annotated.

To obtain a gff3_file the following code can be used

wget -O- ftp://ftp.ensembl.org/pub/current_gff3/homo_sapiens/Homo_sapiens.GRCh38.111.gff3.gz | gunzip | \
  sed -e 's/^##sequence-region   \([0-9XY]\)/##sequence-region   chr\1/' \
  -e 's/^##sequence-region   MT/##sequence-region   chrM/' \
  -e 's/^\([0-9XY]\)/chr\1/' -e 's/^MT/chrM/' | gzip > $HOME/GRCh38/Homo_sapiens.GRCh38.111.gff3.gz

If you want to annotate the coding variants, you can do so with a simple command

bcftools csq -o ieu-a-298.hg38.csq.bcf -Ob \
  -f $HOME/GRCh38/GCA_000001405.15_GRCh38_no_alt_analysis_set.fna \
  -g $HOME/GRCh38/Homo_sapiens.GRCh38.111.gff3.gz \
  -B 1 -c CSQ -l -n 64 -s - ieu-a-298.hg38.bcf \
  --write-index

You can then quickly extract tables with a list of genome-wide significant variants with coding annotations

bcftools +split-vep -Ou -c Consequence -i 'LP>7.3' ieu-a-298.hg38.csq.bcf | \
  bcftools query -f "%CHROM\t%POS[\t%LP]\t%Consequence\n" -i 'LP>7.3'

To obtain an rsid_vcf_file the following code can be used:

wget ftp://ftp.ncbi.nlm.nih.gov/snp/redesign/latest_release/VCF/GCF_000001405.40.gz{,.tbi}
wget http://hgdownload.soe.ucsc.edu/goldenPath/hg38/bigZips/hg38.chromAlias.txt
awk -F"\t" 'NR>1 {print $4"\t"$1}' hg38.chromAlias.txt | \
bcftools annotate --no-version -Ou --rename-chrs - --remove INFO GCF_000001405.40.gz | \
bcftools norm --no-version --output-type u --multiallelics -any \
  --targets-file <(awk '{print $1"\t1\t"$2}' GCA_000001405.15_GRCh38_no_alt_analysis_set.fna.fai) | \
bcftools norm --no-version --output-type u --check-ref w --rm-dup none --fasta-ref GCA_000001405.15_GRCh38_no_alt_analysis_set.fna | \
bcftools sort -o $HOME/GRCh38/GCF_000001405.40.GRCh38.bcf --output-type b --temp-dir ./bcftools. --write-index

Similarly, you can annotate rsID numbers with

bcftools annotate --no-version \
  -a $HOME/GRCh38/GCF_000001405.40.GRCh38.bcf \
  -c RS -o ieu-a-298.hg38.rsid.bcf -Ob ieu-a-298.hg38.bcf \
  --write-index

Notice that rsID numbers cannot be encoded as an integer field in the VCF as starting from dbSNP build 156 there are now rsID numbers larger than 2147483647 which cannot be encoded by the current VCF binary specification

Plotting

One of the advantages of having summary statistics in a VCF file is the ability to build an index that allows to retrieve and visualize specific regions of interest

Manhattan plot with all available chromosomes

assoc_plot.R \
  --cytoband $HOME/GRCh38/cytoBand.txt.gz \
  --vcf GIANT_HEIGHT_YENGO_2022_GWAS_SUMMARY_STATS_ALL.hg38.bcf \
  --png GIANT_HEIGHT_YENGO_2022_GWAS_SUMMARY_STATS_ALL.png

If you generate an annotated version of the summary statistics

bcftools csq \
  -o GIANT_HEIGHT_YENGO_2022_GWAS_SUMMARY_STATS_ALL.hg38.csq.bcf -Ob \
  -f $HOME/GRCh38/GCA_000001405.15_GRCh38_no_alt_analysis_set.fna \
  -g $HOME/GRCh38/Homo_sapiens.GRCh38.111.gff3.gz -B 1 -c CSQ -l -n 64 -s - \
  GIANT_HEIGHT_YENGO_2022_GWAS_SUMMARY_STATS_ALL.hg38.bcf \
  --write-index

You can then plot and highlight in red all variants that are predicted to affect the protein aminoacid sequence

assoc_plot.R \
  --cytoband $HOME/GRCh38/cytoBand.txt.gz \
  --vcf GIANT_HEIGHT_YENGO_2022_GWAS_SUMMARY_STATS_ALL.hg38.csq.bcf \
  --csq \
  --region chr15 \
  --png GIANT_HEIGHT_YENGO_2022_GWAS_SUMMARY_STATS_ALL.chr15.png

And you can zoom and plot any region of interest

assoc_plot.R \
  --cytoband $HOME/GRCh38/cytoBand.txt.gz \
  --vcf GIANT_HEIGHT_YENGO_2022_GWAS_SUMMARY_STATS_ALL.hg38.csq.bcf \
  --csq \
  --region chr15:81413372-86413372 \
  --png GIANT_HEIGHT_YENGO_2022_GWAS_SUMMARY_STATS_ALL.adamtsl3.png

Acknowledgements

This work is supported by NIH grant R01 HG006855, NIH grant R01 MH104964, NIH grant R01MH123451, and the Stanley Center for Psychiatric Research

About

Tools to work with GWAS-VCF summary statistics files

License:MIT License


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