In this case study, we describe applying DeepVariant to a real WGS sample.
Then we assess the quality of the DeepVariant variant calls with hap.py
.
To make it faster to run over this case study, we run only on chromosome 20.
Docker will be used to run DeepVariant and hap.py,
We will be using GRCh38 for this case study.
mkdir -p reference
FTPDIR=ftp://ftp.ncbi.nlm.nih.gov/genomes/all/GCA/000/001/405/GCA_000001405.15_GRCh38/seqs_for_alignment_pipelines.ucsc_ids
curl ${FTPDIR}/GCA_000001405.15_GRCh38_no_alt_analysis_set.fna.gz | gunzip > reference/GRCh38_no_alt_analysis_set.fasta
curl ${FTPDIR}/GCA_000001405.15_GRCh38_no_alt_analysis_set.fna.fai > reference/GRCh38_no_alt_analysis_set.fasta.fai
We will benchmark our variant calls against v4.2.1 of the Genome in a Bottle small variant benchmarks for HG003.
mkdir -p benchmark
FTPDIR=ftp://ftp-trace.ncbi.nlm.nih.gov/giab/ftp/release/AshkenazimTrio/HG003_NA24149_father/NISTv4.2.1/GRCh38
curl ${FTPDIR}/HG003_GRCh38_1_22_v4.2.1_benchmark_noinconsistent.bed > benchmark/HG003_GRCh38_1_22_v4.2.1_benchmark_noinconsistent.bed
curl ${FTPDIR}/HG003_GRCh38_1_22_v4.2.1_benchmark.vcf.gz > benchmark/HG003_GRCh38_1_22_v4.2.1_benchmark.vcf.gz
curl ${FTPDIR}/HG003_GRCh38_1_22_v4.2.1_benchmark.vcf.gz.tbi > benchmark/HG003_GRCh38_1_22_v4.2.1_benchmark.vcf.gz.tbi
We'll use HG003 Illumina WGS reads publicly available from the PrecisionFDA Truth v2 Challenge.
mkdir -p input
HTTPDIR=https://storage.googleapis.com/deepvariant/case-study-testdata
curl ${HTTPDIR}/HG003.novaseq.pcr-free.35x.dedup.grch38_no_alt.chr20.bam > input/HG003.novaseq.pcr-free.35x.dedup.grch38_no_alt.chr20.bam
curl ${HTTPDIR}/HG003.novaseq.pcr-free.35x.dedup.grch38_no_alt.chr20.bam.bai > input/HG003.novaseq.pcr-free.35x.dedup.grch38_no_alt.chr20.bam.bai
DeepVariant pipeline consists of 3 steps: make_examples
, call_variants
, and
postprocess_variants
. You can now run DeepVariant with one command using the
run_deepvariant
script.
mkdir -p output
mkdir -p output/intermediate_results_dir
BIN_VERSION="1.6.1"
sudo docker run \
-v "${PWD}/input":"/input" \
-v "${PWD}/output":"/output" \
-v "${PWD}/reference":"/reference" \
google/deepvariant:"${BIN_VERSION}" \
/opt/deepvariant/bin/run_deepvariant \
--model_type WGS \
--ref /reference/GRCh38_no_alt_analysis_set.fasta \
--reads /input/HG003.novaseq.pcr-free.35x.dedup.grch38_no_alt.chr20.bam \
--output_vcf /output/HG003.output.vcf.gz \
--output_gvcf /output/HG003.output.g.vcf.gz \
--num_shards $(nproc) \
--regions chr20 \
--intermediate_results_dir /output/intermediate_results_dir
By specifying --model_type WGS
, you'll be using a model that is best suited
for Illumina Whole Genome Sequencing data.
NOTE: If you want to run each of the steps separately, add --dry_run=true
to the command above to figure out what flags you need in each step. Based on
the different model types, different flags are needed in the make_examples
step.
--intermediate_results_dir
flag is optional. By specifying it, the
intermediate outputs of make_examples
and call_variants
stages can be found
in the directory. After the command, you can find these files in the directory:
call_variants_output.tfrecord.gz
gvcf.tfrecord-?????-of-?????.gz
make_examples.tfrecord-?????-of-?????.gz
For running on GPU machines, or using Singularity instead of Docker, see Quick Start.
mkdir -p happy
sudo docker pull jmcdani20/hap.py:v0.3.12
sudo docker run \
-v "${PWD}/benchmark":"/benchmark" \
-v "${PWD}/input":"/input" \
-v "${PWD}/output":"/output" \
-v "${PWD}/reference":"/reference" \
-v "${PWD}/happy:/happy" \
jmcdani20/hap.py:v0.3.12 /opt/hap.py/bin/hap.py \
/benchmark/HG003_GRCh38_1_22_v4.2.1_benchmark.vcf.gz \
/output/HG003.output.vcf.gz \
-f /benchmark/HG003_GRCh38_1_22_v4.2.1_benchmark_noinconsistent.bed \
-r /reference/GRCh38_no_alt_analysis_set.fasta \
-o /happy/happy.output \
--engine=vcfeval \
--pass-only \
-l chr20
Output:
Benchmarking Summary:
Type Filter TRUTH.TOTAL TRUTH.TP TRUTH.FN QUERY.TOTAL QUERY.FP QUERY.UNK FP.gt FP.al METRIC.Recall METRIC.Precision METRIC.Frac_NA METRIC.F1_Score TRUTH.TOTAL.TiTv_ratio QUERY.TOTAL.TiTv_ratio TRUTH.TOTAL.het_hom_ratio QUERY.TOTAL.het_hom_ratio
INDEL ALL 10628 10588 40 21099 19 10036 15 3 0.996236 0.998283 0.475662 0.997258 NaN NaN 1.748961 2.318182
INDEL PASS 10628 10588 40 21099 19 10036 15 3 0.996236 0.998283 0.475662 0.997258 NaN NaN 1.748961 2.318182
SNP ALL 70166 69917 249 84796 59 14782 13 3 0.996451 0.999157 0.174324 0.997802 2.296566 2.085786 1.883951 1.920577
SNP PASS 70166 69917 249 84796 59 14782 13 3 0.996451 0.999157 0.174324 0.997802 2.296566 2.085786 1.883951 1.920577