Skip to main content

Genomic sequence analysis for high-performance computing

Project description

mappgene

DOI

mappgene is a SARS-CoV-2 variant calling pipeline designed for high-performance parallel computing. It mainly wraps iVar (https://github.com/andersen-lab/ivar) and LoFreq (https://github.com/CSB5/lofreq) variant callers, plus snpEff/snpSift annotation tools.

Inputs: short-read paired-end Illumina RTA3 sequencing data in fastq format (gzip compressed) (e.g., SAMPLE_R1.fastq.gz SAMPLE_R2.fastq.gz)

Outputs: variants in .vcf variant call format files, and snpEff/snpSift tabular text output

Quick Start

singularity pull library://avilaherrera1/mappgene/image.sif:latest
git clone https://github.com/LLNL/mappgene.git
pip install git+file:///absolute/path/to/mappgene
mappgene --container image.sif --outputs outputs samples/*fastq.gz

Requirements

Installation

We recommend installing mappgene to a python3 virtualenv. We have found it useful to install in "editable" mode to easily customize and modify mappgene.

python3 -m venv mg
source mg/bin/activate
pip install -e git+file:///absolute/path/to/mappgene

Don't forget to download the corresponding singularity container! It contains the pipeline components and dependencies.

  • iVar (latest dev branch at image build time)
  • LoFreq 2.1.5
  • See mappgene/data/container/recipe.def for more details
singularity pull library://avilaherrera1/mappgene/image.sif:latest

Or go to https://cloud.sylabs.io/library/avilaherrera1/mappgene/image.sif and click "Download".

Example Testing

Check that mappgene works on your system by running the example input data, sourced from here.

mappgene --test

Usage

See mappgene -h for a list of options and detailed usage. In short:

mappgene [OPTIONS] <SAMPLE1_R1.fastq.gz> <SAMPLE1_R2.fastq.gz> [SAMPLEN_R1.fastq.gz ...]

Key options:

  • --container: tell mappgene where the singularity container is
  • --slurm: use the slurm scheduler for processing samples in parallel
  • --use_full_node: 1 sample per node
  • --primers_bp: specify a bundled primer set to use
  • --depth_cap: sets lofreq call -d value (read no more than this many reads per position)
  • --read_cutoff_bp: sets ivar trim -m value (remove reads smaller than this after trimming)
  • --variant_frequency: sets ivar variants -t value (do not call variants below this frequency)
  • --no_ncov : do not use the built-in Sars-CoV-2 references and primers.
  • --fixq, --no-fixq: do or do not apply opinionated base quality score adjustments (default is to adjust). See Known bugs and quirks.
  • --gff: basename of bundled gff3 reference genome annotation file
  • --reference_accession: accession of bundled reference genome

Instructions

Selecting primers, references, and annotation

Various stages in mappgene require primer coordinates with respect to the reference. Because of this, primers and references are coupled and some care should be taken when preparing mappgene runs, especially if copy-pasting from old batch scripts.

Ivar uses --reference_accession, --gff, and --primers_bp as noted above. The snpEff step uses --reference_accession to derive the refernece genome's database name.

Virus --reference_accession --gff --primers_bp Notes
Sars-CoV-2 NC_045512.2 GCF_009858895.2_ASM985889v3_genomic.gff 1200 "Midnight" 1200bp amplicon primers
400 V3 400bp ARTIC primers
v4 V4 ARTIC primers
v4.1 V4 ARTIC primers (Omicron)
combo_3_4.1 V3 + V4.1 primers
Zika KU501215.1 KU501215.1.gff3 zibra_KU501215.1 Zibra primers mapped to PRVABC59
KX087101.3 KX087101.3.gff3 zibra_KX087101.3 Zibra primers mapped to PRVABC59 (Used in Grubaugh et al., 2019)
KU955593.1 KU955593.1.gff3 zibra_KU955593.1 Zibra primers mapped to FSS13025 (Cambodia)
KJ776791.2 KJ776791.2.gff3 zibra_KJ776791.2 Zibra primers mapped to French Polynesia 2013 (Used in Theys et al., 2017)

Process multiple samples in parallel

You can specify multiple samples with specific paths or Unix-style globbing. Reads must be gzip compressed (.fastq.gz).

If there are two input filenames with a matching sample name, plus _R1 and _R2, then mappgene will assume they are a deinterleaved pair. For deinterleaved reads, you must ensure:

  • first and second read files contain _R1 and _R2, respectively
  • there is only one pair of read files per sample (no orphans, no multi-run samples, samples from multi-sample subjects are treated separately)
  • read pairs appear together on the command line when expanding shell globs
mappgene <SAMPLE1>_R1.fastq.gz <SAMPLE1>_R2.fastq.gz [<SAMPLE2>_R1.fastq.gz <SAMPLE2>_R2.fastq.gz ...]

Interleaved samples

If the input filenames do not contain _R1 or _R2, mappgene will probably interpret the inputs as interleaved samples, and automatically deinterleave them during processing.

mappgene <SAMPLE1.FASTQ.GZ> <SAMPLE2.FASTQ.GZ> <SAMPLE3.FASTQ.GZ>
mappgene <SAMPLE_DIR>/*.fastq.gz

Slurm scheduling

Multiple subjects can be run in parallel on HPC systems using the Slurm job scheduler.

mappgene --slurm -n 1 -b mybank -p mypartition <SAMPLE.FASTQ.GZ>

Output

By default, results will be in mappgene_outputs/<SAMPLE>, or wherever specified by --outputs.

Key output files:

mappgene_outputs/
  <SAMPLE>/
    worker.stdout  # (log file capturing stdout)
    ivar_outputs/
      <SAMPLE>.ivar.snpEff.vcf  # (ivar variant calls)
      <SAMPLE>.ivar.snpSift.txt
      <SAMPLE>.ivar.lofreq.snpEff.vcf  # (lofreq variant calls)
      <SAMPLE>.ivar.lofreq.snpSift.txt

Known bugs and quirks

  • The --flux option to use the Flux scheduler is broken.
  • Only fastp respects mappgene's --threads option. bwa mem and lofreq use different numbers of threads. Additionally, if --use_full_node is not specified, mappgene will try to run multiple samples per node.
  • fastp, snpEff, snpSift write to disk outside of the current working directory—by default to the user's home—which may be on a different filesystem not intended for parallel I/O. This output is typically not used, but it can still clobber or corrupt existing files, or impact cluster performance for all users.
  • Viral-recon's ivar_variants_to_vcf.py attempts to group consecutive SNPs in the same codon into single multinucleotide variants. Previous combinations of ivar and viral-recon script versions have introduced runtime errors (resolved by using patched dev branch versions).
  • Running multiple instances of mappgene in the same working directory is not recommended, as a common temporary directory is used, resulting in scary warnings, possible errors, and potentially corrupted runs.
  • mappgene assumes quality scores are RTA3 "score category" labels (error, low, medium, high) for base calls rather than a continuous numeric score. Although the quality score is supposed to reflect an average score for each base call category, mappgene takes a conservative approach and adjusts medium and high scores to the lower bound of those categories, i.e., Q37->Q30 and Q25->Q20. This affects lofreq, a quality-aware variant caller, by making it require more evidence (i.e., depth of read coverage) to call variants vs. sequencing errors. See --fixq, and --no-fixq options.

License

Mappgene is distributed under the terms of the BSD-3 License.

LLNL-CODE-821512


You may be interested in MappgeneSummary, a package for the analysis and summarization of mappgene's results.

If you use mappgene in your research, please cite the paper. Thanks!

Kimbrel J, Moon J, Avila-Herrera A, Martí JM, Thissen J, Mulakken N, Sandholtz SH, Ferrell T, Daum C, Hall S, Segelke B, Arrildt KT, Messenger S, Wadford DA, Jaing C, Allen JE, Borucki MK. Multiple Mutations Associated with Emergent Variants Can Be Detected as Low-Frequency Mutations in Early SARS-CoV-2 Pandemic Clinical Samples. Viruses. 2022; 14(12):2775. https://doi.org/10.3390/v14122775


Project details


Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

mappgene-1.4.0.tar.gz (3.2 MB view details)

Uploaded Source

Built Distribution

mappgene-1.4.0-py3-none-any.whl (3.3 MB view details)

Uploaded Python 3

File details

Details for the file mappgene-1.4.0.tar.gz.

File metadata

  • Download URL: mappgene-1.4.0.tar.gz
  • Upload date:
  • Size: 3.2 MB
  • Tags: Source
  • Uploaded using Trusted Publishing? No
  • Uploaded via: twine/4.0.2 CPython/3.11.6

File hashes

Hashes for mappgene-1.4.0.tar.gz
Algorithm Hash digest
SHA256 bea43f5576d219aaaacc621b246b3ce7fc4bbaa7df4149ab6a4c3120491e63db
MD5 80de6048b4f104865494a5672f6959c6
BLAKE2b-256 ab0ed9d547c98258cc8247ff6dc0d999c9916dcb513164391c6148565b39c349

See more details on using hashes here.

Provenance

File details

Details for the file mappgene-1.4.0-py3-none-any.whl.

File metadata

  • Download URL: mappgene-1.4.0-py3-none-any.whl
  • Upload date:
  • Size: 3.3 MB
  • Tags: Python 3
  • Uploaded using Trusted Publishing? No
  • Uploaded via: twine/4.0.2 CPython/3.11.6

File hashes

Hashes for mappgene-1.4.0-py3-none-any.whl
Algorithm Hash digest
SHA256 a20b218a3e7ebc5a26c261754a392bf30d030a2419e412c06614c1c2d0eedc0d
MD5 29a75e6a92b4d6e6c51c4586d937f69a
BLAKE2b-256 1181bcd43d5472b0e30f566bd1d22c408f772dbaa85c9fffd9193e039171fd18

See more details on using hashes here.

Provenance

Supported by

AWS AWS Cloud computing and Security Sponsor Datadog Datadog Monitoring Fastly Fastly CDN Google Google Download Analytics Microsoft Microsoft PSF Sponsor Pingdom Pingdom Monitoring Sentry Sentry Error logging StatusPage StatusPage Status page