Published March 9, 2024 | Version Preprint v2
Preprint Open

PyPop: A mature open-source software pipeline for population genomics

  • 1. Amber Biology LLC
  • 2. ROR icon Ronin Institute
  • 3. ROR icon Institute for Globally Distributed Open Research and Education
  • 4. ROR icon University of Vermont
  • 5. ROR icon University of California, San Francisco
  • 6. ROR icon Lawrence Livermore National Laboratory
  • 7. Mariani Systems LLC

Description

Python for Population Genomics (PyPop) is a software package that processes genotype and allele data and performs large-scale population genetic analyses on highly polymorphic multi-locus genotype data. In particular, PyPop tests data conformity to Hardy-Weinberg equilibrium expectations, performs Ewens-Watterson tests for selection, estimates haplotype frequencies, measures linkage disequilibrium, and tests significance. Standardized means of performing these tests is key for contemporary studies of evolutionary biology and population genetics, and these tests are central to genetic studies of disease association as well. Here, we present PyPop 1.0.0, a new major release of the package, which implements new features using the more robust infrastructure of GitHub, and is distributed via the industry-standard Python Package Index. New features include implementation of the asymmetric linkage disequilibrium measures and, of particular interest to the immunogenetics research communities, support for modern nomenclature, including colon-delimited allele names, and improvements to meta-analysis features for aggregating outputs for multiple populations.

Notes

Please cite published version in Frontiers in Immunology:

Lancaster AK, Single RM, Mack SJ, Sochat V, Mariani MP, Webster GD. (2024) “PyPop: A mature open-source software pipeline for population genomics.” Front. Immunol. 15:1378512 doi: 10.3389/fimmu.2024.1378512

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Additional details

Related works

Describes
Software: 10.5281/zenodo.10080667 (DOI)
Is published in
Journal article: 10.3389/fimmu.2024.1378512 (DOI)