Litcius/Paper detail

PascalX: a Python library for GWAS gene and pathway enrichment tests

Daniel Krefl, Alessandro Brandulas-Cammarata, Sven Bergmann

2023Bioinformatics22 citationsDOIOpen Access PDF

Abstract

SUMMARY: 'PascalX' is a Python library providing fast and accurate tools for mapping SNP-wise GWAS summary statistics. Specifically, it allows for scoring genes and annotated gene sets for enrichment signals based on data from, both, single GWAS and pairs of GWAS. The gene scores take into account the correlation pattern between SNPs. They are based on the cumulative density function of a linear combination of χ2 distributed random variables, which can be calculated either approximately or exactly to high precision. Acceleration via multithreading and GPU is supported. The code of PascalX is fully open source and well suited as a base for method development in the GWAS enrichment test context. AVAILABILITY AND IMPLEMENTATION: The source code is available at https://github.com/BergmannLab/PascalX and archived under doi://10.5281/zenodo.4429922. A user manual with usage examples is available at https://bergmannlab.github.io/PascalX/.

Topics & Concepts

Python (programming language)Computer scienceSource codeGenome-wide association studyComputational biologySingle-nucleotide polymorphismData miningProgramming languageGeneBiologyGeneticsGenotypeGenetic Associations and EpidemiologyGenetic Mapping and Diversity in Plants and AnimalsGenetic and phenotypic traits in livestock