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- Title
PAPipe: A Pipeline for Comprehensive Population Genetic Analysis.
- Authors
Park, Nayoung; Kim, Hyeonji; Oh, Jeongmin; Kim, Jinseok; Heo, Charyeong; Kim, Jaebum
- Abstract
Advancements in next-generation sequencing (NGS) technologies have led to a substantial increase in the availability of population genetic variant data, thus prompting the development of various population analysis tools to enhance our understanding of population structure and evolution. The tools that are currently used to analyze population genetic variant data generally require different environments, parameters, and formats of the input data, which can act as a barrier preventing the wide-spread usage of such tools by general researchers who may not be familiar with bioinformatics. To address this problem, we have developed an automated and comprehensive pipeline called PAPipe to perform nine widely used population genetic analyses using population NGS data. PAPipe seamlessly interconnects and serializes multiple steps, such as read trimming and mapping, genetic variant calling, data filtering, and format converting, along with nine population genetic analyses such as principal component analysis, phylogenetic analysis, population tree analysis, population structure analysis, linkage disequilibrium decay analysis, selective sweep analysis, population admixture analysis, sequentially Markovian coalescent analysis, and fixation index analysis. PAPipe also provides an easy-to-use web interface that allows for the parameters to be set and the analysis results to be browsed in intuitive manner. PAPipe can be used to generate extensive results that provide insights that can help enhance user convenience and data usability. PAPipe is freely available at https://github.com/jkimlab/PAPipe.
- Subjects
PRINCIPAL components analysis; GENETIC variation; NUCLEOTIDE sequencing; LINKAGE disequilibrium; SINGLE nucleotide polymorphisms; BAYESIAN analysis
- Publication
Molecular Biology & Evolution, 2024, Vol 41, Issue 3, p1
- ISSN
0737-4038
- Publication type
Article
- DOI
10.1093/molbev/msae040