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IPCAPS: an R package for iterative pruning to capture population structure
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Metadata
Document Title
IPCAPS: an R package for iterative pruning to capture population structure
Author
Chaichoompu K, Abegaz F, Tongsima S, Shaw PJ, Sakuntabhai A, Pereira L, Van Steen K
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Affiliations
University of Liege; National Science & Technology Development Agency - Thailand; National Center Genetic Engineering & Biotechnology (BIOTEC); National Science & Technology Development Agency - Thailand; National Center Genetic Engineering & Biotechnology (BIOTEC); Le Reseau International des Instituts Pasteur (RIIP); Institut Pasteur Paris; Centre National de la Recherche Scientifique (CNRS); Universidade do Porto; i3S - Instituto de Investigacao e Inovacao em Saude, Universidade do Porto; Universidade do Porto; WELBIO
Type
Article
Source Title
SOURCE CODE FOR BIOLOGY AND MEDICINE
Year
2019
Volume
14
Open Access
Green Published, Green Submitted
Publisher
BMC
DOI
10.1186/s13029-019-0072-6
Format
Abstract
Background: Resolving population genetic structure is challenging, especially when dealing with closely related or geographically confined populations. Although Principal Component Analysis (PCA)-based methods and genomic variation with single nucleotide polymorphisms (SNPs) are widely used to describe shared genetic ancestry, improvements can be made especially when fine-scale population structure is the target. Results: This work presents an R package called IPCAPS, which uses SNP information for resolving possibly fine-scale population structure. The IPCAPS routines are built on the iterative pruning Principal Component Analysis (ipPCA) framework that systematically assigns individuals to genetically similar subgroups. In each iteration, our tool is able to detect and eliminate outliers, hereby avoiding severe misclassification errors. Conclusions: IPCAPS supports different measurement scales for variables used to identify substructure. Hence, panels of gene expression and methylation data can be accommodated as well. The tool can also be applied in patient sub-phenotyping contexts. IPCAPS is developed in R and is freely available from http://bio3.giga.ulg.ac.be/ipcaps
Keyword
Fine-scale structure | Iterative pruning | Outlier detection | Population clustering | Population genetics
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Funding Sponsor
Fonds de la Recherche Scientifique [FNRS PDR T.0180.13]; Walloon Excellence in Lifesciences and Biotechnology (WFI BIO); French National Research Agency (ANR GWIS-AM) [ANR-11-BSV1-0027]; National Science and Technology Development Agency (NSTDA) Chair grant
License
CC BY
Rights
Authors
Publication Source
WOS