Literature DB >> 29743099

Nonparametric approaches for population structure analysis.

Luluah Alhusain1, Alaaeldin M Hafez2.   

Abstract

The analysis of population structure has many applications in medical and population genetic research. Such analysis is used to provide clear insight into the underlying genetic population substructure and is a crucial prerequisite for any analysis of genetic data. The analysis involves grouping individuals into subpopulations based on shared genetic variations. The most widely used markers to study the variation of DNA sequences between populations are single nucleotide polymorphisms. Data preprocessing is a necessary step to assess the quality of the data and to determine which markers or individuals can reasonably be included in the analysis. After preprocessing, several methods can be utilized to uncover population substructure, which can be categorized into two broad approaches: parametric and nonparametric. Parametric approaches use statistical models to infer population structure and assign individuals into subpopulations. However, these approaches suffer from many drawbacks that make them impractical for large datasets. In contrast, nonparametric approaches do not suffer from these drawbacks, making them more viable than parametric approaches for analyzing large datasets. Consequently, nonparametric approaches are increasingly used to reveal population substructure. Thus, this paper reviews and discusses the nonparametric approaches that are available for population structure analysis along with some implications to resolve challenges.

Entities:  

Keywords:  Allele-sharing distance; Clustering; Dimension reduction; Genetic data; Population genetics; Population structure analysis; Principal component analysis; Single nucleotide polymorphism

Mesh:

Year:  2018        PMID: 29743099      PMCID: PMC5944014          DOI: 10.1186/s40246-018-0156-4

Source DB:  PubMed          Journal:  Hum Genomics        ISSN: 1473-9542            Impact factor:   4.639


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