期刊论文详细信息
Frontiers in Genetics
On detecting selective sweeps using single genomes
Yu-Ping ePoh1  Jeffrey D. Jensen1  Priyanka eSinha1  Daniel eVirgil1  Guang eXu1  Aslihan eDincer1 
[1] University of Massachusetts, Medical School;École Polytechnique Fédérale de Lausanne;
关键词: Demography;    adaptation;    statistical inference;    selective sweeps;   
DOI  :  10.3389/fgene.2011.00085
来源: DOAJ
【 摘 要 】

Identifying the genetic basis of human adaptation has remained a central focal point of modern population genetics. One major area of interest has been the use of polymorphism data to detect so-called 'footprints' of selective sweeps - patterns produced as a beneficial mutation arises and rapidly fixes in the population. Based on numerous simulation studies and power analyses, the necessary sample size for achieving appreciable power has been shown to vary from a few individuals to a few dozen, depending on the test statistic. And yet, the sequencing of multiple copies of a single region, or of multiple genomes as is now often the case, incurs considerable cost. Enard et al. (2010) have recently proposed a method to identify patterns of selective sweeps using a single genome - and apply this approach to human and non¬human primates (chimpanzee, orangutan and macaque). They employ essentially a modification of the Hudson, Kreitman and Aguade (HKA) test - using heterozygous single nucleotide poly¬morphisms (SNPs) from single individuals, and divergence data from two closely related spe¬cies (human-chimpanzee, human-orangutan and human-macaque). Given the potential importance of this finding, we here investigate the properties of this statistic. We demonstrate through simulation that this approach is neither robust to demography nor background selection; nor is it robust to variable recombination rates.

【 授权许可】

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