FineMAV: prioritizing candidate genetic variants driving local adaptations in human populations

Abstract We present a new method, Fine-Mapping of Adaptive Variation (FineMAV), which combines population differentiation, derived allele frequency, and molecular functionality to prioritize positively selected candidate variants for functional follow-up. We calibrate and test FineMAV using eight ex...

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Main Authors: Michał Szpak, Massimo Mezzavilla, Qasim Ayub, Yuan Chen, Yali Xue, Chris Tyler-Smith
Format: Article
Language:English
Published: BMC 2018-01-01
Series:Genome Biology
Subjects:
Online Access:http://link.springer.com/article/10.1186/s13059-017-1380-2
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spelling doaj-bb960ad5f81641f1a1bb07bcb59cbb512020-11-24T21:36:34ZengBMCGenome Biology1474-760X2018-01-0119111810.1186/s13059-017-1380-2FineMAV: prioritizing candidate genetic variants driving local adaptations in human populationsMichał Szpak0Massimo Mezzavilla1Qasim Ayub2Yuan Chen3Yali Xue4Chris Tyler-Smith5Wellcome Trust Sanger InstituteWellcome Trust Sanger InstituteWellcome Trust Sanger InstituteWellcome Trust Sanger InstituteWellcome Trust Sanger InstituteWellcome Trust Sanger InstituteAbstract We present a new method, Fine-Mapping of Adaptive Variation (FineMAV), which combines population differentiation, derived allele frequency, and molecular functionality to prioritize positively selected candidate variants for functional follow-up. We calibrate and test FineMAV using eight experimentally validated “gold standard” positively selected variants and simulations. FineMAV has good sensitivity and a low false discovery rate. Applying FineMAV to the 1000 Genomes Project Phase 3 SNP dataset, we report many novel selected variants, including ones in TGM3 and PRSS53 associated with hair phenotypes that we validate using available independent data. FineMAV is widely applicable to sequence data from both human and other species.http://link.springer.com/article/10.1186/s13059-017-1380-2Human evolutionPositive selectionSelective sweepLocal adaptationFineMAV
collection DOAJ
language English
format Article
sources DOAJ
author Michał Szpak
Massimo Mezzavilla
Qasim Ayub
Yuan Chen
Yali Xue
Chris Tyler-Smith
spellingShingle Michał Szpak
Massimo Mezzavilla
Qasim Ayub
Yuan Chen
Yali Xue
Chris Tyler-Smith
FineMAV: prioritizing candidate genetic variants driving local adaptations in human populations
Genome Biology
Human evolution
Positive selection
Selective sweep
Local adaptation
FineMAV
author_facet Michał Szpak
Massimo Mezzavilla
Qasim Ayub
Yuan Chen
Yali Xue
Chris Tyler-Smith
author_sort Michał Szpak
title FineMAV: prioritizing candidate genetic variants driving local adaptations in human populations
title_short FineMAV: prioritizing candidate genetic variants driving local adaptations in human populations
title_full FineMAV: prioritizing candidate genetic variants driving local adaptations in human populations
title_fullStr FineMAV: prioritizing candidate genetic variants driving local adaptations in human populations
title_full_unstemmed FineMAV: prioritizing candidate genetic variants driving local adaptations in human populations
title_sort finemav: prioritizing candidate genetic variants driving local adaptations in human populations
publisher BMC
series Genome Biology
issn 1474-760X
publishDate 2018-01-01
description Abstract We present a new method, Fine-Mapping of Adaptive Variation (FineMAV), which combines population differentiation, derived allele frequency, and molecular functionality to prioritize positively selected candidate variants for functional follow-up. We calibrate and test FineMAV using eight experimentally validated “gold standard” positively selected variants and simulations. FineMAV has good sensitivity and a low false discovery rate. Applying FineMAV to the 1000 Genomes Project Phase 3 SNP dataset, we report many novel selected variants, including ones in TGM3 and PRSS53 associated with hair phenotypes that we validate using available independent data. FineMAV is widely applicable to sequence data from both human and other species.
topic Human evolution
Positive selection
Selective sweep
Local adaptation
FineMAV
url http://link.springer.com/article/10.1186/s13059-017-1380-2
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