联系我们
意见反馈

关注公众号

获得最新科研资讯

Lab of Machine Learning in Ecology, Evolution and Population Genomics

简介 The Qin Research Group lies in the intersection of ecology, genetics and evolution where we use statistical and machine learning tools to better understand how are genetic and phenotypic variation originated, developed and maintained.

分享到

Deciphering signatures of natural selection via deep learning

2022
期刊 Briefings in Bioinformatics
Abstract Identifying genomic regions influenced by natural selection provides fundamental insights into the genetic basis of local adaptation. However, it remains challenging to detect loci under complex spatially varying selection. We propose a deep learning-based framework, DeepGenomeScan, which can detect signatures of spatially varying selection. We demonstrate that DeepGenomeScan outperformed principal component analysis- and redundancy analysis-based genome scans in identifying loci underlying quantitative traits subject to complex spatial patterns of selection. Noticeably, DeepGenomeScan increases statistical power by up to 47.25% under nonlinear environmental selection patterns. We applied DeepGenomeScan to a European human genetic dataset and identified some well-known genes under selection and a substantial number of clinically important genes that were not identified by SPA, iHS, Fst and Bayenv when applied to the same dataset.