Identifying selective sweeps in populations that have complex demographic histories remains a difficult problem in population genetics. We previously introduced a supervised machine learning approach, S/HIC, for finding both hard and soft selective sweeps in genomes on the basis of patterns of genetic variation surrounding a window of the genome. While S/HIC was shown to be both powerful and precise, the utility of S/HIC was limited by the use of phased genomic data as input. In this report we describe a deep learning variant of our method, diploS/HIC, that uses unphased genotypes to accurately classify genomic windows. diploS/HIC is shown to be quite powerful even at moderate to small sample sizes.
CITATION STYLE
Kern, A. D., & Schrider, D. R. (2018). DiploS/HIC: An updated approach to classifying selective sweeps. G3: Genes, Genomes, Genetics, 8(6), 1959–1970. https://doi.org/10.1534/g3.118.200262
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