The inference of sex-biased human demography from whole-genome data.

Sex-biased demographic events ("sex-bias") involve unequal numbers of females and males. These events are typically inferred from the relative amount of X-chromosomal to autosomal genetic variation and have led to conflicting conclusions about human demographic history. Though population s...

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Main Authors: Shaila Musharoff, Suyash Shringarpure, Carlos D Bustamante, Sohini Ramachandran
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2019-09-01
Series:PLoS Genetics
Online Access:https://doi.org/10.1371/journal.pgen.1008293
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spelling doaj-ad0f3b4905a5463b8137bcdd31a054702021-04-21T14:21:51ZengPublic Library of Science (PLoS)PLoS Genetics1553-73901553-74042019-09-01159e100829310.1371/journal.pgen.1008293The inference of sex-biased human demography from whole-genome data.Shaila MusharoffSuyash ShringarpureCarlos D BustamanteSohini RamachandranSex-biased demographic events ("sex-bias") involve unequal numbers of females and males. These events are typically inferred from the relative amount of X-chromosomal to autosomal genetic variation and have led to conflicting conclusions about human demographic history. Though population size changes alter the relative amount of X-chromosomal to autosomal genetic diversity even in the absence of sex-bias, this has generally not been accounted for in sex-bias estimators to date. Here, we present a novel method to identify sex-bias from genetic sequence data that models population size changes and estimates the female fraction of the effective population size during each time epoch. Compared to recent sex-bias inference methods, our approach can detect sex-bias that changes on a single population branch without requiring data from an outgroup or knowledge of divergence events. When applied to simulated data, conventional sex-bias estimators are biased by population size changes, especially recent growth or bottlenecks, while our estimator is unbiased. We next apply our method to high-coverage exome data from the 1000 Genomes Project and estimate a male bias in Yorubans (47% female) and Europeans (44%), possibly due to stronger background selection on the X chromosome than on the autosomes. Finally, we apply our method to the 1000 Genomes Project Phase 3 high-coverage Complete Genomics whole-genome data and estimate a female bias in Yorubans (63% female), Europeans (84%), Punjabis (82%), as well as Peruvians (56%), and a male bias in the Southern Han Chinese (45%). Our method additionally identifies a male-biased migration out of Africa based on data from Europeans (20% female). Our results demonstrate that modeling population size change is necessary to estimate sex-bias parameters accurately. Our approach gives insight into signatures of sex-bias in sexual species, and the demographic models it produces can serve as more accurate null models for tests of selection.https://doi.org/10.1371/journal.pgen.1008293
collection DOAJ
language English
format Article
sources DOAJ
author Shaila Musharoff
Suyash Shringarpure
Carlos D Bustamante
Sohini Ramachandran
spellingShingle Shaila Musharoff
Suyash Shringarpure
Carlos D Bustamante
Sohini Ramachandran
The inference of sex-biased human demography from whole-genome data.
PLoS Genetics
author_facet Shaila Musharoff
Suyash Shringarpure
Carlos D Bustamante
Sohini Ramachandran
author_sort Shaila Musharoff
title The inference of sex-biased human demography from whole-genome data.
title_short The inference of sex-biased human demography from whole-genome data.
title_full The inference of sex-biased human demography from whole-genome data.
title_fullStr The inference of sex-biased human demography from whole-genome data.
title_full_unstemmed The inference of sex-biased human demography from whole-genome data.
title_sort inference of sex-biased human demography from whole-genome data.
publisher Public Library of Science (PLoS)
series PLoS Genetics
issn 1553-7390
1553-7404
publishDate 2019-09-01
description Sex-biased demographic events ("sex-bias") involve unequal numbers of females and males. These events are typically inferred from the relative amount of X-chromosomal to autosomal genetic variation and have led to conflicting conclusions about human demographic history. Though population size changes alter the relative amount of X-chromosomal to autosomal genetic diversity even in the absence of sex-bias, this has generally not been accounted for in sex-bias estimators to date. Here, we present a novel method to identify sex-bias from genetic sequence data that models population size changes and estimates the female fraction of the effective population size during each time epoch. Compared to recent sex-bias inference methods, our approach can detect sex-bias that changes on a single population branch without requiring data from an outgroup or knowledge of divergence events. When applied to simulated data, conventional sex-bias estimators are biased by population size changes, especially recent growth or bottlenecks, while our estimator is unbiased. We next apply our method to high-coverage exome data from the 1000 Genomes Project and estimate a male bias in Yorubans (47% female) and Europeans (44%), possibly due to stronger background selection on the X chromosome than on the autosomes. Finally, we apply our method to the 1000 Genomes Project Phase 3 high-coverage Complete Genomics whole-genome data and estimate a female bias in Yorubans (63% female), Europeans (84%), Punjabis (82%), as well as Peruvians (56%), and a male bias in the Southern Han Chinese (45%). Our method additionally identifies a male-biased migration out of Africa based on data from Europeans (20% female). Our results demonstrate that modeling population size change is necessary to estimate sex-bias parameters accurately. Our approach gives insight into signatures of sex-bias in sexual species, and the demographic models it produces can serve as more accurate null models for tests of selection.
url https://doi.org/10.1371/journal.pgen.1008293
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