Modeling Population Structure Under Hierarchical Dirichlet Processes

Elliott, Lloyd T.; De Iorio, Maria; Favaro, Stefano; Adhikari, Kaustubh; Teh, Yee Whye

Abstract

We propose a Bayesian nonparametric model to infer population admixture, extending the hierarchical Dirichlet process to allow for correlation between loci due to linkage disequilibrium. Given multilocus genotype data from a sample of individuals, the proposed model allows inferring and classifying individuals as unadmixed or admixed, inferring the number of subpopulations ancestral to an admixed population and the population of origin of chromosomal regions. Our model does not assume any specific mutation process, and can be applied to most of the commonly used genetic markers. We present a Markov chain Monte Carlo (MCMC) algorithm to perform posterior inference from the model and we discuss some methods to summarize the MCMC output for the analysis of population admixture. Finally, we demonstrate the performance of the proposed model in a real application, using genetic data from the ectodysplasin-A receptor (EDAR) gene, which is considered to be ancestry-informative due to well-known variations in allele frequency as well as phenotypic effects across ancestry. The structure analysis of this dataset leads to the identification of a rare haplotype in Europeans. We also conduct a simulated experiment and show that our algorithm outperforms parametric methods.

Más información

Título según WOS: ID WOS:000461180700001 Not found in local WOS DB
Título de la Revista: BAYESIAN ANALYSIS
Volumen: 14
Número: 2
Editorial: INT SOC BAYESIAN ANALYSIS
Fecha de publicación: 2019
Página de inicio: 313
Página final: 339
DOI:

10.1214/17-BA1093

Notas: ISI