Maximum-Likelihood Inference of Population Size Contractions from Microsatellite Data
Author(s) -
Raphaël Leblois,
Pierre Pudlo,
Joseph Néron,
François Bertaux,
Champak Beeravolu Reddy,
Renaud Vitalis,
François Rousset
Publication year - 2014
Publication title -
molecular biology and evolution
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 6.637
H-Index - 218
eISSN - 1537-1719
pISSN - 0737-4038
DOI - 10.1093/molbev/msu212
Subject(s) - inference , biology , population , microsatellite , approximate bayesian computation , demographic history , robustness (evolution) , population size , statistics , likelihood ratio test , linkage disequilibrium , effective population size , computer science , econometrics , genetics , artificial intelligence , allele , mathematics , genetic variation , demography , sociology , gene , haplotype
Understanding the demographic history of populations and species is a central issue in evolutionary biology and molecular ecology. In this work, we develop a maximum-likelihood method for the inference of past changes in population size from microsatellite allelic data. Our method is based on importance sampling of gene genealogies, extended for new mutation models, notably the generalized stepwise mutation model (GSM). Using simulations, we test its performance to detect and characterize past reductions in population size. First, we test the estimation precision and confidence intervals coverage properties under ideal conditions, then we compare the accuracy of the estimation with another available method (MSVAR) and we finally test its robustness to misspecification of the mutational model and population structure. We show that our method is very competitive compared with alternative ones. Moreover, our implementation of a GSM allows more accurate analysis of microsatellite data, as we show that the violations of a single step mutation assumption induce very high bias toward false contraction detection rates. However, our simulation tests also showed some limits, which most importantly are large computation times for strong disequilibrium scenarios and a strong influence of some form of unaccounted population structure. This inference method is available in the latest implementation of the MIGRAINE software package.
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