TY - JOUR
T1 - A method for identifying local adaptation in structured populations
AU - do O, Isabela
AU - Gaggiotti, Oscar
AU - de Villemereuil, Pierre
AU - Goudet, Jerome
N1 - Funding: This study was funded by the Swiss Science National Foundation grant
31003A_179358, 310030_215709 to JG.
PY - 2025/9/23
Y1 - 2025/9/23
N2 - Species occupy diverse, heterogeneous environments, which expose populations to spatially varied selective pressures. Populations in different environments can diverge due to local adaptation. However, neutral evolution can also drive population divergence. Thus, testing for local adaptation requires a neutral baseline for population differentiation. The classical QST-FST comparison was developed for this purpose. Yet, QST-FST frequently fails to account for the complexities of population structure because the theory underlying this comparison assumes that all subpopulations are equally related, resulting in inflated false positive rates in metapopulations that deviate from the island model. To address this limitation we use estimates of between- and within-population relatedness to model population structure. Using those relatedness matrices, we infer the between- and within-population ancestral additive genetic variances under a mixed-effects model. Under neutrality, these inferred variances are expected to be equal. We propose here a test to detect selection based on the comparison of these two estimates of the ancestral variance and we compare its performance with earlier solutions. We find our method is well calibrated across various population structures and has high power to detect adaptive divergence.
AB - Species occupy diverse, heterogeneous environments, which expose populations to spatially varied selective pressures. Populations in different environments can diverge due to local adaptation. However, neutral evolution can also drive population divergence. Thus, testing for local adaptation requires a neutral baseline for population differentiation. The classical QST-FST comparison was developed for this purpose. Yet, QST-FST frequently fails to account for the complexities of population structure because the theory underlying this comparison assumes that all subpopulations are equally related, resulting in inflated false positive rates in metapopulations that deviate from the island model. To address this limitation we use estimates of between- and within-population relatedness to model population structure. Using those relatedness matrices, we infer the between- and within-population ancestral additive genetic variances under a mixed-effects model. Under neutrality, these inferred variances are expected to be equal. We propose here a test to detect selection based on the comparison of these two estimates of the ancestral variance and we compare its performance with earlier solutions. We find our method is well calibrated across various population structures and has high power to detect adaptive divergence.
UR - https://www.scopus.com/pages/publications/105017547519
U2 - 10.1371/journal.pgen.1011871
DO - 10.1371/journal.pgen.1011871
M3 - Article
SN - 1553-7390
VL - 21
SP - 1
EP - 21
JO - PLoS Genetics
JF - PLoS Genetics
IS - 9
M1 - e1011871
ER -