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CHARACTERIZING SOURCE–SINK DYNAMICS WITH GENETIC PARENTAGE ASSIGNMENTS
Author(s) -
Peery M. Zachariah,
Beissinger Steven R.,
House Roger F.,
Bérubé Martine,
Hall Laurie A.,
Sellas Anna,
Palsbøll Per J.
Publication year - 2008
Publication title -
ecology
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 2.144
H-Index - 294
eISSN - 1939-9170
pISSN - 0012-9658
DOI - 10.1890/07-2026.1
Subject(s) - population , sink (geography) , population size , ecology , biology , gene flow , effective population size , population growth , inference , population model , threatened species , evolutionary biology , demography , geography , genetic variation , computer science , habitat , cartography , artificial intelligence , sociology
Source–sink dynamics have been suggested to characterize the population structure of many species, but the prevalence of source–sink systems in nature is uncertain because of inherent challenges in estimating migration rates among populations. Migration rates are often difficult to estimate directly with demographic methods, and indirect genetic methods are subject to a variety of assumptions that are difficult to meet or to apply to evolutionary timescales. Furthermore, such methods cannot be rigorously applied to high‐gene‐flow species. Here, we employ genetic parentage assignments in conjunction with demographic simulations to infer the level of immigration into a putative sink population. We use individual‐based demographic models to estimate expected distributions of parent–offspring dyads under competing sink and closed‐population models. By comparing the actual number of parent–offspring dyads (identified from multilocus genetic profiles) in a random sample of individuals taken from a population to expectations under these two contrasting demographic models, it is possible to estimate the rate of immigration and test hypotheses related to the role of immigration on population processes on an ecological timescale. The difference in the expected number of parent–offspring dyads between the two population models was greatest when immigration into the sink population was high, indicating that unlike traditional population genetic inference models, the highest degree of statistical power is achieved for the approach presented here when migration rates are high. We used the proposed genetic parentage approach to demonstrate that a threatened population of Marbled Murrelets ( Brachyramphus marmotus ) appears to be supplemented by a low level of immigration (∼2–6% annually) from other populations.