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Quantifying the lag time to detect barriers in landscape genetics
Authors:E. L. LANDGUTH  S. A. CUSHMAN  M. K. SCHWARTZ  K. S. McKELVEY  M. MURPHY  G. LUIKART
Affiliation:1. University of Montana, Mathematics Building, Missoula, MT, 59812, USA;2. USDA Forest Service, Rocky Mountain Research Station, 800 E Beckwith Ave., Missoula, MT 59801, USA;3. Colorado State University, Biology Department, Fort Collins, CO 80523‐1878 USA;4. Flathead Lake Biological Station, Division of Biological Sciences, University of Montana, Polson, MT 59860, USA;5. Centro de Investiga??o em Biodiversidade e Recursos Genéticos, Universidade do Porto (CIBIO‐UP), Campus Agrário de Vair?o, 4485‐661 Vair?o, Portugal
Abstract:Understanding how spatial genetic patterns respond to landscape change is crucial for advancing the emerging field of landscape genetics. We quantified the number of generations for new landscape barrier signatures to become detectable and for old signatures to disappear after barrier removal. We used spatially explicit, individual‐based simulations to examine the ability of an individual‐based statistic [Mantel’s r using the proportion of shared alleles’ statistic (Dps)] and population‐based statistic (FST) to detect barriers. We simulated a range of movement strategies including nearest neighbour dispersal, long‐distance dispersal and panmixia. The lag time for the signal of a new barrier to become established is short using Mantel’s r (1–15 generations). FST required approximately 200 generations to reach 50% of its equilibrium maximum, although G’ST performed much like Mantel’s r. In strong contrast, FST and Mantel’s r perform similarly following the removal of a barrier formerly dividing a population. Also, given neighbour mating and very short‐distance dispersal strategies, historical discontinuities from more than 100 generations ago might still be detectable with either method. This suggests that historical events and landscapes could have long‐term effects that confound inferences about the impacts of current landscape features on gene flow for species with very little long‐distance dispersal. Nonetheless, populations of organisms with relatively large dispersal distances will lose the signal of a former barrier within less than 15 generations, suggesting that individual‐based landscape genetic approaches can improve our ability to measure effects of existing landscape features on genetic structure and connectivity.
Keywords:computer simulation  connectivity  conservation genetics  gene flow  habitat fragmentation  landscape modelling  power analysis  resistance surfaces  spatial analysis
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