Assessing the permeability of landscape features to animal movement: using genetic structure to infer functional connectivity.

Human-altered environments often challenge native species with a complex spatial distribution of resources. Hostile landscape features can inhibit animal movement (i.e., genetic exchange), while other landscape attributes facilitate gene flow. The genetic attributes of organisms inhabiting such comp...

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Main Authors: Sara J Anderson, Elizabeth M Kierepka, Robert K Swihart, Emily K Latch, Olin E Rhodes
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2015-01-01
Series:PLoS ONE
Online Access:https://doi.org/10.1371/journal.pone.0117500
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spelling doaj-e709f606c1dc49c9b751e6be3e0899382021-03-03T20:09:43ZengPublic Library of Science (PLoS)PLoS ONE1932-62032015-01-01102e011750010.1371/journal.pone.0117500Assessing the permeability of landscape features to animal movement: using genetic structure to infer functional connectivity.Sara J AndersonElizabeth M KierepkaRobert K SwihartEmily K LatchOlin E RhodesHuman-altered environments often challenge native species with a complex spatial distribution of resources. Hostile landscape features can inhibit animal movement (i.e., genetic exchange), while other landscape attributes facilitate gene flow. The genetic attributes of organisms inhabiting such complex environments can reveal the legacy of their movements through the landscape. Thus, by evaluating landscape attributes within the context of genetic connectivity of organisms within the landscape, we can elucidate how a species has coped with the enhanced complexity of human altered environments. In this research, we utilized genetic data from eastern chipmunks (Tamias striatus) in conjunction with spatially explicit habitat attribute data to evaluate the realized permeability of various landscape elements in a fragmented agricultural ecosystem. To accomplish this we 1) used logistic regression to evaluate whether land cover attributes were most often associated with the matrix between or habitat within genetically identified populations across the landscape, and 2) utilized spatially explicit habitat attribute data to predict genetically-derived Bayesian probabilities of population membership of individual chipmunks in an agricultural ecosystem. Consistency between the results of the two approaches with regard to facilitators and inhibitors of gene flow in the landscape indicate that this is a promising new way to utilize both landscape and genetic data to gain a deeper understanding of human-altered ecosystems.https://doi.org/10.1371/journal.pone.0117500
collection DOAJ
language English
format Article
sources DOAJ
author Sara J Anderson
Elizabeth M Kierepka
Robert K Swihart
Emily K Latch
Olin E Rhodes
spellingShingle Sara J Anderson
Elizabeth M Kierepka
Robert K Swihart
Emily K Latch
Olin E Rhodes
Assessing the permeability of landscape features to animal movement: using genetic structure to infer functional connectivity.
PLoS ONE
author_facet Sara J Anderson
Elizabeth M Kierepka
Robert K Swihart
Emily K Latch
Olin E Rhodes
author_sort Sara J Anderson
title Assessing the permeability of landscape features to animal movement: using genetic structure to infer functional connectivity.
title_short Assessing the permeability of landscape features to animal movement: using genetic structure to infer functional connectivity.
title_full Assessing the permeability of landscape features to animal movement: using genetic structure to infer functional connectivity.
title_fullStr Assessing the permeability of landscape features to animal movement: using genetic structure to infer functional connectivity.
title_full_unstemmed Assessing the permeability of landscape features to animal movement: using genetic structure to infer functional connectivity.
title_sort assessing the permeability of landscape features to animal movement: using genetic structure to infer functional connectivity.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2015-01-01
description Human-altered environments often challenge native species with a complex spatial distribution of resources. Hostile landscape features can inhibit animal movement (i.e., genetic exchange), while other landscape attributes facilitate gene flow. The genetic attributes of organisms inhabiting such complex environments can reveal the legacy of their movements through the landscape. Thus, by evaluating landscape attributes within the context of genetic connectivity of organisms within the landscape, we can elucidate how a species has coped with the enhanced complexity of human altered environments. In this research, we utilized genetic data from eastern chipmunks (Tamias striatus) in conjunction with spatially explicit habitat attribute data to evaluate the realized permeability of various landscape elements in a fragmented agricultural ecosystem. To accomplish this we 1) used logistic regression to evaluate whether land cover attributes were most often associated with the matrix between or habitat within genetically identified populations across the landscape, and 2) utilized spatially explicit habitat attribute data to predict genetically-derived Bayesian probabilities of population membership of individual chipmunks in an agricultural ecosystem. Consistency between the results of the two approaches with regard to facilitators and inhibitors of gene flow in the landscape indicate that this is a promising new way to utilize both landscape and genetic data to gain a deeper understanding of human-altered ecosystems.
url https://doi.org/10.1371/journal.pone.0117500
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