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Aggregate population-level models informed by genetics predict more suitable habitat than traditional species-level model across the range of a widespread riparian tree
by
Bailey, Joseph K.
, Papeş, Monica
, Bayliss, Shannon L. J.
, Schweitzer, Jennifer A.
in
Adaptation (Biology)
/ Biology and Life Sciences
/ Climate change
/ Climate models
/ Climatic changes
/ Conservation
/ Datasets
/ Earth Sciences
/ Ecological niches
/ Ecological research
/ Ecology and Environmental Sciences
/ Environmental aspects
/ Feature selection
/ Genetic engineering
/ Genetics
/ Geographical distribution
/ Habitat (Ecology)
/ Habitats
/ Influence
/ Machine learning
/ Modelling
/ Modification
/ Natural history
/ Niches
/ Population
/ Population genetics
/ Populations
/ Predictions
/ Riparian areas
/ Species
/ Trees
/ Variables
2022
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Aggregate population-level models informed by genetics predict more suitable habitat than traditional species-level model across the range of a widespread riparian tree
by
Bailey, Joseph K.
, Papeş, Monica
, Bayliss, Shannon L. J.
, Schweitzer, Jennifer A.
in
Adaptation (Biology)
/ Biology and Life Sciences
/ Climate change
/ Climate models
/ Climatic changes
/ Conservation
/ Datasets
/ Earth Sciences
/ Ecological niches
/ Ecological research
/ Ecology and Environmental Sciences
/ Environmental aspects
/ Feature selection
/ Genetic engineering
/ Genetics
/ Geographical distribution
/ Habitat (Ecology)
/ Habitats
/ Influence
/ Machine learning
/ Modelling
/ Modification
/ Natural history
/ Niches
/ Population
/ Population genetics
/ Populations
/ Predictions
/ Riparian areas
/ Species
/ Trees
/ Variables
2022
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Aggregate population-level models informed by genetics predict more suitable habitat than traditional species-level model across the range of a widespread riparian tree
by
Bailey, Joseph K.
, Papeş, Monica
, Bayliss, Shannon L. J.
, Schweitzer, Jennifer A.
in
Adaptation (Biology)
/ Biology and Life Sciences
/ Climate change
/ Climate models
/ Climatic changes
/ Conservation
/ Datasets
/ Earth Sciences
/ Ecological niches
/ Ecological research
/ Ecology and Environmental Sciences
/ Environmental aspects
/ Feature selection
/ Genetic engineering
/ Genetics
/ Geographical distribution
/ Habitat (Ecology)
/ Habitats
/ Influence
/ Machine learning
/ Modelling
/ Modification
/ Natural history
/ Niches
/ Population
/ Population genetics
/ Populations
/ Predictions
/ Riparian areas
/ Species
/ Trees
/ Variables
2022
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Aggregate population-level models informed by genetics predict more suitable habitat than traditional species-level model across the range of a widespread riparian tree
Journal Article
Aggregate population-level models informed by genetics predict more suitable habitat than traditional species-level model across the range of a widespread riparian tree
2022
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Overview
Identifying and predicting how species ranges will shift in response to climate change is paramount for conservation and restoration. Ecological niche models are the most common method used to estimate potential distributions of species; however, they traditionally omit knowledge of intraspecific variation that can allow populations to respond uniquely to change. Here, we aim to test how population X environment relationships influence predicted suitable geographic distributions by comparing aggregated population-level models with species-level model predictions of suitable habitat within population ranges and across the species’ range. We also test the effect of two variable selection methods on these predictions–both addressing the possibility of local adaptation: Models were built with (a) a common set, and number, of predictors and, (b) a unique combination and number of predictors specific to each group’s training extent. Our study addresses the overarching hypothesis that populations have unique environmental niches, and specifically that (1) species-level models predict more suitable habitat within the ranges of genetic populations than individual models built from those groups, particularly when compared models are built with the same set of environmental predictors; and (2) aggregated genetic population models predict more suitable habitat across the species’ range than the species-level model, an = d this difference will increase when models are trained with individualized predictors. We found the species models predicted more habitat within population ranges for two of three genetic groups regardless of variable selection, and that aggregated population models predicted more habitat than species’ models, but that individualized predictors increased this difference. Our study emphasizes the extent to which changes to model predictions depend on the inclusion of genetic information and on the type and selection of predictors. Results from these modeling decisions can have broad implications for predicting population-level ecological and evolutionary responses to climate change.
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