Incorporating intraspecific variation into species distribution models improves distribution predictions, but cannot predict species traits for a wide‐spread plant species

The most common approach to predicting how species ranges and ecological functions will shift with climate change is to construct correlative species distribution models (SDMs). These models use a species’ climatic distribution to determine currently suitable areas for the species and project its po...

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Published in:Ecography
Main Authors: Peterson, Megan Lynn, Doak, Daniel Forest, Pironon, Samuel, Chardon, Nathalie Isabelle
Format: Article in Journal/Newspaper
Language:unknown
Published: Wiley 2019
Subjects:
Online Access:https://onlinelibrary.wiley.com/doi/full/10.1111/ecog.04630
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spelling ftroyalbotgarden:oai:hyku:be696ba3-be37-4563-a513-7667415a2d05 2023-05-15T15:16:00+02:00 Incorporating intraspecific variation into species distribution models improves distribution predictions, but cannot predict species traits for a wide‐spread plant species Peterson, Megan Lynn Doak, Daniel Forest Pironon, Samuel Chardon, Nathalie Isabelle 2019-11-05 https://onlinelibrary.wiley.com/doi/full/10.1111/ecog.04630 unknown Wiley Ecography https://onlinelibrary.wiley.com/doi/full/10.1111/ecog.04630 https://creativecommons.org/licenses/by/4.0/ CC-BY genetic variation local adaptation species distribution modeling habitat suitability traits climate change Article 2019 ftroyalbotgarden 2022-07-27T18:24:06Z The most common approach to predicting how species ranges and ecological functions will shift with climate change is to construct correlative species distribution models (SDMs). These models use a species’ climatic distribution to determine currently suitable areas for the species and project its potential distribution under future climate scenarios. A core, rarely tested, assumption of SDMs is that all populations will respond equivalently to climate. Few studies have examined this assumption, and those that have rarely dissect the reasons for intraspecific differences. Focusing on the arctic‐alpine cushion plant Silene acaulis, we compared predictive accuracy from SDMs constructed using the species’ full global distribution with composite predictions from separate SDMs constructed using subpopulations defined either by genetic or habitat differences. This is one of the first studies to compare multiple ways of constructing intraspecific‐level SDMs with a species‐level SDM. We also examine the contested relationship between relative probability of occurrence and species performance or ecological function, testing if SDM output can predict individual performance (plant size) and biotic interactions (facilitation). We found that both genetic‐ and habitat‐informed SDMs are considerably more accurate than a species‐level SDM, and that the genetic model substantially differs from and outperforms the habitat model. While SDMs have been used to infer population performance and possibly even biotic interactions, in our system these relationships were extremely weak. Our results indicate that individual subpopulations may respond differently to climate, although we discuss and explore several alternative explanations for the superior performance of intraspecific‐level SDMs. We emphasize the need to carefully examine how to best define intraspecific‐level SDMs as well as how potential genetic, environmental, or sampling variation within species ranges can critically affect SDM predictions. We urge caution in inferring ... Article in Journal/Newspaper Arctic Climate change Silene acaulis Kew Research Repository Arctic Ecography 43 1 60 74
institution Open Polar
collection Kew Research Repository
op_collection_id ftroyalbotgarden
language unknown
topic genetic variation
local adaptation
species distribution modeling
habitat suitability
traits
climate change
spellingShingle genetic variation
local adaptation
species distribution modeling
habitat suitability
traits
climate change
Peterson, Megan Lynn
Doak, Daniel Forest
Pironon, Samuel
Chardon, Nathalie Isabelle
Incorporating intraspecific variation into species distribution models improves distribution predictions, but cannot predict species traits for a wide‐spread plant species
topic_facet genetic variation
local adaptation
species distribution modeling
habitat suitability
traits
climate change
description The most common approach to predicting how species ranges and ecological functions will shift with climate change is to construct correlative species distribution models (SDMs). These models use a species’ climatic distribution to determine currently suitable areas for the species and project its potential distribution under future climate scenarios. A core, rarely tested, assumption of SDMs is that all populations will respond equivalently to climate. Few studies have examined this assumption, and those that have rarely dissect the reasons for intraspecific differences. Focusing on the arctic‐alpine cushion plant Silene acaulis, we compared predictive accuracy from SDMs constructed using the species’ full global distribution with composite predictions from separate SDMs constructed using subpopulations defined either by genetic or habitat differences. This is one of the first studies to compare multiple ways of constructing intraspecific‐level SDMs with a species‐level SDM. We also examine the contested relationship between relative probability of occurrence and species performance or ecological function, testing if SDM output can predict individual performance (plant size) and biotic interactions (facilitation). We found that both genetic‐ and habitat‐informed SDMs are considerably more accurate than a species‐level SDM, and that the genetic model substantially differs from and outperforms the habitat model. While SDMs have been used to infer population performance and possibly even biotic interactions, in our system these relationships were extremely weak. Our results indicate that individual subpopulations may respond differently to climate, although we discuss and explore several alternative explanations for the superior performance of intraspecific‐level SDMs. We emphasize the need to carefully examine how to best define intraspecific‐level SDMs as well as how potential genetic, environmental, or sampling variation within species ranges can critically affect SDM predictions. We urge caution in inferring ...
format Article in Journal/Newspaper
author Peterson, Megan Lynn
Doak, Daniel Forest
Pironon, Samuel
Chardon, Nathalie Isabelle
author_facet Peterson, Megan Lynn
Doak, Daniel Forest
Pironon, Samuel
Chardon, Nathalie Isabelle
author_sort Peterson, Megan Lynn
title Incorporating intraspecific variation into species distribution models improves distribution predictions, but cannot predict species traits for a wide‐spread plant species
title_short Incorporating intraspecific variation into species distribution models improves distribution predictions, but cannot predict species traits for a wide‐spread plant species
title_full Incorporating intraspecific variation into species distribution models improves distribution predictions, but cannot predict species traits for a wide‐spread plant species
title_fullStr Incorporating intraspecific variation into species distribution models improves distribution predictions, but cannot predict species traits for a wide‐spread plant species
title_full_unstemmed Incorporating intraspecific variation into species distribution models improves distribution predictions, but cannot predict species traits for a wide‐spread plant species
title_sort incorporating intraspecific variation into species distribution models improves distribution predictions, but cannot predict species traits for a wide‐spread plant species
publisher Wiley
publishDate 2019
url https://onlinelibrary.wiley.com/doi/full/10.1111/ecog.04630
geographic Arctic
geographic_facet Arctic
genre Arctic
Climate change
Silene acaulis
genre_facet Arctic
Climate change
Silene acaulis
op_relation Ecography
https://onlinelibrary.wiley.com/doi/full/10.1111/ecog.04630
op_rights https://creativecommons.org/licenses/by/4.0/
op_rightsnorm CC-BY
container_title Ecography
container_volume 43
container_issue 1
container_start_page 60
op_container_end_page 74
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