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Evolutionary genomics can improve prediction of species’ responses to climate change

Global climate change (GCC) increasingly threatens biodiversity through the loss of species, and the transformation of entire ecosystems. Many species are challenged by the pace of GCC because they might not be able to respond fast enough to changing biotic and abiotic conditions. Species can respon...

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Autores principales: Waldvogel, Ann‐Marie, Feldmeyer, Barbara, Rolshausen, Gregor, Exposito‐Alonso, Moises, Rellstab, Christian, Kofler, Robert, Mock, Thomas, Schmid, Karl, Schmitt, Imke, Bataillon, Thomas, Savolainen, Outi, Bergland, Alan, Flatt, Thomas, Guillaume, Frederic, Pfenninger, Markus
Formato: Online Artículo Texto
Lenguaje:English
Publicado: John Wiley and Sons Inc. 2020
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7006467/
https://www.ncbi.nlm.nih.gov/pubmed/32055407
http://dx.doi.org/10.1002/evl3.154
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author Waldvogel, Ann‐Marie
Feldmeyer, Barbara
Rolshausen, Gregor
Exposito‐Alonso, Moises
Rellstab, Christian
Kofler, Robert
Mock, Thomas
Schmid, Karl
Schmitt, Imke
Bataillon, Thomas
Savolainen, Outi
Bergland, Alan
Flatt, Thomas
Guillaume, Frederic
Pfenninger, Markus
author_facet Waldvogel, Ann‐Marie
Feldmeyer, Barbara
Rolshausen, Gregor
Exposito‐Alonso, Moises
Rellstab, Christian
Kofler, Robert
Mock, Thomas
Schmid, Karl
Schmitt, Imke
Bataillon, Thomas
Savolainen, Outi
Bergland, Alan
Flatt, Thomas
Guillaume, Frederic
Pfenninger, Markus
author_sort Waldvogel, Ann‐Marie
collection PubMed
description Global climate change (GCC) increasingly threatens biodiversity through the loss of species, and the transformation of entire ecosystems. Many species are challenged by the pace of GCC because they might not be able to respond fast enough to changing biotic and abiotic conditions. Species can respond either by shifting their range, or by persisting in their local habitat. If populations persist, they can tolerate climatic changes through phenotypic plasticity, or genetically adapt to changing conditions depending on their genetic variability and census population size to allow for de novo mutations. Otherwise, populations will experience demographic collapses and species may go extinct. Current approaches to predicting species responses to GCC begin to combine ecological and evolutionary information for species distribution modelling. Including an evolutionary dimension will substantially improve species distribution projections which have not accounted for key processes such as dispersal, adaptive genetic change, demography, or species interactions. However, eco‐evolutionary models require new data and methods for the estimation of a species' adaptive potential, which have so far only been available for a small number of model species. To represent global biodiversity, we need to devise large‐scale data collection strategies to define the ecology and evolutionary potential of a broad range of species, especially of keystone species of ecosystems. We also need standardized and replicable modelling approaches that integrate these new data to account for eco‐evolutionary processes when predicting the impact of GCC on species' survival. Here, we discuss different genomic approaches that can be used to investigate and predict species responses to GCC. This can serve as guidance for researchers looking for the appropriate experimental setup for their particular system. We furthermore highlight future directions for moving forward in the field and allocating available resources more effectively, to implement mitigation measures before species go extinct and ecosystems lose important functions.
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spelling pubmed-70064672020-02-13 Evolutionary genomics can improve prediction of species’ responses to climate change Waldvogel, Ann‐Marie Feldmeyer, Barbara Rolshausen, Gregor Exposito‐Alonso, Moises Rellstab, Christian Kofler, Robert Mock, Thomas Schmid, Karl Schmitt, Imke Bataillon, Thomas Savolainen, Outi Bergland, Alan Flatt, Thomas Guillaume, Frederic Pfenninger, Markus Evol Lett Comments and Opinions Global climate change (GCC) increasingly threatens biodiversity through the loss of species, and the transformation of entire ecosystems. Many species are challenged by the pace of GCC because they might not be able to respond fast enough to changing biotic and abiotic conditions. Species can respond either by shifting their range, or by persisting in their local habitat. If populations persist, they can tolerate climatic changes through phenotypic plasticity, or genetically adapt to changing conditions depending on their genetic variability and census population size to allow for de novo mutations. Otherwise, populations will experience demographic collapses and species may go extinct. Current approaches to predicting species responses to GCC begin to combine ecological and evolutionary information for species distribution modelling. Including an evolutionary dimension will substantially improve species distribution projections which have not accounted for key processes such as dispersal, adaptive genetic change, demography, or species interactions. However, eco‐evolutionary models require new data and methods for the estimation of a species' adaptive potential, which have so far only been available for a small number of model species. To represent global biodiversity, we need to devise large‐scale data collection strategies to define the ecology and evolutionary potential of a broad range of species, especially of keystone species of ecosystems. We also need standardized and replicable modelling approaches that integrate these new data to account for eco‐evolutionary processes when predicting the impact of GCC on species' survival. Here, we discuss different genomic approaches that can be used to investigate and predict species responses to GCC. This can serve as guidance for researchers looking for the appropriate experimental setup for their particular system. We furthermore highlight future directions for moving forward in the field and allocating available resources more effectively, to implement mitigation measures before species go extinct and ecosystems lose important functions. John Wiley and Sons Inc. 2020-01-14 /pmc/articles/PMC7006467/ /pubmed/32055407 http://dx.doi.org/10.1002/evl3.154 Text en © 2019 The Authors. Evolution Letters published by Wiley Periodicals, Inc. on behalf of Society for the Study of Evolution (SSE) and European Society for Evolutionary Biology (ESEB). This is an open access article under the terms of the http://creativecommons.org/licenses/by/4.0/ License, which permits use, distribution and reproduction in any medium, provided the original work is properly cited.
spellingShingle Comments and Opinions
Waldvogel, Ann‐Marie
Feldmeyer, Barbara
Rolshausen, Gregor
Exposito‐Alonso, Moises
Rellstab, Christian
Kofler, Robert
Mock, Thomas
Schmid, Karl
Schmitt, Imke
Bataillon, Thomas
Savolainen, Outi
Bergland, Alan
Flatt, Thomas
Guillaume, Frederic
Pfenninger, Markus
Evolutionary genomics can improve prediction of species’ responses to climate change
title Evolutionary genomics can improve prediction of species’ responses to climate change
title_full Evolutionary genomics can improve prediction of species’ responses to climate change
title_fullStr Evolutionary genomics can improve prediction of species’ responses to climate change
title_full_unstemmed Evolutionary genomics can improve prediction of species’ responses to climate change
title_short Evolutionary genomics can improve prediction of species’ responses to climate change
title_sort evolutionary genomics can improve prediction of species’ responses to climate change
topic Comments and Opinions
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7006467/
https://www.ncbi.nlm.nih.gov/pubmed/32055407
http://dx.doi.org/10.1002/evl3.154
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