Improving assessments of data-limited populations using life-history theory

Predicting how populations may respond to climate change and anthropogenic pressures requires detailed knowledge of demographic traits, such as survival and reproduction. However, the availability of these data varies greatly across space and taxa. Therefore, it is common practice to conduct populat...

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Published in:Journal of Applied Ecology
Main Authors: Horswill, Cat, Manica, Andrea, Daunt, Francis, Newell, Mark, Wanless, Sarah, Wood, Matthew, Matthiopoulos, Jason
Format: Article in Journal/Newspaper
Language:English
Published: Wiley 2021
Subjects:
Online Access:https://eprints.gla.ac.uk/235953/
https://eprints.gla.ac.uk/235953/1/235953.pdf
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spelling ftuglasgow:oai:eprints.gla.ac.uk:235953 2023-05-15T15:44:58+02:00 Improving assessments of data-limited populations using life-history theory Horswill, Cat Manica, Andrea Daunt, Francis Newell, Mark Wanless, Sarah Wood, Matthew Matthiopoulos, Jason 2021-06-01 text https://eprints.gla.ac.uk/235953/ https://eprints.gla.ac.uk/235953/1/235953.pdf en eng Wiley https://eprints.gla.ac.uk/235953/1/235953.pdf Horswill, C. <http://eprints.gla.ac.uk/view/author/38228.html> , Manica, A., Daunt, F., Newell, M., Wanless, S., Wood, M. and Matthiopoulos, J. <http://eprints.gla.ac.uk/view/author/29488.html> (2021) Improving assessments of data-limited populations using life-history theory. Journal of Applied Ecology <https://eprints.gla.ac.uk/view/journal_volume/Journal_of_Applied_Ecology.html>, 58(6), pp. 1225-1236. (doi:10.1111/1365-2664.13863 <https://doi.org/10.1111/1365-2664.13863>) cc_by_4 CC-BY Articles PeerReviewed 2021 ftuglasgow https://doi.org/10.1111/1365-2664.13863 2022-09-22T22:16:22Z Predicting how populations may respond to climate change and anthropogenic pressures requires detailed knowledge of demographic traits, such as survival and reproduction. However, the availability of these data varies greatly across space and taxa. Therefore, it is common practice to conduct population assessments by filling in missing values from surrogate species or other populations of the same species. However, using these independent surrogate values concurrently with observed data neglects the life‐history trade‐offs that connect the different aspects of a population's demography, thus introducing biases that could ultimately lead to erroneous management decisions. We use a Bayesian hierarchical approach to combine fragmented multi‐population data with established life‐history theory and reconstruct population‐specific demographic data across a substantial part of a species breeding range. We apply our analysis to a long‐lived colonial species, the black‐legged kittiwake Rissa tridactyla, that is classified as globally Vulnerable and is highly threatened by increasing anthropogenic pressures, such as offshore renewable energy development. We then use a projection analysis to examine how the reconstructed demographic parameters may improve population assessments, compared to models that combine observed data with independent surrogate values. Reconstructed demographic parameters can be utilised in a range of population modelling approaches. They can also be used as reference estimates to assess whether independent surrogate values are likely to over or underestimate missing demographic parameters. We show that surrogate values from independent sources are often used to fill in missing parameters that have large potential demographic impact, and that resulting biases can be driven in unpredictable directions thus precluding assessments from being consistently precautionary. Synthesis and applications: Our study dramatically increases the spatial coverage of population‐specific demographic data for ... Article in Journal/Newspaper Black-legged Kittiwake rissa tridactyla University of Glasgow: Enlighten - Publications Journal of Applied Ecology 58 6 1225 1236
institution Open Polar
collection University of Glasgow: Enlighten - Publications
op_collection_id ftuglasgow
language English
description Predicting how populations may respond to climate change and anthropogenic pressures requires detailed knowledge of demographic traits, such as survival and reproduction. However, the availability of these data varies greatly across space and taxa. Therefore, it is common practice to conduct population assessments by filling in missing values from surrogate species or other populations of the same species. However, using these independent surrogate values concurrently with observed data neglects the life‐history trade‐offs that connect the different aspects of a population's demography, thus introducing biases that could ultimately lead to erroneous management decisions. We use a Bayesian hierarchical approach to combine fragmented multi‐population data with established life‐history theory and reconstruct population‐specific demographic data across a substantial part of a species breeding range. We apply our analysis to a long‐lived colonial species, the black‐legged kittiwake Rissa tridactyla, that is classified as globally Vulnerable and is highly threatened by increasing anthropogenic pressures, such as offshore renewable energy development. We then use a projection analysis to examine how the reconstructed demographic parameters may improve population assessments, compared to models that combine observed data with independent surrogate values. Reconstructed demographic parameters can be utilised in a range of population modelling approaches. They can also be used as reference estimates to assess whether independent surrogate values are likely to over or underestimate missing demographic parameters. We show that surrogate values from independent sources are often used to fill in missing parameters that have large potential demographic impact, and that resulting biases can be driven in unpredictable directions thus precluding assessments from being consistently precautionary. Synthesis and applications: Our study dramatically increases the spatial coverage of population‐specific demographic data for ...
format Article in Journal/Newspaper
author Horswill, Cat
Manica, Andrea
Daunt, Francis
Newell, Mark
Wanless, Sarah
Wood, Matthew
Matthiopoulos, Jason
spellingShingle Horswill, Cat
Manica, Andrea
Daunt, Francis
Newell, Mark
Wanless, Sarah
Wood, Matthew
Matthiopoulos, Jason
Improving assessments of data-limited populations using life-history theory
author_facet Horswill, Cat
Manica, Andrea
Daunt, Francis
Newell, Mark
Wanless, Sarah
Wood, Matthew
Matthiopoulos, Jason
author_sort Horswill, Cat
title Improving assessments of data-limited populations using life-history theory
title_short Improving assessments of data-limited populations using life-history theory
title_full Improving assessments of data-limited populations using life-history theory
title_fullStr Improving assessments of data-limited populations using life-history theory
title_full_unstemmed Improving assessments of data-limited populations using life-history theory
title_sort improving assessments of data-limited populations using life-history theory
publisher Wiley
publishDate 2021
url https://eprints.gla.ac.uk/235953/
https://eprints.gla.ac.uk/235953/1/235953.pdf
genre Black-legged Kittiwake
rissa tridactyla
genre_facet Black-legged Kittiwake
rissa tridactyla
op_relation https://eprints.gla.ac.uk/235953/1/235953.pdf
Horswill, C. <http://eprints.gla.ac.uk/view/author/38228.html> , Manica, A., Daunt, F., Newell, M., Wanless, S., Wood, M. and Matthiopoulos, J. <http://eprints.gla.ac.uk/view/author/29488.html> (2021) Improving assessments of data-limited populations using life-history theory. Journal of Applied Ecology <https://eprints.gla.ac.uk/view/journal_volume/Journal_of_Applied_Ecology.html>, 58(6), pp. 1225-1236. (doi:10.1111/1365-2664.13863 <https://doi.org/10.1111/1365-2664.13863>)
op_rights cc_by_4
op_rightsnorm CC-BY
op_doi https://doi.org/10.1111/1365-2664.13863
container_title Journal of Applied Ecology
container_volume 58
container_issue 6
container_start_page 1225
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