Identifying species at coextinction risk when detection is imperfect: Model evaluation and case study.

Losing a species from a community can cause further extinctions, a process also known as coextinction. The risk of being extirpated with an interaction partner is commonly inferred from a species' host-breadth, derived from observing interactions between species. But observational data suffers...

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Main Authors: Michaela Plein, William K Morris, Melinda L Moir, Peter A Vesk
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2017-01-01
Series:PLoS ONE
Online Access:http://europepmc.org/articles/PMC5573280?pdf=render
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spelling doaj-3c62344c519148c09d6ec54985c268c82020-11-24T22:20:04ZengPublic Library of Science (PLoS)PLoS ONE1932-62032017-01-01128e018335110.1371/journal.pone.0183351Identifying species at coextinction risk when detection is imperfect: Model evaluation and case study.Michaela PleinWilliam K MorrisMelinda L MoirPeter A VeskLosing a species from a community can cause further extinctions, a process also known as coextinction. The risk of being extirpated with an interaction partner is commonly inferred from a species' host-breadth, derived from observing interactions between species. But observational data suffers from imperfect detection, making coextinction estimates highly unreliable. To address this issue and to account for data uncertainty, we fit a hierarchical N-mixture model to individual-level interaction data from a mutualistic network. We predict (1) with how many interaction partners each species interacts (to indicate their coextinction risk) and (2) how completely the community was sampled. We fit the model to simulated interactions to investigate how variation in sampling effort, interaction probability, and animal abundances influence model accuracy and apply it to an empirical dataset of flowering plants and their insect visitors. The model performed well in predicting the number of interaction partners for scenarios with high abundances, but indicated high parameter uncertainty for networks with many rare species. Yet, model predictions were generally closer to the true value than the observations. Our mutualistic plant-insect community most closely resembled the scenario of high interaction rates with low abundances. Median estimates of interaction partners were frequently much higher than the empirical data indicate, but uncertainty was high. Our analysis suggested that we only detected 14-59% of the flower-visiting insect species, indicating that our study design, which is common for pollinator studies, was inadequate to detect many species. Imperfect detection strongly affects the inferences from observed interaction networks and hence, host specificity, specialisation estimates and network metrics from observational data may be highly misleading for assessing a species' coextinction risks. Our study shows how models can help to estimate coextinction risk, but also indicates the need for better data (i.e., intensified sampling and individual-level observations) to reduce uncertainty.http://europepmc.org/articles/PMC5573280?pdf=render
collection DOAJ
language English
format Article
sources DOAJ
author Michaela Plein
William K Morris
Melinda L Moir
Peter A Vesk
spellingShingle Michaela Plein
William K Morris
Melinda L Moir
Peter A Vesk
Identifying species at coextinction risk when detection is imperfect: Model evaluation and case study.
PLoS ONE
author_facet Michaela Plein
William K Morris
Melinda L Moir
Peter A Vesk
author_sort Michaela Plein
title Identifying species at coextinction risk when detection is imperfect: Model evaluation and case study.
title_short Identifying species at coextinction risk when detection is imperfect: Model evaluation and case study.
title_full Identifying species at coextinction risk when detection is imperfect: Model evaluation and case study.
title_fullStr Identifying species at coextinction risk when detection is imperfect: Model evaluation and case study.
title_full_unstemmed Identifying species at coextinction risk when detection is imperfect: Model evaluation and case study.
title_sort identifying species at coextinction risk when detection is imperfect: model evaluation and case study.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2017-01-01
description Losing a species from a community can cause further extinctions, a process also known as coextinction. The risk of being extirpated with an interaction partner is commonly inferred from a species' host-breadth, derived from observing interactions between species. But observational data suffers from imperfect detection, making coextinction estimates highly unreliable. To address this issue and to account for data uncertainty, we fit a hierarchical N-mixture model to individual-level interaction data from a mutualistic network. We predict (1) with how many interaction partners each species interacts (to indicate their coextinction risk) and (2) how completely the community was sampled. We fit the model to simulated interactions to investigate how variation in sampling effort, interaction probability, and animal abundances influence model accuracy and apply it to an empirical dataset of flowering plants and their insect visitors. The model performed well in predicting the number of interaction partners for scenarios with high abundances, but indicated high parameter uncertainty for networks with many rare species. Yet, model predictions were generally closer to the true value than the observations. Our mutualistic plant-insect community most closely resembled the scenario of high interaction rates with low abundances. Median estimates of interaction partners were frequently much higher than the empirical data indicate, but uncertainty was high. Our analysis suggested that we only detected 14-59% of the flower-visiting insect species, indicating that our study design, which is common for pollinator studies, was inadequate to detect many species. Imperfect detection strongly affects the inferences from observed interaction networks and hence, host specificity, specialisation estimates and network metrics from observational data may be highly misleading for assessing a species' coextinction risks. Our study shows how models can help to estimate coextinction risk, but also indicates the need for better data (i.e., intensified sampling and individual-level observations) to reduce uncertainty.
url http://europepmc.org/articles/PMC5573280?pdf=render
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