Challenges and opportunities for assessing trends of amphibians with heterogeneous data – a call for better metadata reporting
Henle, Klaus ORCID: https://orcid.org/0000-0002-6647-5362; Klenke, Reinhard A.
ORCID: https://orcid.org/0000-0002-6860-8085; Barth, M. Benjamin; Grimm-Seyfarth, Annegret
ORCID: https://orcid.org/0000-0003-0577-7508; Bowler, Diana E.
ORCID: https://orcid.org/0000-0002-7775-1668.
2025
Challenges and opportunities for assessing trends of amphibians with heterogeneous data – a call for better metadata reporting.
Nature Conservation, 58.
31-60.
10.3897/natureconservation.58.137848
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Abstract/Summary
Over the last decades, the worldwide decline of amphibian populations has become a major concern of researchers and conservationists. Studies have reported a diversity of trends, with some species strongly declining, others remaining stable and still others increasing. However, only a few species have been monitored annually for a long period of time by specific monitoring programmes. Instead, there are many heterogeneous datasets that contain observations of amphibians from professional surveys as well as diverse citizen science and other voluntary surveys. The use of these data brings a number of challenges, raising concerns about their validity and use in ecological research and conservation. We assessed to what extent such heterogeneous occurrence data can provide information on the status and trends of amphibians by contrasting different approaches to overcoming challenges with the data, using the German state of Saxony as an example. We assessed the effects of data processing decisions to infer absences, the use of survey method information and the statistical model (generalised linear mixed-effect occurrence model [GLMM] versus occupancy-detection model) and compared the trends with expert opinions (Red Lists). The different data processing decisions mainly led to similar annual occupancy estimates, newts being an exception. Annual occupancy estimates were typically less certain when attempting to account for the effects of survey methods, which could be explained by many missing values on methods. Separate models for drift fence data reduced the uncertainty in the annual occurrence probability estimates of the GLMM models, but uncertainty remained high for occupancy-detection models. For both methods, strong peaks and troughs in the annual occupancy estimates occurred for several species, which were not biologically plausible. Some peaks align with periods of lower sampling effort and were probably caused by shifts in the sampling locations or target species amongst years. Only for three species ( Bufotes viridis , Hyla arborea and Pelophylax esculentus ) were the trend results consistent amongst approaches and with expert opinions. For most other species, some inconsistencies appeared amongst models or approaches, indicating that trend assessments are sensitive to analytical choices. While heterogeneous data have proved useful for other taxa, our results highlight the complexity of using them for amphibians. We strongly recommend better harmonisation of data collection and metadata documentation, including explicit absence data and, if available, abundance data, to enable more robust trend assessments in the future.
Item Type: | Publication - Article |
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Digital Object Identifier (DOI): | 10.3897/natureconservation.58.137848 |
UKCEH and CEH Sections/Science Areas: | Biodiversity and Land Use (2025-) |
ISSN: | 1314-6947 |
Additional Information. Not used in RCUK Gateway to Research.: | Open Access paper - full text available via Official URL link. |
Additional Keywords: | amphibian conservation, Anura, citizen science data, data filtering, drift fence data, generalised linear mixed model, Germany, occupancy-detection model, Saxony, survey methods, Urodela |
NORA Subject Terms: | Ecology and Environment Data and Information |
Related URLs: | |
Date made live: | 19 Feb 2025 09:26 +0 (UTC) |
URI: | https://nora.nerc.ac.uk/id/eprint/538927 |
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