Using marine mammal necropsy data in animal health surveillance: the case of the harbor porpoise in the Southern North Sea

Rapid changes of marine ecosystems resulting from human activities and climate change, and the subsequent reported rise of infectious diseases in marine mammals, highlight the urgency for timely detection of unusual health events negatively affecting populations. Studies reporting pathological findi...

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Main Authors: IJsseldijk, Lonneke, van den Broek, Jan, Kik, Marja, Leopold, Mardik, Bravo Rebolledo, Elisa, Gröne, Andrea, Heesterbeek, Hans
Other Authors: VPDC pathologie, Pathology, FAH theoretische epidemiologie
Format: Article in Journal/Newspaper
Language:English
Published: 2024
Subjects:
Online Access:https://dspace.library.uu.nl/handle/1874/435721
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spelling ftunivutrecht:oai:dspace.library.uu.nl:1874/435721 2024-05-12T08:08:22+00:00 Using marine mammal necropsy data in animal health surveillance: the case of the harbor porpoise in the Southern North Sea IJsseldijk, Lonneke van den Broek, Jan Kik, Marja Leopold, Mardik Bravo Rebolledo, Elisa Gröne, Andrea Heesterbeek, Hans VPDC pathologie Pathology FAH theoretische epidemiologie 2024-01-15 application/pdf https://dspace.library.uu.nl/handle/1874/435721 en eng 2296-7745 https://dspace.library.uu.nl/handle/1874/435721 info:eu-repo/semantics/OpenAccess animal health surveillance causes of death cetacean post-mortem investigation supervised classification methods unsupervised classification methods Article 2024 ftunivutrecht 2024-04-17T14:04:30Z Rapid changes of marine ecosystems resulting from human activities and climate change, and the subsequent reported rise of infectious diseases in marine mammals, highlight the urgency for timely detection of unusual health events negatively affecting populations. Studies reporting pathological findings in the commonly stranded harbor porpoise (Phocoena phocoena) on North Atlantic coastlines are essential to describe new and emerging causes of mortality. However, such studies often cannot be used as long-term health surveillance tools due to analytical limitations. We tested 31 variables gained from stranding-, necropsy-, dietary- and marine debris data from 405 harbor porpoises using applied supervised and unsupervised machine learning techniques to explore and analyze this large dataset. We classified and cross-correlated the variables and characterized the importance of the different variables for accurately predicting cause-of-death categories, to allow trend assessment for good conservation decision. The variable ‘age class’ seemed most influential in determining cause-of-death categories, and it became apparent that juveniles died more often due to acute causes, including bycatch, grey-seal-predation and other trauma, while adults of infectious diseases. Neonates were found in summer, and mostly without prey in their stomach and more often stranded alive. The variables assigned as part of the external examination of carcasses, such as imprints from nets and lesions induced by predators, as well as nutritional condition were most important for predicting cause-of-death categories, with a model prediction accuracy of 75%. Future porpoise monitoring, and in particular the assessment of temporal trends, should predominantly focus on influential variables as determined in this study. Pathogen- and contaminant assessment data was not available for all cases, but would be an important step to further complete the dataset. This could be vital for drawing population-inferences and thus for long-term harbor porpoise ... Article in Journal/Newspaper North Atlantic Phocoena phocoena Utrecht University Repository
institution Open Polar
collection Utrecht University Repository
op_collection_id ftunivutrecht
language English
topic animal health surveillance
causes of death
cetacean
post-mortem investigation
supervised classification methods
unsupervised classification methods
spellingShingle animal health surveillance
causes of death
cetacean
post-mortem investigation
supervised classification methods
unsupervised classification methods
IJsseldijk, Lonneke
van den Broek, Jan
Kik, Marja
Leopold, Mardik
Bravo Rebolledo, Elisa
Gröne, Andrea
Heesterbeek, Hans
Using marine mammal necropsy data in animal health surveillance: the case of the harbor porpoise in the Southern North Sea
topic_facet animal health surveillance
causes of death
cetacean
post-mortem investigation
supervised classification methods
unsupervised classification methods
description Rapid changes of marine ecosystems resulting from human activities and climate change, and the subsequent reported rise of infectious diseases in marine mammals, highlight the urgency for timely detection of unusual health events negatively affecting populations. Studies reporting pathological findings in the commonly stranded harbor porpoise (Phocoena phocoena) on North Atlantic coastlines are essential to describe new and emerging causes of mortality. However, such studies often cannot be used as long-term health surveillance tools due to analytical limitations. We tested 31 variables gained from stranding-, necropsy-, dietary- and marine debris data from 405 harbor porpoises using applied supervised and unsupervised machine learning techniques to explore and analyze this large dataset. We classified and cross-correlated the variables and characterized the importance of the different variables for accurately predicting cause-of-death categories, to allow trend assessment for good conservation decision. The variable ‘age class’ seemed most influential in determining cause-of-death categories, and it became apparent that juveniles died more often due to acute causes, including bycatch, grey-seal-predation and other trauma, while adults of infectious diseases. Neonates were found in summer, and mostly without prey in their stomach and more often stranded alive. The variables assigned as part of the external examination of carcasses, such as imprints from nets and lesions induced by predators, as well as nutritional condition were most important for predicting cause-of-death categories, with a model prediction accuracy of 75%. Future porpoise monitoring, and in particular the assessment of temporal trends, should predominantly focus on influential variables as determined in this study. Pathogen- and contaminant assessment data was not available for all cases, but would be an important step to further complete the dataset. This could be vital for drawing population-inferences and thus for long-term harbor porpoise ...
author2 VPDC pathologie
Pathology
FAH theoretische epidemiologie
format Article in Journal/Newspaper
author IJsseldijk, Lonneke
van den Broek, Jan
Kik, Marja
Leopold, Mardik
Bravo Rebolledo, Elisa
Gröne, Andrea
Heesterbeek, Hans
author_facet IJsseldijk, Lonneke
van den Broek, Jan
Kik, Marja
Leopold, Mardik
Bravo Rebolledo, Elisa
Gröne, Andrea
Heesterbeek, Hans
author_sort IJsseldijk, Lonneke
title Using marine mammal necropsy data in animal health surveillance: the case of the harbor porpoise in the Southern North Sea
title_short Using marine mammal necropsy data in animal health surveillance: the case of the harbor porpoise in the Southern North Sea
title_full Using marine mammal necropsy data in animal health surveillance: the case of the harbor porpoise in the Southern North Sea
title_fullStr Using marine mammal necropsy data in animal health surveillance: the case of the harbor porpoise in the Southern North Sea
title_full_unstemmed Using marine mammal necropsy data in animal health surveillance: the case of the harbor porpoise in the Southern North Sea
title_sort using marine mammal necropsy data in animal health surveillance: the case of the harbor porpoise in the southern north sea
publishDate 2024
url https://dspace.library.uu.nl/handle/1874/435721
genre North Atlantic
Phocoena phocoena
genre_facet North Atlantic
Phocoena phocoena
op_relation 2296-7745
https://dspace.library.uu.nl/handle/1874/435721
op_rights info:eu-repo/semantics/OpenAccess
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