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  4. Remotely sensed localised primary production anomalies predict the burden and community structure of infection in long‐term rodent datasets
 
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Remotely sensed localised primary production anomalies predict the burden and community structure of infection in long‐term rodent datasets

Type
Journal article
Language
English
Date issued
2023
Author
Jackson, Joseph A.
Bajer, Anna
Behnke-Borowczyk, Jolanta 
Gilbert, Francis S.
Grzybek, Maciej
Alsarraf, Mohammed
Behnke, Jerzy M.
Faculty
Wydział Leśny i Technologii Drewna
Journal
Global Change Biology
ISSN
1354-1013
DOI
10.1111/gcb.16898
Web address
https://onlinelibrary.wiley.com/doi/full/10.1111/gcb.16898
Volume
29
Number
19 ( October 2023)
Pages from-to
5568-5581
Abstract (EN)
The increasing frequency and cost of zoonotic disease emergence due to global change have led to calls for the primary surveillance of wildlife. This should be facilitated by the ready availability of remotely sensed environmental data, given the importance of the environment in determining infectious disease dynamics. However, there has been little evaluation of the temporal predictiveness of remotely sensed environmental data for infection reservoirs in vertebrate hosts due to a deficit of corresponding high-quality long-term infection datasets. Here we employ two unique decade-spanning datasets for assemblages of infectious agents, including zoonotic agents, in rodents in stable habitats. Such stable habitats are important, as they provide the baseline sets of pathogens for the interactions within degrading habitats that have been identified as hotspots for zoonotic emergence. We focus on the enhanced vegetation index (EVI), a measure of vegetation greening that equates to primary productivity, reasoning that this would modulate infectious agent populations via trophic cascades determining host population density or immunocompetence. We found that EVI, in analyses with data standardised by site, inversely predicted more than one-third of the variation in an index of infectious agent total abundance. Moreover, in bipartite host occupancy networks, weighted network statistics (connectance and modularity) were linked to total abundance and were also predicted by EVI. Infectious agent abundance and, perhaps, community structure are likely to influence infection risk and, in turn, the probability of transboundary emergence. Thus, the present results, which were consistent in disparate forest and desert systems, provide proof-of-principle that within-site fluctuations in satellite-derived greenness indices can furnish useful forecasting that could focus primary surveillance. In relation to the well-documented global greening trend of recent decades, the present results predict declining infection burden in wild vertebrates in stable habitats; but if greening trends were to be reversed, this might magnify the already upwards trend in zoonotic emergence.
Keywords (EN)
  • community networks

  • connectance

  • EVI

  • greening

  • infectious agents

  • modularity

  • parasites

  • time series

  • wild rodent

  • zoonotic reservoir

License
cc-bycc-by CC-BY - Attribution
Open access date
July 6, 2023
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