GeoHealth (Dec 2023)

A Spatially Resolved and Environmentally Informed Forecast Model of West Nile Virus in Coachella Valley, California

  • Matthew J. Ward,
  • Meytar Sorek‐Hamer,
  • Jennifer A. Henke,
  • Eliza Little,
  • Aman Patel,
  • Jeffery Shaman,
  • Krishna Vemuri,
  • Nicholas B. DeFelice

DOI
https://doi.org/10.1029/2023GH000855
Journal volume & issue
Vol. 7, no. 12
pp. n/a – n/a

Abstract

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Abstract West Nile virus (WNV) is the most significant arbovirus in the United States in terms of both morbidity and mortality. West Nile exists in a complex transmission cycle between avian hosts and the arthropod vector, Culex spp. mosquitoes. Human spillover events occur when humans are bitten by an infected mosquito and predicting these rates of infection and therefore the risk to humans may be associated with fluctuations in environmental conditions. In this study, we evaluate the hydrological and meteorological drivers associated with mosquito biology and viral development to determine if these associations can be used to forecast seasonal mosquito infection rates with WNV in the Coachella Valley of California. We developed and tested a spatially resolved ensemble forecast model of the WNV mosquito infection rate in the Coachella Valley using 17 years of mosquito surveillance data and North American Land Data Assimilation System‐2 environmental data. Our multi‐model inference system indicated that the combination of a cooler and dryer winter, followed by a wetter and warmer spring, and a cooler than normal summer was most predictive of the prevalence of West Nile positive mosquitoes in the Coachella Valley. The ability to make accurate early season predictions of West Nile risk has the potential to allow local abatement districts and public health entities to implement early season interventions such as targeted adulticiding and public health messaging before human transmission occurs. Such early and targeted interventions could better mitigate the risk of WNV to humans.

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