Use of temperature to improve West Nile virus forecasts.
Ecological and laboratory studies have demonstrated that temperature modulates West Nile virus (WNV) transmission dynamics and spillover infection to humans. Here we explore whether inclusion of temperature forcing in a model depicting WNV transmission improves WNV forecast accuracy relative to a ba...
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Online Access: | https://doi.org/10.1371/journal.pcbi.1006047 |
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doaj-29e294b909d3463c9c09766d47de1be12021-04-21T15:38:38ZengPublic Library of Science (PLoS)PLoS Computational Biology1553-734X1553-73582018-03-01143e100604710.1371/journal.pcbi.1006047Use of temperature to improve West Nile virus forecasts.Nicholas B DeFeliceZachary D SchneiderEliza LittleChristopher BarkerKevin A CaillouetScott R CampbellDan DamianPatrick IrwinHerff M P JonesJohn TownsendJeffrey ShamanEcological and laboratory studies have demonstrated that temperature modulates West Nile virus (WNV) transmission dynamics and spillover infection to humans. Here we explore whether inclusion of temperature forcing in a model depicting WNV transmission improves WNV forecast accuracy relative to a baseline model depicting WNV transmission without temperature forcing. Both models are optimized using a data assimilation method and two observed data streams: mosquito infection rates and reported human WNV cases. Each coupled model-inference framework is then used to generate retrospective ensemble forecasts of WNV for 110 outbreak years from among 12 geographically diverse United States counties. The temperature-forced model improves forecast accuracy for much of the outbreak season. From the end of July until the beginning of October, a timespan during which 70% of human cases are reported, the temperature-forced model generated forecasts of the total number of human cases over the next 3 weeks, total number of human cases over the season, the week with the highest percentage of infectious mosquitoes, and the peak percentage of infectious mosquitoes that on average increased absolute forecast accuracy 5%, 10%, 12%, and 6%, respectively, over the non-temperature forced baseline model. These results indicate that use of temperature forcing improves WNV forecast accuracy and provide further evidence that temperature influences rates of WNV transmission. The findings provide a foundation for implementation of a statistically rigorous system for real-time forecast of seasonal WNV outbreaks and their use as a quantitative decision support tool for public health officials and mosquito control programs.https://doi.org/10.1371/journal.pcbi.1006047 |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Nicholas B DeFelice Zachary D Schneider Eliza Little Christopher Barker Kevin A Caillouet Scott R Campbell Dan Damian Patrick Irwin Herff M P Jones John Townsend Jeffrey Shaman |
spellingShingle |
Nicholas B DeFelice Zachary D Schneider Eliza Little Christopher Barker Kevin A Caillouet Scott R Campbell Dan Damian Patrick Irwin Herff M P Jones John Townsend Jeffrey Shaman Use of temperature to improve West Nile virus forecasts. PLoS Computational Biology |
author_facet |
Nicholas B DeFelice Zachary D Schneider Eliza Little Christopher Barker Kevin A Caillouet Scott R Campbell Dan Damian Patrick Irwin Herff M P Jones John Townsend Jeffrey Shaman |
author_sort |
Nicholas B DeFelice |
title |
Use of temperature to improve West Nile virus forecasts. |
title_short |
Use of temperature to improve West Nile virus forecasts. |
title_full |
Use of temperature to improve West Nile virus forecasts. |
title_fullStr |
Use of temperature to improve West Nile virus forecasts. |
title_full_unstemmed |
Use of temperature to improve West Nile virus forecasts. |
title_sort |
use of temperature to improve west nile virus forecasts. |
publisher |
Public Library of Science (PLoS) |
series |
PLoS Computational Biology |
issn |
1553-734X 1553-7358 |
publishDate |
2018-03-01 |
description |
Ecological and laboratory studies have demonstrated that temperature modulates West Nile virus (WNV) transmission dynamics and spillover infection to humans. Here we explore whether inclusion of temperature forcing in a model depicting WNV transmission improves WNV forecast accuracy relative to a baseline model depicting WNV transmission without temperature forcing. Both models are optimized using a data assimilation method and two observed data streams: mosquito infection rates and reported human WNV cases. Each coupled model-inference framework is then used to generate retrospective ensemble forecasts of WNV for 110 outbreak years from among 12 geographically diverse United States counties. The temperature-forced model improves forecast accuracy for much of the outbreak season. From the end of July until the beginning of October, a timespan during which 70% of human cases are reported, the temperature-forced model generated forecasts of the total number of human cases over the next 3 weeks, total number of human cases over the season, the week with the highest percentage of infectious mosquitoes, and the peak percentage of infectious mosquitoes that on average increased absolute forecast accuracy 5%, 10%, 12%, and 6%, respectively, over the non-temperature forced baseline model. These results indicate that use of temperature forcing improves WNV forecast accuracy and provide further evidence that temperature influences rates of WNV transmission. The findings provide a foundation for implementation of a statistically rigorous system for real-time forecast of seasonal WNV outbreaks and their use as a quantitative decision support tool for public health officials and mosquito control programs. |
url |
https://doi.org/10.1371/journal.pcbi.1006047 |
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