Using Climate to Explain and Predict West Nile Virus Risk in Nebraska
Abstract We used monthly precipitation and temperature data to give early warning of years with higher West Nile Virus (WNV) risk in Nebraska. We used generalized additive models with a negative binomial distribution and smoothing curves to identify combinations of extremes and timing that had the m...
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American Geophysical Union (AGU)
2020-09-01
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Online Access: | https://doi.org/10.1029/2020GH000244 |
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doaj-dc655be400c546a8b215d41a7669f5c12020-11-25T03:53:45ZengAmerican Geophysical Union (AGU)GeoHealth2471-14032020-09-0149n/an/a10.1029/2020GH000244Using Climate to Explain and Predict West Nile Virus Risk in NebraskaKelly Helm Smith0Andrew J. Tyre1Jeff Hamik2Michael J. Hayes3Yuzhen Zhou4Li Dai5National Drought Mitigation Center, School of Natural Resources University of Nebraska‐Lincoln Lincoln NE USASchool of Natural Resources University of Nebraska‐Lincoln Lincoln NE USADepartment of Educational Psychology University of Nebraska‐Lincoln; Nebraska Department of Health and Human Services Lincoln NE USASchool of Natural Resources University of Nebraska‐Lincoln Lincoln NE USADepartment of Statistics University of Nebraska‐Lincoln Lincoln NE USADepartment of Statistics University of Nebraska‐Lincoln Lincoln NE USAAbstract We used monthly precipitation and temperature data to give early warning of years with higher West Nile Virus (WNV) risk in Nebraska. We used generalized additive models with a negative binomial distribution and smoothing curves to identify combinations of extremes and timing that had the most influence, experimenting with all combinations of temperature and drought data, lagged by 12, 18, 24, 30, and 36 months. We fit models on data from 2002 through 2011, used Akaike's Information Criterion (AIC) to select the best‐fitting model, and used 2012 as out‐of‐sample data for prediction, and repeated this process for each successive year, ending with fitting models on 2002–2017 data and using 2018 for out‐of‐sample prediction. We found that warm temperatures and a dry year preceded by a wet year were the strongest predictors of cases of WNV. Our models did significantly better than random chance and better than an annual persistence naïve model at predicting which counties would have cases. Exploring different scenarios, the model predicted that without drought, there would have been 26% fewer cases of WNV in Nebraska through 2018; without warm temperatures, 29% fewer; and with neither drought nor warmth, 45% fewer. This method for assessing the influence of different combinations of extremes at different time intervals is likely applicable to diseases other than West Nile, and to other annual outcome variables such as crop yield.https://doi.org/10.1029/2020GH000244disease vectorWest Nile Virusdroughtecologic modelingprediction |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Kelly Helm Smith Andrew J. Tyre Jeff Hamik Michael J. Hayes Yuzhen Zhou Li Dai |
spellingShingle |
Kelly Helm Smith Andrew J. Tyre Jeff Hamik Michael J. Hayes Yuzhen Zhou Li Dai Using Climate to Explain and Predict West Nile Virus Risk in Nebraska GeoHealth disease vector West Nile Virus drought ecologic modeling prediction |
author_facet |
Kelly Helm Smith Andrew J. Tyre Jeff Hamik Michael J. Hayes Yuzhen Zhou Li Dai |
author_sort |
Kelly Helm Smith |
title |
Using Climate to Explain and Predict West Nile Virus Risk in Nebraska |
title_short |
Using Climate to Explain and Predict West Nile Virus Risk in Nebraska |
title_full |
Using Climate to Explain and Predict West Nile Virus Risk in Nebraska |
title_fullStr |
Using Climate to Explain and Predict West Nile Virus Risk in Nebraska |
title_full_unstemmed |
Using Climate to Explain and Predict West Nile Virus Risk in Nebraska |
title_sort |
using climate to explain and predict west nile virus risk in nebraska |
publisher |
American Geophysical Union (AGU) |
series |
GeoHealth |
issn |
2471-1403 |
publishDate |
2020-09-01 |
description |
Abstract We used monthly precipitation and temperature data to give early warning of years with higher West Nile Virus (WNV) risk in Nebraska. We used generalized additive models with a negative binomial distribution and smoothing curves to identify combinations of extremes and timing that had the most influence, experimenting with all combinations of temperature and drought data, lagged by 12, 18, 24, 30, and 36 months. We fit models on data from 2002 through 2011, used Akaike's Information Criterion (AIC) to select the best‐fitting model, and used 2012 as out‐of‐sample data for prediction, and repeated this process for each successive year, ending with fitting models on 2002–2017 data and using 2018 for out‐of‐sample prediction. We found that warm temperatures and a dry year preceded by a wet year were the strongest predictors of cases of WNV. Our models did significantly better than random chance and better than an annual persistence naïve model at predicting which counties would have cases. Exploring different scenarios, the model predicted that without drought, there would have been 26% fewer cases of WNV in Nebraska through 2018; without warm temperatures, 29% fewer; and with neither drought nor warmth, 45% fewer. This method for assessing the influence of different combinations of extremes at different time intervals is likely applicable to diseases other than West Nile, and to other annual outcome variables such as crop yield. |
topic |
disease vector West Nile Virus drought ecologic modeling prediction |
url |
https://doi.org/10.1029/2020GH000244 |
work_keys_str_mv |
AT kellyhelmsmith usingclimatetoexplainandpredictwestnilevirusriskinnebraska AT andrewjtyre usingclimatetoexplainandpredictwestnilevirusriskinnebraska AT jeffhamik usingclimatetoexplainandpredictwestnilevirusriskinnebraska AT michaeljhayes usingclimatetoexplainandpredictwestnilevirusriskinnebraska AT yuzhenzhou usingclimatetoexplainandpredictwestnilevirusriskinnebraska AT lidai usingclimatetoexplainandpredictwestnilevirusriskinnebraska |
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