Predicting Abundances of Aedes mcintoshi, a primary Rift Valley fever virus mosquito vector.

Rift Valley fever virus (RVFV) is a mosquito-borne zoonotic arbovirus with important livestock and human health, and economic consequences across Africa and the Arabian Peninsula. Climate and vegetation monitoring guide RVFV forecasting models and early warning systems; however, these approaches mak...

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Main Authors: Lindsay P Campbell, Daniel C Reuman, Joel Lutomiah, A Townsend Peterson, Kenneth J Linthicum, Seth C Britch, Assaf Anyamba, Rosemary Sang
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2019-01-01
Series:PLoS ONE
Online Access:https://doi.org/10.1371/journal.pone.0226617
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spelling doaj-861c0621dba74c3b84b4740e966b1c072021-03-03T21:23:33ZengPublic Library of Science (PLoS)PLoS ONE1932-62032019-01-011412e022661710.1371/journal.pone.0226617Predicting Abundances of Aedes mcintoshi, a primary Rift Valley fever virus mosquito vector.Lindsay P CampbellDaniel C ReumanJoel LutomiahA Townsend PetersonKenneth J LinthicumSeth C BritchAssaf AnyambaRosemary SangRift Valley fever virus (RVFV) is a mosquito-borne zoonotic arbovirus with important livestock and human health, and economic consequences across Africa and the Arabian Peninsula. Climate and vegetation monitoring guide RVFV forecasting models and early warning systems; however, these approaches make monthly predictions and a need exists to predict primary vector abundances at finer temporal scales. In Kenya, an important primary RVFV vector is the mosquito Aedes mcintoshi. We used a zero-inflated negative binomial regression and multimodel averaging approach with georeferenced Ae. mcintoshi mosquito counts and remotely sensed climate and topographic variables to predict where and when abundances would be high in Kenya and western Somalia. The data supported a positive effect on abundance of minimum wetness index values within 500 m of a sampling site, cumulative precipitation values 0 to 14 days prior to sampling, and elevated land surface temperature values ~3 weeks prior to sampling. The probability of structural zero counts of mosquitoes increased as percentage clay in the soil decreased. Weekly retrospective predictions for unsampled locations across the study area between 1 September and 25 January from 2002 to 2016 predicted high abundances prior to RVFV outbreaks in multiple foci during the 2006-2007 epizootic, except for two districts in Kenya. Additionally, model predictions supported the possibility of high Ae. mcintoshi abundances in Somalia, independent of Kenya. Model-predicted abundances were low during the 2015-2016 period when documented outbreaks did not occur, although several surveillance systems issued warnings. Model predictions prior to the 2018 RVFV outbreak indicated elevated abundances in Wajir County, Kenya, along the border with Somalia, but RVFV activity occurred west of the focus of predicted high Ae. mcintoshi abundances.https://doi.org/10.1371/journal.pone.0226617
collection DOAJ
language English
format Article
sources DOAJ
author Lindsay P Campbell
Daniel C Reuman
Joel Lutomiah
A Townsend Peterson
Kenneth J Linthicum
Seth C Britch
Assaf Anyamba
Rosemary Sang
spellingShingle Lindsay P Campbell
Daniel C Reuman
Joel Lutomiah
A Townsend Peterson
Kenneth J Linthicum
Seth C Britch
Assaf Anyamba
Rosemary Sang
Predicting Abundances of Aedes mcintoshi, a primary Rift Valley fever virus mosquito vector.
PLoS ONE
author_facet Lindsay P Campbell
Daniel C Reuman
Joel Lutomiah
A Townsend Peterson
Kenneth J Linthicum
Seth C Britch
Assaf Anyamba
Rosemary Sang
author_sort Lindsay P Campbell
title Predicting Abundances of Aedes mcintoshi, a primary Rift Valley fever virus mosquito vector.
title_short Predicting Abundances of Aedes mcintoshi, a primary Rift Valley fever virus mosquito vector.
title_full Predicting Abundances of Aedes mcintoshi, a primary Rift Valley fever virus mosquito vector.
title_fullStr Predicting Abundances of Aedes mcintoshi, a primary Rift Valley fever virus mosquito vector.
title_full_unstemmed Predicting Abundances of Aedes mcintoshi, a primary Rift Valley fever virus mosquito vector.
title_sort predicting abundances of aedes mcintoshi, a primary rift valley fever virus mosquito vector.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2019-01-01
description Rift Valley fever virus (RVFV) is a mosquito-borne zoonotic arbovirus with important livestock and human health, and economic consequences across Africa and the Arabian Peninsula. Climate and vegetation monitoring guide RVFV forecasting models and early warning systems; however, these approaches make monthly predictions and a need exists to predict primary vector abundances at finer temporal scales. In Kenya, an important primary RVFV vector is the mosquito Aedes mcintoshi. We used a zero-inflated negative binomial regression and multimodel averaging approach with georeferenced Ae. mcintoshi mosquito counts and remotely sensed climate and topographic variables to predict where and when abundances would be high in Kenya and western Somalia. The data supported a positive effect on abundance of minimum wetness index values within 500 m of a sampling site, cumulative precipitation values 0 to 14 days prior to sampling, and elevated land surface temperature values ~3 weeks prior to sampling. The probability of structural zero counts of mosquitoes increased as percentage clay in the soil decreased. Weekly retrospective predictions for unsampled locations across the study area between 1 September and 25 January from 2002 to 2016 predicted high abundances prior to RVFV outbreaks in multiple foci during the 2006-2007 epizootic, except for two districts in Kenya. Additionally, model predictions supported the possibility of high Ae. mcintoshi abundances in Somalia, independent of Kenya. Model-predicted abundances were low during the 2015-2016 period when documented outbreaks did not occur, although several surveillance systems issued warnings. Model predictions prior to the 2018 RVFV outbreak indicated elevated abundances in Wajir County, Kenya, along the border with Somalia, but RVFV activity occurred west of the focus of predicted high Ae. mcintoshi abundances.
url https://doi.org/10.1371/journal.pone.0226617
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