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A Process-based Model with Temperature, Water, and Lab-derived Data Improves Predictions of Daily Culex pipiens/restuans Mosquito Density

While the number of human cases of mosquito-borne diseases has increased in North America in the last decade, accurate modeling of mosquito population density has remained a challenge. Longitudinal mosquito trap data over the many years needed for model calibration, and validation is relatively rare...

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Autores principales: Shutt, D P, Goodsman, D W, Martinez, K, Hemez, Z J L, Conrad, J R, Xu, C, Osthus, D, Russell, C, Hyman, J M, Manore, C A
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Oxford University Press 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9667726/
https://www.ncbi.nlm.nih.gov/pubmed/36203397
http://dx.doi.org/10.1093/jme/tjac127
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author Shutt, D P
Goodsman, D W
Martinez, K
Hemez, Z J L
Conrad, J R
Xu, C
Osthus, D
Russell, C
Hyman, J M
Manore, C A
author_facet Shutt, D P
Goodsman, D W
Martinez, K
Hemez, Z J L
Conrad, J R
Xu, C
Osthus, D
Russell, C
Hyman, J M
Manore, C A
author_sort Shutt, D P
collection PubMed
description While the number of human cases of mosquito-borne diseases has increased in North America in the last decade, accurate modeling of mosquito population density has remained a challenge. Longitudinal mosquito trap data over the many years needed for model calibration, and validation is relatively rare. In particular, capturing the relative changes in mosquito abundance across seasons is necessary for predicting the risk of disease spread as it varies from year to year. We developed a discrete, semi-stochastic, mechanistic process-based mosquito population model that captures life-cycle egg, larva, pupa, adult stages, and diapause for Culex pipiens (Diptera, Culicidae) and Culex restuans (Diptera, Culicidae) mosquito populations. This model combines known models for development and survival into a fully connected age-structured model that can reproduce mosquito population dynamics. Mosquito development through these stages is a function of time, temperature, daylight hours, and aquatic habitat availability. The time-dependent parameters are informed by both laboratory studies and mosquito trap data from the Greater Toronto Area. The model incorporates city-wide water-body gauge and precipitation data as a proxy for aquatic habitat. This approach accounts for the nonlinear interaction of temperature and aquatic habitat variability on the mosquito life stages. We demonstrate that the full model predicts the yearly variations in mosquito populations better than a statistical model using the same data sources. This improvement in modeling mosquito abundance can help guide interventions for reducing mosquito abundance in mitigating mosquito-borne diseases like West Nile virus.
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spelling pubmed-96677262022-11-17 A Process-based Model with Temperature, Water, and Lab-derived Data Improves Predictions of Daily Culex pipiens/restuans Mosquito Density Shutt, D P Goodsman, D W Martinez, K Hemez, Z J L Conrad, J R Xu, C Osthus, D Russell, C Hyman, J M Manore, C A J Med Entomol Modeling/GIS, Risk Assessment, Economic Impact While the number of human cases of mosquito-borne diseases has increased in North America in the last decade, accurate modeling of mosquito population density has remained a challenge. Longitudinal mosquito trap data over the many years needed for model calibration, and validation is relatively rare. In particular, capturing the relative changes in mosquito abundance across seasons is necessary for predicting the risk of disease spread as it varies from year to year. We developed a discrete, semi-stochastic, mechanistic process-based mosquito population model that captures life-cycle egg, larva, pupa, adult stages, and diapause for Culex pipiens (Diptera, Culicidae) and Culex restuans (Diptera, Culicidae) mosquito populations. This model combines known models for development and survival into a fully connected age-structured model that can reproduce mosquito population dynamics. Mosquito development through these stages is a function of time, temperature, daylight hours, and aquatic habitat availability. The time-dependent parameters are informed by both laboratory studies and mosquito trap data from the Greater Toronto Area. The model incorporates city-wide water-body gauge and precipitation data as a proxy for aquatic habitat. This approach accounts for the nonlinear interaction of temperature and aquatic habitat variability on the mosquito life stages. We demonstrate that the full model predicts the yearly variations in mosquito populations better than a statistical model using the same data sources. This improvement in modeling mosquito abundance can help guide interventions for reducing mosquito abundance in mitigating mosquito-borne diseases like West Nile virus. Oxford University Press 2022-10-07 /pmc/articles/PMC9667726/ /pubmed/36203397 http://dx.doi.org/10.1093/jme/tjac127 Text en © The Author(s) 2022. Published by Oxford University Press on behalf of Entomological Society of America. https://creativecommons.org/licenses/by-nc/4.0/This is an Open Access article distributed under the terms of the Creative Commons Attribution-NonCommercial License (https://creativecommons.org/licenses/by-nc/4.0/), which permits non-commercial re-use, distribution, and reproduction in any medium, provided the original work is properly cited. For commercial re-use, please contact journals.permissions@oup.com
spellingShingle Modeling/GIS, Risk Assessment, Economic Impact
Shutt, D P
Goodsman, D W
Martinez, K
Hemez, Z J L
Conrad, J R
Xu, C
Osthus, D
Russell, C
Hyman, J M
Manore, C A
A Process-based Model with Temperature, Water, and Lab-derived Data Improves Predictions of Daily Culex pipiens/restuans Mosquito Density
title A Process-based Model with Temperature, Water, and Lab-derived Data Improves Predictions of Daily Culex pipiens/restuans Mosquito Density
title_full A Process-based Model with Temperature, Water, and Lab-derived Data Improves Predictions of Daily Culex pipiens/restuans Mosquito Density
title_fullStr A Process-based Model with Temperature, Water, and Lab-derived Data Improves Predictions of Daily Culex pipiens/restuans Mosquito Density
title_full_unstemmed A Process-based Model with Temperature, Water, and Lab-derived Data Improves Predictions of Daily Culex pipiens/restuans Mosquito Density
title_short A Process-based Model with Temperature, Water, and Lab-derived Data Improves Predictions of Daily Culex pipiens/restuans Mosquito Density
title_sort process-based model with temperature, water, and lab-derived data improves predictions of daily culex pipiens/restuans mosquito density
topic Modeling/GIS, Risk Assessment, Economic Impact
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9667726/
https://www.ncbi.nlm.nih.gov/pubmed/36203397
http://dx.doi.org/10.1093/jme/tjac127
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