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Sensitivity of Anopheles gambiae population dynamics to meteo-hydrological variability: a mechanistic approach

BACKGROUND: Mechanistic models play an important role in many biological disciplines, and they can effectively contribute to evaluate the spatial-temporal evolution of mosquito populations, in the light of the increasing knowledge of the crucial driving role on vector dynamics played by meteo-climat...

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Autores principales: Gilioli, Gianni, Mariani, Luigi
Formato: Online Artículo Texto
Lenguaje:English
Publicado: BioMed Central 2011
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3206495/
https://www.ncbi.nlm.nih.gov/pubmed/21985188
http://dx.doi.org/10.1186/1475-2875-10-294
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author Gilioli, Gianni
Mariani, Luigi
author_facet Gilioli, Gianni
Mariani, Luigi
author_sort Gilioli, Gianni
collection PubMed
description BACKGROUND: Mechanistic models play an important role in many biological disciplines, and they can effectively contribute to evaluate the spatial-temporal evolution of mosquito populations, in the light of the increasing knowledge of the crucial driving role on vector dynamics played by meteo-climatic features as well as other physical-biological characteristics of the landscape. METHODS: In malaria eco-epidemiology landscape components (atmosphere, water bodies, land use) interact with the epidemiological system (interacting populations of vector, human, and parasite). In the background of the eco-epidemiological approach, a mosquito population model is here proposed to evaluate the sensitivity of An. gambiae s.s. population to some peculiar thermal-pluviometric scenarios. The scenarios are obtained perturbing meteorological time series data referred to four Kenyan sites (Nairobi, Nyabondo, Kibwesi, and Malindi) representing four different eco-epidemiological settings. RESULTS: Simulations highlight a strong dependence of mosquito population abundance on temperature variation with well-defined site-specific patterns. The upper extreme of thermal perturbation interval (+ 3°C) gives rise to an increase in adult population abundance at Nairobi (+111%) and Nyabondo (+61%), and a decrease at Kibwezi (-2%) and Malindi (-36%). At the lower extreme perturbation (-3°C) is observed a reduction in both immature and adult mosquito population in three sites (Nairobi -74%, Nyabondo -66%, Kibwezi -39%), and an increase in Malindi (+11%). A coherent non-linear pattern of population variation emerges. The maximum rate of variation is +30% population abundance for +1°C of temperature change, but also almost null and negative values are obtained. Mosquitoes are less sensitive to rainfall and both adults and immature populations display a positive quasi-linear response pattern to rainfall variation. CONCLUSIONS: The non-linear temperature-dependent response is in agreement with the non-linear patterns of temperature-response of the basic bio-demographic processes. This non-linearity makes the hypothesized biological amplification of temperature effects valid only for a limited range of temperatures. As a consequence, no simple extrapolations can be done linking temperature rise with increase in mosquito distribution and abundance, and projections of An. gambiae s.s. populations should be produced only in the light of the local meteo-climatic features as well as other physical and biological characteristics of the landscape.
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spelling pubmed-32064952011-11-03 Sensitivity of Anopheles gambiae population dynamics to meteo-hydrological variability: a mechanistic approach Gilioli, Gianni Mariani, Luigi Malar J Research BACKGROUND: Mechanistic models play an important role in many biological disciplines, and they can effectively contribute to evaluate the spatial-temporal evolution of mosquito populations, in the light of the increasing knowledge of the crucial driving role on vector dynamics played by meteo-climatic features as well as other physical-biological characteristics of the landscape. METHODS: In malaria eco-epidemiology landscape components (atmosphere, water bodies, land use) interact with the epidemiological system (interacting populations of vector, human, and parasite). In the background of the eco-epidemiological approach, a mosquito population model is here proposed to evaluate the sensitivity of An. gambiae s.s. population to some peculiar thermal-pluviometric scenarios. The scenarios are obtained perturbing meteorological time series data referred to four Kenyan sites (Nairobi, Nyabondo, Kibwesi, and Malindi) representing four different eco-epidemiological settings. RESULTS: Simulations highlight a strong dependence of mosquito population abundance on temperature variation with well-defined site-specific patterns. The upper extreme of thermal perturbation interval (+ 3°C) gives rise to an increase in adult population abundance at Nairobi (+111%) and Nyabondo (+61%), and a decrease at Kibwezi (-2%) and Malindi (-36%). At the lower extreme perturbation (-3°C) is observed a reduction in both immature and adult mosquito population in three sites (Nairobi -74%, Nyabondo -66%, Kibwezi -39%), and an increase in Malindi (+11%). A coherent non-linear pattern of population variation emerges. The maximum rate of variation is +30% population abundance for +1°C of temperature change, but also almost null and negative values are obtained. Mosquitoes are less sensitive to rainfall and both adults and immature populations display a positive quasi-linear response pattern to rainfall variation. CONCLUSIONS: The non-linear temperature-dependent response is in agreement with the non-linear patterns of temperature-response of the basic bio-demographic processes. This non-linearity makes the hypothesized biological amplification of temperature effects valid only for a limited range of temperatures. As a consequence, no simple extrapolations can be done linking temperature rise with increase in mosquito distribution and abundance, and projections of An. gambiae s.s. populations should be produced only in the light of the local meteo-climatic features as well as other physical and biological characteristics of the landscape. BioMed Central 2011-10-10 /pmc/articles/PMC3206495/ /pubmed/21985188 http://dx.doi.org/10.1186/1475-2875-10-294 Text en Copyright ©2011 Gilioli and Mariani; licensee BioMed Central Ltd. http://creativecommons.org/licenses/by/2.0 This is an Open Access article distributed under the terms of the Creative Commons Attribution License (http://creativecommons.org/licenses/by/2.0), which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.
spellingShingle Research
Gilioli, Gianni
Mariani, Luigi
Sensitivity of Anopheles gambiae population dynamics to meteo-hydrological variability: a mechanistic approach
title Sensitivity of Anopheles gambiae population dynamics to meteo-hydrological variability: a mechanistic approach
title_full Sensitivity of Anopheles gambiae population dynamics to meteo-hydrological variability: a mechanistic approach
title_fullStr Sensitivity of Anopheles gambiae population dynamics to meteo-hydrological variability: a mechanistic approach
title_full_unstemmed Sensitivity of Anopheles gambiae population dynamics to meteo-hydrological variability: a mechanistic approach
title_short Sensitivity of Anopheles gambiae population dynamics to meteo-hydrological variability: a mechanistic approach
title_sort sensitivity of anopheles gambiae population dynamics to meteo-hydrological variability: a mechanistic approach
topic Research
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3206495/
https://www.ncbi.nlm.nih.gov/pubmed/21985188
http://dx.doi.org/10.1186/1475-2875-10-294
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