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Modelling malaria incidence with environmental dependency in a locality of Sudanese savannah area, Mali

BACKGROUND: The risk of Plasmodium falciparum infection is variable over space and time and this variability is related to environmental variability. Environmental factors affect the biological cycle of both vector and parasite. Despite this strong relationship, environmental effects have rarely bee...

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Autores principales: Gaudart, Jean, Touré, Ousmane, Dessay, Nadine, Dicko, A lassane, Ranque, Stéphane, Forest, Loic, Demongeot, Jacques, Doumbo, Ogobara K
Formato: Texto
Lenguaje:English
Publicado: BioMed Central 2009
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC2686729/
https://www.ncbi.nlm.nih.gov/pubmed/19361335
http://dx.doi.org/10.1186/1475-2875-8-61
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author Gaudart, Jean
Touré, Ousmane
Dessay, Nadine
Dicko, A lassane
Ranque, Stéphane
Forest, Loic
Demongeot, Jacques
Doumbo, Ogobara K
author_facet Gaudart, Jean
Touré, Ousmane
Dessay, Nadine
Dicko, A lassane
Ranque, Stéphane
Forest, Loic
Demongeot, Jacques
Doumbo, Ogobara K
author_sort Gaudart, Jean
collection PubMed
description BACKGROUND: The risk of Plasmodium falciparum infection is variable over space and time and this variability is related to environmental variability. Environmental factors affect the biological cycle of both vector and parasite. Despite this strong relationship, environmental effects have rarely been included in malaria transmission models. Remote sensing data on environment were incorporated into a temporal model of the transmission, to forecast the evolution of malaria epidemiology, in a locality of Sudanese savannah area. METHODS: A dynamic cohort was constituted in June 1996 and followed up until June 2001 in the locality of Bancoumana, Mali. The 15-day composite vegetation index (NDVI), issued from satellite imagery series (NOAA) from July 1981 to December 2006, was used as remote sensing data. The statistical relationship between NDVI and incidence of P. falciparum infection was assessed by ARIMA analysis. ROC analysis provided an NDVI value for the prediction of an increase in incidence of parasitaemia. Malaria transmission was modelled using an SIRS-type model, adapted to Bancoumana's data. Environmental factors influenced vector mortality and aggressiveness, as well as length of the gonotrophic cycle. NDVI observations from 1981 to 2001 were used for the simulation of the extrinsic variable of a hidden Markov chain model. Observations from 2002 to 2006 served as external validation. RESULTS: The seasonal pattern of P. falciparum incidence was significantly explained by NDVI, with a delay of 15 days (p = 0.001). An NDVI threshold of 0.361 (p = 0.007) provided a Diagnostic Odd Ratio (DOR) of 2.64 (CI95% [1.26;5.52]). The deterministic transmission model, with stochastic environmental factor, predicted an endemo-epidemic pattern of malaria infection. The incidences of parasitaemia were adequately modelled, using the observed NDVI as well as the NDVI simulations. Transmission pattern have been modelled and observed values were adequately predicted. The error parameters have shown the smallest values for a monthly model of environmental changes. CONCLUSION: Remote-sensed data were coupled with field study data in order to drive a malaria transmission model. Several studies have shown that the NDVI presents significant correlations with climate variables, such as precipitations particularly in Sudanese savannah environments. Non-linear model combining environmental variables, predisposition factors and transmission pattern can be used for community level risk evaluation.
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spelling pubmed-26867292009-05-27 Modelling malaria incidence with environmental dependency in a locality of Sudanese savannah area, Mali Gaudart, Jean Touré, Ousmane Dessay, Nadine Dicko, A lassane Ranque, Stéphane Forest, Loic Demongeot, Jacques Doumbo, Ogobara K Malar J Research BACKGROUND: The risk of Plasmodium falciparum infection is variable over space and time and this variability is related to environmental variability. Environmental factors affect the biological cycle of both vector and parasite. Despite this strong relationship, environmental effects have rarely been included in malaria transmission models. Remote sensing data on environment were incorporated into a temporal model of the transmission, to forecast the evolution of malaria epidemiology, in a locality of Sudanese savannah area. METHODS: A dynamic cohort was constituted in June 1996 and followed up until June 2001 in the locality of Bancoumana, Mali. The 15-day composite vegetation index (NDVI), issued from satellite imagery series (NOAA) from July 1981 to December 2006, was used as remote sensing data. The statistical relationship between NDVI and incidence of P. falciparum infection was assessed by ARIMA analysis. ROC analysis provided an NDVI value for the prediction of an increase in incidence of parasitaemia. Malaria transmission was modelled using an SIRS-type model, adapted to Bancoumana's data. Environmental factors influenced vector mortality and aggressiveness, as well as length of the gonotrophic cycle. NDVI observations from 1981 to 2001 were used for the simulation of the extrinsic variable of a hidden Markov chain model. Observations from 2002 to 2006 served as external validation. RESULTS: The seasonal pattern of P. falciparum incidence was significantly explained by NDVI, with a delay of 15 days (p = 0.001). An NDVI threshold of 0.361 (p = 0.007) provided a Diagnostic Odd Ratio (DOR) of 2.64 (CI95% [1.26;5.52]). The deterministic transmission model, with stochastic environmental factor, predicted an endemo-epidemic pattern of malaria infection. The incidences of parasitaemia were adequately modelled, using the observed NDVI as well as the NDVI simulations. Transmission pattern have been modelled and observed values were adequately predicted. The error parameters have shown the smallest values for a monthly model of environmental changes. CONCLUSION: Remote-sensed data were coupled with field study data in order to drive a malaria transmission model. Several studies have shown that the NDVI presents significant correlations with climate variables, such as precipitations particularly in Sudanese savannah environments. Non-linear model combining environmental variables, predisposition factors and transmission pattern can be used for community level risk evaluation. BioMed Central 2009-04-10 /pmc/articles/PMC2686729/ /pubmed/19361335 http://dx.doi.org/10.1186/1475-2875-8-61 Text en Copyright © 2009 Gaudart et al; 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
Gaudart, Jean
Touré, Ousmane
Dessay, Nadine
Dicko, A lassane
Ranque, Stéphane
Forest, Loic
Demongeot, Jacques
Doumbo, Ogobara K
Modelling malaria incidence with environmental dependency in a locality of Sudanese savannah area, Mali
title Modelling malaria incidence with environmental dependency in a locality of Sudanese savannah area, Mali
title_full Modelling malaria incidence with environmental dependency in a locality of Sudanese savannah area, Mali
title_fullStr Modelling malaria incidence with environmental dependency in a locality of Sudanese savannah area, Mali
title_full_unstemmed Modelling malaria incidence with environmental dependency in a locality of Sudanese savannah area, Mali
title_short Modelling malaria incidence with environmental dependency in a locality of Sudanese savannah area, Mali
title_sort modelling malaria incidence with environmental dependency in a locality of sudanese savannah area, mali
topic Research
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC2686729/
https://www.ncbi.nlm.nih.gov/pubmed/19361335
http://dx.doi.org/10.1186/1475-2875-8-61
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