Geo-Climatic Factors of Malaria Morbidity in the Democratic Republic of Congo from 2001 to 2019

Background: Environmentally related morbidity and mortality still remain high worldwide, although they have decreased significantly in recent decades. This study aims to forecast malaria epidemics taking into account climatic and spatio-temporal variations and therefore identify geo-climatic factors...

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Veröffentlicht in:International journal of environmental research and public health 2022-03, Vol.19 (7), p.3811
Hauptverfasser: Panzi, Eric Kalunda, Okenge, Léon Ngongo, Kabali, Eugénie Hamuli, Tshimungu, Félicien, Dilu, Angèle Keti, Mulangu, Felix, Kandala, Ngianga-Bakwin
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container_issue 7
container_start_page 3811
container_title International journal of environmental research and public health
container_volume 19
creator Panzi, Eric Kalunda
Okenge, Léon Ngongo
Kabali, Eugénie Hamuli
Tshimungu, Félicien
Dilu, Angèle Keti
Mulangu, Felix
Kandala, Ngianga-Bakwin
description Background: Environmentally related morbidity and mortality still remain high worldwide, although they have decreased significantly in recent decades. This study aims to forecast malaria epidemics taking into account climatic and spatio-temporal variations and therefore identify geo-climatic factors predictive of malaria prevalence from 2001 to 2019 in the Democratic Republic of Congo. Methods: This is a retrospective longitudinal ecological study. The database of the Directorate of Epidemiological Surveillance including all malaria cases registered in the surveillance system based on positive blood test results, either by microscopy or by a rapid diagnostic test for malaria was used to estimate malaria morbidity and mortality by province of the DRC from 2001 to 2019. The impact of climatic factors on malaria morbidity was modeled using the Generalized Poisson Regression, a predictive model with the dependent variable Y the count of the number of occurrences of malaria cases during a period of time adjusting for risk factors. Results: Our results show that the average prevalence rate of malaria in the last 19 years is 13,246 (1,178,383−1,417,483) cases per 100,000 people at risk. This prevalence increases significantly during the whole study period (p < 0.0001). The year 2002 was the most morbid with 2,913,799 (120,9451−3,830,456) cases per 100,000 persons at risk. Adjusting for other factors, a one-day in rainfall resulted in a 7% statistically significant increase in malaria cases (p < 0.0001). Malaria morbidity was also significantly associated with geographic location (western, central and northeastern region of the country), total evaporation under shelter, maximum daily temperature at a two-meter altitude and malaria morbidity (p < 0.0001). Conclusions: In this study, we have established the association between malaria morbidity and geo-climatic predictors such as geographical location, total evaporation under shelter and maximum daily temperature at a two-meter altitude. We show that the average number of malaria cases increased positively as a function of the average number of rainy days, the total quantity of rainfall and the average daily temperature. These findings are important building blocks to help the government of DRC to set up a warning system integrating the monitoring of rainfall and temperature trends and the early detection of anomalies in weather patterns in order to forecast potential large malaria morbidity events.
doi_str_mv 10.3390/ijerph19073811
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This study aims to forecast malaria epidemics taking into account climatic and spatio-temporal variations and therefore identify geo-climatic factors predictive of malaria prevalence from 2001 to 2019 in the Democratic Republic of Congo. Methods: This is a retrospective longitudinal ecological study. The database of the Directorate of Epidemiological Surveillance including all malaria cases registered in the surveillance system based on positive blood test results, either by microscopy or by a rapid diagnostic test for malaria was used to estimate malaria morbidity and mortality by province of the DRC from 2001 to 2019. The impact of climatic factors on malaria morbidity was modeled using the Generalized Poisson Regression, a predictive model with the dependent variable Y the count of the number of occurrences of malaria cases during a period of time adjusting for risk factors. Results: Our results show that the average prevalence rate of malaria in the last 19 years is 13,246 (1,178,383−1,417,483) cases per 100,000 people at risk. This prevalence increases significantly during the whole study period (p &lt; 0.0001). The year 2002 was the most morbid with 2,913,799 (120,9451−3,830,456) cases per 100,000 persons at risk. Adjusting for other factors, a one-day in rainfall resulted in a 7% statistically significant increase in malaria cases (p &lt; 0.0001). Malaria morbidity was also significantly associated with geographic location (western, central and northeastern region of the country), total evaporation under shelter, maximum daily temperature at a two-meter altitude and malaria morbidity (p &lt; 0.0001). Conclusions: In this study, we have established the association between malaria morbidity and geo-climatic predictors such as geographical location, total evaporation under shelter and maximum daily temperature at a two-meter altitude. We show that the average number of malaria cases increased positively as a function of the average number of rainy days, the total quantity of rainfall and the average daily temperature. These findings are important building blocks to help the government of DRC to set up a warning system integrating the monitoring of rainfall and temperature trends and the early detection of anomalies in weather patterns in order to forecast potential large malaria morbidity events.</description><identifier>ISSN: 1660-4601</identifier><identifier>ISSN: 1661-7827</identifier><identifier>EISSN: 1660-4601</identifier><identifier>DOI: 10.3390/ijerph19073811</identifier><identifier>PMID: 35409494</identifier><language>eng</language><publisher>Switzerland: MDPI AG</publisher><subject>Anomalies ; Climate change ; Democratic Republic of the Congo - epidemiology ; Dependent variables ; Disease ; Ecological studies ; Epidemics ; Epidemiology ; Evaporation ; Geographical distribution ; Geographical locations ; Health surveillance ; Humans ; Humidity ; Malaria ; Malaria - epidemiology ; Morbidity ; Mortality ; Population ; Precipitation ; Prediction models ; Prevalence ; Radiation ; Rain ; Rainfall ; Retrospective Studies ; Risk analysis ; Risk factors ; Shelters ; Statistical analysis ; Temporal variations ; Vector-borne diseases ; Vectors (Biology) ; Warning systems ; Weather ; Weather patterns</subject><ispartof>International journal of environmental research and public health, 2022-03, Vol.19 (7), p.3811</ispartof><rights>2022 by the authors. 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We show that the average number of malaria cases increased positively as a function of the average number of rainy days, the total quantity of rainfall and the average daily temperature. 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This study aims to forecast malaria epidemics taking into account climatic and spatio-temporal variations and therefore identify geo-climatic factors predictive of malaria prevalence from 2001 to 2019 in the Democratic Republic of Congo. Methods: This is a retrospective longitudinal ecological study. The database of the Directorate of Epidemiological Surveillance including all malaria cases registered in the surveillance system based on positive blood test results, either by microscopy or by a rapid diagnostic test for malaria was used to estimate malaria morbidity and mortality by province of the DRC from 2001 to 2019. The impact of climatic factors on malaria morbidity was modeled using the Generalized Poisson Regression, a predictive model with the dependent variable Y the count of the number of occurrences of malaria cases during a period of time adjusting for risk factors. Results: Our results show that the average prevalence rate of malaria in the last 19 years is 13,246 (1,178,383−1,417,483) cases per 100,000 people at risk. This prevalence increases significantly during the whole study period (p &lt; 0.0001). The year 2002 was the most morbid with 2,913,799 (120,9451−3,830,456) cases per 100,000 persons at risk. Adjusting for other factors, a one-day in rainfall resulted in a 7% statistically significant increase in malaria cases (p &lt; 0.0001). Malaria morbidity was also significantly associated with geographic location (western, central and northeastern region of the country), total evaporation under shelter, maximum daily temperature at a two-meter altitude and malaria morbidity (p &lt; 0.0001). Conclusions: In this study, we have established the association between malaria morbidity and geo-climatic predictors such as geographical location, total evaporation under shelter and maximum daily temperature at a two-meter altitude. We show that the average number of malaria cases increased positively as a function of the average number of rainy days, the total quantity of rainfall and the average daily temperature. These findings are important building blocks to help the government of DRC to set up a warning system integrating the monitoring of rainfall and temperature trends and the early detection of anomalies in weather patterns in order to forecast potential large malaria morbidity events.</abstract><cop>Switzerland</cop><pub>MDPI AG</pub><pmid>35409494</pmid><doi>10.3390/ijerph19073811</doi><orcidid>https://orcid.org/0000-0002-5654-5486</orcidid><oa>free_for_read</oa></addata></record>
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subjects Anomalies
Climate change
Democratic Republic of the Congo - epidemiology
Dependent variables
Disease
Ecological studies
Epidemics
Epidemiology
Evaporation
Geographical distribution
Geographical locations
Health surveillance
Humans
Humidity
Malaria
Malaria - epidemiology
Morbidity
Mortality
Population
Precipitation
Prediction models
Prevalence
Radiation
Rain
Rainfall
Retrospective Studies
Risk analysis
Risk factors
Shelters
Statistical analysis
Temporal variations
Vector-borne diseases
Vectors (Biology)
Warning systems
Weather
Weather patterns
title Geo-Climatic Factors of Malaria Morbidity in the Democratic Republic of Congo from 2001 to 2019
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