Search engine for discovering works of Art, research articles, and books related to Art and Culture
ShareThis
Javascript must be enabled to continue!

Geographically weighted regression modelling of the spatial association between malaria cases and environmental factors in Cameroon.

View through CrossRef
Abstract Background: Studies have illustrated the association of malaria cases with environmental factors in Cameroon but limited in addressing how these factors vary in space for timely public health interventions. Thus, we want to find the spatial variability between malaria hotspot cases and environmental predictors using Geographically weighted regression (GWR) spatial modelling technique.Methods: The global Ordinary least squares (OLS) in the modelling spatial relationships tool in ArcGIS 10.3. was used to select candidate explanatory environmental variables for a properly specified GWR model. The local GWR model used the global OLS candidate variables to examine, predict and explore the spatial variability between environmental factors and malaria hotspot cases generated from Getis-Ord Gi* statistical analysis. Results: The OLS candidate environmental variable coefficients were statistically significant (adjusted R2 = 22.3% and p < 0.01) for a properly specified GWR model. The GWR model identified a strong spatial association between malaria cases and rainfall, vegetation index, population density, and drought episodes in most hotspot areas and a weak correlation with aridity and proximity to water with an overall model performance of 0.243 (adjusted R2= 24.3%).Conclusion: The generated GWR maps suggest that for policymakers to eliminate malaria in Cameroon, there should be the creation of malaria outreach programs and further investigations in areas where the environmental variables showed strong spatial associations with malaria hotspot cases.
Title: Geographically weighted regression modelling of the spatial association between malaria cases and environmental factors in Cameroon.
Description:
Abstract Background: Studies have illustrated the association of malaria cases with environmental factors in Cameroon but limited in addressing how these factors vary in space for timely public health interventions.
Thus, we want to find the spatial variability between malaria hotspot cases and environmental predictors using Geographically weighted regression (GWR) spatial modelling technique.
Methods: The global Ordinary least squares (OLS) in the modelling spatial relationships tool in ArcGIS 10.
3.
was used to select candidate explanatory environmental variables for a properly specified GWR model.
The local GWR model used the global OLS candidate variables to examine, predict and explore the spatial variability between environmental factors and malaria hotspot cases generated from Getis-Ord Gi* statistical analysis.
Results: The OLS candidate environmental variable coefficients were statistically significant (adjusted R2 = 22.
3% and p < 0.
01) for a properly specified GWR model.
The GWR model identified a strong spatial association between malaria cases and rainfall, vegetation index, population density, and drought episodes in most hotspot areas and a weak correlation with aridity and proximity to water with an overall model performance of 0.
243 (adjusted R2= 24.
3%).
Conclusion: The generated GWR maps suggest that for policymakers to eliminate malaria in Cameroon, there should be the creation of malaria outreach programs and further investigations in areas where the environmental variables showed strong spatial associations with malaria hotspot cases.

Related Results

Geographically weighted regression modelling of the spatial association between malaria cases and environmental factors in Cameroon.
Geographically weighted regression modelling of the spatial association between malaria cases and environmental factors in Cameroon.
Abstract Background: Studies have illustrated the association of malaria cases with environmental factors in Cameroon but limited in addressing how these factors vary in sp...
Musta mere ranniku eesti asunikud malaaria meelevallas
Musta mere ranniku eesti asunikud malaaria meelevallas
At the end of the 19th century, Estonian settlers encountered malaria in the Volga region and Siberia, but outbreaks with the most serious consequences hit Estonians in the Black S...
Malaria epidemiological characteristics and control in Guangzhou, China, 1950–2022
Malaria epidemiological characteristics and control in Guangzhou, China, 1950–2022
Abstract Background Malaria was once widespread in Guangzhou, China. However, a series of control measures have succeeded in eliminating local malar...
Are Cervical Ribs Indicators of Childhood Cancer? A Narrative Review
Are Cervical Ribs Indicators of Childhood Cancer? A Narrative Review
Abstract A cervical rib (CR), also known as a supernumerary or extra rib, is an additional rib that forms above the first rib, resulting from the overgrowth of the transverse proce...
Prevalence, Demographic Patterns, and Seasonal Distribution of Malaria in District Dera Ismail Khan, Pakistan
Prevalence, Demographic Patterns, and Seasonal Distribution of Malaria in District Dera Ismail Khan, Pakistan
Abstract Malaria remains the most significant vector-borne disease worldwide, with over 200 million cases reported annually, causing approximatel...
Malaria Risk Stratification and Modeling the Effect of Rainfall on Malaria Incidence in Eritrea
Malaria Risk Stratification and Modeling the Effect of Rainfall on Malaria Incidence in Eritrea
Background. Malaria risk stratification is essential to differentiate areas with distinct malaria intensity and seasonality patterns. The development of a simple prediction model t...
Forecasting Malaria Morbidity to 2036 Based on Geo-Climatic Factors in the Democratic Republic of Congo
Forecasting Malaria Morbidity to 2036 Based on Geo-Climatic Factors in the Democratic Republic of Congo
Background: Malaria is a global burden in terms of morbidity and mortality. In the Democratic Republic of Congo, malaria prevalence is increasing due to strong climatic variations....
Prevalence of clinical malaria and household characteristics of patients in tribal districts of Pakistan
Prevalence of clinical malaria and household characteristics of patients in tribal districts of Pakistan
Background Malaria, disproportionately affects poor people more than any other disease of public health concern in developing countries. In resource-constrained environments, monit...

Back to Top