Bayesian spatiotemporal modelling and mapping of malaria risk among children aged below 5 years in Ghana

Author:

Takramah Wisdom Kwami1,Afrane Yaw Asare2,Aheto Justice Moses K.3

Affiliation:

1. University of Health and Allied Sciences

2. University of Ghana Medical School

3. University of Southampton

Abstract

Abstract

Background Malaria is a significant public health problem, particularly among children aged 6-59 months who bear the greatest burden of this disease. Malaria transmission is high and more pronounced in poor tropical and subtropical areas of the world. Climate change is positively correlated with the geographical distribution of malaria vectors. There is substantial evidence of spatial and temporal differences in under-five malaria risk. Thus, the study aimed to create intelligent maps of smooth relative risk of malaria in children under-5 years that highlights high and low malaria burden in space and time to support malaria prevention, control, and elimination efforts. Method The study extracted and merged the required data on malaria among children aged 6-59 months from 2014 Ghana Demographic and Health Surveys (GDHS), 2016 and 2019 Ghana Malaria Indicator Surveys (GMIS). The outcome variable of interest is the count of children aged 6-59 months with positive test on rapid diagnostic test (RDT) kit. Bayesian Hierarchical Spatiotemporal models were specified to estimate and map spatiotemporal variations in the relative risk of malaria. The existence of local clustering was assessed using local indicator of spatial association (LISA) and the points were mapped to display significant local clusters, hotpot, and cold spot communities. Results The number of positive malaria cases in children aged 6-59 months decreased marginally between the 2014 and 2019 DHS survey periods. Smooth relative risk of malaria among children aged 6-59 months has consistently increased in the Northern and Eastern regions between 2014 and 2019. Socioeconomic and climatic factors such as household size [Posterior Mean: -0.198 (95% CrI: 3.52, 80.95)], rural area [Posterior Mean: 1.739 (95% CrI: 0.581, 2.867)], rainfall [Posterior Mean: 0.003 (95% CrI: 0.001, 0.005)], and maximum temperature [Posterior Mean: -1.069 (95% CrI: -2.135, -0.009)] have all been shown as statistically significant predictors of malaria risk in children aged 6-59 months. Hot spot DHS clusters with a significantly high relative risk of malaria among children aged 6-59 months were repeatedly detected in the Ashanti region between 2014 and 2019. Conclusion The findings would provide policymakers with practical and insightful information for the equitable distribution of scarce health resources targeted at reducing the burden of malaria and its associated mortality among children under-five years.

Publisher

Research Square Platform LLC

Reference34 articles.

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3. Ignacio M, Pablo J, Ross-Macdonald, Models. Which one should we use? Acta Trop [Internet]. 2020;207. https://arxiv.org/pdf/2002.11267.pdf.

4. Ross R. Some a priori pathometric equations. Br Med J [Internet]. 1915; 1:546. https://www.bmj.com/content/1/2830/546.

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