Abstract

Malaria infects and kills millions of people in Africa, predominantly in hot regions where temperatures during the day and night are typically high. In South Africa, Limpopo Province is the hottest province in the country and therefore prone to malaria incidence. The districts of Vhembe, Mopani and Sekhukhune are the hottest districts in the province. Malaria cases in these districts are common and malaria is among the leading causes of illness and deaths in these districts. Factors contributing to malaria incidence in Limpopo Province have not been deeply investigated, aside from the general knowledge that the province is the hottest in South Africa. Bayesian and classical methods of estimation have been applied and compared on the effect of climatic factors on malaria incidence. Credible and confidence intervals from a negative binomial model estimated via Bayesian estimation and maximum likelihood estimation, respectively, were utilized in the comparison process. Overall assumptions underpinning each method were given. The Bayesian method appeared more robust than the classical method in analysing malaria incidence in Limpopo Province. The classical method identified rainfall and temperature during the night to be significant predictors of malaria incidence in Mopani, Vhembe and Waterberg districts. However, the Bayesian method found rainfall, normalised difference vegetation index, elevation, temperatures during the day and night to be the significant predictors of malaria incidence in Mopani, Sekhukhune and Vhembe districts of Limpopo Province. Both methods affirmed that Vhembe district is more susceptible to malaria incidence, followed by Mopani district. We recommend that the Department of Health and Malaria Control Programme of South Africa allocate more resources for malaria control, prevention and elimination to Vhembe and Mopani districts of Limpopo Province.

Highlights

  • Malaria is a mosquito borne disease caused by five protozoan species, namely: PlasmodiumFalciparum, Plasmodium vivax, Plasmodium malariae and related species of Plasmodium ovale and Plasmodium knowlesi ([1])

  • We present and discusses the results for fitting count regression models, namely; the Poisson regression model and Negative Binomial (NB) model estimated with maximum likelihood, and Bayesian estimation methods

  • The classical framework revealed no pattern of malaria incidence between Capricorn and Sekhukhune districts while the Bayesian framework suggests that if malaria incidence increases in Sekhukhune district, it increases in Capricorn district

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Summary

Introduction

Malaria is a mosquito borne disease caused by five protozoan species, namely: Plasmodium. Falciparum, Plasmodium vivax, Plasmodium malariae and related species of Plasmodium ovale and Plasmodium knowlesi ([1]). The protozoa are transmitted to humans through the bites of infected female Anopheles mosquitos (mosquitos carrying protozoa). Plasmodium falciparum is known to account for many malaria cases globally and is regarded as a threat to public health worldwide ([1,2]). Malaria incidence refers to the commonness of malaria occurrence. When the incidence rates are high, transmission and prevalence of malaria are high. This exposes the vulnerability and danger of the disease to society

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