Exploring 30 years of malaria case data in KwaZulu-Natal, South Africa: part I. The impact of climatic factors.
Craig, MH;
Kleinschmidt, I;
Nawn, JB;
Le Sueur, D;
Sharp, BL;
(2004)
Exploring 30 years of malaria case data in KwaZulu-Natal, South Africa: part I. The impact of climatic factors.
Tropical medicine & international health, 9 (12).
pp. 1247-1257.
ISSN 1360-2276
DOI: https://doi.org/10.1111/j.1365-3156.2004.01340.x
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Large parts of Africa are prone to malaria epidemics. Advance epidemic warning would give health services an opportunity to prepare. Because malaria transmission is largely limited by climate, climate-based epidemic warning systems are a real possibility. To develop and test such a system, good long-term malaria and climate data are needed. In KwaZulu-Natal (KZN), South Africa, 30 years of confirmed malaria case data provide a unique opportunity to examine short- and long-term trends. We analysed seasonal case totals and seasonal changes in cases (both log-transformed) against a range of climatic indicators obtained from three weather stations in the highest malaria incidence districts, using linear regression analysis. Seasonal changes in case numbers (delta log cases, dlc) were significantly associated with several climate variables. The two most significant ones were mean maximum daily temperatures from January to October of the preceding season (n=30, r2=0.364, P=0.0004) and total rainfall during the current summer months of November-March (n=30, r2=0.282, P=0.003). These two variables, when entered into the same regression model, together explained 49.7% of the total variation in dlc. We found no evidence of association between case totals and climate. In KZN, where malaria control operations are intense, climate appears to drive the interannual variation of malaria incidence, but not its overall level. The accompanying paper provides evidence that overall levels are associated with non-climatic factors such as drug resistance and possibly HIV prevalence.