Abstract
AbstractAlthough there have been enormous demands and efforts to develop an early warning system for malaria, no sustainable system has remained. Well-organized malaria surveillance and high-quality climate forecasts are required to sustain a malaria early warning system in conjunction with an effective malaria prediction model. We aimed to develop a weather-based malaria prediction model using a weekly time-series data including temperature, precipitation, and malaria cases from 1998 to 2015 in Vhembe, Limpopo, South Africa and apply it to seasonal climate forecasts. The malaria prediction model performed well for short-term predictions (correlation coefficient, r > 0.8 for 1- and 2-week ahead forecasts). The prediction accuracy decreased as the lead time increased but retained fairly good performance (r > 0.7) up to the 16-week ahead prediction. The demonstration of the malaria prediction process based on the seasonal climate forecasts showed the short-term predictions coincided closely with the observed malaria cases. The weather-based malaria prediction model we developed could be applicable in practice together with skillful seasonal climate forecasts and existing malaria surveillance data. Establishing an automated operating system based on real-time data inputs will be beneficial for the malaria early warning system, and can be an instructive example for other malaria-endemic areas.
Publisher
Springer Science and Business Media LLC
Reference41 articles.
1. WHO. World malaria report 2018. World Health Organization, https://www.who.int/malaria/publications/world-malaria-report-2018/en/ (2018).
2. Nkumama, I. N., O’Meara, W. P. & Osier, F. H. A. Changes in Malaria Epidemiology in Africa and New Challenges for Elimination. Trends Parasitol 33, 128–140, https://doi.org/10.1016/j.pt.2016.11.006 (2017).
3. Elimination8. Elimination 8 Regional Initiative, https://malariaelimination8.org/ (2016).
4. Caminade, C. et al. Impact of climate change on global malaria distribution. Proc Natl Acad Sci USA 111, 3286–3291, https://doi.org/10.1073/pnas.1302089111 (2014).
5. Paaijmans, K. P., Wandago, M. O., Githeko, A. K. & Takken, W. Unexpected high losses of Anopheles gambiae larvae due to rainfall. PloS one 2, e1146, https://doi.org/10.1371/journal.pone.0001146 (2007).
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