Tompkins Adrian M, Colón-González Felipe J, Di Giuseppe Francesca, Namanya Didacus B
Earth System Physics Abdus Salam International Centre for Theoretical Physics Trieste Italy.
School of Environmental Sciences University of East Anglia Norwich UK.
Geohealth. 2019 Mar 22;3(3):58-66. doi: 10.1029/2018GH000157. eCollection 2019 Mar.
Malaria forecasts from dynamical systems have never been attempted at the health district or local clinic catchment scale, and so their usefulness for public health preparedness and response at the local level is fundamentally unknown. A pilot preoperational forecasting system is introduced in which the European Centre for Medium Range Weather Forecasts ensemble prediction system and seasonal climate forecasts of temperature and rainfall are used to drive the uncalibrated dynamical malaria model VECTRI to predict anomalies in transmission intensity 4 months ahead. It is demonstrated that the system has statistically significant skill at a number of sentinel sites in Uganda with high-quality data. Skill is also found at approximately 50% of the Ugandan health districts despite inherent uncertainties of unconfirmed health reports. A cost-loss economic analysis at three example sentinel sites indicates that the forecast system can have a positive economic benefit across a broad range of intermediate cost-loss ratios and frequency of transmission anomalies. We argue that such an analysis is a necessary first step in the attempt to translate climate-driven malaria information to policy-relevant decisions.
从未有人在卫生区或当地诊所服务范围内尝试过利用动力系统进行疟疾预测,因此其对地方层面公共卫生防范与应对的效用根本未知。本文介绍了一个预运行预测系统试点,其中利用欧洲中期天气预报中心集合预报系统以及温度和降雨的季节气候预报,驱动未校准的动力疟疾模型VECTRI提前4个月预测传播强度异常。结果表明,在乌干达一些拥有高质量数据的哨点,该系统具有统计学上显著的预测技能。尽管未确认的健康报告存在固有不确定性,但在约50%的乌干达卫生区也发现了预测技能。在三个示例哨点进行的成本-损失经济分析表明,在广泛的中间成本-损失比率和传播异常频率范围内,该预测系统可产生积极的经济效益。我们认为,这种分析是将气候驱动的疟疾信息转化为与政策相关决策的必要第一步。