Department of Biostatistics and Informatics, University of Colorado Anschutz Medical Campus, Aurora, CO, USA.
Lancaster Medical School, Lancaster University, Lancaster, UK.
Sci Rep. 2018 Jun 18;8(1):9238. doi: 10.1038/s41598-018-27537-4.
Malaria is a major cause of morbidity and mortality in Mozambique. We present a malaria early warning system (MEWS) for Mozambique informed by seven years of weekly case reports of malaria in children under 5 years of age from 142 districts. A spatio-temporal model was developed based on explanatory climatic variables to map exceedance probabilities, defined as the predictive probability that the relative risk of malaria incidence in a given district for a particular week will exceed a predefined threshold. Unlike most spatially discrete models, our approach accounts for the geographical extent of each district in the derivation of the spatial covariance structure to allow for changes in administrative boundaries over time. The MEWS can thus be used to predict areas that may experience increases in malaria transmission beyond expected levels, early enough so that prevention and response measures can be implemented prior to the onset of outbreaks. The framework we present is also applicable to other climate-sensitive diseases.
疟疾是莫桑比克发病率和死亡率的主要原因。我们提出了一个疟疾早期预警系统(MEWS),该系统基于 7 年来 142 个地区 5 岁以下儿童每周疟疾病例报告,利用了 7 年的每周疟疾病例报告。我们根据解释性气候变量开发了一个时空模型,以绘制超出概率图,定义为预测特定地区在特定周内疟疾发病率的相对风险超过预定阈值的概率。与大多数空间离散模型不同,我们的方法在推导空间协方差结构时考虑了每个地区的地理范围,以允许行政边界随时间发生变化。因此,该预警系统可用于预测可能出现高于预期水平的疟疾传播增加的地区,以便在疫情爆发前及时采取预防和应对措施。我们提出的框架也适用于其他对气候敏感的疾病。