Gikungu David, Wakhungu Jacob, Siamba Donald, Neyole Edward, Muita Richard, Bett Bernard
Kenya Meteorological Service, Nairobi.
Geospat Health. 2016 May 31;11(2):377. doi: 10.4081/gh.2016.377.
Rift Valley fever (RVF) is a mosquito-borne viral zoonotic disease that occurs throughout sub-Saharan Africa, Egypt and the Arabian Peninsula, with heavy impact in affected countries. Outbreaks are episodic and related to climate variability, especially rainfall and flooding. Despite great strides towards better prediction of RVF epidemics, there is still no observed climate data-based warning system with sufficient lead time for appropriate response and mitigation. We present a dynamic risk model based on historical RVF outbreaks and observed meteorological data. The model uses 30-year data on rainfall, temperature, relative humidity, normalised difference vegetation index and sea surface temperature data as predictors. Our research on RVF focused on Garissa, Murang'a and Kwale counties in Kenya using a research design based on a correlational, experimental, and evaluational approach. The weather data were obtained from the Kenya Meteorological Department while the RVF data were acquired from International Livestock Research Institute, and the Department of Veterinary Services. Performance of the model was evaluated by using the first 70% of the data for calibration and the remaining 30% for validation. The assessed components of the model accurately predicted already observed RVF events. The Brier score for each of the models (ranging from 0.007 to 0.022) indicated high skill. The coefficient of determination (R2) was higher in Garissa (0.66) than in Murang'a (0.21) and Kwale (0.16). The discrepancy was attributed to data distribution differences and varying ecosystems. The model outputs should complement existing early warning systems to detect risk factors that predispose for RVF outbreaks.
裂谷热(RVF)是一种由蚊子传播的病毒性人畜共患病,在撒哈拉以南非洲、埃及和阿拉伯半岛均有发生,对受影响国家造成严重影响。疫情呈间歇性,与气候多变性有关,尤其是降雨和洪水。尽管在更好地预测裂谷热疫情方面取得了巨大进展,但仍没有基于观测气候数据的预警系统,能够提供足够的提前时间以便做出适当反应和缓解措施。我们提出了一种基于裂谷热历史疫情和观测气象数据的动态风险模型。该模型使用30年的降雨、温度、相对湿度、归一化植被指数和海表温度数据作为预测因子。我们对裂谷热的研究聚焦于肯尼亚的加里萨、穆朗加和夸莱县,采用了基于相关性、实验性和评估性方法的研究设计。天气数据来自肯尼亚气象部门,而裂谷热数据则从国际畜牧研究所和兽医服务部门获取。通过使用前70%的数据进行校准,其余30%的数据进行验证,对模型的性能进行了评估。模型评估的组成部分准确预测了已观测到的裂谷热事件。每个模型的布里尔分数(范围从0.007到0.022)表明具有较高的技能水平。加里萨的决定系数(R2)(0.66)高于穆朗加(0.21)和夸莱(0.16)。这种差异归因于数据分布差异和不同的生态系统。模型输出应补充现有的预警系统,以检测导致裂谷热疫情的风险因素。