Institute for Climate Change and Adaptation, University of Nairobi, Nairobi, Kenya.
Department of Plant Sciences, Kenyatta University, Nairobi, Kenya.
PLoS One. 2018 Jul 5;13(7):e0199357. doi: 10.1371/journal.pone.0199357. eCollection 2018.
The global increase in vector borne diseases has been linked to climate change. Seasonal vegetation changes are known to influence disease vector population. However, the relationship is more theoretical than quantitatively defined. There is a growing demand for understanding and prediction of climate sensitive vector borne disease risks especially in regions where meteorological data are lacking. This study aimed at analyzing and quantitatively assessing the seasonal and year-to-year association between climatic factors (rainfall and temperature) and vegetation cover, and its implications for malaria risks in Baringo County, Kenya. Remotely sensed temperature, rainfall, and vegetation data for the period 2004-2015 were used. Poisson regression was used to model the association between malaria cases and climatic and environmental factors for the period 2009-2012, this being the period for which all datasets overlapped. A strong positive relationship was observed between the Normalized Difference Vegetation Index (NDVI) and monthly total precipitation. There was a strong negative relationship between NDVI and minimum temperature. The total monthly rainfall (between 94 -181mm), average monthly minimum temperatures (between 16-21°C) and mean monthly NDVI values lower than 0.35 were significantly associated with malaria incidence rates. Results suggests that a combination of climatic and vegetation greenness thresholds need to be met for malaria incidence to be significantly increased in the county. Planning for malaria control can therefore be enhanced by incorporating these factors in malaria risk mapping.
全球虫媒传染病的增加与气候变化有关。季节性植被变化被认为会影响病媒种群。然而,这种关系更多的是理论上的,而不是定量定义的。人们越来越需要了解和预测气候敏感的虫媒传染病风险,特别是在气象数据缺乏的地区。本研究旨在分析和定量评估气候因素(降雨和温度)与植被覆盖之间的季节性和年际关联,以及其对肯尼亚巴林戈县疟疾风险的影响。本研究使用了 2004-2015 年期间的遥感温度、降雨和植被数据。使用泊松回归模型来模拟 2009-2012 年期间疟疾病例与气候和环境因素之间的关系,这是所有数据集重叠的时间段。归一化差异植被指数(NDVI)与每月总降水量之间存在很强的正相关关系。NDVI 与最低温度之间存在很强的负相关关系。每月总降雨量(94-181mm 之间)、平均每月最低温度(16-21°C 之间)和平均每月 NDVI 值低于 0.35 与疟疾发病率显著相关。结果表明,只有在满足气候和植被绿色阈值的情况下,疟疾发病率才会显著增加。因此,通过将这些因素纳入疟疾风险图中,可以增强疟疾控制规划。