National Oceanic and Atmospheric Administration Cooperative Remote Sensing Science and Technology (NOAA-CREST), The City College of New York, NY, USA.
Am J Trop Med Hyg. 2010 Jun;82(6):1004-9. doi: 10.4269/ajtmh.2010.09-0201.
Satellite data may be used to map climatic conditions conducive to malaria outbreaks, assisting in the targeting of public health interventions to mitigate the worldwide increase in incidence of the mosquito-transmitted disease. This work analyzes correlation between malaria cases and vegetation health (VH) indices derived from satellite remote sensing for each week over a period of 14 years for Bandarban, Bangladesh. Correlation analysis showed that years with a high summer temperature condition index (TCI) tended to be those with high malaria incidence. Principal components regression was performed on patterns of weekly TCI during each of the two annual malaria seasons to construct a model as a function of the TCI. These models reduced the malaria estimation error variance by 57% if first-peak (June-July) TCI was used as the estimator and 74% if second-peak (August-September) was used, compared with an estimation of average number of malaria cases for each year.
卫星数据可用于绘制有利于疟疾爆发的气候条件图,帮助针对公共卫生干预措施进行目标定位,以减轻全球蚊媒疾病发病率的上升。本研究分析了孟加拉国班达班 14 年来每周的疟疾病例与卫星遥感衍生的植被健康 (VH) 指数之间的相关性。相关性分析表明,夏季高温条件指数 (TCI) 较高的年份往往疟疾发病率也较高。对两个疟疾季节的每周 TCI 模式进行主成分回归,构建一个 TCI 函数模型。与每年疟疾病例平均数量的估计相比,如果将第一个高峰期(6 月至 7 月)的 TCI 用作估计值,或者将第二个高峰期(8 月至 9 月)的 TCI 用作估计值,这些模型将疟疾估计误差方差分别降低了 57%和 74%。