CTID, Liverpool School of Tropical Medicine, Pembroke Place, Liverpool L3 5QA, UK.
Trans R Soc Trop Med Hyg. 2011 Sep;105(9):500-6. doi: 10.1016/j.trstmh.2011.05.007. Epub 2011 Jun 28.
Point-prevalence recording of the distribution of tropical parasitic diseases at village level is usually sufficient for general monitoring and surveillance. Whilst within-village spatial patterning of diseases exists, and can be important, mapping infected cases in a household-by-household setting is arduous and time consuming. With the development of low-cost GPS-data loggers (< £40) and available GoogleEarth(TM) satellite imagery, we present a field-applicable method based on crowdsourcing for rapid identification of infected cases (intestinal schistosomiasis, malaria and hookworm) by household. A total of 126 mothers with their 247 preschool children from Bukoba village (Mayuge District, Uganda) were examined with half of these mothers given a GPS-data logger to walk home with, returning the unit the same day for data off-loading, after which, households were assigned GPS coordinates. A satellite image of Bukoba was annotated with households denoting the infection status of each mother and child. General prevalence of intestinal schistosomiasis, malaria and hookworm in mothers and children was: 27.2 vs 7.7%, 28.6 vs 87.0% and 60.0 vs 22.3%, respectively. Different spatial patterns of disease could be identified likely representing the intrinsic differences in parasite biology and interplay with human behaviour(s) across this local landscape providing a better insight into reasons for disease micro-patterning.
在村级水平上进行热带寄生虫病的时点患病率记录通常足以进行一般监测和监视。虽然村内疾病存在空间分布模式,而且可能很重要,但在逐户的基础上绘制感染病例是艰巨且耗时的。随着低成本 GPS 数据记录仪(<£40)和可用的 GoogleEarth(TM)卫星图像的发展,我们提出了一种基于众包的现场适用方法,用于快速识别家庭内的感染病例(肠道血吸虫病、疟疾和钩虫病)。共有 126 名来自布科巴村(乌干达马尤盖区)的母亲及其 247 名学龄前儿童接受了检查,其中一半母亲获得了 GPS 数据记录仪,让她们带着回家,当天返回以卸下数据,然后为每户分配 GPS 坐标。布科巴村的卫星图像用家庭标注,标记每位母亲和儿童的感染状况。母亲和儿童中肠道血吸虫病、疟疾和钩虫病的总流行率分别为:27.2%比 7.7%、28.6%比 87.0%和 60.0%比 22.3%。可以识别出不同的疾病空间模式,这可能代表了寄生虫生物学内在差异以及与人类行为的相互作用在当地景观中的差异,从而更深入地了解疾病微观模式的原因。