Department of Epidemiology and Public Health, Swiss Tropical and Public Health Institute, P.O. Box, CH-4002 Basel, Switzerland; University of Basel, P.O. Box, CH-4003 Basel, Switzerland.
Acta Trop. 2013 Nov;128(2):365-77. doi: 10.1016/j.actatropica.2011.10.006. Epub 2011 Oct 14.
Schistosomiasis remains one of the most prevalent parasitic diseases in the tropics and subtropics, but current statistics are outdated due to demographic and ecological transformations and ongoing control efforts. Reliable risk estimates are important to plan and evaluate interventions in a spatially explicit and cost-effective manner. We analysed a large ensemble of georeferenced survey data derived from an open-access neglected tropical diseases database to create smooth empirical prevalence maps for Schistosoma mansoni and Schistosoma haematobium for a total of 13 countries of eastern Africa. Bayesian geostatistical models based on climatic and other environmental data were used to account for potential spatial clustering in spatially structured exposures. Geostatistical variable selection was employed to reduce the set of covariates. Alignment factors were implemented to combine surveys on different age-groups and to acquire separate estimates for individuals aged ≤20 years and entire communities. Prevalence estimates were combined with population statistics to obtain country-specific numbers of Schistosoma infections. We estimate that 122 million individuals in eastern Africa are currently infected with either S. mansoni, or S. haematobium, or both species concurrently. Country-specific population-adjusted prevalence estimates range between 12.9% (Uganda) and 34.5% (Mozambique) for S. mansoni and between 11.9% (Djibouti) and 40.9% (Mozambique) for S. haematobium. Our models revealed that infection risk in Burundi, Eritrea, Ethiopia, Kenya, Rwanda, Somalia and Sudan might be considerably higher than previously reported, while in Mozambique and Tanzania, the risk might be lower than current estimates suggest. Our empirical, large-scale, high-resolution infection risk estimates for S. mansoni and S. haematobium in eastern Africa can guide future control interventions and provide a benchmark for subsequent monitoring and evaluation activities.
血吸虫病仍然是热带和亚热带地区最流行的寄生虫病之一,但由于人口和生态变化以及正在进行的控制工作,当前的统计数据已经过时。可靠的风险估计对于以空间明确和具有成本效益的方式规划和评估干预措施非常重要。我们分析了大量来自开放获取的被忽视热带病数据库的地理参考调查数据,为东非的 13 个国家创建了曼氏血吸虫和埃及血吸虫的平滑经验流行率地图。基于气候和其他环境数据的贝叶斯地质统计模型用于解释潜在的空间聚类,在空间结构暴露中。地质统计变量选择用于减少协变量的数量。对齐因子用于组合不同年龄组的调查,为年龄≤20 岁的个体和整个社区分别获得单独的估计。将流行率估计值与人口统计数据相结合,以获得特定国家的血吸虫感染人数。我们估计,目前东非有 1.22 亿人感染曼氏血吸虫、埃及血吸虫或这两种物种同时感染。按人口调整的特定国家流行率估计值在曼氏血吸虫为 12.9%(乌干达)至 34.5%(莫桑比克)之间,在埃及血吸虫为 11.9%(吉布提)至 40.9%(莫桑比克)之间。我们的模型显示,布隆迪、厄立特里亚、埃塞俄比亚、肯尼亚、卢旺达、索马里和苏丹的感染风险可能比以前报告的要高得多,而在莫桑比克和坦桑尼亚,风险可能低于目前的估计。我们对东非曼氏血吸虫和埃及血吸虫的经验性、大规模、高分辨率感染风险估计可以指导未来的控制干预措施,并为后续的监测和评估活动提供基准。