Clements A C A, Brooker S, Nyandindi U, Fenwick A, Blair L
Division of Epidemiology and Social Medicine, School of Population Health, University of Queensland, Herston Road, Herston, Qld. 4006, Australia.
Int J Parasitol. 2008 Mar;38(3-4):401-15. doi: 10.1016/j.ijpara.2007.08.001. Epub 2007 Sep 2.
Spatial modelling was applied to self-reported schistosomiasis data from over 2.5 million school students from 12,399 schools in all regions of mainland Tanzania. The aims were to derive statistically robust prevalence estimates in small geographical units (wards), to identify spatial clusters of high and low prevalence and to quantify uncertainty surrounding prevalence estimates. The objective was to permit informed decision-making for targeting of resources by the Tanzanian national schistosomiasis control programme. Bayesian logistic regression models were constructed to investigate the risk of schistosomiasis in each ward, based on the prevalence of self-reported schistosomiasis and blood in urine. Models contained covariates representing climatic and demographic effects and random effects for spatial clustering. Degree of urbanisation, median elevation of the ward and median normalised difference vegetation index (NDVI) were significantly and negatively associated with schistosomiasis prevalence. Most regions contained wards that had >95% certainty of schistosomiasis prevalence being >10%, the selected threshold for bi-annual mass chemotherapy of school-age children. Wards with >95% certainty of schistosomiasis prevalence being >30%, the selected threshold for annual mass chemotherapy of school-age children, were clustered in north-western, south-western and south-eastern regions. Large sample sizes in most wards meant raw prevalence estimates were robust. However, when uncertainties were investigated, intervention status was equivocal in 6.7-13.0% of wards depending on the criterion used. The resulting maps are being used to plan the distribution of praziquantel to participating districts; they will be applied to prioritising control in those wards where prevalence was unequivocally above thresholds for intervention and might direct decision-makers to obtain more information in wards where intervention status was uncertain.
空间建模应用于来自坦桑尼亚大陆所有地区12399所学校的250多万在校学生的血吸虫病自我报告数据。目的是在小地理单元(行政区)得出统计上可靠的流行率估计值,识别高流行率和低流行率的空间聚集区,并量化流行率估计值周围的不确定性。目标是为坦桑尼亚国家血吸虫病控制计划的资源分配提供明智的决策依据。构建了贝叶斯逻辑回归模型,根据血吸虫病自我报告流行率和尿液中带血情况,调查每个行政区的血吸虫病风险。模型包含代表气候和人口效应的协变量以及空间聚集的随机效应。城市化程度、行政区的中位海拔和中位归一化植被指数(NDVI)与血吸虫病流行率显著负相关。大多数地区的行政区有超过95%的确定性认为血吸虫病流行率>10%,这是学龄儿童半年一次大规模化疗的选定阈值。血吸虫病流行率>30%(学龄儿童每年大规模化疗的选定阈值)且确定性超过95%的行政区集中在西北部、西南部和东南部地区。大多数行政区的样本量很大,这意味着原始流行率估计值很可靠。然而,在调查不确定性时,根据所使用的标准,6.7%-13.0%的行政区的干预状况不明确。生成的地图正用于规划吡喹酮在参与地区的分发;它们将应用于在流行率明确高于干预阈值的行政区确定优先控制区域,并可能引导决策者在干预状况不确定的行政区获取更多信息。