Using a model-based geostatistical approach to design and analyse the prevalence of schistosomiasis in Kenya

Collins Okoyo, Mark Minnery, Idah Orowe, Chrispin Owaga, Christin Wambugu, Nereah Olick, Jane Hagemann, Wyckliff P. Omondi, Paul M. Gichuki, Kate McCracken, Antonio Montresor, Claudio Fronterre, Peter Diggle, Charles Mwandawiro
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Abstract

Background Infections caused by both Schistosoma mansoni and Schistosoma haematobium are endemic in Kenya, with over six million children at risk. A national school-based deworming programme was launched in 2012 with the goal of eliminating parasitic worms as a public health problem. This study used a model-based geostatistical (MBG) approach to design and analyse the impact of the programme and inform treatment strategy changes for schistosomiasis (SCH). Methods A cross-sectional survey of 200 schools across 27 counties of Kenya was utilised. The study design, selection of the schools, and analysis followed the MBG approach, which incorporated historical data on treatment, morbidity, and environmental covariates. Results The overall SCH prevalence was 5.0% (95% CI 4.9%–5.2%) and was estimated, with a high predictive probability of 0.999, to be between 1% and< 10%. The predictive probabilities at county level revealed county heterogeneity, with that of four counties estimated to be between 0% and< 1%, that of 20 counties estimated to be between 1% and< 10%, that of two counties estimated to be between 10% and< 20%, and that of one county estimated to be between 20% and< 50%. Conclusion SCH treatment requirements can now be confidently refined based on the World Health Organization’s guidelines. The four counties with prevalences of between 0% and< 1% may consider suspending treatment only in areas (i.e., sub-counties and wards) where the prevalence is< 1%.
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使用基于模型的地理统计学方法设计和分析肯尼亚血吸虫病的流行情况
背景:由曼氏血吸虫和血血吸虫引起的感染在肯尼亚流行,有600多万儿童处于危险之中。2012年启动了一项以学校为基础的国家驱虫方案,目标是消除作为公共卫生问题的寄生虫。这项研究使用了一种基于模型的地质统计学(MBG)方法来设计和分析该规划的影响,并为血吸虫病(SCH)的治疗策略变化提供信息。方法对肯尼亚27个县200所学校进行横断面调查。研究设计、学校选择和分析遵循MBG方法,其中纳入了治疗、发病率和环境协变量的历史数据。结果总体SCH患病率为5.0% (95% CI为4.9% ~ 5.2%),预测概率为0.999,介于1% ~ 1%之间。10%。县一级的预测概率显示出县间的异质性,其中4个县的预测概率估计在0%到1%之间。1%, 20个县的失业率估计在1%到1%之间。10%,两个县的失业率估计在10%到10%之间。有一个县的失业率估计在20%到20%之间。50%。结论:根据世界卫生组织的指导方针,现在可以自信地完善SCH治疗要求。患病率在0%至0%之间的四个县;1%可考虑仅在流行率低的地区(即副县和病房)暂停治疗;1%。
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