Mapping TB incidence across districts in Uganda to inform health program activities

N.J. Henry, S. Zawedde-Muyanja, R.K. Majwala, S. Turyahabwe, R.V. Barnabas, R.C. Reiner, Jr, C.E. Moore, J.M. Ross
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Abstract

BACKGROUNDIdentifying spatial variation in TB burden can help national TB programs effectively allocate resources to reach and treat all people with TB. However, data limitations pose challenges for subnational TB burden estimation.METHODSWe developed a small-area modeling approach using geo-positioned prevalence survey data, case notifications, and geospatial covariates to simultaneously estimate spatial variation in TB incidence and case notification completeness across districts in Uganda from 2016–2019. TB incidence was estimated using 1) cluster-level data from the national 2014–2015 TB prevalence survey transformed to incidence, and 2) case notifications adjusted for geospatial covariates of health system access. The case notification completeness surface was fit jointly using observed case notifications and estimated incidence.RESULTSEstimated pulmonary TB incidence among adults varied >10-fold across Ugandan districts in 2019. Case detection increased nationwide from 2016 to 2019, and the number of districts with case detection rates >70% quadrupled. District-level estimates of TB incidence were five times more precise than a model using TB prevalence survey data alone.CONCLUSIONA joint spatial modeling approach provides useful insights for TB program operation, outlining areas where TB incidence estimates are highest and health programs should concentrate their efforts. This approach can be applied in many countries with high TB burden.
绘制乌干达各地区结核病发病率图,为卫生计划活动提供信息
背景查明结核病负担的空间差异有助于国家结核病项目有效分配资源,以覆盖和治疗所有结核病患者。方法我们利用地理定位的发病率调查数据、病例通知和地理空间协变量开发了一种小区域建模方法,以同时估算 2016-2019 年乌干达各地区结核病发病率和病例通知完整性的空间变化。肺结核发病率的估算使用了:1)2014-2015 年全国肺结核发病率调查中转化为发病率的集群级数据;2)根据卫生系统接入的地理空间协变量调整后的病例通知。结果2019年乌干达各地区成人肺结核发病率的估计值相差超过10倍。从 2016 年到 2019 年,全国病例发现率有所上升,病例发现率大于 70% 的地区数量翻了两番。与仅使用结核病流行率调查数据的模型相比,地区级结核病发病率估计值的精确度高出五倍。结论 联合空间建模方法为结核病计划的运作提供了有用的见解,勾勒出结核病发病率估计值最高的地区,以及卫生计划应集中力量的地区。这种方法适用于许多结核病负担较重的国家。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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