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Linking household surveys and health facility assessments to estimate intervention coverage for the Lives Saved Tool ( LiST )

机译:将家庭调查和医疗机构评估联系起来,以估算“拯救生命工具”(LiST)的干预范围

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Calls have been made for improved measurement of coverage for maternal, newborn and child health interventions. Recently, methods linking household and health facility surveys have been used to improve estimation of intervention coverage. However, linking methods rely the availability of household and health facility surveys which are temporally matched. Because nationally representative health facility assessments are not yet routinely conducted in many low and middle income countries, estimates of intervention coverage based on linking methods can be produced for only a subset of countries. Estimates of intervention coverage are a critical input for modelling the health impact of intervention scale-up in the Lives Saved Tool (LiST). The purpose of this study was to develop a data-driven approach to estimate coverage for a subset of antenatal care interventions modeled in LiST. Using a five-step process, estimates of population level coverage for syphilis detection and treatment, case management of diabetes, malaria infection, hypertensive disorders, and pre-eclampsia, were computed by linking household and health facility surveys. Based on data characterizing antenatal care and estimates of coverage derived from the linking approach, predictive models for intervention coverage were developed. Updated estimates of coverage based on the predictive models were compared, first with current default proxies, then with estimates based on the linking approach. Model fit and accuracy were assessed using three measures: the coefficient of determination, Pearson’s correlation coefficient, and the root mean square error (RMSE). The ability to predict intervention coverage was fairly accurate across all interventions considered. Predictive models accounted for 20–63% of the variance in intervention coverages, and correlation coefficients ranged from 0.5 to 0.83. The predictive model used to estimate coverage of management of pre-eclampsia performed relatively better (RMSE?=?0.11) than the model estimating coverage of diabetes case management (RMSE?=?0.19). The new approach to estimate coverage represents an improvement over current default proxies in LiST. As the availability of reliable coverage data improves, impact estimates generated by LiST will improve. This study underscores the need for continued efforts to improve coverage measurement, while bringing to the fore the importance of health facility assessments as complementary data sources.
机译:已经呼吁改善对孕产妇,新生儿和儿童健康干预措施的覆盖率。最近,将家庭和医疗机构调查联系起来的方法已被用于改善对干预范围的估计。但是,链接方法依赖于时间匹配的家庭和医疗机构调查的可用性。由于在许多低收入和中等收入国家中尚未例行进行具有国家代表性的医疗机构评估,因此只能针对一部分国家得出基于链接方法的干预覆盖率估算。干预覆盖率的估计值对于在“挽救生命的工具(LiST)”中模拟干预扩大对健康的影响至关重要。这项研究的目的是开发一种数据驱动的方法来估计以LiST为模型的一部分产前护理干预措施的覆盖率。通过分五步进行的过程,通过将家庭和医疗机构的调查相结合,计算出梅毒检测和治疗,糖尿病,疟疾感染,高血压疾病和先兆子痫的人口水平覆盖范围的估计值。基于表征产前护理的数据和从链接方法得出的覆盖率估计,开发了干预覆盖率的预测模型。首先,将基于预测模型的覆盖范围更新估计值与当前默认代理进行比较,然后与基于链接方法的估计值进行比较。使用以下三种方法评估模型的拟合度和准确性:确定系数,皮尔逊相关系数和均方根误差(RMSE)。在所有考虑的干预措施中,预测干预措施覆盖范围的能力都相当准确。预测模型占干预覆盖率方差的20-63%,相关系数在0.5到0.83之间。用于估计子痫前期治疗覆盖率的预测模型相对于估计糖尿病病例管理覆盖率模型(RMSE≤0.19)表现相对更好(RMSE≤0.11)。估计覆盖率的新方法代表了对LiST中当前默认代理的一种改进。随着可靠的覆盖范围数据可用性的提高,LiST生成的影响估计将有所改进。这项研究强调,需要继续努力改善覆盖率测量,同时将卫生机构评估作为补充数据源的重要性凸显出来。

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