Department of International Health, Johns Hopkins Bloomberg School of Public Health, 615 N. Wolfe Street, MD, 21205, Baltimore, USA.
BMC Health Serv Res. 2021 Oct 25;21(Suppl 2):1083. doi: 10.1186/s12913-021-06995-z.
Routinely collected health facility data usually captured and stored in Health Management Information Systems (HMIS) are potential sources of data for frequent and local disaggregated estimation of the coverage of reproductive, maternal, newborn, and child health interventions (RMNCH), but have been under-utilized due to concerns over data quality. We reviewed methods for estimation of national or subnational coverage of RMNCH interventions using HMIS data exclusively or in conjunction with survey data from low- and middle-income countries (LMICs).
We conducted a comprehensive review of studies indexed in PubMed and Scopus to identify potential papers based on predefined search terms. Two reviewers screened the papers using defined inclusion and exclusion criteria. Following sequences of title, abstract and full paper reviews, we retained 18 relevant papers.
12 papers used only HMIS data and 6 used both HMIS and survey data. There is enormous lack of standards in the existing methods for estimating RMNCH intervention coverage; all appearing to be highly author dependent. The denominators for coverage measures were estimated using census, non-census and combined projection-based methods. No satisfactory methods were found for treatment-based coverage indicators for which the estimation of target population requires the population prevalence of underlying conditions. The estimates of numerators for the coverage measures were obtained from the count of users or visits and in some cases correction for completeness of reporting in the HMIS following an assessment of data quality.
Standard methods for correcting numerators from HMIS data for accurate estimation of coverage of RMNCH interventions are needed to expand the use of these data. More research and investments are required to improve denominators for health facility-derived statistics. Improvement in routine data quality and analytical methods would allow for timely estimation of RMNCH intervention coverage at the national and subnational levels.
常规收集的卫生机构数据通常在健康管理信息系统(HMIS)中捕获和存储,是频繁和局部分解估计生殖、孕产妇、新生儿和儿童健康干预措施(RMNCH)覆盖范围的潜在数据来源,但由于对数据质量的担忧,这些数据尚未得到充分利用。我们审查了仅使用 HMIS 数据或结合来自中低收入国家(LMICs)的调查数据估计 RMNCH 干预措施的国家或次国家覆盖范围的方法。
我们在 PubMed 和 Scopus 中进行了全面的文献综述,根据预定义的搜索词确定潜在的论文。两名审查员使用定义的纳入和排除标准筛选论文。在标题、摘要和全文审查之后,我们保留了 18 篇相关论文。
12 篇论文仅使用 HMIS 数据,6 篇论文同时使用 HMIS 和调查数据。现有的估计 RMNCH 干预措施覆盖范围的方法存在巨大的缺乏标准;所有这些方法似乎都高度依赖作者。覆盖率测量的分母是使用人口普查、非人口普查和综合基于预测的方法估计的。对于基于治疗的覆盖率指标,没有找到令人满意的方法,因为需要根据潜在条件的人群流行率来估计目标人群。覆盖率测量的分子估计数是从用户或就诊次数中获得的,在某些情况下,在评估 HMIS 数据质量后,对报告的完整性进行修正。
需要标准方法从 HMIS 数据中纠正分子,以准确估计 RMNCH 干预措施的覆盖范围,从而扩大这些数据的使用。需要更多的研究和投资来改进卫生机构数据的分母。常规数据质量和分析方法的改进将允许及时在国家和次国家层面估计 RMNCH 干预措施的覆盖范围。