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利用计划生育服务统计数据为基于模型的现代避孕方法普及率估算提供信息。

Using family planning service statistics to inform model-based estimates of modern contraceptive prevalence.

机构信息

Department of Mathematics and Statistics, Maynooth University, Maynooth, Kildare, Ireland.

Avenir Health, Glastonbury, CN, United States of America.

出版信息

PLoS One. 2021 Oct 29;16(10):e0258304. doi: 10.1371/journal.pone.0258304. eCollection 2021.

Abstract

The annual assessment of Family Planning (FP) indicators, such as the modern contraceptive prevalence rate (mCPR), is a key component of monitoring and evaluating goals of global FP programs and initiatives. To that end, the Family Planning Estimation Model (FPEM) was developed with the aim of producing survey-informed estimates and projections of mCPR and other key FP indictors over time. With large-scale surveys being carried out on average every 3-5 years, data gaps since the most recent survey often exceed one year. As a result, survey-based estimates for the current year from FPEM are often based on projections that carry a larger uncertainty than data informed estimates. In order to bridge recent data gaps we consider the use of a measure, termed Estimated Modern Use (EMU), which has been derived from routinely collected family planning service statistics. However, EMU data come with known limitations, namely measurement errors which result in biases and additional variation with respect to survey-based estimates of mCPR. Here we present a data model for the incorporation of EMU data into FPEM, which accounts for these limitations. Based on known biases, we assume that only changes in EMU can inform FPEM estimates, while also taking inherent variation into account. The addition of this EMU data model to FPEM allows us to provide a secondary data source for informing and reducing uncertainty in current estimates of mCPR. We present model validations using a survey-only model as a baseline comparison and we illustrate the impact of including the EMU data model in FPEM. Results show that the inclusion of EMU data can change point-estimates of mCPR by up to 6.7 percentage points compared to using surveys only. Observed reductions in uncertainty were modest, with the width of uncertainty intervals being reduced by up to 2.7 percentage points.

摘要

计划生育指标(如现代避孕普及率 mCPR)的年度评估是监测和评估全球计划生育项目和倡议目标的关键组成部分。为此,开发了计划生育估计模型(FPEM),旨在随着时间的推移生成基于调查的 mCPR 和其他关键计划生育指标的估计值和预测值。由于每 3-5 年平均进行一次大规模调查,因此自最近一次调查以来的数据差距通常超过一年。因此,FPEM 对当年的基于调查的估计值通常基于带有更大不确定性的预测值,而不是基于数据的估计值。为了弥补最近的数据差距,我们考虑使用一种称为估计现代使用(EMU)的方法,该方法是从常规收集的计划生育服务统计数据中得出的。然而,EMU 数据存在已知的局限性,即测量误差会导致偏差,并相对于 mCPR 的基于调查的估计值增加额外的变化。在这里,我们提出了一种将 EMU 数据纳入 FPEM 的数据模型,该模型考虑到了这些局限性。基于已知的偏差,我们假设只有 EMU 的变化才能为 FPEM 估计提供信息,同时也考虑到固有变化。将此 EMU 数据模型添加到 FPEM 中,可以为当前 mCPR 估计提供辅助数据源,以提供信息并减少不确定性。我们使用仅基于调查的模型作为基准比较进行模型验证,并说明在 FPEM 中包含 EMU 数据模型的影响。结果表明,与仅使用调查相比,纳入 EMU 数据可以将 mCPR 的点估计值改变高达 6.7 个百分点。观察到的不确定性降低幅度适中,不确定性区间的宽度最多可降低 2.7 个百分点。

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