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Error and bias in under-5 mortality estimates derived from birth histories with small sample sizes

机译:5岁以下儿童死亡率估计值的错误和偏倚是由出生历史得出的,样本量较小

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Background Estimates of under-5 mortality at the national level for countries without high-quality vital registration systems are routinely derived from birth history data in censuses and surveys. Subnational or stratified analyses of under-5 mortality could also be valuable, but the usefulness of under-5 mortality estimates derived from birth histories from relatively small samples of women is not known. We aim to assess the magnitude and direction of error that can be expected for estimates derived from birth histories with small samples of women using various analysis methods. Methods We perform a data-based simulation study using Demographic and Health Surveys. Surveys are treated as populations with known under-5 mortality, and samples of women are drawn from each population to mimic surveys with small sample sizes. A variety of methods for analyzing complete birth histories and one method for analyzing summary birth histories are used on these samples, and the results are compared to corresponding true under-5 mortality. We quantify the expected magnitude and direction of error by calculating the mean error, mean relative error, mean absolute error, and mean absolute relative error. Results All methods are prone to high levels of error at the smallest sample size with no method performing better than 73% error on average when the sample contains 10 women. There is a high degree of variation in performance between the methods at each sample size, with methods that contain considerable pooling of information generally performing better overall. Additional stratified analyses suggest that performance varies for most methods according to the true level of mortality and the time prior to survey. This is particularly true of the summary birth history method as well as complete birth history methods that contain considerable pooling of information across time. Conclusions Performance of all birth history analysis methods is extremely poor when used on very small samples of women, both in terms of magnitude of expected error and bias in the estimates. Even with larger samples there is no clear best method to choose for analyzing birth history data. The methods that perform best overall are the same methods where performance is noticeably different at different levels of mortality and lengths of time prior to survey. At the same time, methods that perform more uniformly across levels of mortality and lengths of time prior to survey also tend to be among the worst performing overall.
机译:背景常规上没有人口普查系统的国家对5岁以下儿童死亡率的估计通常是根据普查和调查中的出生史数据得出的。对五岁以下儿童进行亚国家级或分层分析也可能很有价值,但从相对较少的妇女样本中的出生史得出的五岁以下儿童死亡率估算的有用性尚不清楚。我们的目的是使用各种分析方法来评估从出生历史中抽取的少量女性样本所得出的估计值所预期的误差的大小和方向。方法我们使用人口统计和健康调查进行基于数据的模拟研究。调查被视为已知5岁以下死亡率的人群,并且从每个人群中抽取女性样本以模仿样本量较小的调查。这些样本使用了多种分析完整出生史的方法和一种分析简要出生史的方法,并将结果与​​相应的真实5岁以下儿童死亡率进行了比较。我们通过计算平均误差,平均相对误差,平均绝对误差和平均绝对相对误差来量化预期的误差幅度和方向。结果所有方法在最小样本量下都容易出现高水平的错误,当样本包含10位女性时,没有任何方法的平均错误率高于73%。在每种样本大小下,方法之间的性能差异很大,其中包含大量信息的方法通常总体上表现更好。其他分层分析表明,大多数方法的性能会根据实际死亡率和调查前的时间而有所不同。摘要出生历史方法以及完整的出生历史方法尤其如此,后者包含跨时间的大量信息汇总。结论在极小的妇女样本上使用所有出生史分析方法时,无论是预期误差的大小还是估计的偏倚,其性能都非常差。即使有较大的样本,也没有明确的最佳方法可供选择来分析出生史数据。总体上效果最好的方法是相同的方法,其中在不同的死亡率水平和调查前的时间长度上,性能明显不同。同时,在死亡率水平和调查前的时间跨度上表现更统一的方法也往往是表现最差的方法之一。

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