Discussion of ‘A selective review of statistical methods using calibration information from similar studies’

IF 0.7 Q3 STATISTICS & PROBABILITY
J. Ning
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引用次数: 2

Abstract

Combining information from similar studies has attracted substantial attention and continues to become increasingly important to assemble quality evidence in comparative effectiveness research. To my knowledge, this is the first paper to systematically review classical and up-to-date methods on how different statistical methods, such as meta-analysis, empirical likelihood (EL), renewal estimation and incremental inference, can be applied to incorporate information from multiple sources. This review paper succinctly presents both basic and advanced issues and will be greatly beneficial for researchers who are interested in this field. Because of the wide array of related methods, this paper consists of cohesive but relatively independent sections. Although it is a review paper, the focus and contents are quite different from those of original papers. For example, an optimal combination of two estimators from two independent studies is derived by two methods from different perspectives: a linear combination with the smallest asymptotic variance and the maximum likelihood method. Another example is how to select a more efficient way to synthesize auxiliary information from other studies. In Section 5 of the review paper, two different sets of constraints, in which one involves parameter of interest and the other does not, have been presented and compared in terms of efficiency improvement. Both statistical intuition and theoretical justification are provided, which help readers create a better way to combine aggregate information for improved efficiency in practice. Such insightful discussions are not easily found elsewhere. The paper also nicely derives the conclusion that, similar to parametric-likelihood-based meta-analysis, the calibration methods (e.g., EL and generalized method of moments (GMM)) based on aggregate information have no efficiency loss compared to these methods using all individual data. Such deep insight into these methods greatly promotes their use for information calibration, since it is always challenging to obtain individual-level data. As stated in the title, this review paper mainly focuses on statistical methods using calibration information from similar studies. One crucial assumption of these methods is homogeneity between the cohort with individual data (e.g., target cohort) and these similar studies (e.g., external sources).When the calibration information from the external sources are not comparable with those of the target cohort, such calibration methods may result in severe bias in estimation and misleading conclusions (Chen et al., 2021; Huang et al., 2016). One way to address this issue is to test the comparability by comparing calibration information between the target cohort and external sources before combining such information. Using the setup in Section 4 of the reviewpaper as an example, assume that the auxiliary information from external sources is the mean of Y by subgroups (e.g., subgroups determined by covariates such as age and gender),
讨论“使用类似研究的校准信息的统计方法的选择性回顾”
结合来自类似研究的信息已经引起了大量关注,并且在比较有效性研究中收集高质量证据变得越来越重要。据我所知,这是第一篇系统回顾经典和最新方法的论文,介绍了不同的统计方法,如元分析、经验似然(EL)、更新估计和增量推理,如何应用于整合来自多个来源的信息。本文简明扼要地介绍了该领域的基本问题和高级问题,对感兴趣的研究人员将大有裨益。由于相关的方法种类繁多,本文由连贯但相对独立的部分组成。虽然是一篇综述性的论文,但其重点和内容与原论文有很大的不同。例如,两个独立研究的两个估计量的最优组合通过两种不同角度的方法得到:最小渐近方差的线性组合和最大似然方法。另一个例子是如何选择一种更有效的方法来综合其他研究的辅助信息。在回顾论文的第5节中,已经提出并比较了两组不同的约束,其中一组涉及感兴趣的参数,另一组不涉及,并在效率改进方面进行了比较。提供了统计直觉和理论依据,帮助读者创建更好的方法来组合汇总信息,以提高实践中的效率。这样深刻的讨论在其他地方很难找到。本文还很好地得出结论,与基于参数似然的元分析类似,基于聚合信息的校准方法(如EL和广义矩法(GMM))与使用所有单个数据的方法相比没有效率损失。对这些方法的深入了解极大地促进了它们在信息校准中的应用,因为获取个人层面的数据总是具有挑战性的。如标题所述,本文主要侧重于利用类似研究的校准信息的统计方法。这些方法的一个关键假设是具有个体数据的队列(例如目标队列)和这些类似研究(例如外部来源)之间的同质性。当来自外部来源的校准信息与目标队列的校准信息不具有可比性时,这种校准方法可能导致严重的估计偏差和误导性结论(Chen et al., 2021;黄等人,2016)。解决这一问题的一种方法是在合并这些信息之前,通过比较目标队列和外部来源之间的校准信息来测试可比性。以综述文章第4节中的设置为例,假设来自外部来源的辅助信息是Y按子组(例如,由年龄和性别等协变量确定的子组)的平均值,
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来源期刊
CiteScore
0.90
自引率
20.00%
发文量
21
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