论文标题

观察研究中缺少数据的治疗和报告框架:柏油路框架框架

Framework for the Treatment And Reporting of Missing data in Observational Studies: The TARMOS framework

论文作者

Lee, Katherine J, Tilling, Kate, Cornish, Rosie P, Little, Roderick JA, Bell, Melanie L, Goetghebeur, Els, Hogan, Joseph W, Carpenter, James R

论文摘要

缺少数据在医学研究中无处不在。尽管关于如何处理丢失数据的指导越来越多,但实践正在缓慢地改变,误解比比皆是,尤其是在观察性研究中。我们提出了一个实用框架,用于处理和报告观察性研究中不完整数据的分析,我们使用雅芳纵向研究的案例研究来说明父母和孩子的案例研究。框架包括三个步骤:1)制定一个分析计划,指定分析模型以及如何解决丢失数据。一个重要的考虑因素是完整的记录分析是否可能有效,多种插补或替代方法是否可能提供益处,以及是否需要对缺失机制进行敏感性分析。 2)探索数据,检查分析计划中概述的方法是适当的,并进行了预先计划的分析。 3)报告结果,包括对丢失数据的描述,有关丢失数据的处理方式的详细信息,以及根据丢失的数据和临床相关性来解释的所有分析的结果。该框架旨在支持研究人员系统地思考丢失数据,并透明地报告对研究结果的潜在影响。

Missing data are ubiquitous in medical research. Although there is increasing guidance on how to handle missing data, practice is changing slowly and misapprehensions abound, particularly in observational research. We present a practical framework for handling and reporting the analysis of incomplete data in observational studies, which we illustrate using a case study from the Avon Longitudinal Study of Parents and Children. The framework consists of three steps: 1) Develop an analysis plan specifying the analysis model and how missing data are going to be addressed. An important consideration is whether a complete records analysis is likely to be valid, whether multiple imputation or an alternative approach is likely to offer benefits, and whether a sensitivity analysis regarding the missingness mechanism is required. 2) Explore the data, checking the methods outlined in the analysis plan are appropriate, and conduct the pre-planned analysis. 3) Report the results, including a description of the missing data, details on how the missing data were addressed, and the results from all analyses, interpreted in light of the missing data and the clinical relevance. This framework seeks to support researchers in thinking systematically about missing data, and transparently reporting the potential effect on the study results.

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