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Missing data analysis using multiple imputation: getting to the heart of the matter.

机译:使用多重插补进行数据丢失分析:深入探讨问题的核心。

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摘要

Missing data are a pervasive problem in health investigations. We describe some background of missing data analysis and criticize ad hoc methods that are prone to serious problems. We then focus on multiple imputation, in which missing cases are first filled in by several sets of plausible values to create multiple completed datasets, then standard complete-data procedures are applied to each completed dataset, and finally the multiple sets of results are combined to yield a single inference. We introduce the basic concepts and general methodology and provide some guidance for application. For illustration, we use a study assessing the effect of cardiovascular diseases on hospice discussion for late stage lung cancer patients.
机译:数据丢失是健康调查中普遍存在的问题。我们描述了缺少数据分析的一些背景,并批评了容易出现严重问题的临时方法。然后,我们将重点放在多重插补上,在这种情况下,首先用几组合理的值填充缺失的个案以创建多个完整的数据集,然后将标准的完整数据过程应用于每个完整的数据集,最后将多组结果组合为产生一个推断。我们介绍了基本概念和通用方法,并提供了一些应用指导。为了说明,我们使用一项研究评估心血管疾病对晚期肺癌患者临终关怀讨论的影响。

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