多状态模型和缺失协变量数据:似然估计的期望最大化算法。

Q3 Medicine
Biostatistics and Epidemiology Pub Date : 2017-01-01 Epub Date: 2017-04-04 DOI:10.1080/24709360.2017.1306156
Wenjie Lou, Lijie Wan, Erin L Abner, David W Fardo, Hiroko H Dodge, Richard J Kryscio
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引用次数: 10

摘要

多状态模型已被广泛用于分析医学和流行病学研究中获得的纵向事件历史数据。最近在这一领域开发的工具和方法需要完全观察到的数据。然而,在实际操作中,在感兴趣的变量中丢失数据是非常常见的,并且它已经成为应用程序中的一个问题。针对多状态模型的应用,提出了一种有效处理多重二值协变量缺失的EM算法。仿真研究表明,该算法对完全随机缺失(MCAR)和随机缺失(MAR)协变量数据都有很好的处理效果。我们将该方法应用于纵向老龄化和认知研究数据集,即克拉马斯异常老龄化项目(KEAP),其数据收集于俄勒冈健康与科学大学,并整合到肯塔基大学的老龄化和转型风险统计模型(SMART)数据库中。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Multi-state models and missing covariate data: Expectation-Maximization algorithm for likelihood estimation.

Multi-state models and missing covariate data: Expectation-Maximization algorithm for likelihood estimation.

Multi-state models have been widely used to analyze longitudinal event history data obtained in medical and epidemiological studies. The tools and methods developed recently in this area require completely observed data. However, missing data within variables of interest is very common in practice, and it has been an issue in applications. We propose a type of EM algorithm, which handles missingness within multiple binary covariates efficiently, for multi-state model applications. Simulation studies show that the EM algorithm performs well for both missing completely at random (MCAR) and missing at random (MAR) covariate data. We apply the method to a longitudinal aging and cognition study dataset, the Klamath Exceptional Aging Project (KEAP), whose data were collected at Oregon Health & Science University and integrated into the Statistical Models of Aging and Risk of Transition (SMART) database at the University of Kentucky.

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来源期刊
Biostatistics and Epidemiology
Biostatistics and Epidemiology Medicine-Health Informatics
CiteScore
1.80
自引率
0.00%
发文量
23
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