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首页> 外文期刊>Journal of Clinical Epidemiology >Longitudinal tobit regression: a new approach to analyze outcome variables with floor or ceiling effects.
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Longitudinal tobit regression: a new approach to analyze outcome variables with floor or ceiling effects.

机译:纵向轨道回归:一种分析具有底或顶效应的结果变量的新方法。

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摘要

BACKGROUND: In many epidemiologic longitudinal studies, the outcome variable has floor or ceiling effects. Although it is not correct, these variables are often treated as normally distributed continuous variables. OBJECTIVES: In this article, the performance of a relatively new statistical technique, longitudinal tobit analysis, is compared with a classical longitudinal data analysis technique (i.e., linear mixed models). STUDY DESIGN AND SETTING: The analyses are performed on an example data set from rehabilitation research in which the outcome variable of interest (the Barthel index measured at on average 16.3 times) has typical floor and ceiling effects. For both the longitudinal tobit analysis and the linear mixed models an analysis with both a random intercept and a random slope were performed. RESULTS: Based on model fit parameters, plots of the residuals and the mean of the squared residuals, the longitudinal tobit analysis with both a random intercept and a random slope performed best. In the tobit models, the estimation of the development over time revealed a steeper development compared with the linear mixed models. CONCLUSION: Although there are some computational difficulties, longitudinal tobit analysis provides a very nice solution for the longitudinal analysis of outcome variables with floor or ceiling effects.
机译:背景:在许多流行病学纵向研究中,结果变量具有底或顶效应。尽管这是不正确的,但这些变量通常被视为正态分布的连续变量。目标:在本文中,将相对较新的统计技术(纵向轨道分析)的性能与经典的纵向数据分析技术(即线性混合模型)进行了比较。研究设计与设置:分析是基于康复研究的示例数据集进行的,其中感兴趣的结果变量(Barthel指数的平均测量值为16.3倍)具有典型的地板和天花板效果。对于纵向轨道分析和线性混合模型,都进行了具有随机截距和随机斜率的分析。结果:基于模型拟合参数,残差图和残差平方的平均值,具有随机截距和随机斜率的纵向轨道分析效果最佳。在轨道模型中,与线性混合模型相比,随时间推移的发展估算值显示出更陡峭的发展。结论:尽管存在一定的计算困难,但纵向轨道分析为纵向分析具有底或顶效应的结果变量提供了一个很好的解决方案。

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