An Alternative Sensitivity Approach for Longitudinal Analysis with Dropout

IF 1.3 Q3 STATISTICS & PROBABILITY Journal of Probability and Statistics Pub Date : 2019-07-01 DOI:10.1155/2019/1019303
A. Almohisen, R. Henderson, Arwa M. Alshingiti
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Abstract

In any longitudinal study, a dropout before the final timepoint can rarely be avoided. The chosen dropout model is commonly one of these types: Missing Completely at Random (MCAR), Missing at Random (MAR), Missing Not at Random (MNAR), and Shared Parameter (SP). In this paper we estimate the parameters of the longitudinal model for simulated data and real data using the Linear Mixed Effect (LME) method. We investigate the consequences of misspecifying the missingness mechanism by deriving the so-called least false values. These are the values the parameter estimates converge to, when the assumptions may be wrong. The knowledge of the least false values allows us to conduct a sensitivity analysis, which is illustrated. This method provides an alternative to a local misspecification sensitivity procedure, which has been developed for likelihood-based analysis. We compare the results obtained by the method proposed with the results found by using the local misspecification method. We apply the local misspecification and least false methods to estimate the bias and sensitivity of parameter estimates for a clinical trial example.
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一种具有Dropout的纵向分析灵敏度替代方法
在任何纵向研究中,在最终时间点之前辍学几乎是不可避免的。所选择的退出模型通常是以下类型之一:完全随机缺失(MCAR)、随机缺失(MAR)、非随机缺失(MNAR)和共享参数(SP)。本文采用线性混合效应(LME)方法对模拟数据和实际数据的纵向模型参数进行估计。我们通过推导所谓的最小假值来研究错误指定缺失机制的后果。当假设可能是错误的时候,这些是参数估计的收敛值。最小错误值的知识使我们能够进行灵敏度分析,如下所示。该方法为基于似然分析的局部错误灵敏度程序提供了一种替代方法。将该方法与局部错配法的结果进行了比较。针对一个临床试验实例,应用局部错标法和最小错误法来估计参数估计的偏差和灵敏度。
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来源期刊
Journal of Probability and Statistics
Journal of Probability and Statistics STATISTICS & PROBABILITY-
自引率
0.00%
发文量
14
审稿时长
18 weeks
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