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Bias in longitudinal data analysis with missing data using typical linear mixed-effects modelling and pattern-mixture approach: An analytical illustration

机译:使用典型的线性混合效应建模和模式混合方法在缺少数据的情况下进行纵向数据分析时的偏差:一个分析插图

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摘要

We analytically derive the fixed-effects estimates in unconditional linear growth curve models by typical linear mixed-effects modelling (TLME) and by a pattern-mixture (PM) approach with random-slope-dependent two-missing-pattern missing not at random (MNAR) longitudinal data. Results showed that when the missingness mechanism is random-slope-dependent MNAR, TLME estimates of both the mean intercept and mean slope are biased because of incorrect weights used in the estimation. More specifically, the estimate of the mean slope is biased towards the mean slope for completers, whereas the estimate of the mean intercept is biased towards the opposite direction as compared to the estimate of the mean slope. We also discuss why the PM approach can provide unbiased fixed-effects estimates for random-coefficients-dependent MNAR data but does not work well for missing at random or outcome-dependent MNAR data. A small simulation study was conducted to illustrate the results and to compare results from TLME and PM. Results from an empirical data analysis showed that the conceptual finding can be generalized to other real conditions even when some assumptions for the analytical derivation cannot be met. Implications from the analytical and empirical results were discussed and sensitivity analysis was suggested for longitudinal data analysis with missing data.
机译:我们通过典型的线性混合效应模型(TLME)和模式混合(PM)方法分析得出无条件线性增长曲线模型中的固定效应估计值,其中随机斜率相关的两个缺失模式并非随机缺失( MNAR)纵向数据。结果表明,当缺失机制是依赖于随机斜率的MNAR时,由于估计中使用的权重不正确,因此平均截距和平均斜率的TLME估计都存在偏差。更具体地,对于完成者,平均斜率的估计偏向平均斜率,而与平均斜率的估计相比,平均截距的估计偏向相反的方向。我们还将讨论为什么PM方法可以为依赖于随机系数的MNAR数据提供无偏固定效果估计,但是对于缺少随机或依赖于结果的MNAR数据却不能很好地工作。进行了一次小型模拟研究,以说明结果并比较TLME和PM的结果。经验数据分析的结果表明,即使无法满足​​分析推导的某些假设,概念发现也可以推广到其他实际条件。讨论了分析和经验结果的含义,并建议对缺少数据的纵向数据进行敏感性分析。

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