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首页> 外文期刊>The stata journal >Analyzing repeated measurements while accounting for derivative tracking, varying within-subject variance, and autocorrelation: The xtmixediou command
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Analyzing repeated measurements while accounting for derivative tracking, varying within-subject variance, and autocorrelation: The xtmixediou command

机译:分析重复测量,同时考虑到导数跟踪,对象内部方差变化和自相关:xtmixediou命令

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摘要

Linear mixed-effects models are commonly used to model trajectories of repeated measures of biomarkers of disease. Taylor, Cumberland, and Sy (1994, Journal of the American Statistical Association 89: 727-736) proposed a linear mixed-effects model with an added integrated Ornstein-Uhlenbeck (IOU) process (linear mixed-effects IOU model). This allows for autocorrelation, changing within-subject variance, and the incorporation of derivative tracking (that is, how much a subject tends to maintain the same trajectory for extended periods of time). They argued that the covariance structure induced by the stochastic process in this model was interpretable and more biologically plausible than the standard linear mixed-effects model. However, their model is rarely used, partly because of the lack of available software. In this article, we present the new command xtmixediou, which fits the linear mixed-effects IOU model and its special case, the linear mixed-effects Brownian motion model. The model is fit to balanced and unbalanced data using restricted maximum-likelihood estimation, where the optimization algorithm is the Newton-Raphson, Fisher scoring, or average information algorithm, or any combination of these. To aid convergence, xtmixediou allows the user to change the method for deriving the starting values for optimization, the optimization algorithm, and the parameterization of the IOU process. We also provide a predict command to generate predictions under the model. We illustrate xtmixediou and predict with a simulated example of repeated biomarker measurements from HIV-positive patients.
机译:线性混合效应模型通常用于模拟疾病生物标志物重复测量的轨迹。 Taylor,Cumberland和Sy(1994,美国统计协会杂志89:727-736)提出了一种线性混合效应模型,并增加了集成的Ornstein-Uhlenbeck(IOU)过程(线性混合效应IOU模型)。这允许自相关,更改对象内部方差以及引入导数跟踪(即,在较长的时间段内对象倾向于保持相同轨迹的程度)。他们认为,与标准线性混合效应模型相比,该模型中由随机过程引起的协方差结构是可解释的,并且在生物学上更有意义。但是,它们的模型很少使用,部分原因是缺少可用的软件。在本文中,我们介绍了新的命令xtmixediou,它适合线性混合效果IOU模型及其特殊情况,即线性混合效果Brownian运动模型。该模型使用受限的最大似然估计来拟合平衡和不平衡数据,其中优化算法是Newton-Raphson,Fisher评分或平均信息算法,或这些的任意组合。为了帮助收敛,xtmixediou允许用户更改用于推导优化的起始值,优化算法和IOU过程的参数化的方法。我们还提供了一个预测命令,以在模型下生成预测。我们举例说明了xtmixediou,并通过对HIV阳性患者进行重复生物标志物测量的模拟示例进行了预测。

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