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Multilevel growth curve models with covariate effects: application to recovery after stroke.

机译:具有协变量效应的多级生长曲线模型:应用于中风后的恢复。

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In measuring the progression of, or recovery from, a disease an individual's outcome may be assessed on a number of occasions. A model of the relationship between outcome and time since disease occurred which accounts for patient characteristics could be used to describe patterns of recovery, to predict outcome for a patient, or to evaluate health interventions. We use multilevel models to analyse such data, focusing on the choice of powers of time both for mean outcome and covariate effects. We give equations for predicted outcome and corresponding standard errors (i) based only on baseline characteristics, and (ii) by conditioning on previous outcomes for an individual. In a study of 331 stroke patients, outcome was measured approximately 0, 2,4,6 and 12 months after stroke. Patient characteristics included age, sex, and pre-stroke handicap, together with stroke-severity indicators (presence of limb deficit, dysphasia, dysarthria or incontinence). Of these, only the effects of age, dysphasia and presence of deficit varied with time. Conditioning on previous observations improved the accuracy of predictions. The outcome variable clearly had a skewed distribution, and the model residuals showed evidence of non-Normality. We discuss alternative models for non-Normal data, and show that, here, the standard (Normal errors) multilevel model gives equivalent parameter estimates and predictions to those obtained from alternative models. Copyright 2001 John Wiley & Sons, Ltd.
机译:在测量疾病的进展或从疾病中恢复时,可以在许多情况下评估个体的结果。考虑到患者特征的疾病发生后时间与结果之间的关系模型可以用来描述康复方式,预测患者结果或评估健康干预措施。我们使用多级模型来分析此类数据,重点是选择均值结果和协变量效应的时间幂。我们给出了预测结果和相应标准误差的方程式(i)仅基于基线特征,以及(ii)以个人的先前结果为条件。在一项针对331名中风患者的研究中,在中风后大约0、2、4、6和12个月测量了结局。患者特征包括年龄,性别和中风前残障,以及中风严重度指标(肢体缺损,吞咽困难,构音障碍或失禁)。其中,只有年龄,吞咽困难和缺乏症的影响会随时间变化。对以前的观察进行条件处理可以提高预测的准确性。结果变量明显具有偏态分布,模型残差显示出非正态性的证据。我们讨论了非正态数据的替代模型,并表明此处,标准(正态误差)多级模型给出了与从替代模型获得的参数估计和预测相同的参数。版权所有2001 John Wiley&Sons,Ltd.

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