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Marginal Regression Models with a Time to Event Outcome and Discrete Multiple Source Predictors

机译:具有事件发生时间和离散多源预测因子的边际回归模型

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摘要

Information from multiple informants is frequently used to assess psychopathology. We consider marginal regression models with multiple informants as discrete predictors and a time to event outcome. We fit these models to data from the Stirling County Study; specifically, the models predict mortality from self report of psychiatric disorders and also predict mortality from physician report of psychiatric disorders. Previously, Horton et al. found little relationship between self and physician reports of psychopathology, but that the relationship of self report of psychopathology with mortality was similar to that of physician report of psychopathology with mortality. Generalized estimating equations (GEE) have been used to fit marginal models with multiple informant covariates; here we develop a maximum likelihood (ML) approach and show how it relates to the GEE approach. In a simple setting using a saturated model, the ML approach can be constructed to provide estimates that match those found using GEE. We extend the ML technique to consider multiple informant predictors with missingness and compare the method to using inverse probability weighted (IPW) GEE. Our simulation study illustrates that IPW GEE loses little efficiency compared with ML in the presence of monotone missingness. Our example data has non-monotone missingness; in this case, ML offers a modest decrease in variance compared with IPW GEE, particularly for estimating covariates in the marginal models. In more general settings, e.g. categorical predictors and piecewise exponential models, the likelihood parameters from the ML technique do not have the same interpretation as the GEE. Thus, the GEE is recommended to fit marginal models for its flexibility, ease of interpretation and comparable efficiency to ML in the presence of missing data.
机译:来自多个线人的信息经常用于评估心理病理学。我们将具有多个线人的边际回归模型视为离散的预测变量,并考虑事件发生的时间。我们将这些模型与斯特灵县研究的数据拟合;具体而言,这些模型根据精神疾病的自我报告预测死亡率,也根据精神疾病的医生报告预测死亡率。以前,霍顿等。发现自己与心理病理学医师报告之间的关系很少,但是心理病理学自我报告与死亡率之间的关系与心理病理学医师报告与死亡率之间的关系相似。广义估计方程(GEE)已用于拟合具有多个信息协变量的边际模型。在这里,我们开发了最大似然(ML)方法,并显示了它与GEE方法之间的关系。在使用饱和模型的简单设置中,可以构建ML方法以提供与使用GEE找到的估计值匹配的估计值。我们扩展了机器学习技术,以考虑具有缺失的多个信息预测因子,并将该方法与使用逆概率加权(IPW)GEE进行比较。我们的仿真研究表明,在存在单调缺失的情况下,与ML相比,IPW GEE损失的效率很小。我们的示例数据具有非单调缺失;在这种情况下,与IPW GEE相比,ML的方差减小了一点,尤其是在估计边际模型中的协变量时。在更一般的设置中,例如类别预测变量和分段指数模型,来自ML技术的似然参数与GEE的解释不同。因此,建议GEE因其灵活性,易解释性以及在缺少数据的情况下与ML相当的效率而适合边际模型。

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