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Stochastic functional estimates in longitudinal models with interval-censored anchoring events

机译:间歇型锚定锚定事件的纵向模型随机功能估计

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Timelines of longitudinal studies are often anchored by specific events. In the absence of the fully observed anchoring event times, the study timeline becomes undefined, and the traditional longitudinal analysis loses its temporal reference. In this paper, we considered an analytical situation where the anchoring events are interval censored. We demonstrated that by expressing the regression parameter estimators as stochastic functionals of a plug-in estimate of the unknown anchoring event time distribution, the standard longitudinal models could be extended to accommodate the situation of less well-defined timelines. We showed that for a broad class of longitudinal models, the functional parameter estimates are consistent and asymptotically normally distributed with a n convergence rate under mild regularity conditions. Applying the developed theory to linear mixed-effects models, we further proposed a hybrid computational procedure that combines the strengths of the Fisher's scoring method and the expectation-expectation (EM) algorithm for model parameter estimation. We conducted a simulation study to validate the asymptotic properties and to assess the finite sample performance of the proposed method. A real data example was used to illustrate the proposed method. The method fills in a gap in the existing longitudinal analysis methodology for data with less well-defined timelines.
机译:纵向研究的时间表通常由特定事件锚定。在没有完全观察到的锚定事件时间的情况下,研究时间表变得未定义,传统的纵向分析失去了其时间参考。在本文中,我们考虑了一个分析情况,其中锚定事件是截留的间隔。我们证明,通过表达回归参数估计作为未知锚定事件时间分布的插件估计的随机功能,可以扩展标准纵向模型以适应较少明确定义的时间表的情况。我们表明,对于广泛的纵向模型,功能参数估计是一致的,并且渐近地通常以温和的规律性条件下的N收敛速度分布。将开发的理论应用于线性混合效果模型,我们进一步提出了一种混合计算过程,结合了Fisher评分方法的优势和预期 - 期望(EM)算法进行模型参数估计。我们进行了模拟研究以验证渐近性质,并评估所提出的方法的有限样本性能。使用真实数据示例来说明所提出的方法。该方法填充现有纵向分析方法的间隙,用于具有较少明确定义的时间表的数据。

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