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Developing and evaluating risk prediction models with panel current status data

机译:使用面板当前状态数据开发和评估风险预测模型

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摘要

Panel current status data arise frequently in biomedical studies when the occurrence of a particular clinical condition is only examined at several prescheduled visit times. Existing methods for analyzing current status data have largely focused on regression modeling based on commonly used survival models such as the proportional hazards model and the accelerated failure time model. However, these procedures have the limitations of being difficult to implement and performing sub-optimally in relatively small sample sizes. The performance of these procedures is also unclear under model misspecification. In addition, no methods currently exist to evaluate the prediction performance of estimated risk models with panel current status data. In this paper, we propose a simple estimator under a general class of nonparametric transformation (NPT) models by fitting a logistic regression working model and demonstrate that our proposed estimator is consistent for the NPT model parameter up to a scale multiplier. Furthermore, we propose nonparametric estimators for evaluating the prediction performance of the risk score derived from model fitting, which is valid regardless of the adequacy of the fitted model. Extensive simulation results suggest that our proposed estimators perform well in finite samples and the regression parameter estimators outperform existing estimators under various scenarios. We illustrate the proposed procedures using data from the Framingham Offspring Study.
机译:面板当前状态数据在生物医学研究中经常出现在特定临床状况的发生时仅在几次预定的访问时间内检查。用于分析当前状态数据的现有方法主要集中在基于常用的生存模型(例如比例危险模型和加速故障时间模型)的常用存活模型的回归建模。然而,这些程序具有难以在相对较小的样本尺寸中实现和性能难以实施和执行的局限性。这些程序的表现也不清楚模型误操作。此外,目前没有任何方法可以评估具有面板当前状态数据的估计风险模型的预测性能。在本文中,我们通过拟合逻辑回归工作模型,提出了一般类非参数变换(NPT)模型的简单估计器,并证明了我们所提出的估计器与缩放乘法器的NPT模型参数一致。此外,我们提出了非参数估计值,用于评估从模型配件导出的风险得分的预测性能,无论拟合模型的充分性如何,都是有效的。广泛的仿真结果表明,我们所提出的估算器在有限样本中表现良好,并且回归参数估计器在各种场景下优于现有的估算。我们说明了使用来自Framingham后代研究的数据的提出的程序。

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