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Assessing the prediction accuracy of a cure model for censored survival data with long-term survivors: Application to breast cancer data

机译:用长期幸存者评估截取的生存数据固化模型的预测准确性:乳腺癌数据的应用

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摘要

The Cox proportional hazards cure model is a survival model incorporating a cure rate with the assumption that the population contains both uncured and cured individuals. It contains a logistic regression for the cure rate, and a Cox regression to estimate the hazard for uncured patients. A single predictive model for both the cure and hazard can be developed by using a cure model that simultaneously predicts the cure rate and hazards for uncured patients; however, model selection is a challenge because of the lack of a measure for quantifying the predictive accuracy of a cure model. Recently, we developed an area under the receiver operating characteristic curve (AUC) for determining the cure rate in a cure model (Asano et al., 2014), but the hazards measure for uncured patients was not resolved. In this article, we propose novel C-statistics that are weighted by the patients' cure status (i.e., cured, uncured, or censored cases) for the cure model. The operating characteristics of the proposed C-statistics and their confidence interval were examined by simulation analyses. We also illustrate methods for predictive model selection and for further interpretation of variables using the proposed AUCs and C-statistics via application to breast cancer data.
机译:Cox比例危害固化模型是一种生存模型,其含有治愈率的假设,假设人群含有未固化和治愈的个体。它包含治愈率的逻辑回归,以及估计未固化患者危害的COX回归。可以通过使用同时预测未固化患者的固化率和危害的固化模型来开发治疗和危害的单个预测模型;然而,模型选择是挑战,因为缺乏量化固化模型的预测准确性的措施。最近,我们在接收器操作特征曲线(AUC)下开发了一个区域,用于确定固化模型中的固化率(Asano等,2014),但未解决未固化患者的危险措施。在本文中,我们提出了用于治疗模型的患者固化状态(即固化,未固化或审查的案件)加权的新型C统计。通过模拟分析检查所提出的C统计的操作特性及其置信区间。我们还说明了通过应用于乳腺癌数据,使用所提出的AUCS和C统计进一步解释可预测模型选择的方法和进一步解释变量。

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