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A unified inference procedure for a class of measures to assess improvement in risk prediction systems with survival data

机译:一类措施统一推理程序评估具有生存数据的风险预测系统的改进

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摘要

Risk prediction procedures can be quite useful for the patient’s treatment selection, prevention strategy, or disease management in evidence-based medicine. Often, potentially important new predictors are available in addition to the conventional markers. The question is how to quantify the improvement from the new markers for prediction of the patient’s risk in order to aid cost–benefit decisions. The standard method, using the area under the receiver operating characteristic curve, to measure the added value may not be sensitive enough to capture incremental improvements from the new markers. Recently, some novel alternatives to area under the receiver operating characteristic curve, such as integrated discrimination improvement and net reclassification improvement, were proposed. In this paper, we consider a class of measures for evaluating the incremental values of new markers, which includes the preceding two as special cases. We present a unified procedure for making inferences about measures in the class with censored event time data. The large sample properties of our procedures are theoretically justified. We illustrate the new proposal with data from a cancer study to evaluate a new gene score for prediction of the patient’s survival.
机译:风险预测程序对于基于循证医学的患者治疗选择,预防策略或疾病管理非常有用。通常,除了常规标记之外,还可能使用潜在重要的新预测因子。问题是如何量化用于预测患者风险的新指标所带来的改善,以帮助制定成本效益决策。使用接收器工作特性曲线下方的面积来测量增加值的标准方法可能不够灵敏,无法从新标记中捕获增量改进。最近,提出了一些新的接收器工作特性曲线下面积的替代方案,例如综合分辨能力的改进和网络重分类的改进。在本文中,我们考虑了一类用于评估新标记增量值的措施,其中包括前两种情况。我们提供了一个统一的程序,可以使用受审查的事件时间数据来推断类中的度量。从理论上讲,我们程序的大样本属性是合理的。我们用一项来自癌症研究的数据来说明这项新建议,以评估新基因得分来预测患者的生存。

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