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Quantifying discrimination of Framingham risk functions with different survival C statistics

机译:不同生存C统计数据量化框架风险函数的歧视

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摘要

Cardiovascular risk prediction functions offer an important diagnostic tool for clinicians and patients themselves. They are usually constructed with the use of parametric or semi-parametric survival regression models. It is essential to be able to evaluate the performance of these models, preferably with summaries that offer natural and intuitive interpretations. The concept of discrimination, popular in the logistic regression context, has been extended to survival analysis. However, the extension is not unique. In this paper, we define discrimination in survival analysis as the model’s ability to separate those with longer event-free survival from those with shorter event-free survival within some time horizon of interest. This definition remains consistent with that used in logistic regression, in the sense that it assesses how well the model-based predictions match the observed data. Practical and conceptual examples and numerical simulations are employed to examine four C statistics proposed in the literature to evaluate the performance of survival models. We observe that they differ in the numerical values and aspects of discrimination that they capture. We conclude that the index proposed by Harrell is the most appropriate to capture discrimination described by the above definition. We suggest researchers report which C statistic they are using, provide a rationale for their selection, and be aware that comparing different indices across studies may not be meaningful.
机译:心血管风险预测功能为临床医生和患者本身提供了重要的诊断工具。它们通常由参数或半参数生存回归模型建造。能够能够评估这些模型的性能,最好是提供自然和直观解释的摘要。歧视的概念,流行在逻辑回归背景下,已经扩展到生存分析。但是,扩展不是唯一的。在本文中,我们将生存分析中的歧视定义为模型,将具有较长的无事生生存的模型在某些时间范围内与较短的无事生存期分离。此定义仍然与逻辑回归中使用的定义保持一致,从而评估基于模型的预测匹配如何匹配观察到的数据。采用实用且概念的实例和数值模拟来检查文献中提出的四种C统计数据,以评估生存模型的性能。我们观察到它们在捕获的歧视的数值和方面不同。我们得出结论,哈雷尔提出的指数最适合捕获上述定义所描述的歧视。我们建议研究人员报告他们正在使用的C统计数据,为其选择提供理由,并意识到跨研究的不同索引比较可能不会有意义。

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