适用于交叉风险模型的正确一致性指数

A proper concordance index for models with crossing hazards

Scandinavian Journal of Statistics · 2025
被引 2 · 同刊同年前 8%
ABS 3

中文导读

针对现有一致性指数在交叉风险模型(如分层比例风险模型和机器学习模型)中可能失效的问题,提出了一个保证正确性的新指数,并通过实验证明其优于传统方法。

Abstract

Abstract Concordance indices are among the most popular metrics used for model selection and evaluation in survival analysis. This is due to their clear interpretation and these metrics being proper for survival models where hazards cannot cross, such as proportional hazards models. However, current concordance indices are not guaranteed to be proper for models with crossing hazards, such as stratified proportional hazards models and various machine learning based models. We give a precise characterization of the conditions under which a concordance index is proper, when it orders risk via the predicted hazard rate at the first event time of pairs of individuals. In a series of experiments, we demonstrate that previous concordance indices may prefer incorrect models over the true data‐generating model, whereas ours does not. We also investigate the use of concordance indices as targets for secondary loss terms in deep learning models. Our suggested concordance is easily interpretable and is, therefore, useful as a success metric for survival models.

生存分析模型评估机器学习计量经济学