将 "获益一致性统计 "作为预测治疗获益的区分度的方法学问题。

Yuan Xia, Paul Gustafson, Mohsen Sadatsafavi
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引用次数: 0

摘要

根据患者特征量化特定治疗预期获益的预测算法可为医疗决策提供重要信息。量化治疗获益预测算法的性能是一个活跃的研究领域。最近提出的一个指标--获益一致性统计量(cfb),通过直接将一致性统计量的概念从二元结果的风险模型扩展到治疗获益模型,来评估治疗获益预测器的判别能力。在这项工作中,我们从多个方面对 cfb 进行了研究。通过数字示例和理论发展,我们表明 cfb 并不是一个合适的评分规则。我们还表明,它对反事实结果之间不可估计的相关性和配对的定义很敏感。我们认为,应用于预测效益的统计离散度量不存在这些问题,可以作为治疗效益预测指标鉴别性能的替代指标。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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Methodological concerns about "concordance-statistic for benefit" as a measure of discrimination in predicting treatment benefit.

Prediction algorithms that quantify the expected benefit of a given treatment conditional on patient characteristics can critically inform medical decisions. Quantifying the performance of treatment benefit prediction algorithms is an active area of research. A recently proposed metric, the concordance statistic for benefit (cfb), evaluates the discriminative ability of a treatment benefit predictor by directly extending the concept of the concordance statistic from a risk model with a binary outcome to a model for treatment benefit. In this work, we scrutinize cfb on multiple fronts. Through numerical examples and theoretical developments, we show that cfb is not a proper scoring rule. We also show that it is sensitive to the unestimable correlation between counterfactual outcomes and to the definition of matched pairs. We argue that measures of statistical dispersion applied to predicted benefits do not suffer from these issues and can be an alternative metric for the discriminatory performance of treatment benefit predictors.

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