将具有未测量异质性的加速故障时间模型中的因果解释形式化

Mari Brathovde, Hein Putter, Morten Valberg, Richard A. J. Post
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引用次数: 0

摘要

在存在未测量异质性的情况下,暴露的危险比具有复杂的因果解释。为了解决这个问题,人们通常建议采用加速失败时间(AFT)模型,该模型评估生存时间比标度上的影响,是一种更好的替代方法。AFT 模型还可以直接调整混杂因素。在这项工作中,我们利用结构因果模型和独立删减下的数据,对 AFT 模型中的加速因子进行了形式化的因果解释。我们证明,即使存在虚弱和治疗效果异质性,加速因子也是一个有效的因果效应度量。通过模拟,我们证明当 AFT 模型和比例危险模型都适用时,加速因子比危险比能更好地捕捉因果效应。此外,我们还将解释扩展到了加速因子随时间变化的系统,揭示了区分随时间变化的同质性效应和未测量的异质性所面临的挑战。虽然对加速因子的因果解释很有希望,但我们提醒实践者在存在效应异质性的情况下估计这些因子时可能遇到的挑战。
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Formalizing the causal interpretation in accelerated failure time models with unmeasured heterogeneity
In the presence of unmeasured heterogeneity, the hazard ratio for exposure has a complex causal interpretation. To address this, accelerated failure time (AFT) models, which assess the effect on the survival time ratio scale, are often suggested as a better alternative. AFT models also allow for straightforward confounder adjustment. In this work, we formalize the causal interpretation of the acceleration factor in AFT models using structural causal models and data under independent censoring. We prove that the acceleration factor is a valid causal effect measure, even in the presence of frailty and treatment effect heterogeneity. Through simulations, we show that the acceleration factor better captures the causal effect than the hazard ratio when both AFT and proportional hazards models apply. Additionally, we extend the interpretation to systems with time-dependent acceleration factors, revealing the challenge of distinguishing between a time-varying homogeneous effect and unmeasured heterogeneity. While the causal interpretation of acceleration factors is promising, we caution practitioners about potential challenges in estimating these factors in the presence of effect heterogeneity.
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