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针对异质性疾病病因的无亚型平均因果效应。

The subtype-free average causal effect for heterogeneous disease etiology.

作者信息

Sasson A, Wang M, Ogino S, Nevo D

机构信息

Department of Statistics and Operations Research, Tel Aviv University, Tel Aviv 69978, Israel.

Department of Biostatistics, Harvard T.H. Chan School of Public Health, Boston, MA 02115, United States.

出版信息

Biometrics. 2025 Jan 7;81(1). doi: 10.1093/biomtc/ujaf016.

Abstract

Studies have shown that the effect an exposure may have on a disease can vary for different subtypes of the same disease. However, existing approaches to estimate and compare these effects largely overlook causality. In this paper, we study the effect smoking may have on having colorectal cancer subtypes defined by a trait known as microsatellite instability (MSI). We use principal stratification to propose an alternative causal estimand, the Subtype-Free Average Causal Effect (SF-ACE). The SF-ACE is the causal effect of the exposure among those who would be free from other disease subtypes under any exposure level. We study non-parametric identification of the SF-ACE and discuss different monotonicity assumptions, which are more nuanced than in the standard setting. As is often the case with principal stratum effects, the assumptions underlying the identification of the SF-ACE from the data are untestable and can be too strong. Therefore, we also develop sensitivity analysis methods that relax these assumptions. We present 3 different estimators, including a doubly robust estimator, for the SF-ACE. We implement our methodology for data from 2 large cohorts to study the heterogeneity in the causal effect of smoking on colorectal cancer with respect to MSI subtypes.

摘要

研究表明,一种暴露因素对同一种疾病的不同亚型可能产生不同的影响。然而,现有的估计和比较这些影响的方法在很大程度上忽略了因果关系。在本文中,我们研究吸烟对由一种称为微卫星不稳定性(MSI)的特征所定义的结直肠癌亚型可能产生的影响。我们使用主分层法提出了一种替代的因果估计量,即无亚型平均因果效应(SF-ACE)。SF-ACE是在任何暴露水平下都不会患其他疾病亚型的人群中暴露因素的因果效应。我们研究了SF-ACE的非参数识别,并讨论了不同的单调性假设,这些假设比标准设定中的假设更为细微。与主分层效应的情况一样,从数据中识别SF-ACE所依据的假设是无法检验的,而且可能过于严格。因此,我们还开发了放宽这些假设的敏感性分析方法。我们提出了3种不同的估计量,包括一种双重稳健估计量,用于估计SF-ACE。我们将我们的方法应用于来自2个大型队列的数据,以研究吸烟对结直肠癌的因果效应在MSI亚型方面的异质性。

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