利用聚类因果图确定医学中的因果效应。

AMIA ... Annual Symposium proceedings. AMIA Symposium Pub Date : 2025-05-22 eCollection Date: 2024-01-01
Tara V Anand, George Hripcsak
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引用次数: 0

摘要

因果推断,或估计暴露或干预变量对观测数据集结果的因果效应的任务,需要基于对所研究系统的假设,采用精确和严格的方法。这样的假设可以被表述为因果图,然而,由于在高维环境中构建因果图的挑战,在医学中使用这种技术并不常见。最近引入的聚类因果图(c - dag)承诺通过允许表示一些未知或部分定义的关系来简化图构建的任务。我们评估了c - dag在模拟医学环境中的实际应用。我们在不同的假设下估计因果效应,由因果图和c - dag决定,并比较我们的结果。我们的研究结果显示了经验上相似的结果,在实验运行中因果效应大小或方差之间几乎没有差异,尽管估计和效率挑战仍有待探索。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Leveraging Cluster Causal Diagrams for Determining Causal Effects in Medicine.

Causal inference, or the task of estimating the causal effect of an exposure or interventional variable on an outcome from an observational dataset, requires precise and rigorous methods, based on assumptions about the system under study. Such assumptions can be articulated as a causal diagram, however use of this technique in medicine is uncommon due to challenges in causal diagram construction in high-dimensional settings. Recent introduction of cluster causal diagrams or C-DAGs promise to ease the task of diagram construction by allowing for the representation of some unknown or partially defined relationships. We evaluate the practical application of C-DAGs in simulated medical contexts. We estimate causal effects under varying sets of assumptions, determined by both causal diagrams and C-DAGs and compare our results. Our findings show empirically similar results, with little discrepancy between causal effect sizes or variance across experimental runs, although estimation and efficiency challenges remain to be explored.

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