从观测数据中得出客观的因果预测。

IF 5.7 2区 医学 Q1 TOXICOLOGY
Louis Anthony Cox
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引用次数: 0

摘要

最近许多关于公共卫生风险评估的文章都指出,从观测数据中得出的因果结论必须依赖于本质上无法检验的假设。他们声称,这些假设最终只能由知情的人类判断来评估。我们称这种方法为观察结果因果解释的主观方法。它的理论和概念基础是一种潜在结果因果模型,其中的反事实结果是无法观察到的。这种方法有可能使决策者和公众失去传统客观科学的主要优势,因为传统客观科学通过可检验的因果模型和干预假设来进行审查和独立验证。我们引入了另一种客观方法,对观察数据中的暴露-反应关系进行因果分析。这种方法设计得更加客观,具体而言,它可以独立验证(或反驳),并以数据为导向,不需要固有的不可检验的假设。这种方法使用可经验检验的干预因果模型,特别是因果贝叶斯网络(CBN),而不是不可检验的潜在结果模型。它可以通过对多项研究进行不变因果预测(ICP)测试,对因果关系进行实证验证。我们解释了如何使用 CBN 和个体条件期望 (ICE) 图来量化暴露变化对健康风险的影响,同时考虑到现实的复杂性,如未完全控制的混杂因素、缺失数据和测量误差。通过确保所有因果假设都是明确的、可实证检验的,我们的框架可以帮助提高健康风险评估中因果推断的可靠性和透明度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Objective causal predictions from observational data.

Many recent articles in public health risk assessment have stated that causal conclusions drawn from observational data must rely on inherently untestable assumptions. They claim that such assumptions ultimately can only be evaluated by informed human judgments. We call this the subjective approach to causal interpretation of observational results. Its theoretical and conceptual foundation is a potential outcomes model of causation in which counterfactual outcomes cannot be observed. It risks depriving decision-makers and the public of the key benefits of traditional objective science, which invites scrutiny and independent verification through testable causal models and interventional hypotheses. We introduce an alternative objective approach to causal analysis of exposure-response relationships in observational data. This is designed to be more objective in the specific sense that it is independently verifiable (or refutable) and data-driven, requiring no inherently untestable assumptions. This approach uses empirically testable interventional causal models, specifically causal Bayesian networks (CBNs), instead of untestable potential outcomes models. It enables empirical validation of causal claims through Invariant Causal Prediction (ICP) tests across multiple studies. We explain how to use CBNs and individual conditional expectation (ICE) plots to quantify the effects on health risks of changing exposures while taking into account realistic complexities such as imperfectly controlled confounding, missing data, and measurement error. By ensuring that all causal assumptions are explicit and empirically testable, our framework may help to improve the reliability and transparency of causal inferences in health risk assessments.

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来源期刊
CiteScore
9.50
自引率
1.70%
发文量
29
期刊介绍: Critical Reviews in Toxicology provides up-to-date, objective analyses of topics related to the mechanisms of action, responses, and assessment of health risks due to toxicant exposure. The journal publishes critical, comprehensive reviews of research findings in toxicology and the application of toxicological information in assessing human health hazards and risks. Toxicants of concern include commodity and specialty chemicals such as formaldehyde, acrylonitrile, and pesticides; pharmaceutical agents of all types; consumer products such as macronutrients and food additives; environmental agents such as ambient ozone; and occupational exposures such as asbestos and benzene.
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