论文标题

在假设干预下实现预测的因果方法的范围审查

A scoping review of causal methods enabling predictions under hypothetical interventions

论文作者

Lin, Lijing, Sperrin, Matthew, Jenkins, David A., Martin, Glen P., Peek, Niels

论文摘要

背景和目的:通常开发预测模型的方法意味着参数或预测都不应因因果解释。但是,当使用预测模型来支持决策时,通常需要在假设干预措施下预测结果。我们旨在确定开发和验证预测模型的已发表方法,以实现假设干预措施下的结果风险估计,利用因果推断:它们的主要方法论方法,潜在的假设,有针对性的估计以及潜在的陷阱以及使用方法和未解决方法的方法挑战。 方法:我们系统地审查了2019年12月发布的文献,考虑了健康领域中使用因果考虑的论文,以使预测模型能够在假设的干预措施下用于预测。 结果:我们通过数据库搜索确定了4919篇论文,并通过手动搜索从统计和机器学习文献中选择了13篇论文,其中13篇论文被选为包含。来自观察数据的因果推断的大多数鉴定方法都是基于边缘结构模型和G估计的。 结论:存在两种广泛的方法论方法,用于在假设的干预下预测临床预测模型:1)从观察性研究中得出的富集预测模型,这些模型具有临床试验和荟萃分析的估计因果关系; 2)直接从观察数据中估算预测模型和因果效应。这些方法需要扩展到动态治疗方案,并考虑多种干预措施以操作临床决策支持系统。验证“因果预测模型”的技术仍处于起步阶段。

Background and Aims: The methods with which prediction models are usually developed mean that neither the parameters nor the predictions should be interpreted causally. However, when prediction models are used to support decision making, there is often a need for predicting outcomes under hypothetical interventions. We aimed to identify published methods for developing and validating prediction models that enable risk estimation of outcomes under hypothetical interventions, utilizing causal inference: their main methodological approaches, underlying assumptions, targeted estimands, and potential pitfalls and challenges with using the method, and unresolved methodological challenges. Methods: We systematically reviewed literature published by December 2019, considering papers in the health domain that used causal considerations to enable prediction models to be used for predictions under hypothetical interventions. Results: We identified 4919 papers through database searches and a further 115 papers through manual searches, of which 13 were selected for inclusion, from both the statistical and the machine learning literature. Most of the identified methods for causal inference from observational data were based on marginal structural models and g-estimation. Conclusions: There exist two broad methodological approaches for allowing prediction under hypothetical intervention into clinical prediction models: 1) enriching prediction models derived from observational studies with estimated causal effects from clinical trials and meta-analyses; and 2) estimating prediction models and causal effects directly from observational data. These methods require extending to dynamic treatment regimes, and consideration of multiple interventions to operationalise a clinical decision support system. Techniques for validating 'causal prediction models' are still in their infancy.

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