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临床医生的因果推断。

Causal inference for clinicians.

机构信息

Department of Family Medicine and Community Health, University of Minnesota System, Minneapolis, Minnesota, USA.

Department of Epidemiology, Lady Davis Institute for Medical Research, Montreal, Quebec, Canada.

出版信息

BMJ Evid Based Med. 2019 Jun;24(3):109-112. doi: 10.1136/bmjebm-2018-111069. Epub 2019 Feb 14.

Abstract

Evidence-based medicine (EBM) calls on clinicians to incorporate the 'best available evidence' into clinical decision-making. For decisions regarding treatment, the best evidence is that which determines the causal effect of treatments on the clinical outcomes of interest. Unfortunately, research often provides evidence where associations are not due to cause-and-effect, but rather due to non-causal reasons. These non-causal associations may provide valid evidence for diagnosis or prognosis, but biased evidence for treatment effects. Causal inference aims to determine when we can infer that associations are or are not due to causal effects. Since recommending treatments that do not have beneficial causal effects will not improve health, causal inference can advance the practice of EBM. The purpose of this article is to familiarise clinicians with some of the concepts and terminology that are being used in the field of causal inference, including graphical diagrams known as 'causal directed acyclic graphs'. In order to demonstrate some of the links between causal inference methods and clinical treatment decision-making, we use a clinical vignette of assessing treatments to lower cardiovascular risk. As the field of causal inference advances, clinicians familiar with the methods and terminology will be able to improve their adherence to the principles of EBM by distinguishing causal effects of treatment from results due to non-causal associations that may be a source of bias.

摘要

循证医学(EBM)呼吁临床医生将“最佳现有证据”纳入临床决策。对于治疗决策,最佳证据是确定治疗对相关临床结果的因果效应的证据。不幸的是,研究经常提供的证据并非因果关系所致,而是由于非因果原因。这些非因果关系可能为诊断或预后提供有效的证据,但为治疗效果提供有偏差的证据。因果推断旨在确定我们何时可以推断出关联是还是不是由于因果效应所致。由于推荐没有有益因果效应的治疗方法不会改善健康状况,因此因果推断可以推进 EBM 的实践。本文的目的是使临床医生熟悉因果推断领域中使用的一些概念和术语,包括称为“因果有向无环图”的图形图表。为了展示因果推断方法和临床治疗决策之间的一些联系,我们使用评估降低心血管风险的治疗方法的临床案例来演示。随着因果推断领域的发展,熟悉方法和术语的临床医生将能够通过区分治疗的因果效应与可能导致偏差的非因果关联的结果来提高他们对 EBM 原则的遵守程度。

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