Department of Epidemiology and Biostatistics, Western University, London, Ontario, Canada; Centre for Medical Evidence Decision Integrity Clinical Impact (MEDICI), Department of Anesthesia & Perioperative Medicine, Western University, London, Ontario, Canada.
Department of Epidemiology and Biostatistics, Western University, London, Ontario, Canada.
J Clin Epidemiol. 2024 Nov;175:111532. doi: 10.1016/j.jclinepi.2024.111532. Epub 2024 Sep 18.
The current Grading of Recommendations, Assessment, Development and Evaluation (GRADE) system instructs appraisers to evaluate whether individual observational studies have sufficiently adjusted for confounding. However, it does not provide an explicit, transparent, or reproducible method for doing so. This article explores how implementing causal graphs into the GRADE framework can help appraisers and end-users of GRADE products to evaluate the adequacy of confounding control from observational studies.
Using modern epidemiological theory, we propose a system for incorporating causal diagrams into the GRADE process to assess confounding control.
Integrating causal graphs into the GRADE framework enables appraisers to provide a theoretically grounded rationale for their evaluations of confounding control in observational studies. Additionally, the inclusion of causal graphs in GRADE may assist appraisers in demonstrating evidence for their appraisals in other domains of quality of evidence beyond confounding control. To support practical application, a worked example is included in the supplemental material to guide users through this approach.
GRADE calls for the explicit and transparent appraisal of evidence in the process of evidence synthesis. Incorporating causal diagrams into the evaluation of confounding control in observational studies aligns with the core principles of the GRADE framework, providing a clear, theory-based method for the adequacy of confounding control in observational studies.
目前的推荐分级评估、制定与评价(GRADE)系统指导评估者评估个体观察性研究是否充分调整了混杂因素。然而,它没有提供一种明确、透明或可重现的方法来做到这一点。本文探讨了将因果图纳入 GRADE 框架如何帮助 GRADE 产品的评估者和最终用户评估来自观察性研究的混杂控制的充分性。
利用现代流行病学理论,我们提出了一个将因果图纳入 GRADE 过程以评估混杂控制的系统。
将因果图整合到 GRADE 框架中,使评估者能够为他们对观察性研究中混杂控制的评估提供一个基于理论的理由。此外,在 GRADE 中包含因果图可能有助于评估者在混杂控制之外的证据质量的其他领域展示他们评估的证据。为了支持实际应用,在补充材料中提供了一个实例来说明如何使用这种方法。
GRADE 呼吁在证据综合过程中明确和透明地评估证据。将因果图纳入观察性研究中混杂控制的评估与 GRADE 框架的核心原则一致,为观察性研究中混杂控制的充分性提供了一种清晰的、基于理论的方法。