Institute of Health Policy, Management and Evaluation, University of Toronto, Toronto, ON, Canada.
Division of Cardiac Surgery, University of Toronto, Toronto, ON, Canada.
Eur J Cardiothorac Surg. 2024 Mar 29;65(4). doi: 10.1093/ejcts/ezae123.
Randomized controlled trials are the gold standard for evidence generation in medicine but are limited by their real-world generalizability, resource needs, shorter follow-up durations and inability to be conducted for all clinical questions. Decision analysis (DA) models may simulate trials and observational studies by using existing data and evidence- and expert-informed assumptions and extend analyses over longer time horizons, different study populations and specific scenarios, helping to translate population outcomes to patient-specific clinical and economic outcomes. Here, we present a scoping review and methodological primer on DA for cardiac surgery research.
A scoping review was performed using the PubMed/MEDLINE, EMBASE and Web of Science databases for cardiac surgery DA studies published until December 2021. Articles were summarized descriptively to quantify trends and ascertain methodological consistency.
A total of 184 articles were identified, among which Markov models (N = 92, 50.0%) were the most commonly used models. The most common outcomes were costs (N = 107, 58.2%), quality-adjusted life-years (N = 96, 52.2%) and incremental cost-effectiveness ratios (N = 89, 48.4%). Most (N = 165, 89.7%) articles applied sensitivity analyses, most frequently in the form of deterministic sensitivity analyses (N = 128, 69.6%). Reporting of guidelines to inform the model development and/or reporting was present in 22.3% of articles.
DA methods are increasing but remain limited and highly variable in cardiac surgery. A methodological primer is presented and may provide researchers with the foundation to start with or improve DA, as well as provide readers and reviewers with the fundamental concepts to review DA studies.
随机对照试验是医学领域产生证据的金标准,但受到其在真实世界中的推广性、资源需求、较短的随访时间以及无法针对所有临床问题进行的限制。决策分析(DA)模型可以通过使用现有数据和基于证据及专家意见的假设来模拟试验和观察性研究,并将分析扩展到更长的时间范围、不同的研究人群和特定场景,有助于将人群结果转化为患者特定的临床和经济结果。在这里,我们介绍了用于心脏外科研究的 DA 范围综述和方法学入门。
我们使用 PubMed/MEDLINE、EMBASE 和 Web of Science 数据库对截至 2021 年 12 月发表的心脏外科 DA 研究进行了范围综述。通过描述性总结来量化趋势并确定方法学的一致性。
共确定了 184 篇文章,其中 Markov 模型(N=92,50.0%)是最常用的模型。最常见的结果是成本(N=107,58.2%)、质量调整生命年(N=96,52.2%)和增量成本效益比(N=89,48.4%)。大多数(N=165,89.7%)文章都进行了敏感性分析,最常见的是确定性敏感性分析(N=128,69.6%)。有 22.3%的文章报告了指导方针,以告知模型的开发和/或报告。
DA 方法在心脏外科领域的应用正在增加,但仍然有限且高度可变。本文提出了一个方法学入门,为研究人员提供了开始或改进 DA 的基础,也为读者和审稿人提供了审查 DA 研究的基本概念。