Heuts Samuel, Kawczynski Michal J, Sayed Ahmed, Urbut Sarah M, Albuquerque Arthur M, Mandrola John M, Kaul Sanjay, Harrell Frank E, Gabrio Andrea, Brophy James M
Department of Cardiothoracic Surgery, Maastricht University Medical Centre, Maastricht, the Netherlands; Cardiovascular Research Institute Maastricht, Maastricht University, Maastricht, the Netherlands.
Department of Cardiothoracic Surgery, Maastricht University Medical Centre, Maastricht, the Netherlands; Cardiovascular Research Institute Maastricht, Maastricht University, Maastricht, the Netherlands.
Can J Cardiol. 2025 Jan;41(1):30-44. doi: 10.1016/j.cjca.2024.11.002. Epub 2024 Nov 7.
The Bayesian analytical framework is clinically intuitive, characterised by the incorporation of previous evidence into the analysis and allowing an estimation of treatment effects and their associated uncertainties. The application of Bayesian statistical inference is not new to the cardiovascular field, as illustrated by various recent randomised trials that have applied a primary Bayesian analysis. Given the guideline-shaping character of trials, a thorough understanding of the concepts and technical details of Bayesian statistical methodology is of utmost importance to the modern practicing cardiovascular physician. This review presents a step-by-step guide to interpreting and performing a Bayesian (re)analysis of cardiovascular clinical trials, while highlighting the main advantages of Bayesian inference for the clinical reader. After an introduction of the concepts of frequentist and Bayesian statistical inference and reasons to apply Bayesian methods, key steps in performing a Bayesian analysis are presented, including verification of the clinical appropriateness of the research question, quality and completeness of the trial design, and adequate elicitation of the prior (ie, one's belief toward a certain treatment before the current evidence becomes available); identification of the likelihood; and their combination into a posterior distribution. Examination of this posterior distribution offers not only the possibility of determining the probability of treatment superiority, but also the probability of exceeding any chosen minimal clinically important difference. Multiple priors should be transparently prespecified, limiting post hoc manipulations. Using this guide, 3 cardiovascular randomised controlled trials are reanalysed, demonstrating the clarity and versatility of Bayesian inference.
贝叶斯分析框架在临床上直观易懂,其特点是将先前的证据纳入分析,并能够估计治疗效果及其相关的不确定性。贝叶斯统计推断在心血管领域的应用并不新鲜,最近各种应用主要贝叶斯分析的随机试验就说明了这一点。鉴于试验对指南制定的重要性,对于现代心血管临床医生来说,深入理解贝叶斯统计方法的概念和技术细节至关重要。本综述提供了一个逐步指南,用于解释和进行心血管临床试验的贝叶斯(再)分析,同时向临床读者强调贝叶斯推断的主要优势。在介绍了频率主义和贝叶斯统计推断的概念以及应用贝叶斯方法的原因之后,介绍了进行贝叶斯分析的关键步骤,包括验证研究问题的临床适用性、试验设计的质量和完整性,以及充分引出先验信息(即,在当前证据可用之前对某种治疗的信念);识别似然性;以及将它们组合成后验分布。对这种后验分布的检验不仅提供了确定治疗优越性概率的可能性,还提供了超过任何选定的最小临床重要差异的概率。应预先透明地指定多个先验信息,限制事后操作。使用本指南,对3项心血管随机对照试验进行了再分析,证明了贝叶斯推断的清晰性和通用性。