Bayesian Statistics: A Narrative Review on Application in Inflammatory Bowel Diseases.

IF 4.3 3区 医学 Q1 GASTROENTEROLOGY & HEPATOLOGY
Houda Camara, Eric Vicaut, Bénédicte Caron, Sailish Honap, Cédric Baumann, Laurent Peyrin-Biroulet
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引用次数: 0

Abstract

Inflammatory bowel diseases (IBD) are highly heterogeneous conditions, varying in clinical manifestations, disease localization, progression, and response to treatment. Failing to account for this heterogeneity can substantially diminish the power of clinical trials and reduce the likelihood of detecting a true effect. In this review, we explore the transformative potential of Bayesian statistics in IBD clinical research, highlighting its ability to provide deeper insights, refine trial design, and facilitate more informed medical decision-making. We explain how Bayesian methods are best incorporated into innovative IBD clinical trial designs, such as single-arm trials utilizing historical data, master protocols, and adaptive trials. In adaptive designs, Bayesian techniques enable dynamic adjustments to sample sizes based on interim data, helping to maintain adequate power while optimizing resource allocation. For network meta-analysis, Bayesian statistics enhance the estimation of treatment effects in complex or sparse data situations by integrating prior knowledge and effectively managing hierarchical models. These methods are also applied in pharmacokinetic decision-making to address inter-patient variability in IBD, offering more accurate predictions of drug concentrations and target attainment at the outset of treatment. A checklist is added for non-specialist readers on how to approach reading an article that employs Bayesian methods, as part of a Users' Guide to the Literature.

贝叶斯统计在炎症性肠病中的应用述评
炎症性肠病(IBD)是一种高度异质性的疾病,其临床表现、疾病定位、进展和对治疗的反应各不相同。不考虑这种异质性会大大削弱临床试验的效力,降低发现真实效果的可能性。在这篇综述中,我们探讨了贝叶斯统计在IBD临床研究中的变革潜力,强调了它提供更深入的见解、改进试验设计和促进更明智的医疗决策的能力。我们解释了贝叶斯方法如何最好地结合到创新的IBD临床试验设计中,例如利用历史数据的单臂试验、主方案和适应性试验。在自适应设计中,贝叶斯技术可以根据临时数据动态调整样本量,有助于在优化资源分配的同时保持足够的功率。对于网络元分析,贝叶斯统计通过整合先验知识和有效管理层次模型,增强了对复杂或稀疏数据情况下处理效果的估计。这些方法也应用于药代动力学决策,以解决IBD患者间的变异性,在治疗开始时提供更准确的药物浓度和目标实现预测。作为文献用户指南的一部分,为非专业读者添加了关于如何接近阅读使用贝叶斯方法的文章的检查表。
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来源期刊
Inflammatory Bowel Diseases
Inflammatory Bowel Diseases 医学-胃肠肝病学
CiteScore
9.70
自引率
6.10%
发文量
462
审稿时长
1 months
期刊介绍: Inflammatory Bowel Diseases® supports the mission of the Crohn''s & Colitis Foundation by bringing the most impactful and cutting edge clinical topics and research findings related to inflammatory bowel diseases to clinicians and researchers working in IBD and related fields. The Journal is committed to publishing on innovative topics that influence the future of clinical care, treatment, and research.
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