Wang Yi-Chun, Bulte Daniel, Brady Michael
Department of Engineering Science, Institute of Biomedical Engineering, University of Oxford, Oxford, United Kingdom.
Perspectum Ltd., Oxford, United Kingdom.
Front Bioinform. 2025 May 29;5:1574797. doi: 10.3389/fbinf.2025.1574797. eCollection 2025.
There are numerous treatment options available for patients with confirmed hepatocellular carcinoma (HCC). Guidelines such as Barcelona Clinic Liver Cancer (BCLC) support treatment decisions by way of a flow diagram that is organized around groups of patients. Though such guidelines continue to make a major contribution to standardization of treatment, in clinical reality, cases are often more nuanced than is captured in any flow diagram, even one as comprehensive as BCLC. A fundamental challenge for a clinician is to combine such a population-wide guideline with specific information about the individual patient. Bayesian networks (BNs) offer a way to "bridge this gap" and combine standardized care and precision medicine. They do this by enabling answers to detailed "what-if" questions from the clinician.
We use real-world data of HCC patients who received treatments between 2019 and 2020 to construct a BN to assess the potential treatment effect for cases that were treated in compliance with BCLC.
We report detailed scenarios for ten randomly selected cases and summarise the difference in survival time for each scenario. For each case, the counterfactual treatment scenarios are made based on whether or not the case is in compliance with BCLC guidelines, the type of treatment received and the waiting time to receive treatment.
We consider two cases with similar clinical characteristics (but received different treatments) and discuss whether or not they are treated in compliance to the guidelines resulting in better outcomes than the actual clinical decision. We include a detailed discussion about the assumptions made in constructing the BN and we highlight why such a BN can serve as an AI-based clinical decision support system particularly when there is need for further patient stratification.
对于确诊为肝细胞癌(HCC)的患者,有多种治疗选择。诸如巴塞罗那临床肝癌(BCLC)等指南通过围绕患者群体构建的流程图来支持治疗决策。尽管此类指南继续为治疗的标准化做出重大贡献,但在临床实际中,病例往往比任何流程图所涵盖的情况更为细微,即使是像BCLC这样全面的流程图。临床医生面临的一个根本挑战是将这种针对全体人群的指南与关于个体患者的具体信息相结合。贝叶斯网络(BNs)提供了一种“弥合这一差距”并将标准化护理与精准医学相结合的方法。它们通过使临床医生能够回答详细的“如果……会怎样”问题来做到这一点。
我们使用2019年至2020年期间接受治疗的HCC患者的真实世界数据来构建一个贝叶斯网络,以评估符合BCLC治疗的病例的潜在治疗效果。
我们报告了十个随机选择病例的详细情况,并总结了每种情况下生存时间的差异。对于每个病例,反事实治疗情况是根据该病例是否符合BCLC指南、接受的治疗类型以及接受治疗的等待时间来确定的。
我们考虑两个具有相似临床特征(但接受了不同治疗)的病例,并讨论它们是否按照指南进行治疗,从而产生比实际临床决策更好的结果。我们详细讨论了构建贝叶斯网络时所做的假设,并强调了为什么这样的贝叶斯网络可以作为基于人工智能的临床决策支持系统,特别是在需要进一步对患者进行分层时。