Guoshu Jia , Lixia Fu , Likun Wang , Dongning Yao , Yimin Cui
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引用次数: 0
Abstract
Cell therapy, a burgeoning therapeutic strategy, necessitates a scientific regulatory framework but faces challenges in risk-based regulation due to the lack of a global consensus on risk classification. This study applies Bayesian network analysis to compare and evaluate the risk classification strategies for cellular products proposed by the Food and Drug Administration (FDA), Ministry of Health, Labour and Welfare (MHLW), and World Health Organization (WHO), using real-world data to validate the models. The appropriateness of key risk factors is assessed within the three regulatory frameworks, along with their implications for clinical safety. The results indicate several directions for refining risk classification approaches. Additionally, a substudy focuses on a specific type of cell and gene therapy (CGT), chimeric antigen receptor (CAR) T cell therapy. It underscores the importance of considering CAR targets, tumor types, and costimulatory domains when assessing the safety risks of CAR T cell products. Overall, there is currently a lack of a regulatory framework based on real-world data for cellular products and a lack of risk-based classification review methods. This study aims to improve the regulatory system for cellular products, emphasizing risk-based classification. Furthermore, the study advocates for leveraging machine learning in regulatory science to enhance the assessment of cellular product safety, illustrating the role of Bayesian networks in aiding regulatory decision-making for the risk classification of cellular products.
细胞疗法作为一种新兴的治疗策略,需要一个科学的监管框架,但由于全球对风险分类缺乏共识,基于风险的监管面临挑战。本研究运用贝叶斯网络分析法比较和评估了美国食品药品管理局(FDA)、日本厚生劳动省(MHLW)和世界卫生组织(WHO)提出的细胞产品风险分类策略,并使用真实世界的数据对模型进行了验证。在三个监管框架内评估了关键风险因素的适当性及其对临床安全性的影响。研究结果为完善风险分类方法指明了几个方向。此外,一项子研究重点关注一种特殊类型的细胞和基因疗法(CGT),即嵌合抗原受体(CAR)T 细胞疗法。它强调了在评估 CAR T 细胞产品的安全风险时考虑 CAR 靶点、肿瘤类型和成本调控域的重要性。总体而言,目前缺乏基于真实世界数据的细胞产品监管框架,也缺乏基于风险的分类审查方法。本研究旨在改进细胞产品的监管体系,强调基于风险的分类。此外,本研究还提倡在监管科学中利用机器学习来加强对细胞产品安全性的评估,并说明了贝叶斯网络在细胞产品风险分类监管决策中的辅助作用。
期刊介绍:
Artificial Intelligence in Medicine publishes original articles from a wide variety of interdisciplinary perspectives concerning the theory and practice of artificial intelligence (AI) in medicine, medically-oriented human biology, and health care.
Artificial intelligence in medicine may be characterized as the scientific discipline pertaining to research studies, projects, and applications that aim at supporting decision-based medical tasks through knowledge- and/or data-intensive computer-based solutions that ultimately support and improve the performance of a human care provider.