Wiest Isabella Catharina, Bhat Mamatha, Clusmann Jan, Schneider Carolin V, Jiang Xiaofeng, Kather Jakob Nikolas
Else Kroener Fresenius Center for Digital Health, Faculty of Medicine and University Hospital Carl Gustav Carus, TUD Dresden University of Technology, Dresden, Germany.
Department of Medicine II, Medical Faculty Mannheim, Heidelberg University, Mannheim, Germany.
Nat Rev Gastroenterol Hepatol. 2025 Aug 22. doi: 10.1038/s41575-025-01108-1.
Clinical decision making in gastroenterology and hepatology has become increasingly complex and challenging for physicians. This growing complexity can be addressed by computational tools that support clinical decisions. Although numerous clinical decision support systems (CDSS) have emerged, they have faced difficulties with real-world performance and generalizability, resulting in limited clinical adoption. Generative artificial intelligence (AI), particularly large language models (LLMs), are introducing new possibilities for CDSS by offering more flexible and adaptable support that better reflects complex clinical scenarios. LLMs can process unstructured text, including patient data and medical guidelines, and integrate various information sources with high accuracy, especially when augmented with retrieval-augmented generation. Thus, LLMs can provide dynamic, context-specific support by generating personalized treatment recommendations, identifying potential complications based on patient history, and enabling natural language interactions with health-care providers. However, important challenges persist, particularly regarding biases, hallucinations, interoperability barriers, and proper training of health-care providers. We examine the parallel evolution of the complexity in clinical management in gastroenterology and hepatology, and the technical developments leading to current generative AI models. We discuss how these advances are converging to create effective CDSS, providing a conceptual basis for further development and clinical adoption of these systems.
对于胃肠病学和肝病学领域的医生而言,临床决策变得日益复杂且具有挑战性。这种日益增长的复杂性可以通过支持临床决策的计算工具来解决。尽管已经出现了众多临床决策支持系统(CDSS),但它们在实际应用性能和通用性方面面临困难,导致临床应用受限。生成式人工智能(AI),特别是大语言模型(LLM),通过提供更灵活、更具适应性的支持,为CDSS带来了新的可能性,这种支持能更好地反映复杂的临床场景。大语言模型可以处理非结构化文本,包括患者数据和医学指南,并高精度整合各种信息源,特别是在通过检索增强生成进行增强时。因此,大语言模型可以通过生成个性化治疗建议、根据患者病史识别潜在并发症以及实现与医疗服务提供者的自然语言交互,提供动态的、针对具体情境的支持。然而,重要的挑战依然存在,特别是在偏差、幻觉、互操作性障碍以及医疗服务提供者的适当培训方面。我们研究了胃肠病学和肝病学临床管理复杂性的平行演变,以及导致当前生成式AI模型的技术发展。我们讨论了这些进展如何汇聚以创建有效的CDSS,为这些系统的进一步发展和临床应用提供概念基础。