Isabella Catharina Wiest, Mamatha Bhat, Jan Clusmann, Carolin V. Schneider, Xiaofeng Jiang, Jakob Nikolas Kather
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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.</p>","PeriodicalId":18793,"journal":{"name":"Nature Reviews Gastroenterology &Hepatology","volume":"296 1","pages":""},"PeriodicalIF":51.0000,"publicationDate":"2025-08-22","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":"{\"title\":\"Large language models for clinical decision support in gastroenterology and hepatology\",\"authors\":\"Isabella Catharina Wiest, Mamatha Bhat, Jan Clusmann, Carolin V. Schneider, Xiaofeng Jiang, Jakob Nikolas Kather\",\"doi\":\"10.1038/s41575-025-01108-1\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"<p>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. 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Large language models for clinical decision support in gastroenterology and hepatology
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.
期刊介绍:
Nature Reviews Gastroenterology & Hepatology aims to serve as the leading resource for Reviews and commentaries within the scientific and medical communities it caters to. The journal strives to maintain authority, accessibility, and clarity in its published articles, which are complemented by easily understandable figures, tables, and other display items. Dedicated to providing exceptional service to authors, referees, and readers, the editorial team works diligently to maximize the usefulness and impact of each publication.
The journal encompasses a wide range of content types, including Research Highlights, News & Views, Comments, Reviews, Perspectives, and Consensus Statements, all pertinent to gastroenterologists and hepatologists. With its broad scope, Nature Reviews Gastroenterology & Hepatology ensures that its articles reach a diverse audience, aiming for the widest possible dissemination of valuable information.
Nature Reviews Gastroenterology & Hepatology is part of the Nature Reviews portfolio of journals.