德国的
文档
癌症
医学
数据质量
医疗保健
计算机科学
医疗急救
数据科学
运营管理
地理
内科学
工程类
政治学
公制(单位)
考古
法学
程序设计语言
作者
Yongli Mou,J. Lehmkuhl,Nicolas Sauerbrunn,Anja Köchel,Jens Panse,Daniel Truh,Sulayman K. Sowe,Tim H. Brümmendorf,Stefan Decker
摘要
With cancer being a leading cause of death globally, epidemiological and clinical cancer registration is paramount for enhancing oncological care and facilitating scientific research. However, the heterogeneous landscape of medical data presents significant challenges to the current manual process of tumor documentation. This paper explores the potential of Large Language Models (LLMs) for transforming unstructured medical reports into the structured format mandated by the German Basic Oncology Dataset. Our findings indicate that integrating LLMs into existing hospital data management systems or cancer registries can significantly enhance the quality and completeness of cancer data collection - a vital component for diagnosing and treating cancer and improving the effectiveness and benefits of therapies. This work contributes to the broader discussion on the potential of artificial intelligence or LLMs to revolutionize medical data processing and reporting in general and cancer care in particular.
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