Digital Health Center, Hasso Plattner Institute, University of Potsdam, Germany.
German Guideline Program in Oncology, German Cancer Society, Berlin, Germany.
AMIA Annu Symp Proc. 2022 Feb 21;2021:237-246. eCollection 2021.
Clinical guidelines integrate latest evidence to support clinical decision-making. As new research findings are published at an increasing rate, it would be helpful to detect when such results disagree with current guideline recommendations. In this work, we describe a software system for the automatic identification of disagreement between clinical guidelines and published research. A critical feature of the system is the extraction and cross-lingual normalization of information through natural language processing. The initial version focuses on the detection of cancer treatments in clinical trial reports that are not addressed in oncology guidelines. We evaluate the relevance of trials retrieved by our system retrospectively by comparison with historic guideline updates and also prospectively through manual evaluation by guideline experts. The system improves precision over state-of-the-art literature research strategies while maintaining near-total recall. Detailed error analysis highlights challenges for fine-grained clinical information extraction, in particular when extracting population definitions for tumor-agnostic therapies.
临床指南整合了最新的证据来支持临床决策。随着新的研究结果以越来越快的速度发表,如果能够检测到这些结果与当前指南建议不一致,那将是有帮助的。在这项工作中,我们描述了一个用于自动识别临床指南和已发表研究之间不一致的软件系统。该系统的一个关键特征是通过自然语言处理提取和跨语言规范化信息。该系统的初始版本侧重于检测临床试验报告中的癌症治疗方法,这些方法在肿瘤学指南中并未涉及。我们通过与历史指南更新进行回顾性比较,以及通过指南专家进行前瞻性手动评估来评估我们系统检索到的试验的相关性。该系统在保持近乎完整召回率的同时,提高了精度,超过了最先进的文献研究策略。详细的错误分析突出了细粒度临床信息提取的挑战,特别是在提取无肿瘤治疗的人群定义时。