Health Information Research Unit, Department of Health Research Methods, Evidence, and Impact, McMaster University, Hamilton, ON, Canada.
Department of Computing and Data Science, Birmingham City University, Birmingham, United Kingdom.
J Med Internet Res. 2024 Jul 31;26:e58764. doi: 10.2196/58764.
Evidence-based medicine (EBM) emerged from McMaster University in the 1980-1990s, which emphasizes the integration of the best research evidence with clinical expertise and patient values. The Health Information Research Unit (HiRU) was created at McMaster University in 1985 to support EBM. Early on, digital health informatics took the form of teaching clinicians how to search MEDLINE with modems and phone lines. Searching and retrieval of published articles were transformed as electronic platforms provided greater access to clinically relevant studies, systematic reviews, and clinical practice guidelines, with PubMed playing a pivotal role. In the early 2000s, the HiRU introduced Clinical Queries-validated search filters derived from the curated, gold-standard, human-appraised Hedges dataset-to enhance the precision of searches, allowing clinicians to hone their queries based on study design, population, and outcomes. Currently, almost 1 million articles are added to PubMed annually. To filter through this volume of heterogenous publications for clinically important articles, the HiRU team and other researchers have been applying classical machine learning, deep learning, and, increasingly, large language models (LLMs). These approaches are built upon the foundation of gold-standard annotated datasets and humans in the loop for active machine learning. In this viewpoint, we explore the evolution of health informatics in supporting evidence search and retrieval processes over the past 25+ years within the HiRU, including the evolving roles of LLMs and responsible artificial intelligence, as we continue to facilitate the dissemination of knowledge, enabling clinicians to integrate the best available evidence into their clinical practice.
循证医学(EBM)于 20 世纪 80 年代至 90 年代起源于麦克马斯特大学,它强调将最佳研究证据与临床专业知识和患者价值观相结合。麦克马斯特大学的健康信息研究单位(HiRU)于 1985 年成立,以支持循证医学。早期,数字健康信息学的形式是教授临床医生如何使用调制解调器和电话线搜索 MEDLINE。随着电子平台提供了更多获取临床相关研究、系统评价和临床实践指南的途径,搜索和检索已发布文章的方式发生了转变,其中 PubMed 发挥了关键作用。在 21 世纪初,HiRU 引入了经过验证的临床查询搜索过滤器,这些过滤器源自经过精心策划的、黄金标准的、经过人工评估的 Hedges 数据集,以提高搜索的准确性,使临床医生能够根据研究设计、人群和结果来调整查询。目前,每年有近 100 万篇文章添加到 PubMed 中。为了在这大量异质出版物中筛选出具有临床重要性的文章,HiRU 团队和其他研究人员一直在应用经典机器学习、深度学习,并且越来越多地应用大型语言模型(LLM)。这些方法建立在黄金标准注释数据集和人机交互的基础上,用于主动机器学习。在这篇观点文章中,我们探讨了过去 25 年以上 HiRU 中支持证据搜索和检索过程的健康信息学的演变,包括 LLM 和负责任的人工智能的不断发展的角色,因为我们继续促进知识的传播,使临床医生能够将最佳可用证据整合到他们的临床实践中。