From the National Center for Human Factors in Healthcare, MedStar Health, Washington, District of Columbia.
J Patient Saf. 2021 Dec 1;17(8):e834-e836. doi: 10.1097/PTS.0000000000000837.
Patient safety event (PSE) reports are a useful lens to understand hazards and patient safety risks in healthcare systems. However, patient safety officers and analysts in healthcare systems and safety organizations are challenged to make sense of the ever-increasing volume of PSE reports, including the free-text narratives. As a result, there is a growing emphasis on applying text mining and natural language processing (NLP) approaches to assist in the processing and understanding of these narratives. Although text mining and NLP in healthcare have advanced significantly over the past decades, the utility of the resulting models, ontologies, and algorithms to analyze PSE narratives are limited given the unique difference and challenges in content and language between PSE narratives and clinical documentation. To promote the application of text mining and NLP for PSE narratives, these unique challenges must be addressed. Improving data access, developing NLP resources to practically use contributing factor taxonomies, and developing and adopting shared specifications for interoperability will help create an infrastructure and environment that unlocks the collaborative potential between patient safety, research, and machine learning communities, in the development of reproducible and generalizable methods and models to better understand and improve patient safety and patient care.
患者安全事件报告是了解医疗系统中危害和患者安全风险的有用工具。然而,医疗系统中的患者安全官员和分析人员以及安全组织在理解不断增加的患者安全事件报告数量方面面临挑战,包括自由文本叙述。因此,越来越强调应用文本挖掘和自然语言处理 (NLP) 方法来协助处理和理解这些叙述。尽管过去几十年来医疗保健领域的文本挖掘和 NLP 取得了重大进展,但鉴于患者安全事件报告叙述内容和语言的独特差异和挑战,这些叙述中产生的模型、本体和算法在分析患者安全事件报告叙述方面的实用性有限。为了促进文本挖掘和 NLP 在患者安全事件报告叙述中的应用,必须解决这些独特的挑战。改善数据访问、开发实用的 NLP 资源以利用贡献因素分类法、以及开发和采用共享的互操作性规范将有助于创建一个基础设施和环境,释放患者安全、研究和机器学习社区之间的协作潜力,从而开发可重现和可推广的方法和模型,以更好地理解和改善患者安全和患者护理。