Ferrara Michela, Bertozzi Giuseppe, Di Fazio Nicola, Aquila Isabella, Di Fazio Aldo, Maiese Aniello, Volonnino Gianpietro, Frati Paola, La Russa Raffaele
Department of Anatomical, Histological, Forensic and Orthopaedic Sciences, Sapienza University of Rome, 00161 Rome, Italy.
Complex Intercompany Structure of Forensic Medicine, 85100 Potenza, Italy.
Healthcare (Basel). 2024 Feb 27;12(5):549. doi: 10.3390/healthcare12050549.
Healthcare systems represent complex organizations within which multiple factors (physical environment, human factor, technological devices, quality of care) interconnect to form a dense network whose imbalance is potentially able to compromise patient safety. In this scenario, the need for hospitals to expand reactive and proactive clinical risk management programs is easily understood, and artificial intelligence fits well in this context. This systematic review aims to investigate the state of the art regarding the impact of AI on clinical risk management processes. To simplify the analysis of the review outcomes and to motivate future standardized comparisons with any subsequent studies, the findings of the present review will be grouped according to the possibility of applying AI in the prevention of the different incident type groups as defined by the ICPS.
On 3 November 2023, a systematic review of the literature according to the Preferred Reporting Items for Systematic Reviews and Meta-Analyses (PRISMA) guidelines was carried out using the SCOPUS and Medline (via PubMed) databases. A total of 297 articles were identified. After the selection process, 36 articles were included in the present systematic review.
The studies included in this review allowed for the identification of three main "incident type" domains: clinical process, healthcare-associated infection, and medication. Another relevant application of AI in clinical risk management concerns the topic of incident reporting.
This review highlighted that AI can be applied transversely in various clinical contexts to enhance patient safety and facilitate the identification of errors. It appears to be a promising tool to improve clinical risk management, although its use requires human supervision and cannot completely replace human skills. To facilitate the analysis of the present review outcome and to enable comparison with future systematic reviews, it was deemed useful to refer to a pre-existing taxonomy for the identification of adverse events. However, the results of the present study highlighted the usefulness of AI not only for risk prevention in clinical practice, but also in improving the use of an essential risk identification tool, which is incident reporting. For this reason, the taxonomy of the areas of application of AI to clinical risk processes should include an additional class relating to risk identification and analysis tools. For this purpose, it was considered convenient to use ICPS classification.
医疗保健系统是复杂的组织,其中多种因素(物理环境、人为因素、技术设备、护理质量)相互关联,形成一个密集的网络,其失衡可能会危及患者安全。在这种情况下,医院扩大反应性和前瞻性临床风险管理计划的必要性很容易理解,而人工智能非常适合这种背景。本系统评价旨在调查人工智能对临床风险管理流程影响的研究现状。为了简化对评价结果的分析,并推动未来与任何后续研究进行标准化比较,本评价的结果将根据人工智能应用于预防国际患者安全分类(ICPS)所定义的不同事件类型组的可能性进行分组。
于2023年11月3日,根据系统评价和Meta分析的首选报告项目(PRISMA)指南,使用SCOPUS和Medline(通过PubMed)数据库对文献进行系统评价。共识别出297篇文章。经过筛选过程,36篇文章被纳入本系统评价。
本评价纳入的研究确定了三个主要的“事件类型”领域:临床过程、医疗相关感染和用药。人工智能在临床风险管理中的另一个相关应用涉及事件报告主题。
本评价强调,人工智能可以横向应用于各种临床环境,以提高患者安全并促进错误识别。它似乎是改善临床风险管理的一个有前途的工具,尽管其使用需要人工监督,且不能完全取代人类技能。为了便于分析本评价结果,并能够与未来的系统评价进行比较,参考现有的不良事件识别分类法被认为是有用的。然而,本研究结果强调了人工智能不仅在临床实践中预防风险方面有用,而且在改进使用一种基本的风险识别工具即事件报告方面也有用。因此,人工智能在临床风险流程中的应用领域分类法应包括一个与风险识别和分析工具相关的额外类别。为此,使用ICPS分类被认为很方便。