Department of Industrial and Systems Engineering, Khalifa University of Science and Technology, Abu Dhabi, United Arab Emirates.
Department of Industrial and Systems Engineering, Khalifa University of Science and Technology, Abu Dhabi, United Arab Emirates.
Artif Intell Med. 2023 Jul;141:102560. doi: 10.1016/j.artmed.2023.102560. Epub 2023 Apr 25.
Hospital-acquired pressure injuries (HAPIs) constitute a significant challenge harming thousands of people worldwide yearly. While various tools and methods are used to identify pressure injuries, artificial intelligence (AI) and decision support systems (DSS) can help to reduce HAPIs risks by proactively identifying patients at risk and preventing them before harming patients.
This paper comprehensively reviews AI and DSS applications for HAPIs prediction using Electronic Health Records (EHR), including a systematic literature review and bibliometric analysis.
A systematic literature review was conducted through PRISMA and bibliometric analysis. In February 2023, the search was performed using four electronic databases: SCOPIS, PubMed, EBSCO, and PMCID. Articles on using AI and DSS in the management of PIs were included.
The search approach yielded 319 articles, 39 of which have been included and classified into 27 AI-related and 12 DSS-related categories. The years of publication varied from 2006 to 2023, with 40% of the studies taking place in the US. Most studies focused on using AI algorithms or DSS for HAPIs prediction in inpatient units using various types of data such as electronic health records, PI assessment scales, and expert knowledge-based and environmental data to identify the risk factors associated with HAPIs development.
There is insufficient evidence in the existing literature concerning the real impact of AI or DSS on making decisions for HAPIs treatment or prevention. Most studies reviewed are solely hypothetical and retrospective prediction models, with no actual application in healthcare settings. The accuracy rates, prediction results, and intervention procedures suggested based on the prediction, on the other hand, should inspire researchers to combine both approaches with larger-scale data to bring a new venue for HAPIs prevention and to investigate and adopt the suggested solutions to the existing gaps in AI and DSS prediction methods.
医院获得性压疮(HAPI)每年在全球范围内给数千人造成严重危害,是一个重大挑战。虽然有各种工具和方法可用于识别压疮,但人工智能(AI)和决策支持系统(DSS)可以通过主动识别有风险的患者并在伤害患者之前进行预防,从而帮助降低 HAPI 风险。
本文全面综述了使用电子健康记录(EHR)预测 HAPI 的 AI 和 DSS 应用,包括系统文献综述和文献计量分析。
通过 PRISMA 进行系统文献综述和文献计量分析。2023 年 2 月,使用 SCOPIS、PubMed、EBSCO 和 PMCID 四个电子数据库进行了搜索。纳入使用 AI 和 DSS 管理 PI 的文章。
搜索方法产生了 319 篇文章,其中 39 篇被纳入并分为 27 个 AI 相关和 12 个 DSS 相关类别。发表年份从 2006 年到 2023 年不等,40%的研究在美国进行。大多数研究侧重于使用 AI 算法或 DSS 在使用电子健康记录、PI 评估量表以及基于专家知识和环境数据等各种类型的数据的住院病房中预测 HAPI,以识别与 HAPI 发展相关的风险因素。
现有文献中关于 AI 或 DSS 对 HAPI 治疗或预防决策的实际影响的证据不足。大多数综述的研究仅为假设性和回顾性预测模型,在医疗保健环境中没有实际应用。另一方面,基于预测提出的准确率、预测结果和干预程序应激励研究人员将这两种方法与更大规模的数据相结合,为 HAPI 预防开辟新途径,并研究和采用 AI 和 DSS 预测方法中现有差距的建议解决方案。