The role of artificial intelligence for the application of integrating electronic health records and patient-generated data in clinical decision support.

Jiancheng Ye, Donna Woods, Neil Jordan, Justin Starren
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Abstract

This narrative review aims to identify and understand the role of artificial intelligence in the application of integrated electronic health records (EHRs) and patient-generated health data (PGHD) in clinical decision support. We focused on integrated data that combined PGHD and EHR data, and we investigated the role of artificial intelligence (AI) in the application. We used the Preferred Reporting Items for Systematic Reviews and Meta-Analyses (PRISMA) guidelines to search articles in six databases: PubMed, Embase, Web of Science, Scopus, ACM Digital Library, and IEEE Computer Society Digital Library. In addition, we also synthesized seminal sources, including other systematic reviews, reports, and white papers, to inform the context, history, and development of this field. Twenty-six publications met the review criteria after screening. The EHR-integrated PGHD introduces benefits to health care, including empowering patients and families to engage via shared decision-making, improving the patient-provider relationship, and reducing the time and cost of clinical visits. AI's roles include cleaning and management of heterogeneous datasets, assisting in identifying dynamic patterns to improve clinical care processes, and providing more sophisticated algorithms to better predict outcomes and propose precise recommendations based on the integrated data. Challenges mainly stem from the large volume of integrated data, data standards, data exchange and interoperability, security and privacy, interpretation, and meaningful use. The use of PGHD in health care is at a promising stage but needs further work for widespread adoption and seamless integration into health care systems. AI-driven, EHR-integrated PGHD systems can greatly improve clinicians' abilities to diagnose patients' health issues, classify risks at the patient level by drawing on the power of integrated data, and provide much-needed support to clinics and hospitals. With EHR-integrated PGHD, AI can help transform health care by improving diagnosis, treatment, and the delivery of clinical care, thus improving clinical decision support.

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人工智能在临床决策支持中整合电子健康记录和患者生成数据的应用中的作用。
本综述旨在确定和了解人工智能在临床决策支持中应用集成电子健康记录(EHR)和患者生成的健康数据(PGHD)方面的作用。我们将重点放在结合了 PGHD 和 EHR 数据的集成数据上,并研究了人工智能 (AI) 在应用中的作用。我们采用系统综述和荟萃分析首选报告项目(PRISMA)指南在六个数据库中搜索文章:PubMed、Embase、Web of Science、Scopus、ACM 数字图书馆和 IEEE 计算机协会数字图书馆。此外,我们还综合了其他系统综述、报告和白皮书等开创性资料,以了解该领域的背景、历史和发展。经过筛选,26 篇出版物符合审查标准。整合了电子病历的 PGHD 为医疗保健带来了诸多益处,包括通过共同决策增强患者和家属的参与能力,改善患者与医疗服务提供者之间的关系,以及减少临床就诊的时间和成本。人工智能的作用包括清理和管理异构数据集,协助识别动态模式以改进临床护理流程,以及提供更复杂的算法以更好地预测结果并根据集成数据提出精确建议。所面临的挑战主要来自大量的集成数据、数据标准、数据交换和互操作性、安全性和隐私性、解释和有意义的使用。PGHD 在医疗保健领域的应用正处于大有可为的阶段,但还需要进一步努力才能得到广泛应用并无缝集成到医疗保健系统中。人工智能驱动的、整合了电子病历的 PGHD 系统可以大大提高临床医生诊断病人健康问题的能力,通过利用整合数据的力量对病人层面的风险进行分类,并为诊所和医院提供急需的支持。通过与电子病历集成的 PGHD,人工智能可以改善诊断、治疗和临床护理的提供,从而改善临床决策支持,从而帮助改变医疗保健。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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