The Elastic Electronic Health Record: A Five-Tiered Framework for Applying Artificial Intelligence to Electronic Health Record Maintenance, Configuration, and Use.

IF 2
JMIR AI Pub Date : 2025-05-09 DOI:10.2196/66741
Colby Uptegraft, Kameron Collin Black, Jonathan Gale, Andrew Marshall, Shuhan He
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Abstract

Unlabelled: Properly configuring modern electronic health records (EHRs) has become increasingly challenging for human operators, failing to fully meet the efficiency and cost-saving potential seen with the digitization of other sectors. The integration of artificial intelligence (AI) offers a promising solution, particularly through a comprehensive governance approach that moves beyond front-end enhancements such as user- and patient-facing copilots. These copilots, although useful, are limited by the underlying EHR configuration, leading to inefficiencies and high maintenance costs. To address this, we propose the concept of an "Elastic EHR," which proactively suggests and validates optimal content and configuration changes, significantly reducing governance costs and enhancing user experience, as well as reducing many of the common frustrations including the documentation burden, alert fatigue, system responsiveness, outdated content, and unintuitive design. Our five-tiered model details a structured approach to AI integration within EHRs. Tier I focuses on autonomous database reconfiguration, akin to Oracle Autonomous Database functionalities, to ensure continuous system improvements without direct edits to the production environment. Tier II empowers EHR clients to shape system performance according to predefined strategies and standards, ensuring coordinated and efficient EHR solution builds. Tier III optimizes EHR choice architecture by analyzing user behaviors and suggesting content and configuration changes that minimize clicks and keystrokes, thereby enhancing workflow efficiency. Tier IV maintains the currency of EHR clinical content and decision support by linking content and configuration to updated guidelines and literature, ensuring the EHR remains evidence-based and compliant with evolving standards. Finally, Tier V incorporates context-dependent AI copilots to enhance care efficiency, quality, and user experience. Despite the potential benefits, major limitations exist. The market dominance of a few major EHR vendors-Epic Systems, Oracle Health, and MEDITECH-poses a challenge, as any enhancements require their cooperation and financial motivation. Furthermore, the diverse and complex nature of health care environments demands a flexible yet robust AI system that can adapt to various institutional needs that has not yet been developed, researched, or tested. The Elastic EHR model proposes a five-tiered framework for optimizing EHR systems and user experience with AI. By overcoming the identified limitations through vendor-led, collaborative efforts, AI-enabled EHRs could improve the efficiency, quality, and user experience of health care delivery, fully delivering on the promises of digitization within health care.

弹性电子健康记录:将人工智能应用于电子健康记录维护、配置和使用的五层框架。
未标记:正确配置现代电子健康记录(EHRs)对于人工操作员来说变得越来越具有挑战性,无法完全满足其他部门数字化所带来的效率和成本节约潜力。人工智能(AI)的集成提供了一个很有前途的解决方案,特别是通过一种全面的治理方法,超越了前端增强功能,例如面向用户和患者的副驾驶。这些副驾驶员虽然有用,但受到基础EHR配置的限制,导致效率低下和维护成本高。为了解决这个问题,我们提出了“弹性EHR”的概念,它主动建议并验证最优内容和配置更改,显著降低治理成本并增强用户体验,以及减少许多常见的挫折,包括文档负担、警报疲劳、系统响应、过时的内容和不直观的设计。我们的五层模型详细介绍了在电子病历中集成人工智能的结构化方法。第一级侧重于自治数据库重新配置,类似于Oracle自治数据库功能,以确保在不直接编辑生产环境的情况下持续改进系统。Tier II授权EHR客户根据预定义的策略和标准来塑造系统性能,确保协调和高效的EHR解决方案构建。Tier III通过分析用户行为并建议内容和配置更改来优化EHR选择架构,从而最大限度地减少点击和击键,从而提高工作流效率。Tier IV通过将内容和配置与更新的指南和文献联系起来,维护EHR临床内容和决策支持的流通,确保EHR保持循证并符合不断发展的标准。最后,第五层结合了情境相关的人工智能副驾驶,以提高护理效率、质量和用户体验。尽管有潜在的好处,但主要的限制仍然存在。几个主要的EHR供应商(epic Systems、Oracle Health和meditech)的市场主导地位构成了挑战,因为任何增强都需要他们的合作和财务动机。此外,卫生保健环境的多样性和复杂性需要一个灵活而强大的人工智能系统,以适应尚未开发、研究或测试的各种机构需求。弹性电子病历模型提出了一个五层框架,用于优化电子病历系统和人工智能的用户体验。通过供应商主导的协作努力克服已确定的限制,启用人工智能的电子病历可以提高医疗保健服务的效率、质量和用户体验,充分实现医疗保健领域数字化的承诺。
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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