Department of Biomedical Informatics, University of Utah, 421 Wakara Way, Rm. 2028, Salt Lake City, UT, 84108, USA.
Department of Case Management, Mount Sinai Health System, New York, NY, USA.
J Med Syst. 2024 Sep 18;48(1):89. doi: 10.1007/s10916-024-02104-9.
Recent advancements in computing have led to the development of artificial intelligence (AI) enabled healthcare technologies. AI-assisted clinical decision support (CDS) integrated into electronic health records (EHR) was demonstrated to have a significant potential to improve clinical care. With the rapid proliferation of AI-assisted CDS, came the realization that a lack of careful consideration of socio-technical issues surrounding the implementation and maintenance of these tools can result in unanticipated consequences, missed opportunities, and suboptimal uptake of these potentially useful technologies. The 48-h Discharge Prediction Tool (48DPT) is a new AI-assisted EHR CDS to facilitate discharge planning. This study aimed to methodologically assess the implementation of 48DPT and identify the barriers and facilitators of adoption and maintenance using the validated implementation science frameworks. The major dimensions of RE-AIM (Reach, Effectiveness, Adoption, Implementation, Maintenance) and the constructs of the Consolidated Framework for Implementation Research (CFIR) frameworks have been used to analyze interviews of 24 key stakeholders using 48DPT. The systematic assessment of the 48DPT implementation allowed us to describe facilitators and barriers to implementation such as lack of awareness, lack of accuracy and trust, limited accessibility, and transparency. Based on our evaluation, the factors that are crucial for the successful implementation of AI-assisted EHR CDS were identified. Future implementation efforts of AI-assisted EHR CDS should engage the key clinical stakeholders in the AI tool development from the very inception of the project, support transparency and explainability of the AI models, provide ongoing education and onboarding of the clinical users, and obtain continuous input from clinical staff on the CDS performance.
最近计算技术的进步推动了人工智能 (AI) 支持的医疗技术的发展。AI 辅助的临床决策支持 (CDS) 与电子健康记录 (EHR) 集成,已被证明具有显著提高临床护理质量的潜力。随着 AI 辅助 CDS 的快速普及,人们意识到,如果在实施和维护这些工具时没有仔细考虑围绕其实施和维护的社会技术问题,可能会导致意想不到的后果、错失机会以及这些潜在有用技术的接受度不理想。48 小时出院预测工具 (48DPT) 是一种新的 AI 辅助 EHR CDS,用于促进出院计划。本研究旨在使用经过验证的实施科学框架,从方法学上评估 48DPT 的实施情况,并确定采用和维护的障碍和促进因素。RE-AIM(可及性、有效性、采用、实施、维护)的主要维度和实施研究综合框架(CFIR)的构建已被用于分析使用 48DPT 的 24 个主要利益相关者的访谈。对 48DPT 实施的系统评估使我们能够描述实施的促进因素和障碍,例如缺乏意识、缺乏准确性和信任、有限的可及性和透明度。根据我们的评估,确定了成功实施 AI 辅助 EHR CDS 的关键因素。未来 AI 辅助 EHR CDS 的实施工作应从项目开始就让关键临床利益相关者参与 AI 工具的开发,支持 AI 模型的透明度和可解释性,为临床用户提供持续的教育和入职培训,并从临床人员那里获得对 CDS 性能的持续反馈。