Poon Eric G, Lemak Christy Harris, Rojas Juan C, Guptill Janet, Classen David
Duke University Health System, Durham, NC, United States.
Department of Medicine, Duke University School of Medicine, Durham, NC, United States.
J Am Med Inform Assoc. 2025 Jul 1;32(7):1093-1100. doi: 10.1093/jamia/ocaf065.
The US healthcare system faces significant challenges, including clinician burnout, operational inefficiencies, and concerns about patient safety. Artificial intelligence (AI), particularly generative AI, has the potential to address these challenges, but its adoption, effectiveness, and barriers to implementation are not well understood.
To evaluate the current state of AI adoption in US healthcare systems, assess successes and barriers to implementation during the early generative AI era.
DESIGN, SETTING, AND PARTICIPANTS: This cross-sectional survey was conducted in Fall 2024, and included 67 health systems members of the Scottsdale Institute, a collaborative of US non-profit healthcare organizations. Forty-three health systems completed the survey (64% response rate). Respondents provided data on the deployment status and perceived success of 37 AI use cases across 10 categories.
The primary outcomes were the extent of AI use case development, piloting, or deployment, the degree of reported success for AI use cases, and the most significant barriers to adoption.
Across the 43 responding health systems, AI adoption and perceptions of success varied significantly. Ambient Notes, a generative AI tool for clinical documentation, was the only use case with 100% of respondents reporting adoption activities, and 53% reported a high degree of success with using AI for Clinical Documentation. Imaging and radiology emerged as the most widely deployed clinical AI use case, with 90% of organizations reporting at least partial deployment, although successes with diagnostic use cases were limited. Similarly, many organizations have deployed AI for clinical risk stratification such as early sepsis detection, but only 38% report high success in this area. Immature AI tools were identified a significant barrier to adoption, cited by 77% of respondents, followed by financial concerns (47%) and regulatory uncertainty (40%).
Ambient Notes is rapidly advancing in US healthcare systems and demonstrating early success. Other AI use cases show varying degrees of adoption and success, constrained by barriers such as immature AI tools, financial concerns, and regulatory uncertainty. Addressing these challenges through robust evaluations, shared strategies, and governance models will be essential to ensure effective integration and adoption of AI into healthcare practice.
美国医疗保健系统面临重大挑战,包括临床医生倦怠、运营效率低下以及对患者安全的担忧。人工智能(AI),尤其是生成式人工智能,有潜力应对这些挑战,但其采用情况、有效性以及实施障碍尚未得到充分理解。
评估美国医疗保健系统中人工智能的采用现状,评估在早期生成式人工智能时代实施的成功经验和障碍。
设计、背景和参与者:这项横断面调查于2024年秋季进行,纳入了斯科茨代尔研究所的67个医疗系统成员,该研究所是美国非营利性医疗保健组织的合作机构。43个医疗系统完成了调查(回复率64%)。受访者提供了关于10个类别中37个人工智能用例的部署状态和感知成功情况的数据。
主要结果是人工智能用例开发、试点或部署的程度、人工智能用例报告的成功程度以及采用的最重大障碍。
在43个回复的医疗系统中,人工智能的采用情况和对成功的看法差异很大。Ambient Notes是一种用于临床文档的生成式人工智能工具,是唯一一个1