Liao Frank, Adelaine Sabrina, Afshar Majid, Patterson Brian W
BerbeeWalsh Department of Emergency Medicine, UW-Madison, Madison, WI, United States.
Department of Information Services, UW Health, Madison, WI, United States.
Front Digit Health. 2022 Aug 24;4:931439. doi: 10.3389/fdgth.2022.931439. eCollection 2022.
One of the key challenges in successful deployment and meaningful adoption of AI in healthcare is health system-level governance of AI applications. Such governance is critical not only for patient safety and accountability by a health system, but to foster clinician trust to improve adoption and facilitate meaningful health outcomes. In this case study, we describe the development of such a governance structure at University of Wisconsin Health (UWH) that provides oversight of AI applications from assessment of validity and user acceptability through safe deployment with continuous monitoring for effectiveness. Our structure leverages a multi-disciplinary steering committee along with project specific sub-committees. Members of the committee formulate a multi-stakeholder perspective spanning informatics, data science, clinical operations, ethics, and equity. Our structure includes guiding principles that provide tangible parameters for endorsement of both initial deployment and ongoing usage of AI applications. The committee is tasked with ensuring principles of interpretability, accuracy, and fairness across all applications. To operationalize these principles, we provide a value stream to apply the principles of AI governance at different stages of clinical implementation. This structure has enabled effective clinical adoption of AI applications. Effective governance has provided several outcomes: (1) a clear and institutional structure for oversight and endorsement; (2) a path towards successful deployment that encompasses technologic, clinical, and operational, considerations; (3) a process for ongoing monitoring to ensure the solution remains acceptable as clinical practice and disease prevalence evolve; (4) incorporation of guidelines for the ethical and equitable use of AI applications.
在医疗保健领域成功部署和有效采用人工智能的关键挑战之一是医疗系统层面的人工智能应用治理。这种治理不仅对医疗系统的患者安全和问责至关重要,而且对于培养临床医生的信任以提高采用率并促进有意义的健康结果也至关重要。在本案例研究中,我们描述了威斯康星大学健康系统(UWH)这样一种治理结构的发展,该结构对人工智能应用进行监督,从评估有效性和用户可接受性,到安全部署并持续监测有效性。我们的结构利用了一个多学科指导委员会以及项目特定的小组委员会。委员会成员从信息学、数据科学、临床运营、伦理和公平性等多利益相关方的角度进行规划。我们的结构包括指导原则,这些原则为人工智能应用的初始部署和持续使用提供了切实的参数。委员会的任务是确保所有应用都符合可解释性、准确性和公平性原则。为了实施这些原则,我们提供了一个价值流,以便在临床实施的不同阶段应用人工智能治理原则。这种结构促进了人工智能应用在临床上的有效采用。有效的治理带来了几个成果:(1)一个清晰的机构监督和批准结构;(2)一条成功部署的路径,涵盖技术、临床和运营等方面的考虑;(3)一个持续监测的过程,以确保随着临床实践和疾病流行情况的演变,该解决方案仍然可以接受;(4)纳入了人工智能应用伦理和公平使用的指导方针。