Petitgand Cécile, Motulsky Aude, Denis Jean-Louis, Régis Catherine
Research Center, Centre hospitalier de l'Université de Montréal, Montreal, Canada.
Faculty of Law, Université de Montréal, Montreal, Canada.
Stud Health Technol Inform. 2020 Jun 16;270:1001-1005. doi: 10.3233/SHTI200312.
The development of artificial intelligence (AI) systems to support diagnostic decision-making is rapidly expanding in health care. However, important challenges remain in executing algorithmic systems at the frontlines of clinical practice. Hence, most often, these systems have not been trained with local data nor do they fit with context-specific patterns of care. This research examines the implementation of an AI-based decision support system (DSS) in the emergency department of a large Academic Health Center (AHC) in Canada, focusing specifically on the question of end-user adoption. Based in an interpretative perspective, the study analyzes the perceptions of healthcare managers, AI developers, physicians and nurses on the DSS, so as to make sense of the main barriers to its adoption by emergency physicians. The study points to the importance of considering interconnections between technical, human and organizational factors to better grasp the unique challenges raised by AI systems in health care. It further emphasizes the need to investigate actors' perceptions of AI in order to develop strategies to adequately test and adapt AI systems, and ensure that they meet the needs of health professionals and patients. This research is particularly relevant at a time when considerable investments are being made to develop and deploy AI-based systems in health care. Empirically probing the conditions under which AI-based systems can effectively be integrated into processes and workflow is essential for maximizing the benefits these investments can bring to the organization and delivery of care.
支持诊断决策的人工智能(AI)系统在医疗保健领域的发展正在迅速扩张。然而,在临床实践一线执行算法系统仍存在重大挑战。因此,这些系统大多未使用本地数据进行训练,也不符合特定背景下的护理模式。本研究考察了加拿大一家大型学术健康中心(AHC)急诊科基于AI的决策支持系统(DSS)的实施情况,特别关注终端用户采用的问题。基于解释性视角,该研究分析了医疗保健管理人员、AI开发者、医生和护士对DSS的看法,以便理解急诊科医生采用该系统的主要障碍。该研究指出,考虑技术、人力和组织因素之间的相互联系对于更好地把握AI系统在医疗保健中带来的独特挑战至关重要。它进一步强调,有必要调查行为者对AI的看法,以便制定策略,对AI系统进行充分测试和调整,并确保它们满足卫生专业人员和患者的需求。在医疗保健领域正投入大量资金开发和部署基于AI的系统之际,这项研究尤为重要。从实证角度探究基于AI的系统能够有效融入流程和工作流程的条件,对于最大化这些投资给医疗保健机构和服务带来的益处至关重要。