Clinical decision support systems (CDSS) augmented with artificial intelligence (AI) models are emerging as potentially valuable tools in healthcare. Despite their promise, the development and implementation of these systems typically encounter several barriers, hindering the potential for widespread adoption. Here we present a case study of a recently developed AI-CDSS, Aifred Health, aimed at supporting the selection and management of treatment in major depressive disorder. We consider both the principles espoused during development and testing of this AI-CDSS, as well as the practical solutions developed to facilitate implementation. We also propose recommendations to consider throughout the building, validation, training, and implementation process of an AI-CDSS. These recommendations include: identifying the key problem, selecting the type of machine learning approach based on this problem, determining the type of data required, determining the format required for a CDSS to provide clinical utility, gathering physician and patient feedback, and validating the tool across multiple settings. Finally, we explore the potential benefits of widespread adoption of these systems, while balancing these against implementation challenges such as ensuring systems do not disrupt the clinical workflow, and designing systems in a manner that engenders trust on the part of end users.
翻译:临床决策支持系统(CDSS)得到人工智能(AI)模型的强化,正在成为保健方面的潜在宝贵工具。尽管这些系统的开发和实施有其希望,但这些系统的开发和实施通常会遇到若干障碍,阻碍广泛采用的可能性。我们在这里介绍了最近开发的AI-CDSS(Aifred Health)的案例研究,目的是支持在重大抑郁症中选择和管理治疗;我们认为,在开发和测试该AI-CDSS期间所支持的原则以及为促进执行而开发的实用解决方案都具有潜在的好处。我们还提出了各种建议,以便在AI-CDSS的建设、验证、培训和实施过程中考虑这些问题。这些建议包括:查明关键问题,选择基于这一问题的机器学习方法类型,确定所需数据类型,确定CDSS提供临床效用、收集医生和病人反馈以及鉴定多种情况下的工具所需的格式。最后,我们探索广泛采用这些系统的潜在好处,同时平衡这些办法与执行挑战,例如确保系统不中断临床工作流程,并以对终端用户产生信任的方式设计系统。</s>