School of Nursing and Midwifery, University of Newcastle, Newcastle, New South Wales, Australia.
Central Coast Local Health District, Gosford, New South Wales, Australia.
Int J Ment Health Nurs. 2023 Aug;32(4):966-978. doi: 10.1111/inm.13114. Epub 2023 Feb 6.
An integrative review investigating the incorporation of artificial intelligence (AI) and machine learning (ML) based decision support systems in mental health care settings was undertaken of published literature between 2016 and 2021 across six databases. Four studies met the research question and the inclusion criteria. The primary theme identified was trust and confidence. To date, there is limited research regarding the use of AI-based decision support systems in mental health. Our review found that significant barriers exist regarding its incorporation into practice primarily arising from uncertainty related to clinician's trust and confidence, end-user acceptance and system transparency. More research is needed to understand the role of AI in assisting treatment and identifying missed care. Researchers and developers must focus on establishing trust and confidence with clinical staff before true clinical impact can be determined. Finally, further research is required to understand the attitudes and beliefs surrounding the use of AI and related impacts for the wellbeing of the end-users of care. This review highlights the necessity of involving clinicians in all stages of research, development and implementation of artificial intelligence in care delivery. Earning the trust and confidence of clinicians should be foremost in consideration in implementation of any AI-based decision support system. Clinicians should be motivated to actively embrace the opportunity to contribute to the development and implementation of new health technologies and digital tools that assist all health care professionals to identify missed care, before it occurs as a matter of importance for public safety and ethical implementation. AI-basesd decision support tools in mental health settings show most promise as trust and confidence of clinicians is achieved.
对 2016 年至 2021 年期间在六个数据库中发表的文献进行了综合回顾,旨在调查人工智能 (AI) 和机器学习 (ML) 为基础的决策支持系统在精神卫生保健环境中的应用。四项研究符合研究问题和纳入标准。确定的主要主题是信任和信心。迄今为止,关于在精神卫生中使用基于人工智能的决策支持系统的研究有限。我们的审查发现,在将其纳入实践方面存在重大障碍,主要是由于临床医生的信任和信心、最终用户接受度和系统透明度方面的不确定性。需要进一步的研究来了解人工智能在协助治疗和识别漏诊方面的作用。研究人员和开发人员必须专注于在确定真正的临床影响之前,与临床人员建立信任和信心。最后,需要进一步的研究来了解围绕人工智能使用的态度和信念及其对护理最终用户福祉的影响。本综述强调了在医疗保健提供中涉及临床医生的各个阶段研究、开发和实施人工智能的必要性。在实施任何基于人工智能的决策支持系统时,应首先考虑赢得临床医生的信任和信心。临床医生应该积极地接受这一机会,为新的健康技术和数字工具的开发和实施做出贡献,以便所有医疗保健专业人员都能在公共安全和伦理实施方面及时发现漏诊情况。在精神卫生环境中,基于人工智能的决策支持工具显示出最大的应用前景,因为临床医生的信任和信心已经得到了实现。