通过实施科学加速人工智能在精神卫生领域的影响。

Per Nilsen, Petra Svedberg, Jens Nygren, Micael Frideros, Jan Johansson, Stephen Schueller
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引用次数: 1

摘要

背景:人工智能(AI)在精神卫生保健中的应用为解决与精神卫生保健服务的可用性、吸引力和可及性相关的一些问题提供了潜在的解决方案。然而,在如何实施和最好地利用人工智能为精神卫生保健服务、提供者和消费者增加价值方面,存在许多知识空白。本文的目的是确定人工智能在精神卫生保健中使用的挑战和机遇,并描述潜在相关的实施科学的关键见解,以理解和促进人工智能在精神卫生保健中的实施。方法:对人工智能在精神卫生和实施科学方面的相关文献进行综述。结果:实施科学的研究确立了从一开始就考虑和规划实施的重要性,通过不同阶段的实施进展,以及多层次的决定因素的认识。决定因素框架和实施理论的发展是为了理解和解释不同的决定因素如何影响实施。人工智能研究应该探索这些决定因素与人工智能实施的相关性。支持人工智能实施的实施战略必须解决在精神卫生领域实施人工智能的具体决定因素。还可能需要发展新的理论方法或扩大现有的理论方法并使其重新具有背景。实施结果可能必须适应与人工智能实施环境相关的内容。结论:实施科学知识可为人工智能在精神卫生领域的实施提供重要的研究起点。这一领域产生了许多见解,并提供了可能与本研究相关的广泛理论、框架和概念。然而,在利用现有知识基础的同时,重要的是要进行探索,并将人工智能在卫生和精神卫生领域的实施作为一种新现象进行研究,因为在实施决定因素、战略和结果最相关方面,实施人工智能可能与实施循证实践有各种不同。摘要:人工智能(AI)在精神卫生保健领域的应用为解决与精神卫生保健服务的可用性、吸引力和可及性相关的一些问题提供了潜在的解决方案。然而,在如何实施和最好地利用人工智能为精神卫生保健服务、提供者和消费者增加价值方面,存在许多知识空白。本文基于对有关人工智能在精神卫生保健和实施科学中的文章的选择性回顾,旨在确定在精神卫生保健中使用人工智能的挑战和机遇,并描述潜在相关的实施科学的关键见解,以理解和促进人工智能在精神卫生保健中的实施。人工智能为识别最需要护理的患者或最适合特定人群或个人的干预措施提供了机会。人工智能还为支持对精神疾病进行更可靠的诊断以及在治疗过程中进行持续监测和调整提供了机会。然而,在组织/政策、个人和技术层面上存在人工智能实施方面的挑战,因此利用实施科学知识来理解和促进人工智能在精神卫生保健中的实施是相关的。实施科学的知识可以为人工智能在精神卫生领域的实施研究提供一个重要的起点。这一领域产生了许多见解,并提供了可能与本研究相关的广泛理论、框架和概念。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Accelerating the impact of artificial intelligence in mental healthcare through implementation science.

Background: The implementation of artificial intelligence (AI) in mental healthcare offers a potential solution to some of the problems associated with the availability, attractiveness, and accessibility of mental healthcare services. However, there are many knowledge gaps regarding how to implement and best use AI to add value to mental healthcare services, providers, and consumers. The aim of this paper is to identify challenges and opportunities for AI use in mental healthcare and to describe key insights from implementation science of potential relevance to understand and facilitate AI implementation in mental healthcare.

Methods: The paper is based on a selective review of articles concerning AI in mental healthcare and implementation science.

Results: Research in implementation science has established the importance of considering and planning for implementation from the start, the progression of implementation through different stages, and the appreciation of determinants at multiple levels. Determinant frameworks and implementation theories have been developed to understand and explain how different determinants impact on implementation. AI research should explore the relevance of these determinants for AI implementation. Implementation strategies to support AI implementation must address determinants specific to AI implementation in mental health. There might also be a need to develop new theoretical approaches or augment and recontextualize existing ones. Implementation outcomes may have to be adapted to be relevant in an AI implementation context.

Conclusion: Knowledge derived from implementation science could provide an important starting point for research on implementation of AI in mental healthcare. This field has generated many insights and provides a broad range of theories, frameworks, and concepts that are likely relevant for this research. However, when taking advantage of the existing knowledge basis, it is important to also be explorative and study AI implementation in health and mental healthcare as a new phenomenon in its own right since implementing AI may differ in various ways from implementing evidence-based practices in terms of what implementation determinants, strategies, and outcomes are most relevant.Plain Language Summary: The implementation of artificial intelligence (AI) in mental healthcare offers a potential solution to some of the problems associated with the availability, attractiveness, and accessibility of mental healthcare services. However, there are many knowledge gaps concerning how to implement and best use AI to add value to mental healthcare services, providers, and consumers. This paper is based on a selective review of articles concerning AI in mental healthcare and implementation science, with the aim to identify challenges and opportunities for the use of AI in mental healthcare and describe key insights from implementation science of potential relevance to understand and facilitate AI implementation in mental healthcare. AI offers opportunities for identifying the patients most in need of care or the interventions that might be most appropriate for a given population or individual. AI also offers opportunities for supporting a more reliable diagnosis of psychiatric disorders and ongoing monitoring and tailoring during the course of treatment. However, AI implementation challenges exist at organizational/policy, individual, and technical levels, making it relevant to draw on implementation science knowledge for understanding and facilitating implementation of AI in mental healthcare. Knowledge derived from implementation science could provide an important starting point for research on AI implementation in mental healthcare. This field has generated many insights and provides a broad range of theories, frameworks, and concepts that are likely relevant for this research.

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