康复医学中的人工智能:机遇与挑战。

IF 2.1 Q1 REHABILITATION Annals of Rehabilitation Medicine-ARM Pub Date : 2023-12-01 Epub Date: 2023-12-14 DOI:10.5535/arm.23131
Francesco Lanotte, Megan K O'Brien, Arun Jayaraman
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引用次数: 0

摘要

人工智能(AI)工具越来越能够从更大、更复杂的数据中学习,从而使临床医生和科学家能够从每天收集的患者信息中获得新的见解。在康复医学领域,人工智能可用于从海量医疗保健数据中发现模式。然后可以在个人层面利用这些模式,设计个性化的护理策略和干预措施,以优化每位患者的治疗效果。然而,要建立有效的人工智能工具,我们需要在如何收集和处理数据、如何训练模型以及如何解释结果等方面进行许多细致的考虑。在本视角中,我们将讨论当前人工智能在康复领域的一些机遇和挑战。我们首先回顾了人工智能在疾病或损伤的筛查、诊断、治疗和持续监测方面的最新趋势,并特别关注了这些应用所使用的不同类型的医疗保健数据。然后,我们研究了设计人工智能并将其整合到临床工作流程中的潜在障碍,并提出了一个端到端框架来解决这些障碍,指导开发有效的康复人工智能。最后,我们提出了未来工作的设想,为在现实世界的康复实践中实施人工智能铺平道路。
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AI in Rehabilitation Medicine: Opportunities and Challenges.

Artificial intelligence (AI) tools are increasingly able to learn from larger and more complex data, thus allowing clinicians and scientists to gain new insights from the information they collect about their patients every day. In rehabilitation medicine, AI can be used to find patterns in huge amounts of healthcare data. These patterns can then be leveraged at the individual level, to design personalized care strategies and interventions to optimize each patient's outcomes. However, building effective AI tools requires many careful considerations about how we collect and handle data, how we train the models, and how we interpret results. In this perspective, we discuss some of the current opportunities and challenges for AI in rehabilitation. We first review recent trends in AI for the screening, diagnosis, treatment, and continuous monitoring of disease or injury, with a special focus on the different types of healthcare data used for these applications. We then examine potential barriers to designing and integrating AI into the clinical workflow, and we propose an end-to-end framework to address these barriers and guide the development of effective AI for rehabilitation. Finally, we present ideas for future work to pave the way for AI implementation in real-world rehabilitation practices.

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来源期刊
CiteScore
2.50
自引率
7.70%
发文量
32
审稿时长
30 weeks
期刊最新文献
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