人工智能在个性化康复中的应用现状及SWOT分析。

IF 3.2 Q1 HEALTH CARE SCIENCES & SERVICES
Frontiers in digital health Pub Date : 2025-07-24 eCollection Date: 2025-01-01 DOI:10.3389/fdgth.2025.1606088
Elpidio Attoh-Mensah, Arnaud Boujut, Mikaël Desmons, Anaick Perrochon
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引用次数: 0

摘要

人工智能(AI)通过引入创新方法来加强不同医学专业的护理,正在改变个性化康复。尽管有潜力,但广泛实施仍然有限,主要原因是缺乏对其利益和障碍的全面分析。这篇小型的叙述性综述考察了人工智能在个性化康复中的当前应用,并提供了SWOT(优势、劣势、机会、威胁)分析,人工智能已经被用于制定个性化治疗计划,支持正在进行的患者管理,并实时调整治疗过程。它的主要优势之一是处理大量数据集和监控实时信息的能力,从而提高了个性化的水平。某些任务的自动化可以减少人为错误,减轻临床医生的工作量,从而有更多的时间直接护理患者。人工智能的机会在于利用快速发展的技术来满足日益增长的康复服务需求,特别是人口老龄化。与行业合作可以加速创新,而数据共享可以促进各机构之间的最佳实践。然而,值得注意的挑战依然存在。高昂的实施成本、算法偏差等伦理问题以及医疗保健差距日益扩大的风险仍然是主要障碍。此外,数据隐私泄露和安全漏洞等威胁强调需要健全、平衡的监管框架。总之,人工智能在改变个性化康复方面有着巨大的希望。虽然目前的应用主要处于早期阶段或概念验证阶段,但正在进行的研究、伦理远见和战略合作对于最大限度地提高效益和最大限度地降低风险以获得最佳患者结果至关重要。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Artificial intelligence in personalized rehabilitation: current applications and a SWOT analysis.

Artificial intelligence in personalized rehabilitation: current applications and a SWOT analysis.

Artificial intelligence in personalized rehabilitation: current applications and a SWOT analysis.

Artificial intelligence in personalized rehabilitation: current applications and a SWOT analysis.

Artificial intelligence in personalized rehabilitation: current applications and a SWOT analysis.

Artificial intelligence (AI) is transforming personalized rehabilitation by introducing innovative methods to enhance care across diverse medical specialties. Despite its potential, widespread implementation remains limited, largely due to a lack of comprehensive analyses on its benefits and barriers. This mini narrative review examines current applications of AI in personalized rehabilitation and provide a SWOT (Strengths, Weaknesses, Opportunities, Threats) analysis AI is already being used to develop personalized treatment plans, support ongoing patient management, and adapt therapy sessions in real-time. One of its key strengths is the capacity to process vast datasets and monitor real-time information, thereby elevating the level of personalization. Automation of certain tasks can reduce human error and alleviate clinician workload, allowing more time for direct patient care. Opportunities for AI lie in leveraging rapidly advancing technologies to meet the rising demand for rehabilitation services, particularly with aging populations. Collaborations with industry can accelerate innovation, while data sharing can promote best practices across institutions. However, notable challenges persist. High implementation costs, ethical concerns such as algorithmic bias, and risks of increasing healthcare disparities remain major barriers. Additionally, threats such as data privacy breaches and security vulnerabilities emphasize the need for robust, balanced regulatory frameworks. In conclusion, AI holds immense promise for transforming personalized rehabilitation. While current applications are largely in early stages or proof-of-concept phases, ongoing research, ethical foresight, and strategic collaboration are essential to maximize benefits and minimize risks for optimal patient outcomes.

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CiteScore
4.20
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