Artificial intelligence-based video monitoring of movement disorders in the elderly: a review on current and future landscapes.

Singapore medical journal Pub Date : 2024-03-01 Epub Date: 2024-03-26 DOI:10.4103/singaporemedj.SMJ-2023-189
Kye Won Park, Maryam S Mirian, Martin J McKeown
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Abstract

Abstract: Due to global ageing, the burden of chronic movement and neurological disorders (Parkinson's disease and essential tremor) is rapidly increasing. Current diagnosis and monitoring of these disorders rely largely on face-to-face assessments utilising clinical rating scales, which are semi-subjective and time-consuming. To address these challenges, the utilisation of artificial intelligence (AI) has emerged. This review explores the advantages and challenges associated with using AI-driven video monitoring to care for elderly patients with movement disorders. The AI-based video monitoring systems offer improved efficiency and objectivity in remote patient monitoring, enabling real-time analysis of data, more uniform outcomes and augmented support for clinical trials. However, challenges, such as video quality, privacy compliance and noisy training labels, during development need to be addressed. Ultimately, the advancement of video monitoring for movement disorders is expected to evolve towards discreet, home-based evaluations during routine daily activities. This progression must incorporate data security, ethical considerations and adherence to regulatory standards.

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基于人工智能的老年人运动障碍视频监控:现状与未来展望综述。
摘要:由于全球老龄化,慢性运动和神经系统疾病(帕金森病和本质性震颤)的负担正在迅速加重。目前对这些疾病的诊断和监测主要依赖于利用临床评分量表进行的面对面评估,这种方法具有半主观性且耗费时间。为了应对这些挑战,人工智能(AI)应运而生。本综述探讨了使用人工智能驱动的视频监控来护理老年运动障碍患者的相关优势和挑战。基于人工智能的视频监控系统提高了远程患者监控的效率和客观性,实现了数据的实时分析、更统一的结果以及对临床试验的增强支持。然而,在开发过程中,视频质量、隐私合规性和嘈杂的训练标签等挑战亟待解决。最终,运动障碍的视频监控有望朝着在日常活动中进行隐蔽的、基于家庭的评估方向发展。在这一发展过程中,必须考虑到数据安全、伦理因素和监管标准。
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