临床神经学中的计算机视觉

IF 20.4 1区 医学 Q1 CLINICAL NEUROLOGY
Maximilian U. Friedrich, Samuel Relton, David Wong, Jane Alty
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引用次数: 0

摘要

神经系统检查传统上依赖于物理临床体征的视觉分析,如震颤、共济失调或眼球震颤。当代基于分数的评估旨在标准化和量化这些观察结果,但这些工具受到临床局限性的影响,往往无法捕捉到人类运动的微妙而重要的方面。这对更加精确和个性化的神经系统护理构成了重大障碍,这些护理越来越多地关注疾病的早期阶段。计算机视觉是人工智能的一个分支,通过仅根据视频片段提供神经症状的客观测量,有可能解决这些挑战。最近的研究强调了计算机视觉在测量疾病严重程度,发现新的生物标志物和表征神经病学治疗结果方面的潜力,具有高精度和粒度。计算机视觉可以灵敏地检测人眼无法察觉的细微运动模式,这与对早期疾病阶段的新兴研究相一致。然而,为了广泛采用,需要解决可访问性、伦理和验证方面的挑战。特别是,临床可用性和算法稳健性的改进是未来发展的关键优先事项。计算机视觉技术通过提供客观、定量的神经体征测量,有可能彻底改变神经病学的实践。这些工具可以提高诊断准确性,改善治疗监测,并使神经专科护理民主化。临床医生应该意识到这些新兴技术及其补充传统评估方法的潜力。然而,为了充分发挥计算机视觉在临床神经病学中的潜力,需要进一步研究临床验证、伦理考虑和实际实施。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Computer Vision in Clinical Neurology
ImportanceNeurological examinations traditionally rely on visual analysis of physical clinical signs, such as tremor, ataxia, or nystagmus. Contemporary score-based assessments aim to standardize and quantify these observations, but these tools suffer from clinimetric limitations and often fail to capture subtle yet important aspects of human movement. This poses a significant roadblock to more precise and personalized neurological care, which increasingly focuses on early stages of disease. Computer vision, a branch of artificial intelligence, has the potential to address these challenges by providing objective measures of neurological signs based solely on video footage.ObservationsRecent studies highlight the potential of computer vision to measure disease severity, discover novel biomarkers, and characterize therapeutic outcomes in neurology with high accuracy and granularity. Computer vision may enable sensitive detection of subtle movement patterns that escape the human eye, aligning with an emerging research focus on early disease stages. However, challenges in accessibility, ethics, and validation need to be addressed for widespread adoption. In particular, improvements in clinical usability and algorithmic robustness are key priorities for future developments.Conclusions and RelevanceComputer vision technologies have the potential to revolutionize neurological practice by providing objective, quantitative measures of neurological signs. These tools could enhance diagnostic accuracy, improve treatment monitoring, and democratize specialized neurological care. Clinicians should be aware of these emerging technologies and their potential to complement traditional assessment methods. However, further research focusing on clinical validation, ethical considerations, and practical implementation is necessary to fully realize the potential of computer vision in clinical neurology.
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来源期刊
JAMA neurology
JAMA neurology CLINICAL NEUROLOGY-
CiteScore
41.90
自引率
1.70%
发文量
250
期刊介绍: JAMA Neurology is an international peer-reviewed journal for physicians caring for people with neurologic disorders and those interested in the structure and function of the normal and diseased nervous system. The Archives of Neurology & Psychiatry began publication in 1919 and, in 1959, became 2 separate journals: Archives of Neurology and Archives of General Psychiatry. In 2013, their names changed to JAMA Neurology and JAMA Psychiatry, respectively. JAMA Neurology is a member of the JAMA Network, a consortium of peer-reviewed, general medical and specialty publications.
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