训练有素的眼睛看不到的东西:定量运动学和机器学习从视频中检测早期帕金森病的运动障碍

IF 3.1 3区 医学 Q2 CLINICAL NEUROLOGY Parkinsonism & related disorders Pub Date : 2024-08-14 DOI:10.1016/j.parkreldis.2024.107104
Diego L. Guarín , Joshua K. Wong , Nikolaus R. McFarland , Adolfo Ramirez-Zamora , David E. Vaillancourt
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引用次数: 0

摘要

背景帕金森病(PD)的疾病严重程度评估依赖于运动症状的量化。方法我们分析了 26 名年龄匹配的健康对照者和 31 名早期帕金森病患者的三种运动任务视频--手指敲击、手部运动和腿部灵活性。利用 ML 算法进行姿势估计,我们从这些视频中提取了运动学特征,并根据左右侧运动和左右对称性训练了三个分类模型。结果综合左侧、右侧和对称性特征后,手指敲击视频的帕金森病检测准确率为 79%,手部运动视频的准确率为 75%,腿部灵活性视频的准确率为 79%,使用软投票方法综合三项任务的准确率为 86%。结论我们的方法通过整合左侧、右侧和双侧对称运动的运动学分析,使用标准化运动任务视频有效区分了早期帕金森病患者和健康对照者。这些结果表明,ML 可以通过视频检测早期帕金森病患者的运动障碍。该技术简单易用、可扩展性强,有望改善早期帕金森病运动症状的管理和量化。
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What the trained eye cannot see: Quantitative kinematics and machine learning detect movement deficits in early-stage Parkinson's disease from videos

Background

Evaluation of disease severity in Parkinson's disease (PD) relies on motor symptoms quantification. However, during early-stage PD, these symptoms are subtle and difficult to quantify by experts, which might result in delayed diagnosis and suboptimal disease management.

Objective

To evaluate the use of videos and machine learning (ML) for automatic quantification of motor symptoms in early-stage PD.

Methods

We analyzed videos of three movement tasks—Finger Tapping, Hand Movement, and Leg Agility— from 26 aged-matched healthy controls and 31 early-stage PD patients. Utilizing ML algorithms for pose estimation we extracted kinematic features from these videos and trained three classification models based on left and right-side movements, and right/left symmetry. The models were trained to differentiate healthy controls from early-stage PD from videos.

Results

Combining left side, right side, and symmetry features resulted in a PD detection accuracy of 79 % from Finger Tap videos, 75 % from Hand Movement videos, 79 % from Leg Agility videos, and 86 % when combining the three tasks using a soft voting approach. In contrast, the classification accuracy varied between 40 % and 72 % when the movement side or symmetry were not considered.

Conclusions

Our methodology effectively differentiated between early-stage PD and healthy controls using videos of standardized motor tasks by integrating kinematic analyses of left-side, right-side, and bilateral symmetry movements. These results demonstrate that ML can detect movement deficits in early-stage PD from videos. This technology is easy-to-use, highly scalable, and has the potential to improve the management and quantification of motor symptoms in early-stage PD.

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来源期刊
Parkinsonism & related disorders
Parkinsonism & related disorders 医学-临床神经学
CiteScore
6.20
自引率
4.90%
发文量
292
审稿时长
39 days
期刊介绍: Parkinsonism & Related Disorders publishes the results of basic and clinical research contributing to the understanding, diagnosis and treatment of all neurodegenerative syndromes in which Parkinsonism, Essential Tremor or related movement disorders may be a feature. Regular features will include: Review Articles, Point of View articles, Full-length Articles, Short Communications, Case Reports and Letter to the Editor.
期刊最新文献
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