使用基于计算机视觉的自动严重程度估计提高帕金森病运动评估的可靠性。

IF 4 3区 医学 Q2 NEUROSCIENCES
Journal of Parkinson's disease Pub Date : 2025-03-01 Epub Date: 2025-02-13 DOI:10.1177/1877718X241312605
Jinyu Xu, Xin Xu, Xudong Guo, Zezhi Li, Boya Dong, Chen Qi, Chunhui Yang, Dong Zhou, Jiali Wang, Lu Song, Ping He, Shanshan Kong, Shuchang Zheng, Sichao Fu, Wei Xie, Xuan Liu, Ya Cao, Yilin Liu, Yiqing Qiu, Zhiyuan Zheng, Fei Yang, Jing Gan, Xi Wu
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引用次数: 0

摘要

背景:运动症状的临床评估依赖于对标准化量表的观察和主观判断,这导致了混杂因素的可变性。改善病友间的协议对有效的疾病管理至关重要。目的:我们开发了一个帕金森病(PD)的客观评分系统,该系统集成了计算机视觉(CV)和机器学习,以纠正评分者之间的潜在差异,同时为模型性能提供基础,以获得专业认可。方法:从多中心招募前瞻性PD队列(n = 128)。按照MDS-UPDRS Part-III的说明,使用基于cv软件的android平板电脑记录运动检查视频。视频包括面部、上肢和下肢的运动,从椅子上起身、站立和行走。从多中心招募了15名认证临床医生。对于每个视频,随机选择五名临床医生独立评估运动症状的严重程度,验证视频和运动变量(MovVars)。采用机器学习算法进行自动评分和特征重要性分析。计算了人类评分者之间的评分一致性以及人工智能(AI)生成的评分与专家共识之间的一致性。结果:对于所有经过验证的视频(n = 1024),基于ai的评分显示平均绝对准确率为69.63%,平均可接受准确率为98.78%,与临床医生的共识相反。基于人工智能的评分与临床共识之间的平均绝对误差为0.32,优于评分间变异性(0.65),这可能是由于多种movvar的联合使用。结论:该算法能够基于视频准确评估轻度运动症状的严重程度。人工智能辅助评估提高了评分者之间的一致性,证明了基于cv的工具在筛查、诊断和治疗运动障碍方面的实用价值。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Improving reliability of movement assessment in Parkinson's disease using computer vision-based automated severity estimation.

BackgroundClinical assessments of motor symptoms rely on observations and subjective judgments against standardized scales, leading to variability due to confounders. Improving inter-rater agreement is essential for effective disease management.ObjectiveWe developed an objective rating system for Parkinson's disease (PD) that integrates computer vision (CV) and machine learning to correct potential discrepancies among raters while providing the basis for model performance to gain professional acceptance.MethodsA prospective PD cohort (n = 128) were recruited from multi-centers. Motor examination videos were recorded using an android tablet with CV-based software following the MDS-UPDRS Part-III instructions. Videos included facial, upper- and lower-limb movements, arising from a chair, standing, and walking. Fifteen certified clinicians were recruited from multi-centers. For each video, five clinicians were randomly selected to independently rate the severity of motor symptoms, validate the videos and movement variables (MovVars). Machine learning algorithms were applied for automated rating and feature importance analysis. Inter-rater agreement among human raters and the agreement between artificial intelligence (AI)-generated ratings and expert consensus were calculated.ResultsFor all validated videos (n = 1024), AI-based ratings showed an average absolute accuracy of 69.63% and an average acceptable accuracy of 98.78% against the clinician consensus. The mean absolute error between the AI-based scores and clinician consensus was 0.32, outperforming the inter-rater variability (0.65), potentially due to the combined utilization of diverse MovVars.ConclusionsThe algorithm enabled accurate video-based evaluation of mild motor symptom severity. AI-assisted assessment improved the inter-rater agreement, demonstrating the practical value of CV-based tools in screening, diagnosing, and treating movement disorders.

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来源期刊
CiteScore
8.40
自引率
5.80%
发文量
338
审稿时长
>12 weeks
期刊介绍: The Journal of Parkinson''s Disease (JPD) publishes original research in basic science, translational research and clinical medicine in Parkinson’s disease in cooperation with the Journal of Alzheimer''s Disease. It features a first class Editorial Board and provides rigorous peer review and rapid online publication.
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