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基于视频的帕金森病患者日常临床中冻结步态检测。

Video-Based Detection of Freezing of Gait in Daily Clinical Practice in Patients With Parkinsonism.

出版信息

IEEE Trans Neural Syst Rehabil Eng. 2024;32:2250-2260. doi: 10.1109/TNSRE.2024.3413055. Epub 2024 Jun 24.

DOI:10.1109/TNSRE.2024.3413055
PMID:38865235
Abstract

Freezing of gait (FoG) is a prevalent symptom among individuals with Parkinson's disease and related disorders. FoG detection from videos has been developed recently; however, the process requires using videos filmed within a controlled environment. We attempted to establish an automatic FoG detection method from videos taken in uncontrolled environments such as in daily clinical practices. Motion features of 16 patients were extracted from timed-up-and-go test in 109 video data points, through object tracking and three-dimension pose estimation. These motion features were utilized to form the FoG detection model, which combined rule-based and machine learning-based models. The rule-based model distinguished the frames in which the patient was walking from those when the patient has stopped, using the pelvic position coordinates; the machine learning-based model distinguished between FoG and stop using a combined one-dimensional convolutional neural network and long short-term memory (1dCNN-LSTM). The model achieved a high intraclass correlation coefficient of 0.75-0.94 with a manually-annotated duration of FoG and %FoG. This method is novel as it combines object tracking, 3D pose estimation, and expert-guided feature selection in the preprocessing and modeling phases, enabling FoG detection even from videos captured in uncontrolled environments.

摘要

冻结步态(Freezing of gait,FoG)是帕金森病及相关疾病患者中常见的症状。最近已经开发出了从视频中检测 FoG 的方法;然而,该过程需要使用在受控环境中拍摄的视频。我们试图从日常临床实践中的不受控制的环境中拍摄的视频中建立一种自动的 FoG 检测方法。通过目标跟踪和三维姿态估计,从 109 个视频数据点中的 16 名患者的计时起立行走测试中提取了运动特征。这些运动特征被用于形成 FoG 检测模型,该模型结合了基于规则和基于机器学习的模型。基于规则的模型使用骨盆位置坐标来区分患者行走的帧和停止的帧;基于机器学习的模型使用一维卷积神经网络和长短期记忆网络(1dCNN-LSTM)的组合来区分 FoG 和停止。该模型与手动标记的 FoG 持续时间和%FoG 之间的相关性系数达到了 0.75-0.94,这表明该方法是新颖的,它在预处理和建模阶段结合了目标跟踪、3D 姿态估计和专家指导的特征选择,使得即使从不受控制的环境中捕获的视频中也能进行 FoG 检测。

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J Med Internet Res. 2025 May 20;27:e71560. doi: 10.2196/71560.
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A novel multi-level 3D pose estimation framework for gait detection of Parkinson's disease using monocular video.一种使用单目视频进行帕金森病步态检测的新型多层次3D姿态估计框架。
Front Bioeng Biotechnol. 2024 Dec 23;12:1520831. doi: 10.3389/fbioe.2024.1520831. eCollection 2024.
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Severity Classification of Parkinson's Disease via Synthesis of Energy Skeleton Images from Videos Produced in Uncontrolled Environments.
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Diagnostics (Basel). 2024 Nov 28;14(23):2685. doi: 10.3390/diagnostics14232685.