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帕金森病下肢敏捷性评估的稀疏自适应图卷积网络。

Sparse Adaptive Graph Convolutional Network for Leg Agility Assessment in Parkinson's Disease.

出版信息

IEEE Trans Neural Syst Rehabil Eng. 2020 Dec;28(12):2837-2848. doi: 10.1109/TNSRE.2020.3039297. Epub 2021 Jan 28.

Abstract

Motor disorder is a typical symptom of Parkinson's disease (PD). Neurologists assess the severity of PD motor symptoms using the clinical rating scale, i.e., MDS-UPDRS. However, this assessment method is time-consuming and easily affected by the perception difference of assessors. In the recent outbreak of coronavirus disease 2019, telemedicine for PD has become extremely urgent for clinical practice. To solve these problems, we developed an automated and objective assessment method of the leg agility task in the MDS-UPDRS using videos and a graph neural network. In this study, a sparse adaptive graph convolutional network (SA-GCN) was proposed to achieve fine-grained quantitative assessment of skeleton sequences extracted from videos. Specifically, the sparse adaptive graph convolutional unit with a prior knowledge constraint was proposed to perform adaptive spatial modeling of physical and logical dependency for skeleton sequences, thus achieving the sparse modeling of the discriminative spatial relationships. Subsequently, a temporal context module was introduced to construct the remote context dependency in the temporal dimension, hence determining the global changes of the task. A multi-domain attention learning module was also developed to integrate the static spatial features and dynamic temporal features, and then to emphasize the salient feature selection in the channel domain, thereby capturing the multi-domain fine-grained information. Finally, the evaluation results using a dataset with 148 patients and 870 samples confirmed the effectiveness and reliability of our scheme, and the method outperformed other related state-of-the-art methods. Our contactless method provides a new potential tool for automated PD assessment and telemedicine.

摘要

运动障碍是帕金森病 (PD) 的典型症状。神经病学家使用临床评定量表,即 MDS-UPDRS,评估 PD 运动症状的严重程度。然而,这种评估方法耗时且容易受到评估者感知差异的影响。在 2019 年冠状病毒病(COVID-19)的爆发期间,PD 的远程医疗对临床实践变得极为紧迫。为了解决这些问题,我们开发了一种使用视频和图神经网络对 MDS-UPDRS 中的腿部敏捷任务进行自动和客观评估的方法。在这项研究中,提出了一种稀疏自适应图卷积网络 (SA-GCN),以实现从视频中提取的骨骼序列的细粒度定量评估。具体来说,提出了具有先验知识约束的稀疏自适应图卷积单元,以对骨骼序列进行物理和逻辑依赖的自适应空间建模,从而实现有区别的空间关系的稀疏建模。随后,引入了一个时间上下文模块来构建时间维度上的远程上下文依赖关系,从而确定任务的全局变化。还开发了一个多域注意学习模块,以整合静态空间特征和动态时间特征,然后在通道域中强调显著特征选择,从而捕获多域细粒度信息。最后,使用包含 148 名患者和 870 个样本的数据集进行的评估结果证实了我们方案的有效性和可靠性,该方法优于其他相关的最新方法。我们的非接触式方法为自动化 PD 评估和远程医疗提供了一种新的潜在工具。

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