4.7 Article

A Contrastive Graph Convolutional Network for Toe-Tapping Assessment in Parkinson's Disease

出版社

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TCSVT.2022.3195854

关键词

Feature extraction; Videos; Task analysis; Deep learning; Diseases; Convolutional neural networks; Support vector machines; Parkinson's disease; toe tapping; video-based assessment; contrastive learning; graph convolutional network

资金

  1. National Natural Science Foundation of China [62171273]
  2. Natural Science Foundation of Shanghai [22ZR1432100]
  3. Med-Engineering Crossing Foundation from Shanghai Jiao Tong University [AH0820009, YG2022QN007]

向作者/读者索取更多资源

This study proposes a novel method for the assessment of bradykinesia in Parkinson's disease. The method utilizes a contrastive graph convolutional network to extract fine-grained motion features from videos. The experimental results demonstrate the reliability and high accuracy of this method, highlighting its importance for automated and objective assessment.
One of the common motor symptoms of Parkinson's disease (PD) is bradykinesia. Automated bradykinesia assessment is critically needed for helping neurologists achieve objective clinical diagnosis and hence provide timely and appropriate medical services. This need has become especially urgent after the outbreak of the coronavirus pandemic in late 2019. Currently, the main factor limiting the accurate assessment is the difficulty of mining the fine-grained discriminative motion features. Therefore, we propose a novel contrastive graph convolutional network for automated and objective toe-tapping assessment, which is one of the most important tests of lower-extremity bradykinesia. Specifically, based on joint sequences extracted from videos, a supervised contrastive learning strategy was followed to cluster together the features of each class, thereby enhancing the specificity of the learnt class-specific features. Subsequently, a multi-stream joint sparse learning mechanism was designed to eliminate potentially similar redundant features of joint position and motion, hence strengthening the discriminability of features extracted from different streams. Finally, a spatial-temporal interaction graph convolutional module was developed to explicitly model remote dependencies across time and space, and hence boost the mining of fine-grained motion features. Comprehensive experimental results demonstrate that this method achieved remarkable classification performance on a clinical video dataset, with an accuracy of 70.04% and an acceptable accuracy of 98.70%. These results obviously outperformed other existing sensor- and video-based methods. The proposed video-based scheme provides a reliable and objective tool for automated quantitative toe-tapping assessment, and is expected to be a viable method for remote medical assessment and diagnosis.

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