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A Biomechanics-Guided and Time–Frequency Collaborative Deep Learning Framework for Parkinsonian Gait Severity Assessment
by
Zhou, Tianqi
, Yang, Qiwen
, Lin, Wei
in
Abnormalities
/ Analysis
/ biomechanical prior
/ Biomechanics
/ Deep learning
/ Development and progression
/ Economic indicators
/ Fast Fourier transformations
/ Feature extraction
/ Gait
/ gait analysis
/ graph attention network
/ Group work in education
/ Machine learning
/ Nervous system diseases
/ Neural networks
/ Parkinson's disease
/ Posture
/ Rhythm
/ Sensors
/ Signal processing
/ Team learning approach in education
/ Time-frequency analysis
/ time–frequency collaborative modeling
2026
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A Biomechanics-Guided and Time–Frequency Collaborative Deep Learning Framework for Parkinsonian Gait Severity Assessment
by
Zhou, Tianqi
, Yang, Qiwen
, Lin, Wei
in
Abnormalities
/ Analysis
/ biomechanical prior
/ Biomechanics
/ Deep learning
/ Development and progression
/ Economic indicators
/ Fast Fourier transformations
/ Feature extraction
/ Gait
/ gait analysis
/ graph attention network
/ Group work in education
/ Machine learning
/ Nervous system diseases
/ Neural networks
/ Parkinson's disease
/ Posture
/ Rhythm
/ Sensors
/ Signal processing
/ Team learning approach in education
/ Time-frequency analysis
/ time–frequency collaborative modeling
2026
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A Biomechanics-Guided and Time–Frequency Collaborative Deep Learning Framework for Parkinsonian Gait Severity Assessment
by
Zhou, Tianqi
, Yang, Qiwen
, Lin, Wei
in
Abnormalities
/ Analysis
/ biomechanical prior
/ Biomechanics
/ Deep learning
/ Development and progression
/ Economic indicators
/ Fast Fourier transformations
/ Feature extraction
/ Gait
/ gait analysis
/ graph attention network
/ Group work in education
/ Machine learning
/ Nervous system diseases
/ Neural networks
/ Parkinson's disease
/ Posture
/ Rhythm
/ Sensors
/ Signal processing
/ Team learning approach in education
/ Time-frequency analysis
/ time–frequency collaborative modeling
2026
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A Biomechanics-Guided and Time–Frequency Collaborative Deep Learning Framework for Parkinsonian Gait Severity Assessment
Journal Article
A Biomechanics-Guided and Time–Frequency Collaborative Deep Learning Framework for Parkinsonian Gait Severity Assessment
2026
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Overview
Parkinson’s Disease (PD) is a neurodegenerative disorder in which gait abnormalities serve as key indicators of motor impairment and disease progression. Although wearable sensor-based gait analysis has advanced, existing methods still face challenges in modeling multi-sensor spatial relationships, extracting adaptive multi-scale temporal features, and effectively integrating time–frequency information. To address these issues, this paper proposes a multi-sensor gait neural network that integrates biomechanical priors with time–frequency collaborative learning for the automatic assessment of PD gait severity. The framework consists of three core modules: (1) BGS-GAT (Biomechanics-Guided Graph Attention Network), which constructs a sensor graph based on plantar anatomy and explicitly models inter-regional force dependencies via graph attention; (2) AMS-Inception1D (Adaptive Multi-Scale Inception-1D), which employs dilated convolutions and channel attention to extract multi-scale temporal features adaptively; and (3) TF-Branch (Time–Frequency Branch), which applies Real-valued Fast Fourier Transform (RFFT) and frequency-domain convolution to capture rhythmic and high-frequency components, enabling complementary time–frequency representation. Experiments on the PhysioNet multi-channel foot pressure dataset demonstrate that the proposed model achieves 0.930 in accuracy and 0.925 in F1-score for four-class severity classification, outperforming state-of-the-art deep learning models.
Publisher
MDPI AG
Subject
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