Zeng Wei, Peng Zhangbo, Chen Yang, Du Shaoyi
IEEE J Biomed Health Inform. 2025 Jun 18;PP. doi: 10.1109/JBHI.2025.3580944.
The accurate diagnosis of neurodegenerative diseases (NDDs), such as Amyotrophic Lateral Sclerosis (ALS), Huntington's Disease (HD), and Parkinson's Disease (PD), remains a clinical challenge due to the complexity and subtlety of gait abnormalities. This paper proposes the Dual-Branch Attention-Enhanced Residual Network (DAERN), a novel deep learning architecture that integrates Dilated Causal Convolutions (DCCBlock) for local gait pattern extraction and Multi-Head Self-Attention (MHSA) for long-range dependency modeling. A CrossAttention Fusion module enhances feature integration, while SHapley Additive exPlanations (SHAP) and Integrated Gradients (IG) improve interpretability, providing clinically relevant insights into gait-based NDD classification. Uniform Manifold Approximation and Projection (UMAP) visualizations reveal well-separated clusters corresponding to distinct NDDs categories, demonstrating the model's ability to capture discriminative features. Comprehensive ablation studies validate the contributions of model components and preprocessing strategies, highlighting the significance of each in achieving state-of-the-art classification performance. Experimental evaluations on the Gait in Neurodegenerative Disease (GaitNDD) dataset demonstrate that DAERN achieves an accuracy of 99.64%, an F1-score of 99.65%, and an AUC of 0.9997, significantly outperforming conventional deep learning and machine learning baselines. These findings suggest that DAERN could be a valuable and interpretable tool for clinical gait assessment, aiding in early-stage monitoring and automated screening of NDDs, with potential applications in real-time wearable sensor-based gait analysis.
由于步态异常的复杂性和微妙性,准确诊断神经退行性疾病(NDDs),如肌萎缩侧索硬化症(ALS)、亨廷顿舞蹈症(HD)和帕金森病(PD),仍然是一项临床挑战。本文提出了双分支注意力增强残差网络(DAERN),这是一种新颖的深度学习架构,它集成了用于局部步态模式提取的扩张因果卷积(DCCBlock)和用于长程依赖建模的多头自注意力(MHSA)。交叉注意力融合模块增强了特征整合,而夏普利值附加解释(SHAP)和集成梯度(IG)提高了可解释性,为基于步态的NDD分类提供了临床相关见解。均匀流形逼近与投影(UMAP)可视化揭示了与不同NDD类别相对应的清晰分离的聚类,证明了该模型捕捉判别特征的能力。全面的消融研究验证了模型组件和预处理策略的贡献,突出了它们各自在实现先进分类性能方面的重要性。在神经退行性疾病步态(GaitNDD)数据集上的实验评估表明,DAERN的准确率达到99.64%,F1分数达到99.65%,AUC为0.9997,显著优于传统深度学习和机器学习基线。这些发现表明,DAERN可能是一种有价值且可解释的临床步态评估工具,有助于NDD的早期监测和自动筛查,在基于可穿戴传感器的实时步态分析中具有潜在应用。