IEEE J Biomed Health Inform. 2023 Aug;27(8):4166-4177. doi: 10.1109/JBHI.2023.3272902. Epub 2023 Aug 7.
Freezing of gait (FoG) is one of the most common symptoms of Parkinson's disease, which is a neurodegenerative disorder of the central nervous system impacting millions of people around the world. To address the pressing need to improve the quality of treatment for FoG, devising a computer-aided detection and quantification tool for FoG has been increasingly important. As a non-invasive technique for collecting motion patterns, the footstep pressure sequences obtained from pressure sensitive gait mats provide a great opportunity for evaluating FoG in the clinic and potentially in the home environment. In this study, FoG detection is formulated as a sequential modelling task and a novel deep learning architecture, namely Adversarial Spatio-temporal Network (ASTN), is proposed to learn FoG patterns across multiple levels. ASTN introduces a novel adversarial training scheme with a multi-level subject discriminator to obtain subject-independent FoG representations, which helps to reduce the over-fitting risk due to the high inter-subject variance. As a result, robust FoG detection can be achieved for unseen subjects. The proposed scheme also sheds light on improving subject-level clinical studies from other scenarios as it can be integrated with many existing deep architectures. To the best of our knowledge, this is one of the first studies of footstep pressure-based FoG detection and the approach of utilizing ASTN is the first deep neural network architecture in pursuit of subject-independent representations. In our experiments on 393 trials collected from 21 subjects, the proposed ASTN achieved an AUC 0.85, clearly outperforming conventional learning methods.
冻结步态(Freezing of gait,FoG)是帕金森病(Parkinson's disease)最常见的症状之一,这种中枢神经系统退行性疾病影响着全球数百万人。为了解决改善 FoG 治疗质量的迫切需求,设计一种用于 FoG 的计算机辅助检测和量化工具变得越来越重要。作为一种用于收集运动模式的非侵入性技术,压力敏感步态垫获取的脚步压力序列为在临床和潜在的家庭环境中评估 FoG 提供了很好的机会。在这项研究中,将 FoG 检测制定为顺序建模任务,并提出了一种新的深度学习架构,即对抗时空网络(Adversarial Spatio-temporal Network,ASTN),用于在多个层次上学习 FoG 模式。ASTN 引入了一种新颖的对抗性训练方案,使用多级主题鉴别器获得与主题无关的 FoG 表示,这有助于降低由于高个体间差异导致的过度拟合风险。因此,可以为未见过的主题实现稳健的 FoG 检测。所提出的方案还为其他场景下的主题水平临床研究提供了思路,因为它可以与许多现有的深度学习架构集成。据我们所知,这是首次基于脚步压力的 FoG 检测研究之一,而利用 ASTN 的方法是追求与主题无关表示的首个深度神经网络架构。在我们对 21 名受试者采集的 393 次试验的实验中,所提出的 ASTN 达到了 AUC 0.85,明显优于传统学习方法。