Parkinsonian gait modelling from an anomaly deep representation

IF 3 4区 计算机科学 Q2 COMPUTER SCIENCE, INFORMATION SYSTEMS
Edgar Rangel, Fabio Martínez
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引用次数: 0

Abstract

Parkinson’s Disease (PD) is associated with gait movement disorders, such as bradykinesia, stiffness, tremors and postural instability. Hence, a kinematic gait analysis for PD characterization is key to support diagnosis and to carry out an effective treatment planning. Nowadays, automatic classification and characterization strategies are based on deep learning representations, following supervised rules, and assuming large and stratified data. Nonetheless, such requirements are far from real clinical scenarios. Additionally, supervised rules may introduce bias into architectures from expert’s annotations. This work introduces a self-supervised generative representation to learn gait-motion-related patterns, under the pretext task of video reconstruction. Following an anomaly detection framework, the proposed architecture can avoid inter-class variance, learning hidden and complex kinematics locomotion relationships. In this study, the proposed model was trained and validated with an owner dataset (14 Parkinson and 23 control). Also, an external public dataset (16 Parkinson, 30 control, and 50 Knee-arthritis) was used only for testing, measuring the generalization capability of the method. During training, the method learns from control subjects, while Parkinson subjects are detected as anomaly samples. From owner dataset, the proposed approach achieves a ROC-AUC of 95% in classification task. Regarding the external dataset, the architecture evidence generalization capabilities, achieving a 75% of ROC-AUC (shapeness and homoscedasticity of 66.7%), without any additional training. The proposed model has remarkable performance in detecting gait parkinsonian patterns, recorded in markerless videos, even competitive results with classes non-observed during training.

Abstract Image

从异常深度表示中建立帕金森步态模型
帕金森病(PD)与步态运动障碍有关,如运动迟缓、僵硬、震颤和姿势不稳。因此,针对帕金森病特征的运动步态分析是支持诊断和进行有效治疗规划的关键。如今,自动分类和特征描述策略都是基于深度学习表征,遵循监督规则,并假设有大量分层数据。然而,这些要求与真实的临床场景相去甚远。此外,监督规则可能会在专家注释的架构中引入偏差。这项研究以视频重建任务为借口,引入了一种自监督生成表示法来学习步态运动相关模式。根据异常检测框架,所提出的架构可以避免类间差异,学习隐藏的复杂运动学运动关系。在这项研究中,所提出的模型通过所有者数据集(14 个帕金森患者和 23 个对照组患者)进行了训练和验证。此外,一个外部公共数据集(16 个帕金森患者、30 个对照组和 50 个膝关节炎患者)仅用于测试,以衡量该方法的泛化能力。在训练过程中,该方法从对照组受试者身上学习,而帕金森受试者则作为异常样本进行检测。从所有者数据集来看,所提出的方法在分类任务中的 ROC-AUC 达到了 95%。至于外部数据集,该架构证明了其泛化能力,在没有任何额外训练的情况下,ROC-AUC 达到了 75%(形状和同方差为 66.7%)。所提出的模型在检测无标记视频中记录的帕金森病步态模式方面表现出色,甚至与训练期间未观察到的类别具有竞争性。
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来源期刊
Multimedia Tools and Applications
Multimedia Tools and Applications 工程技术-工程:电子与电气
CiteScore
7.20
自引率
16.70%
发文量
2439
审稿时长
9.2 months
期刊介绍: Multimedia Tools and Applications publishes original research articles on multimedia development and system support tools as well as case studies of multimedia applications. It also features experimental and survey articles. The journal is intended for academics, practitioners, scientists and engineers who are involved in multimedia system research, design and applications. All papers are peer reviewed. Specific areas of interest include: - Multimedia Tools: - Multimedia Applications: - Prototype multimedia systems and platforms
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