A Comparative Study of End-To-End Discriminative Deep Learning Models for Knee Joint Kinematic Time Series Classification

M. Abid, A. Mitiche, Y. Ouakrim, P. Vendittoli, A. Fuentes, N. Hagemeister, N. Mezghani
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引用次数: 3

Abstract

One of the main motivations for classifying knee kinematic signals, namely the variation during a locomotion gait cycle of the angles the knee makes with respect to the three-dimensional (3D) planes of flexion/extension, abduction/adduction, and internal/external rotation, is to assist diagnosis of knee pathologies. These signals are informative but high dimensional, and highly variable, which has posed difficulties that have been addressed by machine learning algorithms. The purpose of this study is to investigate classification of knee kinematic signals through the entire gait using deep neural networks. The signals are first pre-processed to identify representative patterns, which are then used for deep learning of discriminative classifiers. This paper describes an efficient means of distinguishing between knee osteoarthrisis patients and asymptomatic participants, and our methods and experiments which validate it.
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端到端判别深度学习模型在膝关节运动时间序列分类中的比较研究
分类膝关节运动信号的主要动机之一,即在运动步态周期中膝关节相对于屈/伸、外展/内收和内旋/外旋的三维平面的角度变化,是为了帮助诊断膝关节病变。这些信号信息丰富,但高维且高度可变,这给机器学习算法带来了困难。本研究的目的是利用深度神经网络研究膝关节运动信号在整个步态中的分类。首先对信号进行预处理以识别有代表性的模式,然后将其用于判别分类器的深度学习。本文描述了一种有效的方法来区分膝关节骨关节炎患者和无症状的参与者,以及我们的方法和实验来验证它。
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