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Automatic classification of pathological gait patterns using ground reaction forces and machine learning algorithms

机译:使用地面反作用力和机器学习算法对病理步态模式进行自动分类

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An automated gait classification method is developed in this study, which can be applied to analysis and to classify pathological gait patterns using 3D ground reaction force (GRFs) data. The study involved the discrimination of gait patterns of healthy, cerebral palsy (CP) and multiple sclerosis subjects. The acquired 3D GRFs data were categorized into three groups. Two different algorithms were used to extract the gait features; the GRFs parameters and the discrete wavelet transform (DWT), respectively. Nearest neighbor classifier (NNC) and artificial neural networks (ANN) were also investigated for the classification of gait features in this study. Furthermore, different feature sets were formed using a combination of the 3D GRFs components (mediolateral, anterioposterior, and vertical) and their various impacts on the acquired results were evaluated. The best leave-one-out (LOO) classification accuracy 85% was achieved. The results showed some improvement through the application of a features selection algorithm based on M-shaped value of vertical force and the statistical test ANOVA of mediolateral and anterioposterior forces. The optimal feature set of six features enhanced the accuracy to 95%. This work can provide an automated gait classification tool that may be useful to the clinician in the diagnosis and identification of pathological gait impairments.
机译:本研究开发了一种自动步态分类方法,该方法可用于分析和使用3D地面反作用力(GRF)数据对病理性步态模式进行分类。该研究涉及对健康,脑性瘫痪(CP)和多发性硬化症受试者的步态模式的区分。采集的3D GRF数据分为三组。两种不同的算法被用来提取步态特征。 GRFs参数和离散小波变换(DWT)。在本研究中,还对最近邻居分类器(NNC)和人工神经网络(ANN)进行了步态特征分类研究。此外,使用3D GRF组件(中外侧,前后和垂直)的组合形成了不同的特征集,并评估了它们对获得结果的各种影响。实现了最佳的留一法(LOO)分类准确性85%。结果表明,通过应用基于M形垂直力值的特征选择算法以及对中外侧和前后侧力的统计检验ANOVA进行的改进。六个功能的最佳功能集将准确性提高到95%。这项工作可以提供一种自动化的步态分类工具,对临床医生在诊断和识别病理性步态障碍中可能有用。

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