多发性神经病患者步态特征分析

Xingchen Wang, O. Kuzmicheva, M. Spranger, A. Gräser
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引用次数: 9

摘要

多神经病变(PNP)和衰老都会改变老年人的行走方式。然而,从技术角度来看,从步态模式识别PNP的方法还没有得到充分的研究。本研究提出了一种基于人工神经网络(ANN)的神经病变步态与年轻健康步态和老年健康步态的自动分类方法。采用鲁棒无标记步态检测系统,在正常临床条件下对10例青年、10例老年和10例神经病变患者进行实验。提取步态的时域特征、关节运动轨迹的时域特征、关节角的频域傅里叶变换和对称指标等四种步态特征。采用单因素方差分析(ANOVA)作为统计分析工具和特征选择方法。每种类型的特征和从方差分析中选择的特征分别作为两层前馈神经网络的输入。采用增强泛化的双重交叉验证方法来评估分类的准确性。结果验证的基础真相信息由参与研究的医学专家提供。单个特征集的分类结果表明,运动特征在时域上的分类准确率最高,分别为94.2%、94.8%和94.8%,对称特征的分类准确率最低。结合两组特征可以略微提高性能,其中选择的显著特征的准确率分别为96.2%、97.0%和96.9%,达到最佳性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Gait feature analysis of polyneuropathy patients
Polyneuropathy (PNP) and aging both bring changes to the walking pattern of elderly people. However, the identification methods of PNP from gait patterns were not sufficiently investigated from a technical perspective. In this study an automated classification method was developed to discriminate the neuropathic gait from both young healthy and old healthy gait using artificial neural network (ANN). A robust markerless gait detection system was employed and experiments were conducted in normal clinical conditions on 10 young, 10 old and 10 neuropathy patients. Four types of gait features, namely temporal features, kinematic joint trajectories in time domain, the Fourier transform of joint angles in frequency domain, and the symmetry indexes, were extracted. One-way analysis of variance (ANOVA) was employed as a statistical analysis tool and feature selection method. Each type of features and the selected features obtained from ANOVA were served as the input of a two-layer-feed-forward neural network separately. A twofold cross validation method with enhanced generalization was utilized to evaluate the accuracy of classification. The ground truth information for the result validation was provided by the medical experts involved in the study. The outcome of individual feature set showed that the kinematic features in time domain reached the highest classification accuracies of 94.2%, 94.8% and 94.8% for three classes, while the symmetric features yielded the lowest. Combining two sets of features can improve the performance slightly and the best performance was achieved by using the selected significant features with accuracies of 96.2%, 97.0% and 96.9% respectively.
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