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用于检测和分类因衰老导致的行走模式变化的神经网络。

Neural networks for detection and classification of walking pattern changes due to ageing.

作者信息

Begg R, Kamruzzaman J

机构信息

Centre for Ageing, Rehabilitation, Exercise & Sport, Victoria University, City Flinders Campus, Melbourne City, Australia.

出版信息

Australas Phys Eng Sci Med. 2006 Jun;29(2):188-95. doi: 10.1007/BF03178892.

Abstract

With age, gait functions reflected in the walking patterns degenerate and threaten the balance control mechanisms of the locomotor system. The aim of this paper is to explore applications of artificial neural networks for automated recognition of gait changes due to ageing from their respective gait-pattern characteristics. The ability of such discrimination has many advantages including the identification of at-risk or faulty gait. Various gait features (e.g., temporal-spatial, foot-ground reaction forces and lower limb joint angular data) were extracted from 12 young and 12 elderly participants during normal walking and these were utilized for training and testing on three neural network algorithms (Standard Backpropagation: Scaled Conjugate Gradient; and Backpropagation with Bayesian Regularization, BR). Receiver operating characteristics plots, sensitivity and specificity results as well as accuracy rates were used to evaluate performance of the three classifiers. Cross-validation test results indicate a maximum generalization performance of 83.3% in the recognition of the young and elderly gait patterns. Out of the three neural network algorithms, BR performed superiorly in the test results with best sensitivity, selectivity and detection rates. With the help of a feature selection technique, the maximum classification accuracy of the BR attained 100%, when trained with a small subset of selected gait features. The results of this study demonstrate the capability of neural networks in the detection of gait changes with ageing and their potentials for future applications as gait diagnostics.

摘要

随着年龄增长,行走模式中所反映的步态功能会退化,并威胁运动系统的平衡控制机制。本文旨在探讨人工神经网络在根据各自的步态模式特征自动识别因衰老导致的步态变化方面的应用。这种辨别能力具有诸多优势,包括识别有风险或有缺陷的步态。在正常行走过程中,从12名年轻参与者和12名老年参与者身上提取了各种步态特征(如时空特征、足底地面反作用力和下肢关节角度数据),并将其用于三种神经网络算法(标准反向传播:缩放共轭梯度;以及带贝叶斯正则化的反向传播,BR)的训练和测试。使用接收器操作特性图、灵敏度和特异性结果以及准确率来评估这三种分类器的性能。交叉验证测试结果表明,在识别年轻和老年步态模式方面,最大泛化性能为83.3%。在这三种神经网络算法中,BR在测试结果中表现出色,具有最佳的灵敏度、选择性和检测率。借助特征选择技术,当使用一小部分选定的步态特征进行训练时,BR的最大分类准确率达到了100%。本研究结果证明了神经网络在检测因衰老导致的步态变化方面的能力及其作为步态诊断未来应用的潜力。

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