IEEE Trans Neural Syst Rehabil Eng. 2021;29:360-367. doi: 10.1109/TNSRE.2021.3051093. Epub 2021 Mar 2.
Ataxic gait monitoring and assessment of neurological disorders belong to important multidisciplinary areas that are supported by digital signal processing methods and machine learning tools. This paper presents the possibility of using accelerometric data to optimise deep learning convolutional neural network systems to distinguish between ataxic and normal gait. The experimental dataset includes 860 signal segments of 16 ataxic patients and 19 individuals from the control set with the mean age of 38.6 and 39.6 years, respectively. The proposed methodology is based upon the analysis of frequency components of accelerometric signals simultaneously recorded at specific body positions with a sampling frequency of 60 Hz. The deep learning system uses all of the frequency components in a range of 〈0,30 〉 Hz. Our classification results are compared with those obtained by standard methods, which include the support vector machine, Bayesian methods, and the two-layer neural network with features estimated as the relative power in selected frequency bands. Our results show that the appropriate selection of sensor positions can increase the accuracy from 81.2% for the foot position to 91.7% for the spine position. Combining the input data and the deep learning methodology with five layers increased the accuracy to 95.8%. Our methodology suggests that artificial intelligence methods and deep learning are efficient methods in the assessment of motion disorders and they have a wide range of further applications.
共济失调步态监测和神经障碍评估属于重要的多学科领域,得到了数字信号处理方法和机器学习工具的支持。本文提出了使用加速度计数据来优化深度学习卷积神经网络系统,以区分共济失调步态和正常步态的可能性。实验数据集包括 16 名共济失调患者和 19 名对照组个体的 860 个信号段,平均年龄分别为 38.6 岁和 39.6 岁。所提出的方法基于对特定身体位置同时记录的加速度计信号的频率分量进行分析,采样频率为 60 Hz。深度学习系统使用〈0,30 〉Hz 范围内的所有频率分量。我们的分类结果与使用标准方法(包括支持向量机、贝叶斯方法和具有在选定频带中估计的相对功率作为特征的两层神经网络)获得的结果进行了比较。我们的结果表明,适当选择传感器位置可以将足部位置的准确率从 81.2%提高到脊柱位置的 91.7%。将输入数据与具有五个层的深度学习方法相结合,将准确率提高到了 95.8%。我们的方法表明,人工智能方法和深度学习是运动障碍评估的有效方法,并且具有广泛的进一步应用。