首页> 外文会议>2019 Scientific Meeting on Electrical-Electronics amp; Biomedical Engineering and Computer Science >Freezing of Gait (FoG) Detection Using Logistic Regression in Parkinson's Disease from Acceleration Signals
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Freezing of Gait (FoG) Detection Using Logistic Regression in Parkinson's Disease from Acceleration Signals

机译:帕金森氏病中基于加速信号的逻辑回归对步态(FoG)进行冻结检测

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摘要

The detection and diagnosis of Parkinson disease (PD) are very important concerning the treatment of this disease. In this work, the freezing of gait (FoG) from subjects with Parkinson disease has been detected by the logistic regression modeling. To complete this work, first, the acceleration sensor has been placed on the ankle of the patients to get the signals. Second, the features from these acceleration signals have been extracted by the Fast Fourier Transform (FFT) algorithm. With the FFT algorithm, the frequency coefficients have been gotten. To diminish the number of features, the statistical measures including variance, maximum amplitude, minimum amplitude, maximum energy, and minimum energy, have been applied to frequency coefficients of these signals. So, for each class (FoG and no- FoG), five parameters have been extracted. Eight patients are having Parkinson disease in the dataset. After feature extraction, the logistic regression modeling has been used to detect the freezing of gait cases from the dataset. The classification of the accuracy of 81.3% has been achieved in the classification of FoG cases having PD from the acceleration signals. In addition to logistic regression, four different classifiers (Linear SVM, Quadratic SVM, Cubic SVM, and kNN) have been used to classify the FoG cases. The obtained results have shown that the proposed method could be used in the detection and identification of Parkinson disease using only a sensor of acceleration.
机译:帕金森病(PD)的检测和诊断对于治疗这种疾病非常重要。在这项工作中,已通过逻辑回归模型检测到帕金森氏病患者的步态(FoG)冻结。为了完成这项工作,首先,将加速度传感器放在患者的脚踝上以获取信号。其次,这些加速度信号的特征已通过快速傅立叶变换(FFT)算法提取。利用FFT算法,已经获得了频率系数。为了减少特征的数量,已将包括方差,最大幅度,最小幅度,最大能量和最小能量的统计量应用于这些信号的频率系数。因此,对于每个类别(FoG和no-FoG),已经提取了五个参数。数据集中有八名患者患有帕金森病。特征提取后,逻辑回归建模已用于从数据集中检测步态病例的冻结情况。从加速度信号对具有PD的FoG情况进行分类时,已经实现了81.3%的精度分类。除了逻辑回归,还使用了四个不同的分类器(线性SVM,二次SVM,三次SVM和kNN)对FoG病例进行分类。获得的结果表明,所提出的方法可以仅使用加速度传感器用于帕金森氏病的检测和识别。

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