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Selection of wavelet-bands for neural network discrimination of Parkinsonian tremor from essential tremor

机译:从原发性震颤中选择小波频带用于帕金森氏震颤的神经网络判别

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A novel discrimination method of Parkinsonian tremor from essential tremor is presented in this paper. The method uses the approximate power spectral density of specific sub-bands, which is estimated using a soft-decision wavelet-based decomposition of EMG and accelerometer signals. Selection of specific sub-bands of the spectrum of two EMG signals and accelerometer signal has been implemented to provide the neural network with its proper inputs. Two sets of data, training set and test set, which are recorded in the department of Neurology of the University of Kiel-Germany, are used in this work. The training set, which consists of 21 essential tremor subjects and 19 Parkinson disease subjects, is used to train the neural network of type feed-forward back-propagation. The test set, which consists of 20 essential tremor subjects and 20 Parkinson disease subjects are used to test the performance of the discrimination system. A best discrimination efficiency of 87.5% has been obtained in this work.
机译:提出了一种从原发性震颤中鉴别出帕金森病性震颤的新方法。该方法使用特定子带的近似功率谱密度,该密度是通过基于软决策小波的EMG和加速度计信号分解来估算的。已经实现了对两个EMG信号和加速度计信号的频谱的特定子带的选择,以为神经网络提供适当的输入。这项工作使用了两组数据,即训练集和测试集,分别记录在德国基尔大学神经病学系中。该训练集由21个基本震颤受试者和19个帕金森氏病受试者组成,用于训练类型前馈反向传播的神经网络。该测试集由20位基本震颤受试者和20位帕金森病受试者组成,用于测试辨别系统的性能。在这项工作中,最佳判别效率为87.5%。

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