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A neural network approach for feature extraction and discrimination between Parkinsonian tremor and essential tremor

机译:神经网络方法用于帕金森氏震颤和原发性震颤的特征提取和识别

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BACKGROUND: Essential tremor (ET) and the tremor in Parkinson's disease (PD) are the two most common pathological tremor with a certain overlap in the clinical presentation. OBJECTIVE: The main purpose of this work is to use an artificial neural network to select the best features and to discriminate between the two types of tremors using spectral analysis of tremor time-series recorded by accelerometry and surface EMG signals. METHODS: The Soft-Decision wavelet-based technique is to be used in this work in order to obtain a 16 bands approximate spectral representation of both accelerometer and two EMG signals of two sets of data (training and test). The training set consists of 21 ET subjects and 19 PD subjects while the test set consists of 20 ET and 20 PD subjects. The data has been recorded for diagnostic purposes in the Department of Neurology of the University of Kiel, Germany. A neural network of the type feed forward back propagation has been used to find the frequency bands associated with the different signals that yield better discrimination efficiency on training data. The same designed network is used to discriminate the test set. RESULTS: Efficiency result of 87.5% was obtained using two different bands from each of the three signals under test. CONCLUSIONS: The artificial neural network has been used successfully in both feature extraction and in pattern matching tasks in a complete classification system.
机译:背景:原发性震颤(ET)和帕金森氏病(PD)震颤是两种最常见的病理性震颤,在临床表现中存在一定的重叠。目的:这项工作的主要目的是使用人工神经网络来选择最佳特征,并通过使用加速度计和表面肌电信号记录的震颤时间序列的频谱分析来区分两种类型的震颤。方法:为了获得加速度计和两组数据(训练和测试)的两个EMG信号的16频段近似频谱表示,将在这项工作中使用基于软判决小波的技术。训练集包括21个ET主题和19个PD主题,而测试集则包含20个ET和20 PD主题。数据已记录在德国基尔大学神经病学系,用于诊断。已经使用类型前馈传播的神经网络来找到与不同信号相关联的频带,这些频带在训练数据上产生更好的辨别效率。使用设计相同的网络来区分测试集。结果:从三个被测信号中的每个使用两个不同的频段,获得了效率为87.5%的结果。结论:人工神经网络已成功用于特征提取和模式匹配任务中的完整分类系统。

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