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A Radial Basis Function Neural Network Model for Classification of Epilepsy Using EEG Signals

机译:基于脑电信号的癫痫分类的径向基函数神经网络模型

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Epilepsy is a disorder of cortical excitability and still an important medical problem. The correct diagnosis of a patient’s epilepsy syndrome clarifies the choice of drug treatment and also allows an accurate assessment of prognosis in many cases. The aim of this study is to evaluate epileptic patients and classify epilepsy groups such as partial and primary generalized epilepsy by using Radial Basis Function Neural Network (RBFNN) and Multilayer Perceptron Neural Network (MLPNNs). Four hundred eighteen patients with epilepsy diagnoses according to International League against Epilepsy (ILAE 1981) were included in this study. The correct classification of this data was performed by two expert neurologists before they were executed by neural networks. The neural networks were trained by the parameters obtained from the EEG signals and clinic properties of the patients. Experimental results show that the predictions of both neural network models are very satisfying for learning data sets. According to test results, RBFNN (total classification accuracy = 95.2%) has classified more successfully when compared with MLPNN (total classification accuracy = 89.2%). These results indicate that RBFNN model may be used in clinical studies as a decision support tool to confirm the classification of epilepsy groups after the model is developed.
机译:癫痫是皮质兴奋性疾病,并且仍然是重要的医学问题。对患者的癫痫综合征的正确诊断可以澄清药物治疗的选择,还可以在许多情况下准确评估预后。这项研究的目的是通过使用径向基函数神经网络(RBFNN)和多层感知器神经网络(MLPNN)对癫痫患者进行评估,并对部分和原发性全身性癫痫等癫痫病进行分类。根据国际抗癫痫联盟(ILAE 1981)诊断的418例癫痫患者被纳入本研究。在由神经网络执行之前,由两名专业的神经科医生对数据进行了正确的分类。通过从脑电信号和患者的临床特征中获得的参数来训练神经网络。实验结果表明,两种神经网络模型的预测对于学习数据集都非常令人满意。根据测试结果,与MLPNN(总分类准确度= 89.2%)相比,RBFNN(总分类准确度= 95.2%)已成功分类。这些结果表明,RBFNN模型可在临床研究中用作决策支持工具,以在模型开发后确认癫痫组的分类。

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