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首页> 外文期刊>Journal of medical systems >Neural network-based computer-aided diagnosis in classification of primary generalized epilepsy by EEG signals.
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Neural network-based computer-aided diagnosis in classification of primary generalized epilepsy by EEG signals.

机译:基于神经网络的计算机辅助诊断,通过脑电信号对原发性全身性癫痫进行分类。

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摘要

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 classify subgroups of primary generalized epilepsy by using Multilayer Perceptron Neural Networks (MLPNNs). This is the first study classifying primary generalized epilepsy using MLPNNs. MLPNN classified primary generalized epilepsy with the accuracy of 84.4%. This model also classified generalized tonik-klonik, absans, myoclonic and more than one type seizures epilepsy groups correctly with the accuracy of 78.5%, 80%, 50% and 91.6%, respectively. Moreover, new MLPNNs were constructed for determining significant variables affecting the classification accuracy of neural networks. The loss of consciousness in the course of seizure time variable caused the largest decrease in the classification accuracy when it was left out. These outcomes indicate that this model classified the subgroups of primary generalized epilepsy successfully.
机译:癫痫是皮质兴奋性疾病,并且仍然是重要的医学问题。对患者的癫痫综合症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多层感知器神经网络(MLPNNs)对原发性全身性癫痫的亚组进行分类。这是第一项使用MLPNN对原发性全身性癫痫进行分类的研究。 MLPNN分类为原发性全身性癫痫,准确率为84.4%。该模型还正确地将广义的tonik-klonik,absans,肌阵挛性和一种以上癫痫发作组分类,准确率分别为78.5%,80%,50%和91.6%。此外,构造了新的MLPNN来确定影响神经网络分类准确性的重要变量。在癫痫发作时间变量过程中失去意识会导致分类准确性的下降幅度最大。这些结果表明,该模型成功地分类了原发性全身性癫痫的亚组。

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