基于人工神经网络和Grasshopper优化算法的癫痫检测

Buhari U. Umar, M. B. Muazu, J. Kolo, J. Agajo, I. D. Matthew
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引用次数: 3

摘要

癫痫影响约1%的当代人口,严重影响患者的福祉。它是一种中枢神经系统的神经紊乱,通常以突然发作为特征。检测和预测癫痫发作的可能性已经吸引了人类超过35年。脑电图(EEG)是检测和预测癫痫发作的主要工具之一,它通过测量神经元放电引起的细胞外场电位来记录大脑活动。即使是神经专家也很难解释这种脑电图,即使如此,它也很耗时,经常具有挑战性,会造成人为错误和治疗延误。本文提出了一种基于Grasshopper优化算法(GOA)和人工神经网络(ANN)的脑电癫痫发作自动检测混合分类模型,称为GOA-ANN方法。提取9个参数(均值、方差值、标准差值、能量值、熵值和最大值、均方根值、峰度和偏度)作为特征训练人工神经网络分类器。为了获得有效的脑电分类,采用GOA方法选择最佳特征。与其他研究相比,该结果能够检测癫痫,提高癫痫的诊断准确率,准确率为98.4%。研究还与采用前馈网络的人工神经网络进行了比较,结果表明GOA_ANN方法具有更好的性能。
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Epilepsy Detection Using Artificial Neural Network and Grasshopper Optimization Algorithm (GOA)
Epilepsy affects about 1 % of the contemporary population and sternly reduces the wellbeing of its patients. It is a neurological disorder of the central nervous system that is usually characterized by sudden seizure. The possibility of detecting and predicting epileptic seizure has engrossed mankind already for over 35 years. One of the main tools in detecting and predicting the Epilepsy seizures are the Electroencephalograms (EEG), which record the brain activity by measuring the extracellular field potentials due to neuronal discharges. This EEG is quite difficult and complex to interpret even by an expert neurologist, even so, it is time-consuming, often challenging, sets in human error as well as delay in treatment. In this research, a hybrid classification model using Grasshopper Optimization Algorithm (GOA) and Artificial Neural Network (ANN) for automatic seizure detection in EEG is proposed called GOA-ANN approach. Nine parameters (mean value, variance value, Standard deviation value, energy value, entropy value and maximum value, RMS value, kurtosis and skewness) were extracted and used as the features to train the ANN classifiers. GOA was used for selecting the best features in order to obtain an effective EEG classification. In comparison with other research, the result was able to detect epilepsy and enhance the diagnosis of epilepsy with an accuracy of 98.4%. The research was also compared with Artificial Neural Network using Feed-Forward network, the result shows that GOA_ANN approach performed better.
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