利用超参数优化的机器学习算法从脑电图信号数据中检测癫痫发作

A. Rahman, Fahim Faisal, M. M. Nishat, Muntequa Imtiaz Siraji, Lamim Ibtisam Khalid, Md. Rezaul Hoque Khan, Md. Taslim Reza
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引用次数: 14

摘要

癫痫发作是指由异常高或同步的神经元活动引起的大脑中短暂出现的体征。利用脑电图信号可以识别癫痫发作。然而,将机器学习分类器与这些脑电图数据结合起来,可以显著有助于以自动化的方式检测癫痫发作。本文利用UCI癫痫发作数据集,研究了9种机器学习算法,并构建了模型。注意到机器学习模型的性能,并对超参数调优和非超参数调优进行了详细的比较分析。随机搜索交叉验证已用于调优超参数。在准确度、精密度、召回率、特异性、FI-Score和ROC等不同的性能指标方面均取得了令人满意的结果。经过仿真,支持向量机(SVM)在准确率方面表现最好,达到97.86%以上。然而,随机森林(RF)和多层感知器(MLP)也分别描述了97.50%和97.26%的准确率。因此,适当实施基于机器学习的诊断系统,可以早期识别和治疗癫痫发作的患者。
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Detection of Epileptic Seizure from EEG Signal Data by Employing Machine Learning Algorithms with Hyperparameter Optimization
Epileptic seizure refers to a brief occurrence of signs in the brain caused by abnormally high or synchronized neuronal activity. With the utilization of EEG signal, the epileptic seizure can be identified. However, incorporating machine learning classifiers with this EEG data can significantly contribute in detecting epileptic seizure in an automated manner. In this paper, nine machine learning algorithms have been studied and models have been constructed by utilizing UCI Epileptic Seizure dataset. The performances of the ML models are noted and detailed comparative analysis has been exhibited for both hyperparameter tuning and without hyperparameter tuning. Random search cross validation has been used for tuning the hyperparameters. Satisfactory results have been witnessed in terms of different performance metrics like accuracy, precision, recall, specificity, FI-Score, and ROC. After simulation, Support Vector Machine (SVM) performed the best in terms of accuracy with over 97.86%. However, Random Forest (RF) and Multi-Layer Perceptron (MLP) also depicted promising accuracies of 97.50% and 97.26% respectively. Therefore, with proper implementation of the ML based diagnosis system, the patients having epileptic seizures can be identified and treated at an early stage.
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