Detection of Startle-Type Epileptic Seizures using Machine Learning Technique

Pushpa Balakrishnan, S. Hemalatha, Dinesh Nayak Shroff Keshav
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引用次数: 2

Abstract

Abstract Background Epilepsy is a common neurological disorder characterized by seizures and can lead to life-threatening consequences. The electroencephalogram (EEG) is a diagnostic test used to analyze brain activity in various neurological conditions including epilepsy and interpreted by the clinician for appropriate diagnosis. However, the process of EEG analysis for diagnosis can be automated using machine learning algorithms (MLAs) to aid the clinician. The objective of the study was to test different algorithms that could be used for the detection of seizures. Materials and Methods Video EEG (vEEG) was collected from subjects diagnosed to have episodes of seizures. The epilepsy dataset thus obtained was subjected to empirical mode decomposition (EMD) and the signal was decomposed into intrinsic mode functions (IMFs). The first five levels of decomposition were considered for analysis as per the established protocol. Statistical features such as interquartile range (IQR), entropy, and mean absolute deviation (MAD) were extracted from these IMFs. Results In this study, different MLAs such as nearest neighbor (NN), naïve Bayes (NB), and support vector machines (SVMs) were used to distinguish between normal (interictal) and abnormal (ictal) states. The demonstrated accuracy rates were 97.32% for NN, 99.02% for NB, and 93.75% for SVM. Conclusion Based on this accuracy and sensitivity, it may be posited that the NB classifier provides significantly better results for the detection of abnormal signals indicating that MLA can detect the seizure with better accuracy.
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利用机器学习技术检测首发型癫痫发作
背景癫痫是一种常见的以癫痫发作为特征的神经系统疾病,可导致危及生命的后果。脑电图(EEG)是一种诊断测试,用于分析包括癫痫在内的各种神经系统疾病的大脑活动,并由临床医生解释以进行适当的诊断。然而,脑电图分析的诊断过程可以使用机器学习算法(MLAs)自动化,以帮助临床医生。这项研究的目的是测试可用于检测癫痫发作的不同算法。材料与方法采集被诊断为癫痫发作的受试者的视频脑电图(vEEG)。将得到的癫痫数据集进行经验模态分解(EMD),并将信号分解为内禀模态函数(IMFs)。根据已建立的方案,考虑前五个分解层次进行分析。统计特征,如四分位数范围(IQR),熵和平均绝对偏差(MAD)从这些imf中提取。结果在本研究中,使用了最近邻(NN)、naïve贝叶斯(NB)和支持向量机(svm)等不同的mla来区分正常(间隔)和异常(间隔)状态。NN的准确率为97.32%,NB为99.02%,SVM为93.75%。结论基于此准确率和灵敏度,可以认为NB分类器对异常信号的检测效果明显更好,说明MLA检测癫痫发作的准确率更高。
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来源期刊
International Journal of Epilepsy
International Journal of Epilepsy Medicine-Neurology (clinical)
CiteScore
0.90
自引率
0.00%
发文量
6
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