Deep Learning-Based Classification of Epileptic Electroencephalography Signals Using a Concentrated Time-Frequency Approach.

International journal of neural systems Pub Date : 2023-12-01 Epub Date: 2023-10-13 DOI:10.1142/S0129065723500648
Mosab A A Yousif, Mahmut Ozturk
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Abstract

ConceFT (concentration of frequency and time) is a new time-frequency (TF) analysis method which combines multitaper technique and synchrosqueezing transform (SST). This combination produces highly concentrated TF representations with approximately perfect time and frequency resolutions. In this paper, it is aimed to show the TF representation performance and robustness of ConceFT by using it for the classification of the epileptic electroencephalography (EEG) signals. Therefore, a signal classification algorithm which uses TF images obtained with ConceFT to feed the transfer learning structure has been presented. Epilepsy is a common neurological disorder that millions of people suffer worldwide. Daily lives of the patients are quite difficult because of the unpredictable time of seizures. EEG signals monitoring the electrical activity of the brain can be used to detect approaching seizures and make possible to warn the patient before the attack. GoogLeNet which is a well-known deep learning model has been preferred to classify TF images. Classification performance is directly related to the TF representation accuracy of the ConceFT. The proposed method has been tested for various classification scenarios and obtained accuracies between 95.83% and 99.58% for two and three-class classification scenarios. High results show that ConceFT is a successful and promising TF analysis method for non-stationary biomedical signals.

使用集中时频方法对癫痫脑电图信号进行基于深度学习的分类。
ConceFT(频率和时间的集中)是一种新的时频分析方法,它结合了多任务技术和同步压缩变换(SST)。这种组合产生了具有近似完美的时间和频率分辨率的高度集中的TF表示。本文旨在通过将ConceFT用于癫痫脑电图(EEG)信号的分类来展示其TF表示性能和鲁棒性。因此,已经提出了一种信号分类算法,该算法使用通过ConceFT获得的TF图像来馈送转移学习结构。癫痫是一种常见的神经系统疾病,全世界有数百万人患有。由于癫痫发作的时间不可预测,患者的日常生活相当困难。监测大脑电活动的EEG信号可以用来检测即将到来的癫痫发作,并有可能在发作前警告患者。GoogLeNet是一种众所周知的深度学习模型,它已被首选用于对TF图像进行分类。分类性能直接关系到ConceFT的TF表示精度。所提出的方法已经在各种分类场景中进行了测试,在两类和三类分类场景中获得了95.83%和99.58%的准确率。高结果表明,ConceFT是一种成功且有前景的非平稳生物医学信号TF分析方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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