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基于物联网框架的利用花授粉算法衍生的关键谱边缘特征的多通道癫痫发作分类新方法。

A Novel Approach for Multichannel Epileptic Seizure Classification Based on Internet of Things Framework Using Critical Spectral Verge Feature Derived from Flower Pollination Algorithm.

机构信息

Department of Computer Science and Engineering, MIT Art Design and Technology University, Pune 412201, India.

Department of Electronics and Telecommunication Engineering, College of Engineering Pune, Pune 411005, India.

出版信息

Sensors (Basel). 2022 Nov 29;22(23):9302. doi: 10.3390/s22239302.

Abstract

A novel approach for multichannel epilepsy seizure classification which will help to automatically locate seizure activity present in the focal brain region was proposed. This paper suggested an Internet of Things (IoT) framework based on a smart phone by utilizing a novel feature termed multiresolution critical spectral verge (MCSV), based on frequency-derived information for epileptic seizure classification which was optimized using a flower pollination algorithm (FPA). A wireless sensor technology (WSN) was utilized to record the electroencephalography (EEG) signal of epileptic patients. Next, the EEG signal was pre-processed utilizing a multiresolution-based adaptive filtering (MRAF) method. Then, the maximal frequency point at which the power spectral density (PSD) of each EEG segment was greater than the average spectral power of the corresponding frequency band was computed. This point was further optimized to extract a point termed as critical spectral verge (CSV) to extract the exact high frequency oscillations representing the actual seizure activity present in the EEG signal. Next, a support vector machine (SVM) classifier was used for channel-wise classification of the seizure and non-seizure regions using CSV as a feature. This process of classification using the CSV feature extracted from the MRAF output is referred to as the MCSV approach. As a final step, cloud-based services were employed to analyze the EEG information from the subject's smart phone. An exhaustive analysis was undertaken to assess the performance of the MCSV approach for two datasets. The presented approach showed an improved performance with a 93.83% average sensitivity, a 97.94% average specificity, a 97.38% average accuracy with the SVM classifier, and a 95.89% average detection rate as compared with other state-of-the-art studies such as deep learning. The methods presented in the literature were unable to precisely localize the origination of the seizure activity in the brain region and reported a low seizure detection rate. This work introduced an optimized CSV feature which was effectively used for multichannel seizure classification and localization of seizure origination. The proposed MCSV approach will help diagnose epileptic behavior from multichannel EEG signals which will be extremely useful for neuro-experts to analyze seizure details from different regions of the brain.

摘要

提出了一种新的多通道癫痫发作分类方法,该方法有助于自动定位大脑局灶区的发作活动。本文提出了一种基于物联网(IoT)的智能手机框架,利用一种新的特征,即多分辨率关键谱边缘(MCSV),基于频率衍生信息进行癫痫发作分类,该特征基于频率衍生信息进行优化,利用花授粉算法(FPA)进行优化。利用无线传感器技术(WSN)记录癫痫患者的脑电图(EEG)信号。接下来,利用基于多分辨率的自适应滤波(MRAF)方法对 EEG 信号进行预处理。然后,计算每个 EEG 段的功率谱密度(PSD)大于相应频带平均谱功率的最大频率点。进一步优化该点,提取一个称为关键谱边缘(CSV)的点,以提取代表 EEG 信号中实际发作活动的精确高频振荡。接下来,使用支持向量机(SVM)分类器对 CSV 作为特征的发作和非发作区域进行通道分类。使用从 MRAF 输出中提取的 CSV 特征进行分类的过程称为 MCSV 方法。最后,使用基于云的服务分析来自对象智能手机的 EEG 信息。进行了详尽的分析,以评估 MCSV 方法在两个数据集上的性能。与深度学习等其他最新研究相比,所提出的方法在 SVM 分类器上具有 93.83%的平均灵敏度、97.94%的平均特异性、97.38%的平均准确性和 95.89%的平均检测率,性能得到了提高。文献中提出的方法无法精确地定位大脑区域发作活动的起源,并且报告的发作检测率较低。这项工作引入了一种优化的 CSV 特征,该特征可有效地用于多通道发作分类和发作起源定位。所提出的 MCSV 方法将有助于从多通道 EEG 信号中诊断癫痫行为,这对神经专家分析大脑不同区域的发作细节非常有用。

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