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引用次数: 0
摘要
本文提出了一种基于变分模式分解(VMD)和二元灰狼优化(BGWO)的癫痫发作分类框架。VMD将脑电信号非递归地分解为带限内禀模态函数(BL-IMFs)。从bl - imf中提取频域、时域和基于信息论的特征。进一步,利用BGWO选择最优特征子集。最后,使用六种不同的监督式机器学习算法,将选择的特征用于分类。所提出的框架已经通过来自CHB-MIT头皮脑电图和波恩大学数据库的58个测试案例进行了实验验证。所提出的框架性能通过平均灵敏度、特异性和准确性进行量化。所选择的特征与贝叶斯正则化浅层神经网络(BR-SNNs)一起,在数据库1的1秒和2秒内分别获得了99.53和99.64的最大准确率。对于数据库2,所提出的框架在1 s和2 s epoch的准确率分别达到99.79和99.84。
Variational mode decomposition and binary grey wolf optimization-based automated epilepsy seizure classification framework.
This work proposes a variational mode decomposition (VMD) and binary grey wolf optimization (BGWO) based seizure classification framework. VMD decomposes the EEG signal into band-limited intrinsic mode function (BL-IMFs) non-recursively. The frequency domain, time domain, and information theory-based features are extracted from the BL-IMFs. Further, an optimal feature subset is selected using BGWO. Finally, the selected features were utilized for classification using six different supervised machine learning algorithms. The proposed framework has been validated experimentally by 58 test cases from the CHB-MIT scalp EEG and the Bonn University database. The proposed framework performance is quantified by average sensitivity, specificity, and accuracy. The selected features, along with Bayesian regularized shallow neural networks (BR-SNNs), resulted in maximum accuracy of 99.53 and 99.64 for 1 and 2 s epochs, respectively, for database 1. The proposed framework has achieved 99.79 and 99.84 accuracy for 1 and 2 s epochs, respectively, for database 2.
期刊介绍:
Biomedical Engineering / Biomedizinische Technik (BMT) is a high-quality forum for the exchange of knowledge in the fields of biomedical engineering, medical information technology and biotechnology/bioengineering. As an established journal with a tradition of more than 60 years, BMT addresses engineers, natural scientists, and clinicians working in research, industry, or clinical practice.