基于Coiflets小波包的SVM自动脑电图发作检测

P. Swami, M. Bhatia, S. Anand, B. K. Panigrahi, J. Santhosh
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引用次数: 4

摘要

即使对任何有经验的神经生理学家来说,手工分类临界和非临界活动仍然是非常令人困惑的。主要是由于癫痫发作模式存在相当大的异质性。为了解决这个问题,已经进行了大量的研究工作。但是,迄今为止部署的方法的缺点和复杂性已经值得注意,以实现其实际应用。本研究展示了一种用于脑电图信号中脑活动自动分类的专家系统设计。该开发使用“coiflets”小波包对信号进行分解,提取能量、标准差和香农熵作为特征。其次是支持向量机分类器与各种特征集组合的联邦。在该方案中,标准差特征集被证明是最佳的输入特征。平均分类准确率为99.46%,灵敏度为99.40%,特异度为99.48%,计算时间为5.600e -04 s。这些结果表明了对现有专家系统的改进,也说明了使用不同的特征。拟议的计划有望在诊所部署,并改善现有的专家系统设计。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
SVM based automated EEG seizure detection using ‘Coiflets’ wavelet packets
Manual classification of ictal and non-ictal activities continues to be very perplexing even for any experienced neurophysiologist. Mostly due of the presence of considerable heterogeneity in the seizure patterns. Extensive research efforts have gone in solving this issue. But, the shortcomings and complexity of the deployed methods till date have been noteworthy to realize their practical applications. Present study showcased an expert system design for automated classification of ictal activities in electroencephalogram signals. The development used `coiflets' wavelet packets for decomposition of signals to extract energy, standard deviation and Shannon entropy as features. Followed by support vector machine classifier with feds of various feature sets combinations. In the presented scheme, standard deviation feature set proved to be the best input features. It showed mean classification accuracy = 99.46 %, sensitivity = 99.40 % and specificity = 99.48 % with computation time = 5.60e-04 s. These outcomes demonstrated an improvement over the existing expert systems and also shed light on using different features. Proposed scheme hold promises for deployment in clinics and also for improvement in existing expert system designs.
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