Song Yuedong, Zhang Jiaxiang
Computer Laboratory, University of Cambridge, Cambridge, United Kingdom.
School of Psychology, Cardiff University, United Kingdom.
J Neurosci Methods. 2016 Jan 15;257:45-54. doi: 10.1016/j.jneumeth.2015.08.026. Epub 2015 Aug 31.
Epilepsy is one of the most common neurological disorders approximately one in every 100 people worldwide are suffering from it. Uncontrolled epilepsy poses a significant burden to society due to associated healthcare cost to treat and control the unpredictable and spontaneous occurrence of seizures. The objective of this research is to develop and present a novel classification framework that is utilised to discriminate interictal and preictal brain activities via quantitative analysis of electroencephalogram (EEG) recordings.
Sample entropy-based features were extracted in parallel from 6 intracranial EEG channels, and then these features were fed to the extreme learning machine model for classification. Performance was evaluated on the basis of sensitivity and specificity and validation was performed using stratified cross-validation approach.
The proposed method can correctly distinguish interictal and preictal EEGs with a sensitivity of 86.75% and a specificity of 83.80%, on average, across 21 patients and 6 epileptic seizure origins.
Compared with traditional variance-based feature extraction, the proposed SampEn-based feature extraction method not only shows a significant improvement in the accuracy, but also has higher classification robustness and stability in terms of the much lower standard errors of classification accuracies across different evaluation periods. In addition, the proposed classification framework runs around 20 times faster than the support vector machine model during testing.
The high accuracy and efficiency of the proposed method makes it feasible to extend it to the development of a real-time EEG-based brain monitoring system for epileptic seizure prediction.
癫痫是最常见的神经系统疾病之一,全球约每100人中就有1人患病。由于治疗和控制癫痫发作不可预测且自发发生的相关医疗成本,未得到控制的癫痫给社会带来了巨大负担。本研究的目的是开发并提出一种新颖的分类框架,该框架通过对脑电图(EEG)记录进行定量分析来区分发作间期和发作前期的脑活动。
从6个颅内EEG通道并行提取基于样本熵的特征,然后将这些特征输入极限学习机模型进行分类。基于敏感性和特异性评估性能,并使用分层交叉验证方法进行验证。
在所提出的方法能够正确区分发作间期和发作前期的脑电图,在21例患者和6个癫痫发作起源中,平均敏感性为86.75%,特异性为83.80%。
与传统的基于方差的特征提取方法相比,所提出的基于样本熵的特征提取方法不仅在准确率上有显著提高,而且在不同评估期的分类准确率标准误差低得多的情况下,具有更高的分类鲁棒性和稳定性。此外,所提出的分类框架在测试期间的运行速度比支持向量机模型快约20倍。
所提出方法的高准确性和效率使其有可能扩展到开发基于实时脑电图的癫痫发作预测脑监测系统。