Department of Instrumentation Engineering, Dr. B.C. Roy Engineering College, Durgapur, West Bengal, India.
Comput Biol Med. 2012 Dec;42(12):1186-95. doi: 10.1016/j.compbiomed.2012.09.012. Epub 2012 Oct 25.
The present work aims at automatic identification of various sleep stages like, sleep stages 1, 2, slow wave sleep (sleep stages 3 and 4), REM sleep and wakefulness from single channel EEG signal. Automatic scoring of sleep stages was performed with the help of pattern recognition technique which involves feature extraction, selection and finally classification. Total 39 numbers of features from time domain, frequency domain and from non-linear analysis were extracted. After extraction of features, SVM based recursive feature elimination (RFE) technique was used to find the optimum number of feature subset which can provide significant classification performance with reduced number of features for the five different sleep stages. Finally for classification, binary SVMs were combined with one-against-all (OAA) strategy. Careful extraction and selection of optimum feature subset helped to reduce the classification error to 8.9% for training dataset, validated by k-fold cross-validation (CV) technique and 10.61% in the case of independent testing dataset. Agreement of the estimated sleep stages with those obtained by expert scoring for all sleep stages of training dataset was 0.877 and for independent testing dataset it was 0.8572. The proposed ensemble SVM-based method could be used as an efficient and cost-effective method for sleep staging with the advantage of reducing stress and burden imposed on subjects.
本研究旨在从单通道 EEG 信号中自动识别各种睡眠阶段,如睡眠阶段 1、2、慢波睡眠(睡眠阶段 3 和 4)、快速眼动睡眠和觉醒。通过模式识别技术对睡眠阶段进行自动评分,该技术包括特征提取、选择和最终分类。从时域、频域和非线性分析中提取了 39 个特征。提取特征后,使用基于支持向量机的递归特征消除(RFE)技术来找到最佳的特征子集数量,该子集可以在减少特征数量的情况下为五个不同的睡眠阶段提供显著的分类性能。最后,对于分类,将二进制 SVM 与一对一(OAA)策略相结合。仔细提取和选择最佳特征子集有助于将训练数据集的分类错误降低到 8.9%,通过 k 折交叉验证(CV)技术验证,独立测试数据集的分类错误降低到 10.61%。对于训练数据集的所有睡眠阶段,估计的睡眠阶段与专家评分获得的睡眠阶段的一致性为 0.877,对于独立测试数据集的一致性为 0.8572。所提出的基于集成 SVM 的方法可以作为一种高效且具有成本效益的睡眠分期方法,具有减轻受试者压力和负担的优势。