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Sleep Spindle Detection and Prediction Using a Mixture of Time Series and Chaotic Features

机译:混合时间序列和混沌特征的睡眠主轴检测和预测

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It is well established that sleep spindles (bursts of oscillatory brain electrical activity) are significant indicators of learning, memory and some disease states. Therefore, many attempts have been made to detect these hallmark patterns automatically. In this pilot investigation, we paid special attention to nonlinear chaotic features of EEG signals (in combination with linear features) to investigate the detection and prediction of sleep spindles. These nonlinear features included: Higuchi's, Katz's and Sevcik's Fractal Dimensions, as well as the Largest Lyapunov Exponent and Kolmogorov's Entropy. It was shown that the intensity map of various nonlinear features derived from the constructive interference of spindle signals could improve the detection of the sleep spindles. It was also observed that the prediction of sleep spindles could be facilitated by means of the analysis of these maps. Two well-known classifiers, namely the Multi-Layer Perceptron (MLP) and the K-Nearest Neighbor (KNN) were used to distinguish between spindle and non-spindle patterns. The MLP classifier produced a~high discriminative capacity (accuracy = 94.93%, sensitivity = 94.31% and specificity = 95.28%) with significant robustness (accuracy ranging from 91.33% to 94.93%, sensitivity varying from 91.20% to 94.31%, and specificity extending from 89.79% to 95.28%) in separating spindles from non-spindles. This classifier also generated the best results in predicting sleep spindles based on chaotic features. In addition, the MLP was used to find out the best time window for predicting the sleep spindles, with the experimental results reaching 97.96% accuracy.
机译:众所周知,睡眠纺锤体(振荡性脑电活动的爆发)是学习,记忆和某些疾病状态的重要指标。因此,进行了许多尝试以自动检测这些标记图案。在这项初步研究中,我们特别注意了脑电信号的非线性混沌特征(结合线性特征),以研究睡眠纺锤体的检测和预测。这些非线性特征包括:Higuchi,Katz和Sevcik的分形维数,以及最大Lyapunov指数和Kolmogorov的熵。结果表明,从纺锤体信号的相长干涉得到的各种非线性特征的强度图可以改善对睡眠纺锤体的检测。还观察到,通过分析这些图可以促进对睡眠纺锤体的预测。使用两个著名的分类器,即多层感知器(MLP)和最接近K的邻居(KNN)来区分主轴模式和非主轴模式。 MLP分类器具有很高的判别能力(准确度= 94.93%,灵敏度= 94.31%和特异性= 95.28%),并且具有显着的鲁棒性(准确度从91.33%至94.93%,灵敏度从91.20%至94.31%不等,并且特异性扩展从89.79%降至95.28%)。该分类器还在基于混沌特征预测睡眠纺锤体方面产生了最佳结果。另外,使用MLP找出预测睡眠纺锤体的最佳时间窗口,实验结果达到97.96%的准确性。

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