Classification and transfer learning of sleep spindles based on convolutional neural networks

Jun Liang, Abdelkader Nasreddine Belkacem, Yanxin Song, Jiaxin Wang, Zhiguo Ai, Xuanqi Wang, Jun Guo, Lingfeng Fan, Changming Wang, Bowen Ji, Zengguang Wang
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Abstract

Sleep plays a critical role in human physiological and psychological health, and electroencephalography (EEG), an effective sleep-monitoring method, is of great importance in revealing sleep characteristics and aiding the diagnosis of sleep disorders. Sleep spindles, which are a typical phenomenon in EEG, hold importance in sleep science.This paper proposes a novel convolutional neural network (CNN) model to classify sleep spindles. Transfer learning is employed to apply the model trained on the sleep spindles of healthy subjects to those of subjects with insomnia for classification. To analyze the effect of transfer learning, we discuss the classification results of both partially and fully transferred convolutional layers.The classification accuracy for the healthy and insomnia subjects’ spindles were 93.68% and 92.77%, respectively. During transfer learning, when transferring all convolutional layers, the classification accuracy for the insomnia subjects’ spindles was 91.41% and transferring only the first four convolutional layers achieved a classification result of 92.80%. The experimental results demonstrate that the proposed CNN model can effectively classify sleep spindles. Furthermore, the features learned from the data of the normal subjects can be effectively applied to the data for subjects with insomnia, yielding desirable outcomes.These outcomes underscore the efficacy of both the collected dataset and the proposed CNN model. The proposed model exhibits potential as a rapid and effective means to diagnose and treat sleep disorders, thereby improving the speed and quality of patient care.
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基于卷积神经网络的睡眠棘波分类和迁移学习
睡眠对人的生理和心理健康起着至关重要的作用,而脑电图(EEG)作为一种有效的睡眠监测方法,在揭示睡眠特征和辅助诊断睡眠障碍方面具有重要意义。睡眠棘波是脑电图中的一种典型现象,在睡眠科学中具有重要意义。本文提出了一种新型卷积神经网络(CNN)模型,用于对睡眠棘波进行分类。本文提出了一种新的卷积神经网络(CNN)模型来对睡眠棘波进行分类,并采用迁移学习的方法,将在健康受试者睡眠棘波上训练的模型应用到失眠受试者的睡眠棘波上进行分类。为了分析迁移学习的效果,我们讨论了部分和完全迁移卷积层的分类结果。在转移学习过程中,当转移所有卷积层时,失眠受试者脊柱的分类准确率为 91.41%,而只转移前四个卷积层时,分类结果为 92.80%。实验结果表明,所提出的 CNN 模型能有效地对睡眠蛛网膜进行分类。此外,从正常受试者数据中学到的特征可有效地应用于失眠受试者的数据,并取得了理想的结果。所提出的模型有望成为诊断和治疗睡眠障碍的快速有效手段,从而提高病人护理的速度和质量。
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