Annu Int Conf IEEE Eng Med Biol Soc. 2021 Nov;2021:43-46. doi: 10.1109/EMBC46164.2021.9629878.
Deep learning has achieved unprecedented success in sleep stage classification tasks, which starts to pave the way for potential real-world applications. However, due to its enormous size, deployment of deep neural networks is hindered by high cost at various aspects, such as computation power, storage, network bandwidth, power consumption, and hardware complexity. For further practical applications (e.g., wearable sleep monitoring devices), there is a need for simple and compact models. In this paper, we propose a lightweight model, namely LightSleepNet, for rapid sleep stage classification based on spectrograms. Our model is assembled by a much fewer number of model parameters compared to existing ones. Furthermore, we convert the raw EEG data into spectrograms to speed up the training process. We evaluate the model performance on several public sleep datasets with different characteristics. Experimental results show that our lightweight model using spectrogram as input can achieve comparable overall accuracy and Cohen's kappa (SHHS100: 86.7%-81.3%, Sleep-EDF: 83.7%-77.5%, Sleep-EDF-v1: 88.3%-84.5%) compared to the state-of-the-art methods on experimental datasets.
深度学习在睡眠阶段分类任务中取得了前所未有的成功,这为潜在的实际应用铺平了道路。然而,由于其巨大的规模,深度神经网络的部署在计算能力、存储、网络带宽、功耗和硬件复杂性等方面受到高成本的阻碍。对于进一步的实际应用(例如,可穿戴睡眠监测设备),需要简单紧凑的模型。在本文中,我们提出了一种轻量级模型,即 LightSleepNet,用于基于频谱图的快速睡眠阶段分类。与现有模型相比,我们的模型使用的模型参数数量要少得多。此外,我们将原始 EEG 数据转换为频谱图,以加速训练过程。我们在具有不同特征的几个公共睡眠数据集上评估模型性能。实验结果表明,我们的轻量级模型使用频谱图作为输入,可以在实验数据集上与最先进的方法相比达到相当的整体准确性和 Cohen's kappa(SHHS100:86.7%-81.3%,Sleep-EDF:83.7%-77.5%,Sleep-EDF-v1:88.3%-84.5%)。