Automatic Arousal Detection Using Multi-model Deep Neural Network

Ziqian Jia, Xingjun Wang, Xiaoqing Zhang, Mingkai Xu
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引用次数: 1

Abstract

Arousal labeling is one of the important methods in the diagnosis and treatment of sleep-related diseases, and are usually analyzed manually by doctors based on polysomnography (PSG) signals. In order to solve the problem of time-consuming and labor-intensive manual arousal analysis in sleep physiological signals, we propose an automatic arousal detection method using multi-model deep neural networks. Combining methods such as one-to-many formulation, LSTM, and network structure improvements, the performance of deep neural network models on clinical data set has been significantly improved, and multiple indicators have been improved (precision 86.7%, recall 86.0% and F1 86.3%). At the same time, the model parameters have been greatly streamlined, making them more efficient, laying a foundation for the application of automatic arousal detection methods on wearable sleep monitoring device signal analysis.
基于多模型深度神经网络的唤醒自动检测
唤醒标记是睡眠相关疾病诊断和治疗的重要方法之一,通常由医生根据多导睡眠图(PSG)信号进行人工分析。为了解决人工唤醒分析睡眠生理信号耗时费力的问题,提出了一种基于多模型深度神经网络的唤醒自动检测方法。结合一对多配方、LSTM和网络结构改进等方法,深度神经网络模型在临床数据集上的性能得到了显著提高,多个指标得到了提高(准确率86.7%、召回率86.0%、F1 86.3%)。同时对模型参数进行了大幅度的精简,使其更加高效,为唤醒自动检测方法在可穿戴睡眠监测设备信号分析中的应用奠定了基础。
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