School of Opto-Electronic and Communication Engineering, Xiamen University of Technology, Xiamen, 361024, China.
School of Biomedical Engineering, Sun Yat-Sen University, Guangzhou, 510006, China.
Phys Eng Sci Med. 2024 Mar;47(1):119-133. doi: 10.1007/s13246-023-01346-0. Epub 2023 Nov 20.
Sleep apnea is a common sleep disorder. Traditional testing and diagnosis heavily rely on the expertise of physicians, as well as analysis and statistical interpretation of extensive sleep testing data, resulting in time-consuming and labor-intensive processes. To address the problems of complex feature extraction, data imbalance, and low model capacity, we proposed an automatic sleep apnea classification model (CA-EfficientNet) based on the wavelet transform, a lightweight neural network, and a coordinated attention mechanism. The signal is converted into a time-frequency image by wavelet transform and put into the proposed model for classification. The effects of input time window, wavelet transform type and data balancing on the classification performance are considered, and a cost-sensitive algorithm is introduced to more accurately distinguish between normal and abnormal breathing events. PhysioNet apnea ECG database was used for training and evaluation. The 3-min Frequency B-Spline wavelets transform of ECG signal was carried out, and Dice Loss was used to train the classification model of sleep breathing. The classification accuracy was 93.44%, sensitivity was 88.9%, specificity was 96.2% and most indexes were better than other related work.
睡眠呼吸暂停是一种常见的睡眠障碍。传统的测试和诊断严重依赖于医生的专业知识,以及对大量睡眠测试数据的分析和统计解释,导致过程耗时且劳动强度大。为了解决复杂特征提取、数据不平衡和模型容量低的问题,我们提出了一种基于小波变换、轻量级神经网络和协调注意机制的自动睡眠呼吸暂停分类模型(CA-EfficientNet)。通过小波变换将信号转换为时频图像,并将其放入提出的模型中进行分类。考虑了输入时间窗口、小波变换类型和数据平衡对分类性能的影响,并引入了一种代价敏感算法,以更准确地区分正常和异常呼吸事件。使用 PhysioNet 睡眠呼吸暂停 ECG 数据库进行训练和评估。对 ECG 信号进行 3 分钟频带 B-样条小波变换,并使用 Dice Loss 训练睡眠呼吸分类模型。分类准确率为 93.44%,灵敏度为 88.9%,特异性为 96.2%,大多数指标均优于其他相关工作。