Zhang Yitong, Zhou Liang, Zhu Simin, Zhou Yanuo, Wang Zitong, Ma Lina, Yuan Yuqi, Xie Yushan, Niu Xiaoxin, Su Yonglong, Liu Haiqin, Hei Xinhong, Shi Zhenghao, Ren Xiaoyong, Shi Yewen
Department of Otorhinolaryngology Head and Neck Surgery, The Second Affiliated Hospital of Xi'an Jiaotong University, Xi'an, Shaanxi Province, People's Republic of China.
School of Computer Science and Engineering, Xi'an University of Technology, Xi'an, Shaanxi Province, People's Republic of China.
Nat Sci Sleep. 2025 Jan 6;17:1-15. doi: 10.2147/NSS.S492806. eCollection 2025.
To develop a deep learning (DL) model for obstructive sleep apnea (OSA) detection and severity assessment and provide a new approach for convenient, economical, and accurate disease detection.
Considering medical reliability and acquisition simplicity, we used electrocardiogram (ECG) and oxygen saturation (SpO) signals to develop a multimodal signal fusion multiscale Transformer model for OSA detection and severity assessment. The proposed model comprises signal preprocessing, feature extraction, cross-modal interaction, and classification modules. A total of 510 patients who underwent polysomnography were included in the hospital dataset. The model was tested on hospital and public datasets. The hospital dataset was utilized to demonstrate the applicability and generalizability of the model. Two public datasets, Apnea-ECG dataset (consisting of 8 recordings) and UCD dataset (consisting of 21 recordings), were used to compare the results with those of previous studies.
In the hospital dataset, the accuracy (Acc) values of per-segment and per-recording detection were 91.38 and 96.08%, respectively. The Acc values for mild, moderate, and severe OSA were 90.20, 88.24, and 92.16%, respectively. The Bland‒Altman plots revealed the consistency of the true apnea-hypopnea index (AHI) and the predicted AHI. In the public datasets, the per-segment detection Acc values of the Apnea-ECG and UCD datasets were 95.04 and 90.56%, respectively.
The experiments on hospital and public datasets have demonstrated that the proposed model is more advanced, accurate, and applicable in OSA detection and severity assessment than previous models.
开发一种用于阻塞性睡眠呼吸暂停(OSA)检测和严重程度评估的深度学习(DL)模型,并提供一种方便、经济且准确的疾病检测新方法。
考虑到医学可靠性和采集简便性,我们使用心电图(ECG)和血氧饱和度(SpO)信号来开发一种用于OSA检测和严重程度评估的多模态信号融合多尺度Transformer模型。所提出的模型包括信号预处理、特征提取、跨模态交互和分类模块。医院数据集中共纳入了510例接受多导睡眠图检查的患者。该模型在医院数据集和公共数据集上进行了测试。利用医院数据集来证明该模型的适用性和通用性。使用两个公共数据集,即Apnea-ECG数据集(由8个记录组成)和UCD数据集(由21个记录组成),将结果与先前研究的结果进行比较。
在医院数据集中,逐段检测和逐记录检测的准确率(Acc)值分别为91.38%和96.08%。轻度、中度和重度OSA的Acc值分别为90.20%、88.24%和92.16%。Bland-Altman图显示了真实呼吸暂停低通气指数(AHI)与预测AHI的一致性。在公共数据集中,Apnea-ECG和UCD数据集的逐段检测Acc值分别为95.04%和90.56%。
在医院数据集和公共数据集上的实验表明,所提出的模型在OSA检测和严重程度评估方面比先前的模型更先进、准确且适用。