Key Laboratory of RF Circuits and Systems, Ministry of Education, Hangzhou Dianzi University, Hangzhou, Zhejiang, China.
The Affiliated Hospital of Hangzhou Normal University, Hangzhou, Zhejiang, China.
J Healthc Eng. 2020 Dec 12;2020:8864863. doi: 10.1155/2020/8864863. eCollection 2020.
Obstructive sleep apnea-hypopnea syndrome (OSAHS) is extremely harmful to the human body and may cause neurological dysfunction and endocrine dysfunction, resulting in damage to multiple organs and multiple systems throughout the body and negatively affecting the cardiovascular, kidney, and mental systems. Clinically, doctors usually use standard PSG (Polysomnography) to assist diagnosis. PSG determines whether a person has apnea syndrome with multidimensional data such as brain waves, heart rate, and blood oxygen saturation. In this paper, we have presented a method of recognizing OSAHS, which is convenient for patients to monitor themselves in daily life to avoid delayed treatment. Firstly, we theoretically analyzed the difference between the snoring sounds of normal people and OSAHS patients in the time and frequency domains. Secondly, the snoring sounds related to apnea events and the nonapnea related snoring sounds were classified by deep learning, and then, the severity of OSAHS symptoms had been recognized. In the algorithm proposed in this paper, the snoring data features are extracted through the three feature extraction methods, which are MFCC, LPCC, and LPMFCC. Moreover, we adopted CNN and LSTM for classification. The experimental results show that the MFCC feature extraction method and the LSTM model have the highest accuracy rate which was 87% when it is adopted for binary-classification of snoring data. Moreover, the AHI value of the patient can be obtained by the algorithm system which can determine the severity degree of OSAHS.
阻塞性睡眠呼吸暂停低通气综合征(OSAHS)对人体危害极大,可能导致神经系统功能障碍和内分泌功能障碍,从而导致全身多器官和多系统受损,对心血管、肾脏和精神系统产生负面影响。临床上,医生通常使用标准 PSG(多导睡眠图)来辅助诊断。PSG 通过脑电波、心率和血氧饱和度等多维数据来确定一个人是否患有呼吸暂停综合征。在本文中,我们提出了一种识别 OSAHS 的方法,方便患者在日常生活中进行自我监测,避免延误治疗。首先,我们从理论上分析了正常人的鼾声和 OSAHS 患者在时域和频域上的差异。其次,通过深度学习对与呼吸暂停事件相关的鼾声和非呼吸暂停相关的鼾声进行分类,然后识别 OSAHS 症状的严重程度。在本文提出的算法中,通过 MFCC、LPCC 和 LPMFCC 这三种特征提取方法提取鼾声数据特征。同时,我们采用了 CNN 和 LSTM 进行分类。实验结果表明,MFCC 特征提取方法和 LSTM 模型在对鼾声数据进行二分类时具有最高的准确率,为 87%。此外,算法系统可以获得患者的 AHI 值,从而确定 OSAHS 的严重程度。