Automatic detection of obstructive sleep apnea (OSA) is in great demand. OSA is one of the most prevalent diseases of the current century and established comorbidity to Covid-19. OSA is characterized by complete or relative breathing pauses during sleep. According to medical observations, if OSA remained unrecognized and un-treated, it may lead to physical and mental complications. The gold standard of scoring OSA severity is the time-consuming and expensive method of polysomnography (PSG). The idea of online home-based surveillance of OSA is welcome. It serves as an effective way for spurred detection and reference of patients to sleep clinics. In addition, it can perform automatic control of the therapeutic/assistive devices. In this paper, several configurations for online OSA detection are proposed. The best configuration uses both ECG and SpO2 signals for feature extraction and MI analysis for feature reduction. Various methods of supervised machine learning are exploited for classification. Finally, to reach the best result, the most successful classifiers in sensitivity and specificity are combined in groups of three members with four different combination methods. The proposed method has advantages like limited use of biological signals, automatic detection, online working scheme, and uniform and acceptable performance (over 85%) in all the employed databases. These advantages have not been integrated in previous published methods.
翻译:自动检测阻塞性睡眠性动脉瘤(OSA)的需求很大。 OSA是本世纪最流行的疾病之一,是Covid-19(Covid-19)已经确定的常见疾病之一。 OSA的特点是完全或相对的睡眠暂停。根据医疗观察,如果OSA仍然不被承认和未经治疗,它可能导致身心并发症。OSA的严肃性评分金标准是耗时和昂贵的多索美学(PSG)方法。对OSA的在线家庭监控是值得欢迎的。它是一种有效的方法,可以刺激对病人的检测和推荐到睡眠诊所。此外,它还可以自动控制治疗/辅助装置。在本文中,提出了若干在线OSA检测的配置。最佳配置使用ECG和SPO2信号进行特征提取和MI分析以降低特征。各种监督性机器学习方法被用于分类。为了达到最佳效果,在敏感性和特殊性的分类方面最成功的分类方法被组合为三个成员组合组合组合组合。此外,它还可以对治疗/辅助器进行自动控制。在本文件中,拟议的方法具有一些优势,例如使用有限的在线检测方法,以前采用的是标准化的、自动探测和自动探测方法。