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Detection of breathing sounds during sleep using non-contact audio recordings

机译:使用非接触式音频记录来检测睡眠中的呼吸音

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Evaluation of respiratory activity during sleep is essential in order to reliably diagnose sleep disorder breathing (SDB); a condition associated with serious cardio-vascular morbidity and mortality. In the current study, we developed and validated a robust automatic breathing-sounds (i.e. inspiratory and expiratory sounds) detection system of audio signals acquired during sleep. Random forest classifier was trained and tested using inspiratory/expiratoryoise events (episodes), acquired from 84 subjects consecutively and prospectively referred to SDB diagnosis in sleep laboratory and in at-home environment. More than 560,000 events were analyzed, including a variety of recording devices and different environments. The system's overall accuracy rate is 88.8%, with accuracy rate of 91.2% and 83.6% in in-laboratory and at-home environments respectively, when classifying between inspiratory, expiratory, and noise classes. Here, we provide evidence that breathing-sounds can be reliably detected using non-contact audio technology in at-home environment. The proposed approach may improve our understanding of respiratory activity during sleep. This in return, will improve early SDB diagnosis and treatment.
机译:为了可靠地诊断睡眠呼吸障碍(SDB),评估睡眠期间的呼吸活动至关重要。与严重的心血管疾病发病率和死亡率有关的疾病。在当前的研究中,我们开发并验证了一种强大的自动呼吸-声音(即吸气和呼气声)检测系统,用于在睡眠期间获取音频信号。使用吸气/呼气/噪声事件(事件)对随机森林分类器进行了培训和测试,这些事件从睡眠实验室和家庭环境中连续且前瞻性地从SDB诊断的84位受试者中获得。分析了超过560,000个事件,包括各种记录设备和不同的环境。当对吸气,呼气和噪声等级进行分类时,系统的整体准确率为88.8%,在实验室和家庭环境中的准确率分别为91.2%和83.6%。在这里,我们提供的证据表明,在家庭环境中使用非接触音频技术可以可靠地检测到呼吸音。所提出的方法可以增进我们对睡眠期间呼吸活动的了解。作为回报,这将改善SDB的早期诊断和治疗。

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