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Development of an automated system for obstructive sleep apnea treatment based on machine learning and breath effort monitoring

机译:基于机器学习和呼吸努力监测的阻塞性睡眠呼吸暂停处理的自动化系统的开发

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Obstructive sleep apnea (OSA) is characterized by repeated airway obstructions during sleep and affects about 35% of the population. Untreated OSA is associated with increased mortality and severe comorbidities. This fact, combined with the poor long-term compliance to the standard therapy, has led to an increased interest in alternative treatment options such as the electrical stimulation (ES) of the genioglossus muscle. In this work, we propose an automated non-invasive system for real-time monitoring of obstructive sleep apnea and treatment through ES of the genioglossus muscle. The closed-loop system includes a sensor to monitor breath effort from respiratory movement, a Transcutaneous Electrical Nerve Stimulation (TENS) device, and a program that analyzes the signal of the sensor and controls the whole system. The breath effort signal is first processed and then fed to a machine learning (ML) algorithm, which is a pattern recognition network. The whole analysis runs on a personal computer and used data from an open database of 12 patients in order to train the ML network and evaluate its performance. The breath effort signals were obtained from thoracic and abdominal inductance plethysmography recordings. OSA events were classified with an average true detection rate 81% +/- 8% and 77% +/- 11% for thoracic (VTH) and abdominal (VAB) sensor signals, respectively. The overall classification accuracies were on average 73% +/- 5% for VTH and 74% +/- 9% for VAB. An improvement is observed when both signals are considered (82% +/- 7%).
机译:阻塞性睡眠呼吸暂停(OSA)的特征在于睡眠期间重复的气道阻塞,影响大约35%的人口。未经处理的OSA与增加的死亡率和严重的合并症相关。这一事实结合了与标准治疗的较差的长期遵守,导致替代治疗方案的兴趣增加,例如Genioglossus肌肉的电刺激。在这项工作中,我们提出了一种自动非侵入性系统,用于通过Genioglossus肌肉进行阻塞性睡眠呼吸暂停的实时监测。闭环系统包括传感器,用于监测呼吸运动的呼吸努力,经皮电子神经刺激(TENS)器件,以及分析传感器信号并控制整个系统的程序。首先处理呼吸工作信号,然后馈送到机器学习(ML)算法,这是模式识别网络。整个分析在个人计算机上运行,​​并使用12名患者的开放数据库中使用数据,以培训ML网络并评估其性能。呼吸努力信号是从胸部和腹部电感的体检记录中获得的。 OSA事件分别归类为胸(VTH)和腹部(VAB)传感器信号的平均真实检测率81%+/- 8%和77%+/- 11%。总体分类准确性平均vAb平均为vth和74%+/- 9%的73%+/- 5%。当考虑两个信号时,观察到改进(82%+/- 7%)。

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