Sebastian Arun, Cistulli Peter A, Cohen Gary, Chazal Philip de
Annu Int Conf IEEE Eng Med Biol Soc. 2020 Jul;2020:2728-2731. doi: 10.1109/EMBC44109.2020.9175626.
Knowledge regarding the site of airway collapse could help in choosing an appropriate structure-specific or individualized treatment for obstructive sleep apnoea (OSA). We investigated if the audio signal recorded during hypopnoea (partial obstruction) events can predict the site-of-collapse of the upper airway. In this study, we designed an automatic classifier that predicts the predominant site of upper airway collapse for a patient as "lateral wall", "palate", "tongue-based" related collapse or "multi-level" site-of-collapse by processing of the audio signal. The probable site-of-collapse was determined by manual analysis of the shape of the airflow signal during hypopnoea, which has been reported to correlate with the site of collapse. Audio signal was recorded simultaneously with full-night polysomnography during sleep with a ceiling microphone. Various time and frequency features of the audio signal were extracted to classify the audio signal into lateral wall, palate and tongue-base related collapse. We introduced an unbiased process using nested leave-one patient-out cross-validation to choose the optimal features. The classification was carried out with a multi-class linear discriminant analysis classifier. Performance of the proposed model showed that our automatic system can achieve an overall accuracy of 65% for determining the predominant site-of-collapse for all site-of-collapse classes and an accuracy of 80% for classifying tongue/non-tongue related collapse. Our results indicate that the audio signal recorded during sleep can be helpful in identifying the site-of-collapse and therefore could potentially be used as a new tool for deciding appropriate treatment for OSA.
了解气道塌陷的部位有助于为阻塞性睡眠呼吸暂停(OSA)选择合适的针对特定结构或个性化的治疗方法。我们研究了在呼吸暂停低通气(部分阻塞)事件期间记录的音频信号是否能够预测上气道的塌陷部位。在本研究中,我们设计了一种自动分类器,通过处理音频信号来预测患者上气道塌陷的主要部位,即“侧壁”、“软腭”、“舌根”相关塌陷或“多水平”塌陷部位。塌陷的可能部位通过对呼吸暂停低通气期间气流信号形状的人工分析来确定,据报道气流信号形状与塌陷部位相关。睡眠期间,通过天花板麦克风与全夜多导睡眠图同时记录音频信号。提取音频信号的各种时间和频率特征,以便将音频信号分类为与侧壁、软腭和舌根相关的塌陷。我们引入了一种无偏倚的过程,使用嵌套留一患者交叉验证来选择最佳特征。分类使用多类线性判别分析分类器进行。所提出模型的性能表明,我们的自动系统在确定所有塌陷部位类别的主要塌陷部位时总体准确率可达65%,在区分与舌/非舌相关的塌陷时准确率可达80%。我们的结果表明,睡眠期间记录的音频信号有助于识别塌陷部位,因此有可能作为一种新工具用于决定OSA的合适治疗方法。