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Exploiting temporal and nonstationary features in breathing sound analysis for multiple obstructive sleep apnea severity classification

机译:在呼吸声分析中利用时间和非平稳特征进行多发性阻塞性睡眠呼吸暂停严重程度分类

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Background Polysomnography (PSG) is the gold standard test for obstructive sleep apnea (OSA), but it incurs high costs, requires inconvenient measurements, and is limited by a one-night test. Thus, a repetitive OSA screening test using affordable data would be effective both for patients interested in their own OSA risk and in-hospital PSG. The purpose of this research was to develop a four-OSA severity classification model using a patient’s breathing sounds. Methods Breathing sounds were recorded from 83 subjects during a PSG test. There was no exclusive experimental protocol or additional recording instruments use throughout the sound recording procedure. Based on the Apnea-Hypopnea Index (AHI), which indicates the severity of sleep apnea, the subjects’ sound data were divided into four-OSA severity classes. From the individual sound data, we proposed two novel methods which were not attempted in previous OSA severity classification studies. First, the total transition probability of approximated sound energy in time series, and second, the statistical properties derived from the dimension-reduced cyclic spectral density. In addition, feature selection was conducted to achieve better results with a more relevant subset of features. Then, the classification model was trained using support vector machines and evaluated using leave-one-out cross-validation. Results The overall results show that our classification model is better than existing multiple OSA severity classification method using breathing sounds. The proposed method demonstrated 79.52% accuracy for the four-class classification task. Additionally, it demonstrated 98.0% sensitivity, 75.0% specificity, and 92.78% accuracy for OSA subject detection classification with AHI threshold 5. Conclusions The results show that our proposed method can be used as part of an OSA screening test, which can provide the subject with detailed OSA severity results from only breathing sounds.
机译:背景多导睡眠图(PSG)是阻塞性睡眠呼吸暂停(OSA)的金标准测试,但它产生高昂成本,测量不便且受一夜测试的限制。因此,使用负担得起的数据进行的重复OSA筛查测试对于对自己的OSA风险和院内PSG感兴趣的患者均有效。这项研究的目的是利用患者的呼吸声来开发一种四OSA严重性分类模型。方法在PSG测试中记录83位受试者的呼吸音。在整个录音过程中,没有排他性的实验方案或额外的录音工具。根据表示睡眠呼吸暂停严重程度的呼吸暂停低通气指数(AHI),将受试者的声音数据分为四个OSA严重程度类别。从单独的声音数据,我们提出了两种新颖的方法,这些方法在以前的OSA严重性分类研究中都没有尝试过。首先是时间序列中近似声能的总跃迁概率,其次是从降维的循环频谱密度得出的统计特性。此外,进行了特征选择,以使用更相关的特征子集获得更好的结果。然后,使用支持向量机训练分类模型,并使用留一法交叉验证进行评估。结果总体结果表明,我们的分类模型优于现有的使用呼吸声的多种OSA严重性分类方法。所提出的方法证明了四类分类任务的准确性为79.52%。此外,对于具有AHI阈值5的OSA受试者检测分类,它显示出98.0%的敏感性,75.0%的特异性和92.78%的准确性。结论结果表明,我们提出的方法可以用作OSA筛查测试的一部分,从而可以为受试者提供仅通过呼吸声即可得出详细的OSA严重性。

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