de Silva Shaminda, Abeyratne Udantha, Hukins C
University of Queensland, St. Lucia, QLD 4067 Australia.
Annu Int Conf IEEE Eng Med Biol Soc. 2012;2012:6353-6. doi: 10.1109/EMBC.2012.6347447.
Obstructive Sleep Apnea (OSA) is a serious sleep disorder that occurs due to collapsing upper airways (UA). More than 80% of OSA sufferers remain undiagnosed and the situation demands simplified, convenient technology for community screening. Almost all OSA patients snore and snoring is the earliest nocturnal symptom of OSA. Snore signals (SS) are produced due to vibration of soft tissues in the narrowed parts of the UA. It is known that the UA properties are gender specific. In this paper, we work under the hypothesis that gender specific analysis of snore sounds should lead to a higher OSA detection performance. We propose a snore based multi-parametric OSA screening technique, which incorporates the gender differences in the algorithm. The multi feature vector was modeled using logistic regression based algorithms to classify subjects into OSA/non-OSA classes. The performance of the proposed method was evaluated by carrying out K-fold cross validation. This procedure was applied to male (n=51) and female (n=36) data sets recorded in a clinical sleep laboratory. Each data set consisted of sound recordings of 6-8 hr. duration. The performance of the method was evaluated against the standard laboratory method of diagnosis known as polysomongraphy. Our gender-specific technique resulted in a sensitivity of 93±9% with specificity 89±7% for females and sensitivity of 91±8% with specificity 89±12% for males. These results establish the possibility of developing cheap, convenient, non-contact and an unattended OSA screening technique.
阻塞性睡眠呼吸暂停(OSA)是一种严重的睡眠障碍,由上呼吸道(UA)塌陷引起。超过80%的OSA患者未被诊断出来,这种情况需要用于社区筛查的简化、便捷技术。几乎所有OSA患者都会打鼾,打鼾是OSA最早出现的夜间症状。打鼾信号(SS)是由UA狭窄部位软组织振动产生的。已知UA特性具有性别特异性。在本文中,我们基于这样的假设开展工作:对打鼾声音进行性别特异性分析应能提高OSA检测性能。我们提出一种基于打鼾的多参数OSA筛查技术,该技术在算法中纳入了性别差异。使用基于逻辑回归的算法对多特征向量进行建模,以将受试者分类为OSA/非OSA类别。通过进行K折交叉验证来评估所提方法的性能。该程序应用于在临床睡眠实验室记录的男性(n = 51)和女性(n = 36)数据集。每个数据集由时长6 - 8小时的声音记录组成。该方法的性能与称为多导睡眠图的标准实验室诊断方法进行对比评估。我们的性别特异性技术对女性的敏感性为93±9%,特异性为89±7%;对男性的敏感性为91±8%,特异性为89±12%。这些结果表明开发廉价、便捷、非接触且无需专人值守的OSA筛查技术是有可能的。