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Analysis of voice features related to obstructive sleep apnoea and their application in diagnosis support

机译:阻塞性睡眠呼吸暂停相关语音特征分析及其在诊断支持中的应用

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Obstructive sleep apnoea (OSA) is a highly prevalent disease affecting an estimated 2-4% of the adult male population that is difficult and very costly to diagnose because symptoms can remain unnoticed for years. The reference diagnostic method, Polysomnography (PSG), requires the patient to spend a night at the hospital monitored by specialized equipment. Therefore fast and less costly screening techniques are normally applied for setting priorities to proceed to the polysomnography diagnosis. In this article the use of speech analysis is proposed as an alternative or complement to existing screening methods. A set of voice features that could be related to apnoea are defined, based on previous results from other authors and our own analysis. These features are analyzed first in isolation and then in combination to assess their discriminative power to classify voices as corresponding to apnoea patients and healthy subjects. This analysis is performed in a database containing three repetitions of four carefully designed sentences read by 40 healthy subjects and 42 subjects suffering from severe apnoea. As a result of the analysis, a linear discriminant model (LDA) was defined including a subset of eight features (signal-to-disperiodicity ratio, a nasality measure, harmonic-to-noise ratio, jitter, difference between third and second formants on a specific vowel, duration of two of the sentences and the percentage of silence in one of the sentences). This model was tested on a separate database containing 20 healthy and 20 apnoea subjects yielding a sensitivity of 85% and a specificity of 75%, with a Fl-measure of 81%. These results indicate that the proposed method, only requiring a few minutes to record and analyze the patient's voice during the visit to the specialist, could help in the development of a non-intrusive, fast and convenient PSG-complementary screening technique for OSA.
机译:阻塞性睡眠呼吸暂停(OSA)是一种高度流行的疾病,估计会影响2-4%的成年男性人群,由于症状可能会持续多年而难以诊断且诊断成本很高。参考诊断方法,多导睡眠图(PSG),要求患者在专门设备监控下在医院过夜。因此,通常将快速且成本较低的筛选技术用于设置优先级以进行多导睡眠图诊断。在本文中,语音分析的使用被提议作为现有筛选方法的替代或补充。根据其他作者的先前结果和我们自己的分析,定义了一组可能与呼吸暂停相关的语音功能。首先对这些特征进行单独分析,然后再结合起来以评估其区分能力,从而将声音分类为与呼吸暂停患者和健康受试者相对应。该分析在一个数据库中进行,该数据库包含四个精心设计的句子的三个重复,其中四个句子由40名健康受试者和42名患有严重呼吸暂停的受试者朗读。分析的结果是,定义了线性判别模型(LDA),其中包括八个特征的子集(信号与色散比,鼻音度,谐波与噪声比,抖动,第三和第二共振峰之间的差异)。一个特定的元音,两个句子的持续时间以及其中一个句子的沉默百分比)。该模型在一个单独的数据库中进行了测试,该数据库包含20位健康受试者和20位呼吸暂停受试者,其敏感性为85%,特异性为75%,F1测量值为81%。这些结果表明,所提出的方法仅需要花费几分钟来记录和分析专家就诊时的声音,就可以帮助开发一种用于OSA的非侵入性,快速且便捷的PSG补充筛查技术。

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