Beijing Tongren Hospital, Capital Medical University, Beijing, China.
Obstructive Sleep Apnea-Hypopnea Syndrome Clinical Diagnosis and Therapy and Research Centre, Capital Medical University, Beijing, China.
J Clin Sleep Med. 2022 Nov 1;18(11):2663-2672. doi: 10.5664/jcsm.9798.
To screen all of the obstructive sleep apnea (OSA)-characteristic pronunciations, explore the pronunciations which provide a better OSA classification effect than those used previously, and further clarify the correlation between speech signals and OSA.
A total of 158 adult male Mandarin native speakers who completed polysomnography at the Sleep Medicine Center of Beijing Tongren Hospital from November 15, 2019, to January 19, 2020, were enrolled in this study. All Chinese syllables were collected from each participant in the sitting position. The syllables, vowels, consonants, and tones were screened to identify the pronunciations that were most effective for OSA classification.
The linear prediction coefficients of Chinese syllables were extracted as features and mathematically modeled using a decision tree model to dichotomize participants with apnea-hypopnea index thresholds of 10 and 30 events/h, and the leave-one-out method was used to verify the classification performance of Chinese syllables for OSA. Chinese syllables such as [leng] and [jue], consonant pronunciations such as [zh] and [f], and vowel pronunciations such as [ing] and [ai] were the most suitable pronunciations for classification of OSA. An OSA classification model consisting of several syllable combinations was constructed, with areas under curve of 0.83 (threshold of apnea-hypopnea index = 10) and 0.87 (threshold of apnea-hypopnea index = 30), respectively.
This study is the first comprehensive screening of OSA-characteristic pronunciations and can act as a guideline for the construction of OSA speech corpora in other languages.
Ding Y, Sun Y, Li Y, et al. Selection of OSA-specific pronunciations and assessment of disease severity assisted by machine learning. . 2022;18(11):2663-2672.
筛选所有阻塞性睡眠呼吸暂停(OSA)特征发音,探索比以往研究中使用的发音提供更好的 OSA 分类效果的发音,并进一步阐明语音信号与 OSA 之间的相关性。
本研究共纳入 2019 年 11 月 15 日至 2020 年 1 月 19 日在北京同仁医院睡眠医学中心完成多导睡眠图检查的 158 例成年男性普通话母语者。每位参与者均在坐姿下采集所有汉语音节。筛选音节、元音、辅音和声调,以确定最适合 OSA 分类的发音。
提取汉语音节的线性预测系数作为特征,使用决策树模型进行数学建模,以将呼吸暂停低通气指数阈值为 10 和 30 次/小时的参与者分为两类,并使用留一法验证汉语音节对 OSA 的分类性能。最适合 OSA 分类的发音包括[leng]和[jue]等音节、[zh]和[f]等辅音以及[ing]和[ai]等元音。构建了一个由几个音节组合组成的 OSA 分类模型,曲线下面积分别为 0.83(呼吸暂停低通气指数阈值=10)和 0.87(呼吸暂停低通气指数阈值=30)。
本研究首次全面筛选 OSA 特征发音,可为其他语言构建 OSA 语音语料库提供指导。
丁毅,孙颖,李毅,等。基于机器学习的 OSA 特征发音选择及疾病严重程度评估。 。2022;18(11):2663-2672。