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Obstructive apnea hypopnea index estimation by analysis of nocturnal snoring signals in adults

机译:阻塞性呼吸暂停缺钙率估算成人夜间打鼾信号

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摘要

Study Objective: To develop a whole-night snore sounds analysis algorithm enabling estimation of obstructive apnea hypopnea index (AHIEST) among adult subjects. Design: Snore sounds were recorded using a directional condenser microphone placed 1 m above the bed. Acoustic features exploring intra-(melcepstability, pitch density) and inter-(running variance, apnea phase ratio, inter-event silence) snore properties were extracted and integrated to assess AHIEST. Setting: University-affiliated sleep-wake disorder center and biomedical signal processing laboratory. Patients: Ninety subjects (age 53 ± 13 years, BMI 31 ± 5 kg/m2) referred for polysomnography (PSG) diagnosis of OSA were prospectively and consecutively recruited. The system was trained and tested on 60 subjects. Validation was blindly performed on the additional 30 consecutive subjects. Measurements and Results: AHIEST correlated with AHI (AHIPSG; r2 = 0.81, P 0.001). Area under the receiver operating characteristic curve of 85% and 92% for thresholds of 10 and 20 events/h, respectively, were obtained for OSA detection. Both Altman-Bland analysis and diagnostic agreement criteria revealed 80% and 83% agreements of AHIEST with AHIPSG, respectively. Conclusions: Acoustic analysis based on intra- and inter-snore properties can differentiate subjects according to AHI. An acoustic-based screening system may address the growing needs for reliable OSA screening tool. Further studies are needed to support these findings.
机译:学习目标:开发一颗全夜打鼾声音分析算法,从而能够估计成人对象中的阻塞性呼吸暂停次押症(最疑问)。设计:使用位于床上1米的定向冷凝器麦克风进行录制打鼾声音。提取并综合探索(Melcepstability,俯仰密度)和(运行方差,呼吸暂停相比,静脉间静音)组合性质的声学特征,并集成以评估最疑问。环境:大学隶属睡眠障碍障碍中心和生物医学信号处理实验室。患者:前瞻性和连续招募患者120-60名(53±13岁,BMI 31±5千克/平方米)OSA诊断OSA的诊断。该系统培训并在60个科目上进行了测试。诊断盲目地在额外的30个连续主题上进行。测量和结果:与AHI(AHIPSG; R2 = 0.81,P <0.001)相关的最疑问。在OSA检测中,分别获得了85%和92%的接收器的接收器的区域,分别为10和20个事件/ h的阈值。 Altman-Bland分析和诊断协议标准都透露了80%和83%的AHIPSG协议。结论:基于群和群间地性质的声学分析可以根据AHI区分受试者。基于声学的筛选系统可以解决可靠的OSA筛选工具的日益增长的需求。需要进一步的研究来支持这些发现。

著录项

  • 来源
    《Sleep》 |2012年第9期|共7页
  • 作者单位

    Department of Biomedical Engineering Faculty of Engineering Sciences Ben-Gurion University of the;

    Sleep-Wake Disorders Unit Soroka University Medical Center Israel Department of Physiology;

    Department of Biomedical Engineering Faculty of Engineering Sciences Ben-Gurion University of the;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 人体生理学;
  • 关键词

    Acoustic analysis; Obstructive sleep apnea; Snoring;

    机译:声学分析;阻塞性睡眠呼吸暂停;打鼾;

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