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用于分析呼吸暂停时打鼾声音的音高跳跃概率测量方法。

Pitch jump probability measures for the analysis of snoring sounds in apnea.

作者信息

Abeyratne Udantha R, Wakwella Ajith S, Hukins Craig

机构信息

School of Information Technology and Electrical Engineering, The University of Queensland, St. Lucia, Brisbane, Australia.

出版信息

Physiol Meas. 2005 Oct;26(5):779-98. doi: 10.1088/0967-3334/26/5/016. Epub 2005 Jul 6.

DOI:10.1088/0967-3334/26/5/016
PMID:16088068
Abstract

Obstructive sleep apnea (OSA) is a highly prevalent disease in which upper airways are collapsed during sleep, leading to serious consequences. The gold standard of diagnosis, called polysomnography (PSG), requires a full-night hospital stay connected to over ten channels of measurements requiring physical contact with sensors. PSG is inconvenient, expensive and unsuited for community screening. Snoring is the earliest symptom of OSA, but its potential in clinical diagnosis is not fully recognized yet. Diagnostic systems intent on using snore-related sounds (SRS) face the tough problem of how to define a snore. In this paper, we present a working definition of a snore, and propose algorithms to segment SRS into classes of pure breathing, silence and voiced/unvoiced snores. We propose a novel feature termed the 'intra-snore-pitch-jump' (ISPJ) to diagnose OSA. Working on clinical data, we show that ISPJ delivers OSA detection sensitivities of 86-100% while holding specificity at 50-80%. These numbers indicate that snore sounds and the ISPJ have the potential to be good candidates for a take-home device for OSA screening. Snore sounds have the significant advantage in that they can be conveniently acquired with low-cost non-contact equipment. The segmentation results presented in this paper have been derived using data from eight patients as the training set and another eight patients as the testing set. ISPJ-based OSA detection results have been derived using training data from 16 subjects and testing data from 29 subjects.

摘要

阻塞性睡眠呼吸暂停(OSA)是一种高发疾病,睡眠期间上呼吸道塌陷,会导致严重后果。诊断的金标准是多导睡眠图(PSG),需要在医院住一整晚,连接十多个测量通道,且需要与传感器进行身体接触。PSG不方便、费用高,不适合社区筛查。打鼾是OSA最早的症状,但其在临床诊断中的潜力尚未得到充分认识。旨在使用与打鼾相关声音(SRS)的诊断系统面临着如何定义打鼾这一难题。在本文中,我们给出了打鼾的有效定义,并提出了将SRS分割为纯呼吸、静音以及有声/无声打鼾类别的算法。我们提出了一种名为“打鼾内音高跳跃”(ISPJ)的新特征来诊断OSA。基于临床数据,我们表明ISPJ在保持特异性为50%-80%的同时,OSA检测灵敏度为86%-100%。这些数据表明,打鼾声音和ISPJ有可能成为用于OSA筛查的家用设备的良好候选对象。打鼾声音具有显著优势,即可以使用低成本的非接触设备方便地获取。本文给出的分割结果是使用来自8名患者的数据作为训练集,另外8名患者的数据作为测试集得出的。基于ISPJ的OSA检测结果是使用来自16名受试者的训练数据和来自29名受试者的测试数据得出的。

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