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首页> 外文期刊>Journal of cardiovascular electrophysiology >A simple method to identify sleep apnea using Holter recordings.
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A simple method to identify sleep apnea using Holter recordings.

机译:一种使用Holter录音识别睡眠呼吸暂停的简单方法。

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INTRODUCTION: Despite its severe cardiovascular and other consequences, sleep apnea syndrome frequently is undiagnosed. Because apneas result in repeated autonomic arousals associated with cyclic variations in heart rate (CVHR), we hypothesized that sleep apnea syndrome could be identified from simple HR tachograms (graphs of HR vs time) derived from ECG monitoring. METHODS AND RESULTS: HR tachograms were generated from 57 digitized ECGs (46 clinical patients undergoing diagnostic studies and 11 research subjects) obtained during overnight polysomnography. Thirty-three had significant sleep apnea syndrome (apnea-hypopnea index > or = 15). Eight patients had simultaneous Holter recordings during sleep studies (3 with digitized ECGs and 5 with paper ECGs). Duration of CVHR on tachograms was determined. CVHR patterns were characterized as high amplitude (HR changes > or = 20 beats/min per cycle) versus lower amplitude (6-19 beats/min per cycle); or regular (in frequency, amplitude, and morphology) versus irregular. Tachograms were classified as having visible HR changes versus not visible (flat). Twenty-four studies proved to be split-night, so CVHR was quantified for the first 3 hours of each study only. When subjects were dichotomized into shorter (< 20%, < 36 min) and longer (> or = 20%) durations of CVHR, longer CVHR had a positive predictive accuracy of 86% for significant sleep apnea syndrome and 100% for abnormal sleep. When flat tachograms were excluded, negative predictive accuracy for shorter CVHR was 100%. All patients (N = 13) with > 36 min high-amplitude CVHR had significant obstructive sleep apnea. All predictions from Holter-only data were concordant with clinical diagnoses. CONCLUSION: HR tachogram patterns derived from ambulatory ECGs provide a simple method for identifying sleep apnea syndrome and other sleep disturbances in patients without major autonomic dysfunction.
机译:简介:尽管有严重的心血管疾病和其他后果,但睡眠呼吸暂停综合征经常无法诊断。由于呼吸暂停会导致反复的自主性唤醒,并伴有心率周期性变化(CVHR),因此我们假设可以从源自ECG监测的简单HR转速表(HR与时间的关系图)中识别出睡眠呼吸暂停综合症。方法和结果:HR速度描记图是从过夜多导睡眠监测仪中获得的57台数字化ECG(46名接受诊断研究的临床患者和11名研究对象)生成的。 33例患有严重的睡眠呼吸暂停综合症(呼吸暂停-呼吸不足指数>或= 15)。八名患者在睡眠研究期间同时进行了动态心电图记录(3例使用数字化ECG,5例使用纸质ECG)。确定了行驶记录图上CVHR的持续时间。 CVHR模式的特征是高振幅(每周期心率变化≥20次/分钟)与较低振幅(每周期6-19次心/分钟);或规则(频率,幅度和形态)与不规则。转速表被分类为具有可见的HR变化与不可见的变化(平坦)。有24项研究被证明是整夜的,因此仅在每项研究的前3个小时对CVHR进行了量化。当将受试者分为较短的(<20%,<36分钟)和较长的(>或= 20%)CVHR持续时间时,较长的CVHR对重大睡眠呼吸暂停综合症的阳性预测准确度为86%,对于异常睡眠的阳性预测准确度为100%。如果排除平坦的行驶记录,则较短的CVHR的阴性预测准确性为100%。所有高振幅CVHR> 36分钟的患者(N = 13)均具有明显的阻塞性睡眠呼吸暂停。仅基于Holter数据的所有预测均与临床诊断一致。结论:源自动态心电图的HR速度图模式为没有严重自主神经功能障碍的患者提供了一种识别睡眠呼吸暂停综合征和其他睡眠障碍的简单方法。

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