Arrhythmia Unit, Cardiology Department, University Hospital, Grenoble, France.
Sleep Unit, Pneumology Service, Virgen de Valme University Hospital, Sevilla, Spain.
Heart Rhythm. 2014 May;11(5):842-8. doi: 10.1016/j.hrthm.2014.02.011. Epub 2014 Feb 19.
Sleep apnea (SA) is associated with cardiovascular diseases and is highly prevalent in patients with pacemakers (PMs).
To validate a transthoracic impedance sensor with an advanced algorithm (sleep apnea monitoring) for identifying severe SA.
Patients with indications for PM (VVI/DDD) were enrolled regardless of symptoms suggesting SA. Severe SA diagnosis was acknowledged when the full polysomnography gave an apnea-hypopnea index (PSG-AHI) of ≥30 events/h. The PSG-AHI was compared with the respiratory disturbance index evaluated by the SAM algorithm (SAM-RDI) compiled from the device during the same diagnosis night, and the performance of the device and the SAM algorithm was calculated to identify patients with severe SA. The agreement between methods was assessed by using Bland and Altman statistics.
Forty patients (mean age 73.8 ± 19.1 years; 67.5% men; body mass index 27.7 ± 4.4 kg/m(2)) were included. Severe SA was diagnosed by PSG in 56% of the patients. We did not retrieve SAM-RDI data in 14% of the patients. An optimal cutoff value for the SAM-RDI at 20 events/h was obtained by a receiver operator characteristic curve analysis, which yielded a sensitivity of 88.9% (95% confidence interval [CI] 65.3%-98.6%), a positive predictive value of 88.9% (95% CI 65.3%-98.6%), and a specificity of 84.6% (95% CI 54.6%-98.1%) (n = 31). The Bland-Altman limits of agreement for PSG-AHI (in events per hour) were [-14.1 to 32.4].
The results suggest that an advanced algorithm using PM transthoracic impedance could be used to identify SA in patients with PMs outside the clinic or at home.
睡眠呼吸暂停(SA)与心血管疾病相关,在起搏器(PM)患者中高发。
验证一种带有先进算法(睡眠呼吸暂停监测)的经胸阻抗传感器,以识别严重的 SA。
无论是否有提示 SA 的症状,均纳入有 PM(VVI/DDD)指征的患者。当完整的多导睡眠图(PSG)给出的呼吸暂停低通气指数(PSG-AHI)≥30 次/小时时,即诊断为严重 SA。PSG-AHI 与设备在同一诊断夜间编译的 SAM 算法(SAM-RDI)评估的呼吸干扰指数进行比较,并计算设备和 SAM 算法的性能,以识别出患有严重 SA 的患者。使用 Bland 和 Altman 统计评估方法之间的一致性。
共纳入 40 名患者(平均年龄 73.8±19.1 岁;67.5%为男性;体重指数 27.7±4.4kg/m²)。56%的患者通过 PSG 诊断为严重 SA。14%的患者无法检索到 SAM-RDI 数据。通过受试者工作特征曲线分析,SAM-RDI 的最佳截断值为 20 次/小时,其灵敏度为 88.9%(95%置信区间 [CI] 65.3%-98.6%),阳性预测值为 88.9%(95% CI 65.3%-98.6%),特异性为 84.6%(95% CI 54.6%-98.1%)(n=31)。PSG-AHI(每小时事件数)的 Bland-Altman 一致性限为[-14.1 至 32.4]。
结果表明,一种使用 PM 经胸阻抗的先进算法可用于在诊所外或在家中识别 PM 患者的 SA。