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Sleep apnea detection: accuracy of using automated ECG analysis compared to manually scored polysomnography (apnea hypopnea index)

机译:睡眠呼吸暂停检测:使用自动化ECG分析的准确性与手动得分的多面组织摄影(呼吸暂停低钠指数)相比

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IntroductionAdequate sleep is fundamental to wellness and recovery from illnesses and lack thereof is associated with disease onset and progression resulting in adverse health outcomes. Measuring sleep quality and sleep apnea (SA) at the point of care utilizing data that is already collected is feasible and cost effective, using validated methods to unlock sleep information embedded in the data. The objective of this study is to determine the utility of automated analysis of a stored, robust signal widely collected in hospital and outpatient settings, a single lead electrocardiogram (ECG), using clinically validated algorithms, cardiopulmonary coupling (CPC), to objectively and accurately identify SA.MethodsRetrospective analysis of de-identified PSG data with expert level scoring of Apnea Hypopnea Index (AHI) dividing the cohort into severe OSA (AHI>30), moderate (AHI 15-30), mild (AHI 5-15), and no disease (AHI<5) was compared with automated CPC analysis of a single lead ECG collected during sleep for each subject. Statistical analysis was used to compare the two methods.ResultsSixty-eight ECG recordings were analyzed. CPC identified patients with moderate to severe SA with sensitivity of 100%, specificity of 81%, and agreement of 93%, LR+ (positive likelihood ratio) 5.20, LR- (negative likelihood ratio) 0.00 and kappa 0.85 compared with manual scoring of AHI.ConclusionThe automated CPC analysis of stored single lead ECG data often collected during sleep in the clinical setting can accurately identify sleep apnea, providing medically actionable information that can aid clinical decisions.
机译:简介睡眠是对健康和疾病恢复的基础,疾病的缺乏与疾病发作和进展相关,导致健康状况不良。测量睡眠质量和睡眠呼吸暂停(SA)利用已经收集的数据是可行和成本效益的,使用验证的方法解锁嵌入在数据中的睡眠信息。本研究的目的是确定在医院和门诊系统中广泛收集的储存,强大信号自动分析的效用,单一引出心电图(ECG),使用临床验证的算法,心肺耦合(CPC),客观准确地鉴定SA.MILD(AHI> 30),中等(AHI 5-30),温和(AHI 5-15),温和(AHI 5-15),中等(AHI 5-30),中等(AHI 5-30),将群岛患有呼吸暂停次级指数(AHI)的专家水平评分分析DE鉴定的PSG数据分析与每次受试者睡眠期间收集的单个引导ECG的自动化CPC分析进行比较,没有疾病(AHI <5)。使用统计分析来比较两种方法。分析了一系列八种ECG录像。 CPC鉴定了中度至严重SA的患者,敏感性为100%,特异性为81%,同意93%,LR +(阳性似然比)5.20,LR-(负似然比)0.00和Kappa 0.85与AHI的手动评分相比.Conclusion自动化CPC分析在临床环境中睡眠期间经常收集的存储单引灯数据可以准确地识别睡眠呼吸暂停,提供医学上可操作的信息,可以帮助临床决策。

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