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阻塞性睡眠呼吸暂停患者的日间过度嗜睡:患病率、严重程度及预测因素

Excessive daytime sleepiness in obstructive sleep apnea: prevalence, severity, and predictors.

作者信息

Seneviratne Udaya, Puvanendran Kathiravelu

机构信息

National Neuroscience Institute, Singapore General Hospital Campus, Outram Road, Singapore, Singapore 169608.

出版信息

Sleep Med. 2004 Jul;5(4):339-43. doi: 10.1016/j.sleep.2004.01.021.

Abstract

OBJECTIVES

To assess prevalence, severity, and predictive factors of excessive daytime sleepiness (EDS) in obstructive sleep apnea (OSA) in an Asian population.

METHODS

A retrospective, cross-sectional study of data from patients diagnosed with OSA over a period of three years and having had overnight polysomnography (PSG) followed by daytime multiple sleep latency test (MSLT). Respiratory disturbance index (RDI) was used for diagnosis and assessment of severity. OSA was classified as mild (RDI 5-20), moderate (RDI 20-40), and severe (RDI>40). EDS was objectively assessed using MSLT. According to MSLT, patients were categorized into two groups; EDS (mean sleep latency:MSL<10) and no EDS (MSL>10). PSG, MSLT and demographic data were subjected to univariate and multivariate analyses to ascertain predictive factors of EDS.

RESULTS

There were 195 patients comprising 89.4% males and 10.6% females. The severity of OSA was mild in 35.9%, moderate in 27.2%, and severe in 36.9%. EDS was demonstrated in 87.2%. Sleep onset REM periods were detected in the MSLT of 28.2% patients. Univariate analysis demonstrated age, RDI, sleep efficiency, total arousals, arousals with apnea, arousal index, number of desaturations, and severity of snoring as significant predictors of EDS. However, stepwise logistic regression analysis identified only sleep efficiency, total arousals, and severity of snoring as significant predictive factors.

CONCLUSIONS

OSA causes EDS in the majority of patients. Severe snoring, higher sleep efficiency and increased total arousals in polysomnography seem to predict EDS.

摘要

目的

评估亚洲人群阻塞性睡眠呼吸暂停(OSA)患者日间过度嗜睡(EDS)的患病率、严重程度及预测因素。

方法

一项回顾性横断面研究,研究对象为三年内被诊断为OSA且接受过夜多导睡眠监测(PSG)及随后日间多次睡眠潜伏期试验(MSLT)的患者数据。呼吸紊乱指数(RDI)用于诊断和严重程度评估。OSA分为轻度(RDI 5 - 20)、中度(RDI 20 - 40)和重度(RDI>40)。使用MSLT客观评估EDS。根据MSLT,患者分为两组;EDS(平均睡眠潜伏期:MSL<10)和无EDS(MSL>10)。对PSG、MSLT和人口统计学数据进行单因素和多因素分析以确定EDS的预测因素。

结果

共有195例患者,其中男性占89.4%,女性占10.6%。OSA严重程度为轻度的占35.9%,中度的占27.2%,重度的占36.9%。87.2%的患者存在EDS。28.2%的患者MSLT中检测到睡眠始发快速眼动期。单因素分析显示年龄、RDI、睡眠效率、总觉醒次数、伴呼吸暂停的觉醒次数、觉醒指数、血氧饱和度下降次数和打鼾严重程度是EDS的重要预测因素。然而,逐步逻辑回归分析仅确定睡眠效率、总觉醒次数和打鼾严重程度为重要预测因素。

结论

OSA在大多数患者中导致EDS。多导睡眠监测中严重打鼾、较高的睡眠效率和总觉醒次数增加似乎可预测EDS。

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