Sleep Disorders Unit, Department of Thoracic Medicine, University General Hospital, Medical School of the University of Crete, Heraklion, Crete, Greece.
Sleep Breath. 2011 Dec;15(4):657-64. doi: 10.1007/s11325-010-0416-6. Epub 2010 Sep 25.
We aimed to evaluate the predictive value of anthropometric measurements and self-reported symptoms of obstructive sleep apnea syndrome (OSAS) in a large number of not yet diagnosed or treated patients. Commonly used clinical indices were used to derive a prediction formula that could identify patients at low and high risk for OSAS.
Two thousand six hundred ninety patients with suspected OSAS were enrolled. We obtained weight; height; neck, waist, and hip circumference; and a measure of subjective sleepiness (Epworth sleepiness scale--ESS) prior to diagnostic polysomnography. Excessive daytime sleepiness severity (EDS) was coded as follows: 0 for ESS ≤ 3 (normal), 1 for ESS score 4-9 (normal to mild sleepiness), 2 for score 10-16 (moderate to severe sleepiness), and 3 for score >16 (severe sleepiness). Multivariate linear and logistic regression analysis was used to identify independent predictors of apnea-hypopnea index (AHI) and derive a prediction formula.
Neck circumference (NC) in centimeters, body mass index (BMI) in kilograms per square meter, sleepiness as a code indicating EDS severity, and gender as a constant were significant predictors for AHI. The derived formula was: AHIpred = NC × 0.84 + EDS × 7.78 + BMI × 0.91 - [8.2 × gender constant (1 or 2) + 37]. The probability that this equation predicts AHI greater than 15 correctly was 78%.
Gender, BMI, NC, and sleepiness were significant clinical predictors of OSAS in Greek subjects. Such a prediction formula can play a role in prioritizing patients for PSG evaluation, diagnosis, and initiation of treatment.
我们旨在评估大量未经诊断或治疗的患者的人体测量学测量和阻塞性睡眠呼吸暂停综合征(OSAS)自述症状的预测价值。使用常用的临床指标得出一个预测公式,可以识别出 OSAS 低风险和高风险的患者。
共纳入 2690 例疑似 OSAS 患者。在进行诊断性多导睡眠图检查之前,我们获得了体重、身高、颈围、腰围和臀围以及主观嗜睡量表(ESS)的测量值。日间嗜睡严重程度(EDS)编码如下:ESS≤3 分(正常)为 0 分,ESS 评分 4-9 分为(正常至轻度嗜睡)为 1 分,ESS 评分 10-16 分为(中度至重度嗜睡)为 2 分,ESS 评分>16 分为(重度嗜睡)为 3 分。使用多元线性和逻辑回归分析来识别 apnea-hypopnea 指数(AHI)的独立预测因子,并得出预测公式。
颈围(NC)以厘米为单位、体重指数(BMI)以千克/平方米为单位、嗜睡作为 EDS 严重程度的代码以及性别作为常数是 AHI 的显著预测因子。得出的公式为:AHIpred = NC × 0.84 + EDS × 7.78 + BMI × 0.91 - [8.2 × 性别常数(1 或 2)+ 37]。该方程正确预测 AHI>15 的概率为 78%。
性别、BMI、NC 和嗜睡是希腊人群中 OSAS 的重要临床预测因子。这样的预测公式可以在为 PSG 评估、诊断和开始治疗患者的优先级方面发挥作用。