Loredo José S, Berry Charles, Nelesen Richard A, Dimsdale Joel E
Department of Medicine, University of California, San Diego, CA 92103-0804, USA.
Sleep Breath. 2007 Mar;11(1):45-51. doi: 10.1007/s11325-006-0082-x.
Continuous positive airway pressure (CPAP) prediction formulas can potentially simplify the treatment of obstructive sleep apnea (OSA). However, they can be difficult to derive and validate. We tested a statistical method to derive and validate a CPAP prediction formula using the same sample population. Seventy-six OSA patients underwent polysomnography and CPAP titration. Anthropometric measures, sleep parameters, and the Epworth sleepiness scale (ESS) were evaluated as predictors. All subsets regression was used to determine the optimum number of variables in the model. The Bayes information criterion was used to find the best-fit model. The model was then evaluated by a tenfold cross-validation procedure. Subjects were obese (BMI 31.3 +/- 5.4) and had significant daytime somnolence (ESS 11.9 +/- 5). Mean respiratory disturbance index (RDI) was 53.5 +/- 31.3. The ESS was not predictive of titrated CPAP. The best-fit model included three variables (CPAP(pred) = 30.8 + RDI x 0.03 - nadir saturation x 0.05 - mean saturation x 0.2). This model explained 67% of the variance. Our data and the literature suggest that a combination of two to three factors is predictive of titrated CPAP: RDI, oxyhemoglobin saturation, and obesity. Except for RDI, the specific factors vary in each population. A CPAP prediction formula that explains a high proportion of the titrated CPAP variance can be easily derived from parameters measured during the diagnostic work-up of OSA patients using a unique statistical model that allows derivation and validation of the formula in the same test population.
持续气道正压通气(CPAP)预测公式有可能简化阻塞性睡眠呼吸暂停(OSA)的治疗。然而,这些公式的推导和验证可能会很困难。我们测试了一种统计方法,使用相同的样本群体来推导和验证CPAP预测公式。76名OSA患者接受了多导睡眠图检查和CPAP滴定。评估了人体测量指标、睡眠参数和爱泼华嗜睡量表(ESS)作为预测因素。采用全子集回归来确定模型中变量的最佳数量。使用贝叶斯信息准则来找到最佳拟合模型。然后通过十倍交叉验证程序对该模型进行评估。受试者肥胖(BMI为31.3±5.4),白天有明显嗜睡(ESS为11.9±5)。平均呼吸紊乱指数(RDI)为53.5±31.3。ESS不能预测滴定的CPAP。最佳拟合模型包括三个变量(CPAP(预测值)=30.8 + RDI×0.03 - 最低饱和度×0.05 - 平均饱和度×0.2)。该模型解释了67%的方差。我们的数据和文献表明,两到三个因素的组合可预测滴定的CPAP:RDI、氧合血红蛋白饱和度和肥胖。除了RDI,每个群体中的具体因素各不相同。使用一种独特的统计模型,从OSA患者诊断检查期间测量的参数中可以轻松推导出一个能解释滴定CPAP方差很大比例的CPAP预测公式,该模型允许在同一测试群体中推导和验证该公式。