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The predictive value of clinical and epidemiological parameters in the identification of patients with obstructive sleep apnoea (OSA): a clinical prediction algorithm in the evaluation of OSA

机译:临床和流行病学参数在识别阻塞性睡眠呼吸暂停(OSA)患者中的预测价值:评估OSA的临床预测算法

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We sought to analyze the predictive value of anthropometric, clinical and epidemiological parameters in the identification of patients with suspected OSA, and their relationship with apnoea/hypopnoea respiratory events during sleep. We studied retrospectively 433 patients with OSA, 361 men (83.37%) and 72 women (16.63%), with an average age of ±47, standard deviation ±11.10 years (range 18–75 years). The study variables for all of the patients were age, sex, spirometry, neck circumference, body mass index (BMI), Epworth sleepiness scale, nasal examination, pharyngeal examination, collapsibility of the pharynx (Müller Manoeuvre), and apnoea-hypopnoea index (AHI). Age, neck circumference, BMI, Epworth sleepiness scale, pharyngeal examination and pharyngeal collapse were the significant variables. Of the patients, 78% were correctly classified, with a sensitivity of 74.6% and a specificity of 66.3%. We found a direct relationship between the variables analysed and AHI. Based on these results, we obtained the following algorithm to calculate the prediction of AHI for a new patient: AHI = ?12.04 + 0.36 neck circumference +2.2286 pharyngeal collapses (MM) + 0.1761 Epworth + 0.0017 BMI × age + 1.1949 pharyngeal examinations. The ratio variance in the number of respiratory events explained by the model was 33% (r 2 = 0.33). The variables given in the algorithm are the best ones for predicting the number of respiratory events during sleep in patients studied for suspected OSA. The algorithm proposed may be a good screening method to the identification of patients with OSA.
机译:我们试图分析人体测量学,临床和流行病学参数在鉴定可疑OSA患者中的预测价值,以及它们与睡眠期间呼吸暂停/呼吸不足的呼吸事件的关系。我们回顾性研究了433例OSA患者,其中361例男性(83.37%)和72例女性(16.63%),平均年龄为±47岁,标准差为±11.10岁(18-75岁)。所有患者的研究变量为年龄,性别,肺活量,颈围,体重指数(BMI),爱泼华嗜睡量表,鼻腔检查,咽部检查,咽部可折叠性(MüllerManoeuvre)和呼吸暂停-低通气指数( AHI)。年龄,颈围,BMI,Epworth嗜睡量表,咽部检查和咽塌陷是重要变量。在这些患者中,正确分类的患者为78%,敏感性为74.6%,特异性为66.3%。我们发现所分析的变量与AHI之间存在直接关系。基于这些结果,我们获得了以下算法来计算新患者的AHI预测:AHI =?12.04 +颈围0.36 +咽部塌陷(MM)+ 0.1761 Epworth + 0.0017 BMI×年龄+ 1.1949咽部检查。该模型解释的呼吸事件数量的比率方差为33%(r 2 = 0.33)。该算法中给出的变量是预测可疑OSA患者中睡眠期间呼吸事件数量的最佳变量。所提出的算法可能是识别OSA患者的良好筛选方法。

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