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A predictive model for obstructive sleep apnea and Down syndrome

机译:阻塞性睡眠呼吸暂停和唐氏综合征的预测模型

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Obstructive sleep apnea (OSA) occurs frequently in people with Down syndrome (DS) with reported prevalences ranging between 55% and 97%, compared to 1–4% in the neurotypical pediatric population. Sleep studies are often uncomfortable, costly, and poorly tolerated by individuals with DS. The objective of this study was to construct a tool to identify individuals with DS unlikely to have moderate or severe sleep OSA and in whom sleep studies might offer little benefit. An observational, prospective cohort study was performed in an outpatient clinic and overnight sleep study center with 130 DS patients, ages 3–24 years. Exclusion criteria included previous adenoid and/or tonsil removal, a sleep study within the past 6 months, or being treated for apnea with continuous positive airway pressure. This study involved a physical examination/medical history, lateral cephalogram, 3D photograph, validated sleep questionnaires, an overnight polysomnogram, and urine samples. The main outcome measure was the apnea‐hypopnea index. Using a Logic Learning Machine, the best model had a cross‐validated negative predictive value of 73% for mild obstructive sleep apnea and 90% for moderate or severe obstructive sleep apnea; positive predictive values were 55% and 25%, respectively. The model included variables from survey questions, medication history, anthropometric measurements, vital signs, patient's age, and physical examination findings. With simple procedures that can be collected at minimal cost, the proposed model could predict which patients with DS were unlikely to have moderate to severe obstructive sleep apnea and thus may not need a diagnostic sleep study.
机译:阻塞性睡眠呼吸暂停(OSA)经常发生在患有唐氏综合症(DS)的人中,报告的患病率为55%至97%,而神经型儿科人群的1-4%则为1-4%。睡眠研究往往是不舒服的,昂贵,耐用于DS的人。本研究的目的是构建一种工具,以识别DS的个体,不太可能具有中度或严重睡眠OSA,并且睡眠研究可能会提供很少的好处。在一个门诊诊所和过夜睡眠研究中心进行了一个观察性,前瞻性队列研究,患有130例DS患者,年龄3-24岁。排除标准包括以前的腺样和/或扁桃体去除,在过去6个月内进行睡眠研究,或用于持续正气道压力的呼吸暂停。本研究涉及体检/病史,横向头骨图,3D照片,验证的睡眠问卷,过夜多瘤图和尿液样本。主要结果措施是呼吸暂停症状指数。使用逻辑学习机,最佳模型的交叉验证的负预测值为73%,适用于温和的阻塞性睡眠呼吸暂停和90%,适用于中度或严重阻塞性睡眠呼吸暂停;阳性预测值分别为55%和25%。该模型包括调查问题,药物历史,人类测量测量,生命体征,患者年龄和体检结果的变量。通过可以以最小的成本收集的简单程序,所提出的模型可以预测与DS的患者不太可能具有中度至严重阻塞性睡眠呼吸暂停,因此可能不需要诊断睡眠研究。

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