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Are the Epworth Sleepiness Scale and Stop-Bang Model effective at predicting the severity of Obstructive Sleep Apnoea (OSA); in particular OSA requiring treatment?

机译:Epworth嗜睡量表和stop-Bang模型是否有效预测阻塞性睡眠呼吸暂停(Osa)的严重程度;特别是需要治疗的Osa?

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摘要

Obstructive sleep apnoea (OSA) is a condition characterised by repetitive upper airway collapse during sleep. The condition carries a range of health sequelae that can prove fatal in cases with co-existing risk factors for the condition, such as obesity and hypertension. Utilisation of a high-performance screening tool for OSA is thus important. A retrospective audit using the ESS and Stop-Bang scores, alongside Apnoea–Hypopnea Index values, for patients who underwent polysomnography over 1 year. Multinomial logistic regression was used to compare the predictive abilities of ESS, SBM, and body mass index (BMI) for the patient outcome groups, “None” (No OSA), “Notreat” (OSA not requiring treatment) and “treat” (OSA requiring treatment). The influences of age, gender and BMI on outcome group were also assessed. 126 bariatric and 66 non-bariatric patients were included. Multinomial logistic regression failed to demonstrate predictive ability of ESS. A higher Stop-Bang score significantly increases the risk being in the “treat” group. In addition, male gender, greater age and a higher BMI each individually increase the risk of OSA requiring treatment. Stop-Bang failed to demonstrate predictive significance when age and gender were controlled for. ESS is not an appropriate screening tool for OSA. Stop-Bang, however, remains a useful screening tool, with the ability to detect patient with OSA in need of treatment. Further study may benefit the development and implementation of a concise and more specific screening tool that considers high evidence-based risk factors for OSA, including male gender, greater age and raised BMI.
机译:阻塞性睡眠呼吸暂停(OSA)是一种以睡眠过程中上呼吸道反复塌陷为特征的疾病。该疾病带有一系列健康后遗症,在肥胖和高血压等风险因素并存的情况下可能致命。因此,对于OSA使用高性能的筛选工具非常重要。使用ESS和Stop-Bang评分以及Apnoea-呼吸不足指数值进行的回顾性审核,用于接受1年以上多导睡眠监测的患者。使用多项式Lo​​gistic回归比较ESS,SBM和体重指数(BMI)对患者预后组,“无”(无OSA),“ Notreat”(不需要治疗的OSA)和“治疗”的预测能力( OSA需要治疗)。还评估了年龄,性别和BMI对结局组的影响。包括126名肥胖症患者和66名非肥胖症患者。多项式逻辑回归未能证明ESS的预测能力。较高的Stop-Bang分数会显着增加处于“治疗”组的风险。此外,男性,年龄较大和BMI较高都会分别增加需要治疗的OSA的风险。当控制年龄和性别时,Stop-Bang无法证明具有预测意义。 ESS不是适合OSA的筛选工具。然而,Stop-Bang仍然是有用的筛查工具,能够检测需要治疗的OSA患者。进一步的研究可能有助于开发和实施简洁,更具体的筛查工具,该工具考虑到OSA的高证据风险因素,包括男性,年龄较大和BMI升高。

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