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Can We Avoid Unnecessary Polysomnographies in the Diagnosis of Obstructive Sleep Apnea? A Bayesian Network Decision Support Tool

机译:在阻塞性睡眠呼吸暂停的诊断中,我们可以避免不必要的多导睡眠监测吗?贝叶斯网络决策支持工具

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Obstructive Sleep Apnea (OSA) affects 2-4% of the population worldwide. The standard test for OSA diagnosis is polysomnography (PSG), an expensive exam limited to urban areas. Furthermore, nearly half of all PSG tests results are negative for OSA. This work aims to reduce these unnecessary exams, by defining an auxiliary diagnostic method that could be used to assess patient's need for PSG, according to their probability of OSA diagnosis. A prospective study was conducted on adult patients with OSA suspicion who performed PSG at our sleep laboratory in Portugal. The studied clinical variables were defined after literature review and collected during consultation. Two comparable cohorts were studied for derivation (n=86) and validation (n=33) of models. Three classifiers were analyzed - a multiple logistic regression classifier (AUC=80.0%) and two Bayesian networks classifiers - Naïve Bayes (AUC=81.3%) and Tree Augmented Naïve Bayes (TAN, AUC=81.4%) - aiming at the best possible specificity (identification of unnecessary exams). Overall, sensitivity-adjusted models could detect normal patients, preventing unnecessary PSG, while keeping sensitivity high. Furthermore, the graphical representation of TAN can be explored by the physician during consultation, making it a helpful tool to assess patients' need to perform PSG.
机译:阻塞性睡眠呼吸暂停(OSA)影响全球2-4%的人口。 OSA诊断的标准测试是多导睡眠图(PSG),这是一种仅限于城市地区的昂贵检查。此外,几乎所有PSG测试结果的一半对OSA都是负面的。这项工作旨在通过定义一种辅助诊断方法来减少这些不必要的检查,该方法可用于根据患者OSA诊断的可能性来评估患者对PSG的需求。对在葡萄牙的睡眠实验室进行过PSG的OSA可疑成年患者进行了一项前瞻性研究。经文献复习确定研究的临床变量,并在咨询过程中收集。研究了两个可比较的队列,用于模型的推导(n = 86)和验证(n = 33)。分析了三个分类器-多元逻辑回归分类器(AUC = 80.0%)和两个贝叶斯网络分类器-朴素贝叶斯(AUC = 81.3%)和树增强朴素贝叶斯(TAN,AUC = 81.4%)-旨在获得最佳的特异性(识别不必要的考试)。总体而言,灵敏度调整后的模型可以检测正常患者,防止不必要的PSG,同时保持较高的灵敏度。此外,医生可以在咨询期间探索TAN的图形表示,使其成为评估患者执行PSG需求的有用工具。

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