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A Novel Approach to Prediction of Mild Obstructive Sleep Disordered Breathing in a Population-Based Sample: The Sleep Heart Health Study

机译:一种基于人群的样本预测轻度阻塞性睡眠呼吸障碍的新方法:睡眠心脏健康研究

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摘要

This manuscript considers a data-mining approach for the prediction of mild obstructive sleep disordered breathing, defined as an elevated respiratory disturbance index (RDI), in 5,530 participants in a community-based study, the Sleep Heart Health Study. The prediction algorithm was built using modern ensemble learning algorithms, boosting in specific, which allowed for assessing potential high-dimensional interactions between predictor variables or classifiers. To evaluate the performance of the algorithm, the data were split into training and validation sets for varying thresholds for predicting the probability of a high RDI (≥ 7 events per hour in the given results). Based on a moderate classification threshold from the boosting algorithm, the estimated post-test odds of a high RDI were 2.20 times higher than the pre-test odds given a positive test, while the corresponding post-test odds were decreased by 52% given a negative test (sensitivity and specificity of 0.66 and 0.70, respectively). In rank order, the following variables had the largest impact on prediction performance: neck circumference, body mass index, age, snoring frequency, waist circumference, and snoring loudness.
机译:该手稿考虑了一项基于数据的研究方法,用于以社区为基础的研究“睡眠心脏健康研究”中的5,530名参与者来预测轻度阻塞性睡眠呼吸障碍,定义为升高的呼吸障碍指数(RDI)。该预测算法是使用现代整体学习算法构建的,具体而言得到了增强,从而可以评估预测变量或分类器之间的潜在高维交互。为了评估算法的性能,将数据分为不同的阈值的训练和验证集,以预测高RDI的概率(给定结果中每小时≥7个事件)。根据Boosting算法的中等分类阈值,高RDI的估计后测验几率是给定阳性测试的测验前几率的2.20倍,而在给定正向测试的情况下,相应的测验后几率降低了52%。阴性测试(敏感性和特异性分别为0.66和0.70)。按排名顺序,以下变量对预测性能的影响最大:脖子围,体重指数,年龄,打nor频率,腰围和打loud响度。

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