Shouldice Redmond B, O'Brien Louise M, O'Brien Ciara, de Chazal Philip, Gozal David, Heneghan Conor
Digital Signal Processing Research Group, Department of Electronic and Electrical Engineering, University College Dublin, Dublin, Ireland.
Sleep. 2004 Jun 15;27(4):784-92. doi: 10.1093/sleep/27.4.784.
To investigate the feasibility of detecting obstructive sleep apnea (OSA) in children using an automated classification system based on analysis of overnight electrocardiogram (ECG) recordings.
Retrospective observational study.
A pediatric sleep clinic.
Fifty children underwent full overnight polysomnography.
N/A.
Expert polysomnography scoring was performed. The datasets were divided into a training set of 25 subjects (11 normal, 14 with OSA) and a withheld test set of 25 subjects (11 normal, 14 with OSA). Features, calculated from the ECG of the 25 training datasets, were empirically chosen to train a modified quadratic discriminant analysis classification system. The selected configuration used a segment length of 60 seconds and processed mean, SD, power spectral density, and serial correlation measures to classify segments as apneic or normal. By combining per-segment classifications and using receiver-operator characteristic analysis, a per-subject classifier was obtained that had a sensitivity of 85.7%, specificity of 90.9%, and accuracy of 88% on the training datasets. The same decision threshold was applied to the withheld datasets and yielded a sensitivity of 85.7%, specificity of 81.8%, and accuracy of 84%. The positive and negative predictive values were 85.7% and 81.8%, respectively, on the test dataset.
The ability to correctly identify 12 out of 14 cases of OSA (with the 2 false negatives arising from subjects with an apnea-hypopnea index less than 10) indicates that the automated apnea classification system outlined may have clinical utility in pediatric patients.
探讨基于夜间心电图(ECG)记录分析的自动分类系统检测儿童阻塞性睡眠呼吸暂停(OSA)的可行性。
回顾性观察研究。
儿科睡眠诊所。
50名儿童接受了整夜多导睡眠图检查。
无。
进行了专家多导睡眠图评分。数据集被分为一个包含25名受试者的训练集(11名正常儿童,14名患有OSA)和一个包含25名受试者的保留测试集(11名正常儿童,14名患有OSA)。根据25个训练数据集的心电图经验性地选择特征,以训练一个改进的二次判别分析分类系统。所选配置使用60秒的片段长度,并处理均值、标准差、功率谱密度和序列相关测量值,以将片段分类为呼吸暂停或正常。通过结合每个片段的分类并使用受试者工作特征分析,获得了一个针对每个受试者的分类器,该分类器在训练数据集上的灵敏度为85.7%,特异性为90.9%,准确率为88%。将相同的决策阈值应用于保留数据集,灵敏度为85.7%,特异性为81.8%,准确率为84%。在测试数据集上,阳性预测值和阴性预测值分别为85.7%和81.8%。
能够正确识别14例OSA病例中的12例(2例假阴性来自呼吸暂停低通气指数小于10的受试者)表明,所概述的自动呼吸暂停分类系统可能对儿科患者具有临床应用价值。