Gutierrez-Tobal Gonzalo C, Kheirandish-Gozal Leila, Alvarez Daniel, Crespo Andrea, Philby Mona F, Mohammadi Meelad, Del Campo Felix, Gozal David, Hornero Roberto
Annu Int Conf IEEE Eng Med Biol Soc. 2015 Aug;2015:4540-3. doi: 10.1109/EMBC.2015.7319404.
Current study is focused around the potential use of oximetry to determine the obstructive sleep apnea-hypopnea syndrome (OSAHS) severity in children. Single-channel SpO2 recordings from 176 children were divided into three severity groups according to the apnea-hypopnea index (AHI): AHI<;1 events per hour (e/h), 1≤AHI<;5 e/h, and AHI ≥5 e/h. Spectral analysis was conducted to define and characterize a frequency band of interest in SpO2. Then we combined the spectral data with the 3% oxygen desaturation index (ODI3) by means of a multi-layer perceptron (MLP) neural network, in order to classify children into one of the three OSAHS severity groups. Following our MLP multiclass approach, a diagnostic protocol with capability to reduce the need of polysomnography tests by 46% could be derived. Moreover, our proposal can be also evaluated, in a binary classification task for two common AHI diagnostic cutoffs (AHI = 1 e/h and AHI= 5 e/h). High diagnostic ability was reached in both cases (84.7% and 85.8% accuracy, respectively) outperforming the clinical variable ODI3 as well as other measures reported in recent studies. These results suggest that the information contained in SpO2 could be helpful in pediatric OSAHS severity detection.
当前的研究聚焦于利用血氧测定法来确定儿童阻塞性睡眠呼吸暂停低通气综合征(OSAHS)的严重程度。根据呼吸暂停低通气指数(AHI),将176名儿童的单通道SpO2记录分为三个严重程度组:AHI<1次/小时(e/h)、1≤AHI<5 e/h和AHI≥5 e/h。进行频谱分析以定义和表征SpO2中感兴趣的频段。然后,我们通过多层感知器(MLP)神经网络将频谱数据与3%氧饱和度下降指数(ODI3)相结合,以便将儿童分类到三个OSAHS严重程度组之一。按照我们的MLP多类方法,可以得出一种诊断方案,该方案能够将多导睡眠图测试的需求减少46%。此外,我们的方案还可以在针对两个常见AHI诊断临界值(AHI = 1 e/h和AHI = 5 e/h)的二元分类任务中进行评估。在这两种情况下均达到了较高的诊断能力(准确率分别为84.7%和85.8%),优于临床变量ODI3以及近期研究中报道的其他指标。这些结果表明,SpO2中包含的信息可能有助于小儿OSAHS严重程度的检测。