Varon Carolina, Caicedo Alexander, Testelmans Dries, Buyse Bertien, Van Huffel Sabine
Department of Electrical Engineering-ESAT, STADIUS Center for Dynamical Systems, Signal Processing and Data Analytics and iMinds Medical IT Department, KU Leuven, Leuven, Belgium.
Katholieke Universiteit Leuven.
IEEE Trans Biomed Eng. 2015 Sep;62(9):2269-2278. doi: 10.1109/TBME.2015.2422378. Epub 2015 Apr 13.
This paper presents a methodology for the automatic detection of sleep apnea from single-lead ECG.
It uses two novel features derived from the ECG, and two well-known features in heart rate variability analysis, namely the standard deviation and the serial correlation coefficients of the RR interval time series. The first novel feature uses the principal components of the QRS complexes, and it describes changes in their morphology caused by an increased sympathetic activity during apnea. The second novel feature extracts the information shared between respiration and heart rate using orthogonal subspace projections. Respiratory information is derived from the ECG by means of three state-of-the-art algorithms, which are implemented and compared here. All features are used as input to a least-squares support vector machines classifier, using an RBF kernel. In total, 80 ECG recordings were included in the study.
Accuracies of about 85% are achieved on a minute-by-minute basis, for two independent datasets including both hypopneas and apneas together. Separation between apnea and normal recordings is achieved with 100% accuracy. In addition to apnea classification, the proposed methodology determines the contamination level of each ECG minute.
The performances achieved are comparable with those reported in the literature for fully automated algorithms.
These results indicate that the use of only ECG sensors can achieve good accuracies in the detection of sleep apnea. Moreover, the contamination level of each ECG segment can be used to automatically detect artefacts, and to highlight segments that require further visual inspection.
本文提出了一种从单导联心电图自动检测睡眠呼吸暂停的方法。
该方法使用了从心电图中提取的两个新特征,以及心率变异性分析中两个著名的特征,即RR间期时间序列的标准差和序列相关系数。第一个新特征使用QRS复合波的主成分,它描述了呼吸暂停期间交感神经活动增加导致的形态变化。第二个新特征使用正交子空间投影提取呼吸和心率之间共享的信息。呼吸信息通过三种最先进的算法从心电图中获取,本文对这些算法进行了实现和比较。所有特征都用作具有径向基函数核的最小二乘支持向量机分类器的输入。该研究总共纳入了80份心电图记录。
对于包括呼吸浅慢和呼吸暂停的两个独立数据集,逐分钟的准确率约为85%。呼吸暂停记录与正常记录之间的区分准确率达到100%。除了呼吸暂停分类外,所提出的方法还能确定每份心电图每分钟的污染水平。
所取得的性能与文献中报道的全自动算法相当。
这些结果表明,仅使用心电图传感器就能在睡眠呼吸暂停检测中取得良好的准确率。此外,每个心电图片段的污染水平可用于自动检测伪迹,并突出显示需要进一步目视检查的片段。