de Chazal Philip, Penzel Thomas, Heneghan Conor
BiancaMed Ltd., NovaUCD, UCD, Belfield, Dublin 4, Ireland.
Physiol Meas. 2004 Aug;25(4):967-83. doi: 10.1088/0967-3334/25/4/015.
An automated classification algorithm is presented which processes short-duration epochs of surface electrocardiogram data derived from polysomnography studies, and determines whether an epoch is from a period of sleep disordered respiration (SDR) or normal respiration (NR). The epoch lengths considered were 15, 30, 45, 60, 75, and 90 s. Epochs were labeled as 'NR' or 'SDR' by a human expert, based on standard polysomnography interpretation rules. The automated classification algorithm was trained and tested on a database of 70 overnight ECG recordings from subjects with and without obstructive sleep apnoea syndrome (35 used for training, 35 for independent validation). Depending on the epoch length, the classifier correctly labeled between 87% (15 s epochs) and 91% (60 s epochs) of the epochs in the test set. Accuracy was lowest for the shortest (15 s) and longest (90 s) epoch lengths, but the analysis was relatively insensitive to choice of epoch length. The classifications from these epochs were combined to form an overall summary measure of minutes-of-SDR, allowing per-subject classification.
提出了一种自动分类算法,该算法处理源自多导睡眠图研究的短时长体表心电图数据,并确定一个时段是来自睡眠呼吸紊乱(SDR)期还是正常呼吸(NR)期。所考虑的时段长度为15、30、45、60、75和90秒。根据标准多导睡眠图解释规则,由一位专家将时段标记为“NR”或“SDR”。该自动分类算法在一个包含70份夜间心电图记录的数据库上进行训练和测试,这些记录来自患有和未患有阻塞性睡眠呼吸暂停综合征的受试者(35份用于训练,35份用于独立验证)。根据时段长度,分类器在测试集中正确标记了87%(15秒时段)至91%(60秒时段)的时段。对于最短(15秒)和最长(90秒)的时段长度,准确率最低,但该分析对时段长度的选择相对不敏感。将这些时段的分类结果进行合并,以形成SDR分钟数的总体汇总指标,从而实现对每个受试者的分类。