Khandoker Ahsan H, Karmakar Chandan K, Palaniswami Marimuthu
Department of Electrical and Electronic Engineering, The University of Melbourne, Parkville, VIC 3010, Australia.
Comput Biol Med. 2009 Jan;39(1):88-96. doi: 10.1016/j.compbiomed.2008.11.003. Epub 2009 Jan 14.
Patients with obstructive sleep apnoea syndrome (OSAS) are at increased risk of developing hypertension and other cardiovascular diseases. This paper explores the use of support vector machines (SVMs) for automated recognition of patients with OSAS types (+/-) using features extracted from nocturnal ECG recordings, and compares its performance with other classifiers. Features extracted from wavelet decomposition of heart rate variability (HRV) and ECG-derived respiration (EDR) signals of whole records (30 learning sets from physionet) are presented as inputs to train the SVM classifier to recognize OSAS+/- subjects. The optimal SVM parameter set is then determined by using a leave-one-out procedure. Independent test results have shown that an SVM using a subset of a selected combination of HRV and EDR features correctly recognized 30/30 of physionet test sets. In comparison, classification performance of K-nearest neighbour, probabilistic neural network, and linear discriminant classifiers on test data was lower. These results, therefore, demonstrate considerable potential in applying SVM in ECG-based screening and can aid sleep specialists in the initial assessment of patients with suspected OSAS.
阻塞性睡眠呼吸暂停综合征(OSAS)患者患高血压和其他心血管疾病的风险增加。本文探讨了使用支持向量机(SVM),通过从夜间心电图记录中提取的特征来自动识别OSAS类型(+/-)的患者,并将其性能与其他分类器进行比较。从整个记录(来自Physionet的30个学习集)的心率变异性(HRV)和心电图衍生呼吸(EDR)信号的小波分解中提取的特征作为输入,用于训练SVM分类器以识别OSAS+/-受试者。然后通过留一法确定最佳SVM参数集。独立测试结果表明,使用HRV和EDR特征的选定组合子集的SVM正确识别了Physionet测试集中的30/30。相比之下,K近邻、概率神经网络和线性判别分类器在测试数据上的分类性能较低。因此,这些结果表明在基于心电图的筛查中应用SVM具有相当大的潜力,并且可以帮助睡眠专家对疑似OSAS患者进行初步评估。