School of Instrument Science and Engineering, Southeast University, Nanjing, 210018, P.R. China.
Computational Intelligence Research Group, Department of Computing Science and Digital Technologies, Faculty of Engineering and Environment, University of Northumbria, Newcastle, NE1 8ST, UK.
Sci Rep. 2017 Jul 20;7(1):6067. doi: 10.1038/s41598-017-06596-z.
Automatic feature extraction and classification are two main tasks in abnormal ECG beat recognition. Feature extraction is an important prerequisite prior to classification since it provides the classifier with input features, and the performance of classifier depends significantly on the quality of these features. This study develops an effective method to extract low-dimensional ECG beat feature vectors. It employs wavelet multi-resolution analysis to extract time-frequency domain features and then applies principle component analysis to reduce the dimension of the feature vector. In classification, 12-element feature vectors characterizing six types of beats are used as inputs for one-versus-one support vector machine, which is conducted in form of 10-fold cross validation with beat-based and record-based training schemes. Tested upon a total of 107049 beats from MIT-BIH arrhythmia database, our method has achieved average sensitivity, specificity and accuracy of 99.09%, 99.82% and 99.70%, respectively, using the beat-based training scheme, and 44.40%, 88.88% and 81.47%, respectively, using the record-based training scheme.
自动特征提取和分类是异常 ECG 节拍识别的两个主要任务。特征提取是分类之前的重要前提,因为它为分类器提供了输入特征,而分类器的性能很大程度上取决于这些特征的质量。本研究开发了一种有效的方法来提取低维 ECG 节拍特征向量。它采用小波多分辨率分析提取时频域特征,然后应用主成分分析降低特征向量的维数。在分类中,使用 12 元素特征向量表示六种类型的节拍作为一对一支持向量机的输入,采用基于节拍和基于记录的训练方案进行 10 折交叉验证。在使用基于节拍的训练方案时,我们的方法在 MIT-BIH 心律失常数据库中的总共 107049 个节拍上进行了测试,平均灵敏度、特异性和准确性分别为 99.09%、99.82%和 99.70%,而在使用基于记录的训练方案时,平均灵敏度、特异性和准确性分别为 44.40%、88.88%和 81.47%。