Author/Authors :
Liu, Zhishuai School of Mathematical Sciences - Ocean University of China - Songling Road - Qingdao - Shandong, China , Yao, Guihua Department of Cardiology - Qilu Hospital (Qingdao) - Cheeloo College of Medicine - Shandong University - Hefei Road - Qingdao - Shandong, China , Zhang, Qing Department of Cardiology - Qilu Hospital (Qingdao) - Cheeloo College of Medicine - Shandong University - Hefei Road - Qingdao - Shandong, China , Zhang, Junpu School of Mathematical Sciences - Ocean University of China - Songling Road - Qingdao - Shandong, China , Zeng, Xueying School of Mathematical Sciences - Ocean University of China - Songling Road - Qingdao - Shandong, China
Abstract :
An electrocardiogram (ECG) records the electrical activity of the heart; it contains rich pathological information on cardiovascular
diseases, such as arrhythmia. However, it is difficult to visually analyze ECG signals due to their complexity and nonlinearity. The
wavelet scattering transform can generate translation-invariant and deformation-stable representations of ECG signals through
cascades of wavelet convolutions with nonlinear modulus and averaging operators. We proposed a novel approach using
wavelet scattering transform to automatically classify four categories of arrhythmia ECG heartbeats, namely, nonectopic (N),
supraventricular ectopic (S), ventricular ectopic (V), and fusion (F) beats. In this study, the wavelet scattering transform
extracted 8 time windows from each ECG heartbeat. Two dimensionality reduction methods, principal component analysis
(PCA) and time window selection, were applied on the 8 time windows. These processed features were fed to the neural
network (NN), probabilistic neural network (PNN), and k-nearest neighbour (KNN) classifiers for classification. The 4th time
window in combination with KNN (k = 4) has achieved the optimal performance with an averaged accuracy, positive predictive
value, sensitivity, and specificity of 99.3%, 99.6%, 99.5%, and 98.8%, respectively, using tenfold cross-validation. Thus, our
proposed model is capable of highly accurate arrhythmia classification and will provide assistance to physicians in ECG
interpretation.