Title :
ECG analysis using nonlinear PCA neural networks for ischemia detection
Author :
Stamkopoulos, Telemachos ; Diamantaras, Konstantinos ; Maglaveras, Nicos ; Strintzis, Michael
Author_Institution :
Lab. of Med. Inf., Aristotelian Univ. of Thessaloniki, Greece
fDate :
11/1/1998 12:00:00 AM
Abstract :
The detection of ischemic cardiac beats from a patient´s electrocardiogram (EGG) signal is based on the characteristics of a specific part of the beat called the ST segment. The correct classification of the beats relies heavily on the efficient and accurate extraction of the ST segment features. An algorithm is developed for this feature extraction based on nonlinear principal component analysis (NLPCA). NLPCA is a method for nonlinear feature extraction that is usually implemented by a multilayer neural network. It has been observed to have better performance, compared with linear principal component analysis (PCA), in complex problems where the relationships between the variables are not linear. In this paper, the NLPCA techniques are used to classify each segment into one of two classes: normal and abnormal (ST+, ST-, or artifact). During the algorithm training phase, only normal patterns are used, and for classification purposes, we use only two nonlinear features for each ST segment. The distribution of these features is modeled using a radial basis function network (RBFN). Test results using the European ST-T database show that using only two nonlinear components and a training set of 1000 normal samples from each file produce a correct classification rate of approximately 80% for the normal beats and higher than 90% for the ischemic beats
Keywords :
electrocardiography; feature extraction; feedforward neural nets; medical signal processing; pattern classification; signal detection; ECG analysis; European ST-T database; ST segment; abnormal patterns; algorithm training phase; beat classification; correct classification rate; electrocardiogram; feature extraction; ischemia detection; ischemic cardiac beats; linear principal component analysis; multilayer neural network; nonlinear PCA neural networks; nonlinear principal component analysis; normal patterns; performance; radial basis function network; training set; Biomedical signal processing; Electrocardiography; Feature extraction; Ischemic pain; Multi-layer neural network; Neural networks; Patient monitoring; Principal component analysis; Radial basis function networks; Signal processing algorithms;
Journal_Title :
Signal Processing, IEEE Transactions on