Title :
Composite neural network architecture for extensive long term ECG analysis
Author :
Silipo, R. ; Marchesi, C.
Author_Institution :
Dept. Sistemi e Informatica, Firenze Univ., Italy
Abstract :
A composite ECG analyser, based on Neural Networks (NN), has been designed and carried out to recognise main cardiac diseases, like arrhythmia, ischemia, some myocardial chronic diseases. Pre-processing techniques have been introduced to enhance specific features of the different ECG abnormalities, so making more reliable further NN processing. Uncertainty management criteria gave robustness to the classifiers when dealing with new or ambiguous events. The best performances have been shown by the arrhythmia detector (error rate close to 0%; correct rejection rate of unknown patterns close to 100%). The ST-T changes detector showed a 77% sensitivity and an 85% PPA. Reliability robustness towards uncertain or missing data, wide range of cardiac abnormalities recognised by the analyser, allow the authors to consider it a step forward the commercially available systems and adequate to long term monitoring, aimed at early diagnosis, therapy assessment, post-surgical or post MI follow-up
Keywords :
electrocardiography; medical signal processing; neural net architecture; arrhythmia detector; composite neural network architecture; correct rejection rate; early diagnosis; electrodiagnostics; error rate; extensive long term ECG analysis; ischemia; long term monitoring; missing data; myocardial chronic diseases; post myocardial infarction follow-up; post-surgical follow-up; reliability robustness; therapy assessment; uncertain data; unknown patterns; Cardiac disease; Cardiovascular diseases; Detectors; Electrocardiography; Error analysis; Ischemic pain; Myocardium; Neural networks; Robustness; Uncertainty;
Conference_Titel :
Computers in Cardiology, 1996
Conference_Location :
Indianapolis, IN
Print_ISBN :
0-7803-3710-7
DOI :
10.1109/CIC.1996.542461