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ECG classification and abnormality detection using cascade forward neural network


S Ayub
JP Saini

Abstract

Electrical activity of the heart is called as electrocardiogram i.e. ECG. Arrhythmias are among the most common ECG
abnormalities. ECGs provide lots f information about heart abnormalities. The diagnosis depends upon the physician and it
varies from physician to physician and also depends upon the experience of the physician. Previously many techniques were
tried for analysis and automisation of the analysis. This paper describes the use of MATLAB based artificial neural network
tools for ECG analysis for finding out whether the ECG is normal or abnormal and if it is abnormal, what is the abnormality.
There are various arrhythmia like Ventricular premature beats, asystole, couplet, bigeminy, fusion beats etc. To classify this,
various weighted neural networks were tried with different algorithms. They were provided training inputs from the standard
MIT-BIH Arrhythmia database and tested by providing unknown patient data from the same database. The results obtained with
different networks and different algorithms are compared, it is found that to identify whether the ECG beat is normal or
abnormal, cascade forward back network algorithm has shown 99.9 % correct classification. These results are compared with
previous neural network techniques and found that method proposed in this paper gives best results.

Journal Identifiers


eISSN: 2141-2839
print ISSN: 2141-2820