An Electrocardiogram (ECG) graphically records changes in
electrical potentials between different sites on the skin due to cardiac
activity. ECGs are inexpensive and non-invasive means to observe the heart’s
physiology. The heart’s electrical activity is a depolarization and
depolarization sequence. ECGs help in identifying cardiac arrhythmia because
they have diagnostic information. ECG arrhythmia detection accuracy improves by
using machine learning and data mining methods. Genetic Algorithm is an optimization
technique trying to replicate natural evolution where individuals with best
characteristics adapting to the environment are likely to reproduce and
survive. This study proposes multi-layer perceptron neural network optimization
using Genetic Algorithm (GA) to classify ECG arrhythmia. Symlet extracts RR
intervals from ECG data as features while symmetric uncertainty assures feature
reduction. GA optimizes learning rate and momentum. Experimental results show
that the proposed optimized neural network achieved classification accuracy and
average precision of 96.93% and 96.92% average recall.
Author(s) Details:
V. S. R. Kumari,
Departments of Electronics and Communication, Andra University,
Vishakhapatnam, India.
P. Rajesh Kumar,
Departments
of Electronics and Communication, Andra University, Vishakhapatnam, India.
Please see the link here: https://stm.bookpi.org/CPSTR-V8/article/view/14107
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