Heartbeat classification using a deep neural network
Author
Other authors
Publication date
2018Abstract
As we age the cardiovascular system weakens and is more prone to
cardiovascular diseases. Those cause arrhythmia, which is an abnormal
heartbeat rhythm that can be life-threatening. An electrocardiogram (ECG)
is the principal diagnostic tool used to record and interpret heart activity.
Therefore, ECG are complex signals contain information about the each
heartbeat, but are difficult to manually analyze.
Hence, a computer-aided diagnosis (CAD) system is proposed to classify the
different types of heartbeat and ensure that the assessment of ECG signals
is objective and accurate. The method used for feature extraction of the
heartbeats, once they are segmented form the original ECG signal, is the
independent component analysis (ICA) of discrete cosine transform (DCT)
coefficients.
A deep neural network classifier is used to cluster heartbeats into one of 13
or 5 classes, corresponding to class-based or subject-based assessment
strategies, by using those two kinds of features (one for each lead).
The method acquires an overall accuracy of 97.68%, in the class-based
assessment strategy and 97.87% in the subject-based assessment strategy,
based on the MIT-BIH arrhythmia database. These results show that the
proposed automated diagnosis system provides high reliability to be used
by clinicians. The method can be extended for detection of other
abnormalities of heart and to other physiological signals.
Document Type
Project / Final year job or degree
Language
English
Keywords
ECG
Tractament del senyal
Recerca biomèdica
Pages
36 p.
Note
Curs 2017-2018
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Rights
Tots els drets reservats