Chandra, B S and Sastry, Challa Subrahmanya and Jana, Soumya and Patidar, S
(2017)
Atrial Fibrillation Detection Using Convolutional Neural Networks.
Comput ing in Cardiology.
pp. 1-4.
ISSN 2325- 887X
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Abstract
As part of the PhysioNet/Computing in Cardiology
Challenge 2017, this work focuses on the classification
of a single channel short electrocardiogram (ECG) sig-
nal into normal, atrial fibrillation (AF), others and noise
classes. To this end, we propose a shallow convolutional
neural network architecture which learns suitable features
pertaining to each class while eliminating the need to ex-
tract the traditionally used ad hoc features. In particular,
we first developed a robust R-peak detector and stacked
sequence of fixed number of detected beats with R-peaks
aligned. These stack of beats corresponding to a segment
of ECG record are classified into one of the four afore-
mentioned classes. To improve the robustness, multiple
classifiers were trained to classify these segments. Over-
all record classification was then generated using an vot-
ing scheme from the classification results of individual seg-
ments. Our best submission result during the official phase
has a score of 71% with F1 scores of 86%, 73% and 56%
respectively for normal, AF and other classes respectively.
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