Meta Structural Learning Algorithm With Interpretable Convolutional Neural Networks for Arrhythmia Detection of Multisession ECG
Created by W.Langdon from
gp-bibliography.bib Revision:1.7970
- @Article{Meqdad:2022:IEEEAccess,
-
author = "Maytham N. Meqdad and Fardin Abdali-Mohammadi and
Seifedine Kadry",
-
journal = "IEEE Access",
-
title = "Meta Structural Learning Algorithm With Interpretable
Convolutional Neural Networks for Arrhythmia Detection
of Multisession {ECG}",
-
year = "2022",
-
volume = "10",
-
pages = "61410--61425",
-
abstract = "Detection of arrhythmia of electrocardiogram (ECG)
signals recorded within several sessions for each
person is a challenging issue, which has not been
properly investigated in the past. This arrhythmia
detection is challenging since a classification model
that is constructed and tested using ECG signals
maintains generalization when dealing with unseen
samples. This article has proposed a new interpretable
meta structural learning algorithm for this challenging
detection. Therefore, a compound loss function was
suggested including the structural feature extraction
fault and space label fault with GUMBEL-SOFTMAX
distribution in the convolutional neural network (CNN)
models. The collaboration between models was carried
out to create learning to learn features in models by
transferring the knowledge among them when confronted
by unseen samples. One of the deficiencies of a
meta-learning algorithm is the non-interpretability of
its models. Therefore, to create an interpretability
feature for CNN models, they are encoded as the
evolutionary trees of the genetic programming (GP)
algorithms in this article. These trees learn the
process of extracting deep structural features in the
course of the evolution in the GP algorithm. The
experimental results suggested that the proposed
detection model enjoys an accuracy of 9percent
regarding the classification of 7 types of arrhythmia
in the samples of the Chapman ECG dataset recorded from
10646 patients in different sessions. Finally, the
comparisons demonstrated the competitive performance of
the proposed model concerning the other models based on
the big deep models.",
-
keywords = "genetic algorithms, genetic programming",
-
DOI = "doi:10.1109/ACCESS.2022.3181727",
-
ISSN = "2169-3536",
-
notes = "Also known as \cite{9792273}",
- }
Genetic Programming entries for
Maytham N Meqdad
Fardin Abdali-Mohammadi
Seifedine Kadry
Citations