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Main Authors: Benmessaoud, Ahmed. S, Medjani, Farida, Bousseloub, Yahia, Bouaita, Khalid, Benrahem, Dhia, Kezai, Tahar
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2411.07252
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author Benmessaoud, Ahmed. S
Medjani, Farida
Bousseloub, Yahia
Bouaita, Khalid
Benrahem, Dhia
Kezai, Tahar
author_facet Benmessaoud, Ahmed. S
Medjani, Farida
Bousseloub, Yahia
Bouaita, Khalid
Benrahem, Dhia
Kezai, Tahar
contents Electrocardiogram (ECG) is a reliable tool for medical professionals to detect and diagnose abnormal heart waves that may cause cardiovascular diseases. This paper proposes a methodology to create a new high-quality heartbeat dataset from all 48 of the MIT-BIH recordings. The proposed approach computes an optimal heartbeat size, by eliminating outliers and calculating the mean value over 10-second windows. This results in independent QRS-centered heartbeats avoiding the mixing of successive heartbeats problem. The quality of the newly constructed dataset has been evaluated and compared with existing datasets. To this end, we built and trained a PyTorch 1-D Resnet architecture model that achieved 99.24\% accuracy with a 5.7\% improvement compared to other methods. Additionally, downsampling the dataset has improved the model's execution time by 33\% and reduced 3x memory usage.
format Preprint
id arxiv_https___arxiv_org_abs_2411_07252
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle High quality ECG dataset based on MIT-BIH recordings for improved heartbeats classification
Benmessaoud, Ahmed. S
Medjani, Farida
Bousseloub, Yahia
Bouaita, Khalid
Benrahem, Dhia
Kezai, Tahar
Signal Processing
Artificial Intelligence
Machine Learning
Electrocardiogram (ECG) is a reliable tool for medical professionals to detect and diagnose abnormal heart waves that may cause cardiovascular diseases. This paper proposes a methodology to create a new high-quality heartbeat dataset from all 48 of the MIT-BIH recordings. The proposed approach computes an optimal heartbeat size, by eliminating outliers and calculating the mean value over 10-second windows. This results in independent QRS-centered heartbeats avoiding the mixing of successive heartbeats problem. The quality of the newly constructed dataset has been evaluated and compared with existing datasets. To this end, we built and trained a PyTorch 1-D Resnet architecture model that achieved 99.24\% accuracy with a 5.7\% improvement compared to other methods. Additionally, downsampling the dataset has improved the model's execution time by 33\% and reduced 3x memory usage.
title High quality ECG dataset based on MIT-BIH recordings for improved heartbeats classification
topic Signal Processing
Artificial Intelligence
Machine Learning
url https://arxiv.org/abs/2411.07252