ECG Heartbeat classification using deep transfer learning with
Convolutional Neural Network and STFT technique
- URL: http://arxiv.org/abs/2206.14200v1
- Date: Tue, 28 Jun 2022 04:57:02 GMT
- Title: ECG Heartbeat classification using deep transfer learning with
Convolutional Neural Network and STFT technique
- Authors: Minh Cao, Tianqi Zhao, Yanxun Li, Wenhao Zhang, Peyman Benharash,
Ramin Ramezani
- Abstract summary: We propose a deep transfer learning framework that is aimed to perform classification on a small size training dataset.
The proposed method is to fine-tune a general-purpose image classifier ResNet-18 with MIT-BIH arrhythmia dataset in accordance with the AAMI EC57 standard.
- Score: 3.0065593137364353
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Electrocardiogram (ECG) is a simple non-invasive measure to identify
heart-related issues such as irregular heartbeats known as arrhythmias. While
artificial intelligence and machine learning is being utilized in a wide range
of healthcare related applications and datasets, many arrhythmia classifiers
using deep learning methods have been proposed in recent years. However, sizes
of the available datasets from which to build and assess machine learning
models is often very small and the lack of well-annotated public ECG datasets
is evident. In this paper, we propose a deep transfer learning framework that
is aimed to perform classification on a small size training dataset. The
proposed method is to fine-tune a general-purpose image classifier ResNet-18
with MIT-BIH arrhythmia dataset in accordance with the AAMI EC57 standard. This
paper further investigates many existing deep learning models that have failed
to avoid data leakage against AAMI recommendations. We compare how different
data split methods impact the model performance. This comparison study implies
that future work in arrhythmia classification should follow the AAMI EC57
standard when using any including MIT-BIH arrhythmia dataset.
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