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Proceedings ArticleDOI

CardioGAN: An Attention-based Generative Adversarial Network for Generation of Electrocardiograms

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TLDR
In this paper, a novel deep generative architecture, termed as CardioGAN, based on generative adversarial network and powered by the effective attention mechanism has been designed which is capable of learning the intricate interdependencies among the various parts of real samples leading to the generation of more realistic electrocardiogram signals.
Abstract
Electrocardiogram (ECG) signal is studied to obtain crucial information about the condition of a patient's heart. Machine learning based automated medical diagnostic systems that may help to evaluate the condition of the heart from this signal are required to be trained using large volumes of labelled training samples and the same may increase the chance of compromising with the patients' privacy. To solve this issue, generation of synthetic electrocardiogram signals by learning only from the general distributions of the available real training samples have been attempted in the literature. However, these studies did not pay necessary attention to the specific vital details of these signals, such as the P wave, the QRS complex, and the T wave. This shortcoming often results in the generation of unrealistic synthetic signals, such as a signal which does not contain one or more of the above components. In the present study, a novel deep generative architecture, termed as CardioGAN, based on generative adversarial network and powered by the effective attention mechanism has been designed which is capable of learning the intricate inter-dependencies among the various parts of real samples leading to the generation of more realistic electrocardiogram signals. Also, it helps in reducing the risk of breaching the privacy of patients. Extensive experimentation performed by us establishes that the proposed method achieves a better performance in generating synthetic electrocardiogram signals in comparison to the existing methods.

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Journal ArticleDOI

A unique cardiac electrocardiographic 3D model. Toward interpretable AI diagnosis

TL;DR: In this paper , the authors presented a mathematical model of the cardiac electrical activity based on a five dipole representation of the electrical source, each one associated with the well-known waves of the electrocardiogram signal.

A Unique Cardiac Electrophysiological 3D Model

TL;DR: The model accurately reproduces the electrocardiogram and vectocardiogram signals of any diseased or healthy heart, bringing together different systems in a single model, and a novel algorithm accurately identifies the model parameters.

Data Augmentation for Generating Synthetic Electrogastrogram Time Series

TL;DR: In this article , a new method for generating synthetic electrogastrogram (EGG) time series was proposed to address an emerging need for large amount of diverse datasets for proper training of artificial intelligence (AI) algorithms and for rigor evaluation of signal processing techniques.

Data-driven Method for Generating Synthetic Electrogastrogram Time Series

TL;DR: In this article , a new method for generating realistic electrogastrogram (EGG) time series is presented and evaluated, based on the hypothesis that EGG dominant frequency should be statistically significantly different between fasting and post-prandial states.
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