ECGAN: Self-supervised generative adversarial network for electrocardiography

01/23/2023
by   Lorenzo Simone, et al.
0

High-quality synthetic data can support the development of effective predictive models for biomedical tasks, especially in rare diseases or when subject to compelling privacy constraints. These limitations, for instance, negatively impact open access to electrocardiography datasets about arrhythmias. This work introduces a self-supervised approach to the generation of synthetic electrocardiography time series which is shown to promote morphological plausibility. Our model (ECGAN) allows conditioning the generative process for specific rhythm abnormalities, enhancing synchronization and diversity across samples with respect to literature models. A dedicated sample quality assessment framework is also defined, leveraging arrhythmia classifiers. The empirical results highlight a substantial improvement against state-of-the-art generative models for sequences and audio synthesis.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
12/16/2021

High Fidelity Visualization of What Your Self-Supervised Representation Knows About

Discovering what is learned by neural networks remains a challenge. In s...
research
07/24/2023

TransFusion: Generating Long, High Fidelity Time Series using Diffusion Models with Transformers

The generation of high-quality, long-sequenced time-series data is essen...
research
10/14/2022

Quantifying Quality of Class-Conditional Generative Models in Time-Series Domain

Generative models are designed to address the data scarcity problem. Eve...
research
08/06/2020

HooliGAN: Robust, High Quality Neural Vocoding

Recent developments in generative models have shown that deep learning c...
research
05/19/2023

TSGM: A Flexible Framework for Generative Modeling of Synthetic Time Series

Temporally indexed data are essential in a wide range of fields and of i...

Please sign up or login with your details

Forgot password? Click here to reset