ECG synthesis with Neural ODE and GAN models
Mansura Habiba, Eoin Brophy, Barak A. Pearlmutter, Tomas Ward

TL;DR
This paper introduces a novel approach combining Neural ODEs and GANs to generate high-quality synthetic ECG and sine wave data, addressing privacy concerns and data scarcity in medical research.
Contribution
It proposes a new neural network architecture integrating Neural ODEs with GANs for continuous medical time series synthesis, and compares their effectiveness.
Findings
Neural ODE-based models effectively generate realistic synthetic ECG data.
The combined GAN and Neural ODE approach improves data quality over traditional methods.
Evaluation metrics confirm the models' suitability for real-world medical data analysis.
Abstract
Continuous medical time series data such as ECG is one of the most complex time series due to its dynamic and high dimensional characteristics. In addition, due to its sensitive nature, privacy concerns and legal restrictions, it is often even complex to use actual data for different medical research. As a result, generating continuous medical time series is a very critical research area. Several research works already showed that the ability of generative adversarial networks (GANs) in the case of continuous medical time series generation is promising. Most medical data generation works, such as ECG synthesis, are mainly driven by the GAN model and its variation. On the other hand, Some recent work on Neural Ordinary Differential Equation (Neural ODE) demonstrates its strength against informative missingness, high dimension as well as dynamic nature of continuous time series. Instead…
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