Please use this identifier to cite or link to this item: http://hdl.handle.net/10553/134788
Title: Evaluation of Synthetic Categorical Data Generation Techniques for Predicting Cardiovascular Diseases and Post-Hoc Interpretability of the Risk Factors
Authors: García-Vicente, Clara
Chushig-Muzo, David
Mora-Jiménez, Inmaculada
Fabelo Gómez, Himar Antonio 
Gram, Inger Torhild
Løchen, Maja Lisa
Granja, Conceição
Soguero-Ruiz, Cristina
UNESCO Clasification: 330413 Dispositivos de transmisión de datos
120910 Teoría y técnicas de muestreo
320704 Patología cardiovascular
Keywords: Cardiovascular disease
CTGAN
Generative adversarial networks
Imbalance learning
Interpretable machine learning, et al
Issue Date: 2023
Journal: Applied Sciences (Basel) 
Abstract: Machine Learning (ML) methods have become important for enhancing the performance of decision-support predictive models. However, class imbalance is one of the main challenges for developing ML models, because it may bias the learning process and the model generalization ability. In this paper, we consider oversampling methods for generating synthetic categorical clinical data aiming to improve the predictive performance in ML models, and the identification of risk factors for cardiovascular diseases (CVDs). We performed a comparative study of several categorical synthetic data generation methods, including Synthetic Minority Oversampling Technique Nominal (SMOTEN), Tabular Variational Autoencoder (TVAE) and Conditional Tabular Generative Adversarial Networks (CTGANs). Then, we assessed the impact of combining oversampling strategies and linear and nonlinear supervised ML methods. Lastly, we conducted a post-hoc model interpretability based on the importance of the risk factors. Experimental results show the potential of GAN-based models for generating high-quality categorical synthetic data, yielding probability mass functions that are very close to those provided by real data, maintaining relevant insights, and contributing to increasing the predictive performance. The GAN-based model and a linear classifier outperform other oversampling techniques, improving the area under the curve by 2%. These results demonstrate the capability of synthetic data to help with both determining risk factors and building models for CVD prediction.
URI: http://hdl.handle.net/10553/134788
ISSN: 2076-3417
DOI: 10.3390/app13074119
Source: Applied Sciences (Basel) [ISSN 2076-3417], v. 13, n. 7, 4119, (Marzo 2023)
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