Transfer learning for a tabular-to-image approach: A case study for cardiovascular disease prediction

dc.contributor.authorLara-Abelenda , Francisco J.
dc.contributor.authorChushig-Muzo, David
dc.contributor.authorPeiro-Corbacho, Pablo
dc.contributor.authorGómez-Martínez, Vanesa
dc.contributor.authorWägner, Ana M.
dc.contributor.authorGranja, Conceição
dc.contributor.authorSoguero-Ruiz, Cristina
dc.date.accessioned2025-05-19T14:53:45Z
dc.date.available2025-05-19T14:53:45Z
dc.date.issued2025-05
dc.description.abstractObjective: Machine learning (ML) models have been extensively used for tabular data classification but recent works have been developed to transform tabular data into images, aiming to leverage the predictive performance of convolutional neural networks (CNNs). However, most of these approaches fail to convert data with a low number of samples and mixed-type features. This study aims: to evaluate the performance of the tabular-to-image method named low mixed-image generator for tabular data (LM-IGTD); and to assess the effectiveness of transfer learning and fine-tuning for improving predictions on tabular data. Methods: We employed two public tabular datasets with patients diagnosed with cardiovascular diseases (CVDs): Framingham and Steno. First, both datasets were transformed into images using LM-IGTD. Then, Framingham, which contains a larger set of samples than Steno, is used to train CNN-based models. Finally, we performed transfer learning and fine-tuning using the pre-trained CNN on the Steno dataset to predict CVD risk. Results: The CNN-based model with transfer learning achieved the highest AUCORC in Steno (0.855), outperforming ML models such as decision trees, K-nearest neighbors, least absolute shrinkage and selection operator (LASSO) support vector machine and TabPFN. This approach improved accuracy by 2% over the best-performing traditional model, TabPFN. Conclusion: To the best of our knowledge, this is the first study that evaluates the effectiveness of applying transfer learning and fine-tuning to tabular data using tabular-to-image approaches. Through the use of CNNs’ predictive capabilities, our work also advances the diagnosis of CVD by providing a framework for early clinical intervention and decision-making support.
dc.identifier.citationFrancisco J. Lara-Abelenda, David Chushig-Muzo, Pablo Peiro-Corbacho, Vanesa Gómez-Martínez, Ana M. Wägner, Conceição Granja, Cristina Soguero-Ruiz, Transfer learning for a tabular-to-image approach: A case study for cardiovascular disease prediction, Journal of Biomedical Informatics, Volume 165, 2025, 104821, ISSN 1532-0464, https://doi.org/10.1016/j.jbi.2025.104821
dc.identifier.doihttps://doi.org/10.1016/j.jbi.2025.104821
dc.identifier.issn1532-0480 (online)
dc.identifier.issn1532-0464 (print)
dc.identifier.urihttps://hdl.handle.net/10115/86497
dc.language.isoen
dc.publisherElsevier
dc.rightsAttribution 4.0 Internationalen
dc.rights.accessRightsinfo:eu-repo/semantics/openAccess
dc.rights.urihttp://creativecommons.org/licenses/by/4.0/
dc.subjectTabular-to-image methods
dc.subjectTransfer learning
dc.subjectLow-dimensional data
dc.subjectMixed-type data
dc.subjectCardiovascular disease prediction
dc.titleTransfer learning for a tabular-to-image approach: A case study for cardiovascular disease prediction
dc.typeArticle

Archivos

Bloque original

Mostrando 1 - 1 de 1
Cargando...
Miniatura
Nombre:
1-s2.0-S1532046425000504-main.pdf
Tamaño:
1.89 MB
Formato:
Adobe Portable Document Format