Addressing cross-population domain shift in chest X-ray classification through supervised adversarial domain adaptation
Resumen: Medical image analysis, empowered by artificial intelligence (AI), plays a crucial role in modern healthcare diagnostics. However, the effectiveness of machine learning models hinges on their ability to generalize to diverse patient populations, presenting domain shift challenges. This study explores the domain shift problem in chest X-ray classification, focusing on cross-population variations, especially in underrepresented groups. We analyze the impact of domain shifts across three population datasets acting as sources using a Nigerian chest X-ray dataset acting as the target. Model performance is evaluated to assess disparities between source and target populations, revealing large discrepancies when the models trained on a source were applied to the target domain. To address with the evident domain shift among the populations, we propose a supervised adversarial domain adaptation (ADA) technique. The feature extractor is first trained on the source domain using a supervised loss function in ADA. The feature extractor is then frozen, and an adversarial domain discriminator is introduced to distinguish between the source and target domains. Adversarial training fine-tunes the feature extractor, making features from both domains indistinguishable, thereby creating domain-invariant features. The technique was evaluated on the Nigerian dataset, showing significant improvements in chest X-ray classification performance. The proposed model achieved a 90.08% accuracy and a 96% AUC score, outperforming existing approaches such as multi-task learning (MTL) and continual learning (CL). This research highlights the importance of developing domain-aware models in AI-driven healthcare, offering a solution to cross-population domain shift challenges in medical imaging.
Idioma: Inglés
DOI: 10.1038/s41598-025-95390-3
Año: 2025
Publicado en: Scientific reports (Nature Publishing Group) 15, 1 (2025), 11383 [13 pp.]
ISSN: 2045-2322

Financiación: info:eu-repo/grantAgreement/ES/DGA/B50-24
Financiación: info:eu-repo/grantAgreement/ES/DGA/T64-23R
Financiación: info:eu-repo/grantAgreement/ES/MICINN/PID2022-138703OB-I00
Tipo y forma: Article (Published version)
Área (Departamento): Área Lenguajes y Sistemas Inf. (Dpto. Informát.Ingenie.Sistms.)
Exportado de SIDERAL (2025-10-17-14:32:11)


Visitas y descargas

Este artículo se encuentra en las siguientes colecciones:
articulos > articulos-por-area > lenguajes_y_sistemas_informaticos



 Notice créée le 2025-05-08, modifiée le 2025-10-17


Versión publicada:
 PDF
Évaluer ce document:

Rate this document:
1
2
3
 
(Pas encore évalué)