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Enhancing Image Retrieval Performance With Generative Models in Siamese Networks.

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IEEE journal of biomedical and health informatics 📖 저널 OA 2.4% 2025: 0/11 OA 2026: 1/30 OA 2025~2026 2025 Vol.29(7) p. 4956-4968
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Golfe A, Colomer A, Prades J, Naranjo V

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Prostate cancer is a critical healthcare challenge globally and is one of the most prevalent types of cancer in men.

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APA Golfe A, Colomer A, et al. (2025). Enhancing Image Retrieval Performance With Generative Models in Siamese Networks.. IEEE journal of biomedical and health informatics, 29(7), 4956-4968. https://doi.org/10.1109/JBHI.2025.3543907
MLA Golfe A, et al.. "Enhancing Image Retrieval Performance With Generative Models in Siamese Networks.." IEEE journal of biomedical and health informatics, vol. 29, no. 7, 2025, pp. 4956-4968.
PMID 40036556 ↗

Abstract

Prostate cancer is a critical healthcare challenge globally and is one of the most prevalent types of cancer in men. Early and accurate diagnosis is essential for effective treatment and improved patient outcomes. In the existing literature, computer-aided diagnosis (CAD) solutions have been developed to assist pathologists in various tasks, including classification, diagnosis, and prostate cancer grading. Content-based image retrieval (CBIR) techniques provide valuable approaches to enhance these computer-aided solutions. This study evaluates how generative deep learning models can improve the quality of retrievals within a CBIR system. Specifically, we propose applying a Siamese Network approach, which enables us to learn how to encode image patches into latent representations for retrieval purposes. We used the ProGleason-GAN framework trained on the SiCAPv2 dataset to create similar pairs of input patches. Our observations indicate that introducing synthetic patches leads to notable improvements in the evaluated metrics, underscoring the utility of generative models within CBIR tasks. Furthermore, this work is the first in the literature where latent representations optimized for CBIR are used to train an attention mechanism for performing Gleason Scoring of a WSI.

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