IVCVLGFeb 25, 2025

TagGAN: A Generative Model for Data Tagging

arXiv:2502.17836v11 citationsh-index: 2Comput. Biol. Medicine
Originality Highly original
AI Analysis

This work addresses the need for interpretable diagnostic AI in medical image analysis by enabling weakly-supervised disease visualization, potentially reducing radiologists' workload.

The authors tackled the problem of generating pixel-level disease maps from image-level labels in medical imaging, proposing TagGAN, a GAN-based framework that outperforms top models on datasets like CheXpert, TBX11K, and COVID-19 in accurately identifying disease-specific pixels.

Precise identification and localization of disease-specific features at the pixel-level are particularly important for early diagnosis, disease progression monitoring, and effective treatment in medical image analysis. However, conventional diagnostic AI systems lack decision transparency and cannot operate well in environments where there is a lack of pixel-level annotations. In this study, we propose a novel Generative Adversarial Networks (GANs)-based framework, TagGAN, which is tailored for weakly-supervised fine-grained disease map generation from purely image-level labeled data. TagGAN generates a pixel-level disease map during domain translation from an abnormal image to a normal representation. Later, this map is subtracted from the input abnormal image to convert it into its normal counterpart while preserving all the critical anatomical details. Our method is first to generate fine-grained disease maps to visualize disease lesions in a weekly supervised setting without requiring pixel-level annotations. This development enhances the interpretability of diagnostic AI by providing precise visualizations of disease-specific regions. It also introduces automated binary mask generation to assist radiologists. Empirical evaluations carried out on the benchmark datasets, CheXpert, TBX11K, and COVID-19, demonstrate the capability of TagGAN to outperform current top models in accurately identifying disease-specific pixels. This outcome highlights the capability of the proposed model to tag medical images, significantly reducing the workload for radiologists by eliminating the need for binary masks during training.

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