IVAICVMar 31

Brain MR Image Synthesis with Multi-contrast Self-attention GAN

arXiv:2604.000705.0
Predicted impact top 91% in IV · last 90 daysOriginality Highly original
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This addresses the practical challenge of acquiring all MRI modalities for every patient in neuro-oncology, which is often limited by time, cost, and patient discomfort.

The paper tackles the problem of incomplete multi-modal MRI acquisition for neuro-oncological assessment by proposing 3D-MC-SAGAN, a unified 3D multi-contrast synthesis framework that generates high-fidelity missing modalities from a single T2 input while preserving tumour characteristics. The model achieves state-of-the-art quantitative performance and maintains tumour segmentation accuracy comparable to fully acquired multi-modal inputs.

Accurate and complete multi-modal Magnetic Resonance Imaging (MRI) is essential for neuro-oncological assessment, as each contrast provides complementary anatomical and pathological information. However, acquiring all modalities (e.g., T1c, T1n, T2, T2f) for every patient is often impractical due to time, cost, and patient discomfort, potentially limiting comprehensive tumour evaluation. We propose 3D-MC-SAGAN (3D Multi-Contrast Self-Attention generative adversarial network), a unified 3D multi-contrast synthesis framework that generates high-fidelity missing modalities from a single T2 input while explicitly preserving tumour characteristics. The model employs a multi-scale 3D encoder-decoder generator with residual connections and a novel Memory-Bounded Hybrid Attention (MBHA) block to capture long-range dependencies efficiently, and is trained with a WGAN-GP critic and an auxiliary contrast-conditioning branch to produce T2f, T1n, and T1c volumes within a single unified network. A frozen 3D U-Net-based segmentation module introduces a segmentation-consistency constraint to preserve lesion morphology. The composite objective integrates adversarial, reconstruction, perceptual, structural similarity, contrast-classification, and segmentation-guided losses to align global realism with tumour-preserving structure. Extensive evaluation on 3D brain MRI datasets demonstrates that 3D-MC-SAGAN achieves state-of-the-art quantitative performance and generates visually coherent, anatomically plausible contrasts with improved distribution-level realism. Moreover, it maintains tumour segmentation accuracy comparable to fully acquired multi-modal inputs, highlighting its potential to reduce acquisition burden while preserving clinically meaningful information.

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