A Systematic Benchmark of GAN Architectures for MRI-to-CT Synthesis
arXiv cs.CV / 3/17/2026
📰 NewsTools & Practical UsageModels & Research
Key Points
- The paper benchmarks ten GAN architectures for MRI-to-CT translation on the SynthRAD2025 dataset across abdomen, thorax, and head‑and‑neck, using a unified validation protocol with identical preprocessing and optimization settings.
- It assesses voxel-wise accuracy, structural fidelity, perceptual quality, and distribution-level realism, in addition to computational complexity, to provide a comprehensive performance comparison.
- Supervised paired models consistently outperform unpaired approaches, highlighting the importance of voxel-wise supervision in this task.
- Pix2Pix achieves the most balanced performance across districts with a favorable quality-to-complexity trade-off, while multi-district training improves structural robustness and intra-district training enhances voxel-wise fidelity.
- The study offers quantitative guidance for model selection in MRI-only radiotherapy workflows and provides a reproducible framework with public code and results.
Related Articles
I Was Wrong About AI Coding Assistants. Here's What Changed My Mind (and What I Built About It).
Dev.to

Interesting loop
Reddit r/LocalLLaMA
Qwen3.5-122B-A10B Uncensored (Aggressive) — GGUF Release + new K_P Quants
Reddit r/LocalLLaMA
Die besten AI Tools fuer Digital Nomads 2026
Dev.to
I Built the Most Feature-Complete MCP Server for Obsidian — Here's How
Dev.to