MRI-to-CT synthesis using drifting models
Qing Lyu, Jianxu Wang, Jeremy Hudson, Ge Wang, Chirstopher T. Whitlow

TL;DR
This paper demonstrates that drifting models can synthesize high-quality pelvic CT images from MRI efficiently, outperforming traditional methods in accuracy and speed, with potential for clinical applications.
Contribution
It introduces drifting models for MRI-to-CT synthesis, showing they surpass existing methods in image quality and inference speed for pelvic imaging.
Findings
Drifting models achieve higher SSIM and PSNR than baseline methods.
They produce sharper bone edges and better anatomical detail.
Inference time is on the order of milliseconds, enabling rapid processing.
Abstract
Accurate MRI-to-CT synthesis could enable MR-only pelvic workflows by providing CT-like images with bone details while avoiding additional ionizing radiation. In this work, we investigate recently proposed drifting models for synthesizing pelvis CT images from MRI and benchmark them against convolutional neural networks (UNet, VAE), a generative adversarial network (WGAN-GP), a physics-inspired probabilistic model (PPFM), and diffusion-based methods (FastDDPM, DDIM, DDPM). Experiments are performed on two complementary datasets: Gold Atlas Male Pelvis and the SynthRAD2023 pelvis subset. Image fidelity and structural consistency are evaluated with SSIM, PSNR, and RMSE, complemented by qualitative assessment of anatomically critical regions such as cortical bone and pelvic soft-tissue interfaces. Across both datasets, the proposed drifting model achieves high SSIM and PSNR and low RMSE,…
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