Kabaş, BilalArslan, FuatNezhad, Valiyeh AnsarianÇukur, Tolga2025-02-222025-02-222024-12-052165-0608https://hdl.handle.net/11693/116629Conference Name:2024 32nd Signal Processing and Communications Applications Conference (SIU)Date of Conference:MAY 15-18, 2024Magnetic Resonance Imaging (MRI) plays a significant role in medical diagnostics. However, prolonged scan times may hinder its widespread applicability in clinical settings. To mitigate this challenge, certain contrasts within multi-contrast MRI protocols can be excluded, and these target contrasts can then be synthesized from the acquired set of source contrasts retrospectively. Recently introduced generative adversarial and diffusion based MRI synthesis models yield enhanced performance against classical methods, yet there can still benefit from technical improvements. In this study, we propose a Brownian diffusion-based multi-contrast MR image synthesis model. Existing diffusion models synthesize images starting from a Gaussian noise sample, so guidance from the source contrast images are weakened. Conditional denoising diffusion models employs a weak conditioning during reverse process within the denoising network that may result in suboptimal sample generation due to poor convergence to target distribution. Capitalizing Brownian diffusion, the proposed model instead incorporates stronger guidance toward the target contrast distribution via a refined diffusion process. Experimental results suggest that our method attains higher performance in noise reduction and capture of tissue structural details over existing methods.EnglishMRI synthesiscontrast diffusiondeep learningMulti-contrast mr image synthesis with a brownian diffusion modelConference Paper10.1109/SIU61531.2024.10601086