Cape Town - 2026 ISMRM-ISMRT Annual Meeting and Exhibition
9 May 2026 – 14 May 2026 · Cape Town, South Africa
660-04-011 ISMRM Abstract

Adaptive Correction Diffusion Bridges for Generative MRI Reconstruction in Few Sampling Steps

Accepted
Muhammad Usama Mirza 1,2, Onat Dalmaz3,4, Alper Gungor1,2, Tolga Cukur1,2,5
1Dept. of Electrical and Electronics Engineering, Bilkent University, Ankara, Turkey
2National Magnetic Resonance Research Center (UMRAM), Bilkent University, Ankara, Turkey
3Electrical Engineering, Stanford University, Stanford, United States of America
4Department of Radiology, Stanford University, Stanford, United States of America
5Dept. of Neuroscience, Bilkent University, Ankara, Turkey
Presenting Author: Muhammad Usama Mirza

Synopsis

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References

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