Meeting Banner
Abstract #2926

A Regularized Conditional GAN for Posterior Sampling in MR Image Reconstruction

Matthew Charles Bendel1, Rizwan Ahmad2, and Philip Schniter1
1Dept. ECE, The Ohio State University, Columbus, OH, United States, 2Dept. BME, The Ohio State University, Columbus, OH, United States

Synopsis

Keywords: Image Reconstruction, Machine Learning/Artificial IntelligenceFor magnetic resonance (MR) image reconstruction, Fourier-domain measurements are collected at rates far below Nyquist to reduce clinical exam time. Because many plausible reconstructions exist that are consistent with a given measurement, we use machine learning to sample from the posterior distribution rather than generate a single image reconstruction. Many such works leverage score-based generative models (SGMs), which seek to iteratively denoise a random input but require many minutes to generate each sample. We propose a conditional generative adversarial network (GAN) that generates hundreds of posterior samples per minute and outperforms the current state-of-the-art SGM for multi-coil MR posterior sampling.

How to access this content:

For one year after publication, abstracts and videos are only open to registrants of this annual meeting. Registrants should use their existing login information. Non-registrant access can be purchased via the ISMRM E-Library.

After one year, current ISMRM & ISMRT members get free access to both the abstracts and videos. Non-members and non-registrants must purchase access via the ISMRM E-Library.

After two years, the meeting proceedings (abstracts) are opened to the public and require no login information. Videos remain behind password for access by members, registrants and E-Library customers.

Click here for more information on becoming a member.

Keywords