Meeting Banner
Abstract #1078

Subspace dual-domain-loss for self-supervised deep learning reconstruction of dynamic MRI: Method and Application to CMR Multitasking

Zihao Chen1,2,3, Yibin Xie1, Debiao Li1,3, and Anthony G. Christodoulou1,2,3
1Biomedical Imaging Research Institute, Cedars-Sinai Medical Center, Los Angeles, CA, United States, 2Department of Radiological Sciences, David Geffen School of Medicine at UCLA, Los Angeles, CA, United States, 3Department of Bioengineering, UCLA, Los Angeles, CA, United States

Synopsis

Keywords: Machine Learning/Artificial Intelligence, Image Reconstruction, self-supervised learning, subspace, dynamic MRI

Motivation: Supervised deep learning (DL) can reduce reconstruction time for CMR Multitasking, but the lack of ground truth limits the quality of supervised DL to that of iteratively reconstructed labels.

Goal(s): Our goal was to develop a self-supervised learning (SSL) reconstruction method, whose performance is not limited by the iterative reconstruction.

Approach: We developed a dual-domain subspace SSL reconstruction method for non-Cartesian dynamic MRI, applying it to CMR Multitasking.

Results: The proposed method can perform image reconstruction without reference images and shows better interscan consistency than supervised DL.

Impact: With the proposed method, image quality of DL reconstruction for CMR Multitasking can potentially surpass iterative reconstruction. We applied subspace constraints to SSL reconstruction, showing an efficient way to relieve the computational burden of dynamic MRI SSL reconstruction.

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