Meeting Banner
Abstract #4507

Deep-learning-based optimization of k-space undersampling in self-supervised MRI reconstruction

Chun Liu1,2, Peng Hu1,2, and Haikun Qi1,2
1School of Biomedical Engineering, ShanghaiTech University, Shanghai, China, 2Shanghai Clinical Research and Trial Center, Shanghai, China

Synopsis

Keywords: AI/ML Image Reconstruction, Image Reconstruction

Motivation: Self-supervised deep learning has shown good performance in reconstructing undersampled k-space. While recent developments focus on improving reconstruction performance for a given undersampling pattern, there is limited research aiming to learn and optimize k-space sampling strategies to offer a performance gain in self-supervised reconstruction.

Goal(s): To design a deep learning framework to optimize the sampling pattern in self-supervised MRI reconstruction.

Approach: An Auto Mask Module was optimized simultaneously with the self-supervised reconstruction module in an end-to-end framework.

Results: The proposed method can achieve better reconstruction results than self-supervised methods based on fixed masks.

Impact: The proposed method can produce better self-supervised reconstruction results by optimizing the k-space undersampling pattern.

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