SPICER: Self‐supervised learning for MRI with automatic coil sensitivity estimation and reconstruction

Author:

Hu Yuyang1ORCID,Gan Weijie2ORCID,Ying Chunwei3ORCID,Wang Tongyao4,Eldeniz Cihat3ORCID,Liu Jiaming1,Chen Yasheng5,An Hongyu1345ORCID,Kamilov Ulugbek S.12ORCID

Affiliation:

1. Department of Electrical and Systems Engineering Washington University in St. Louis St. Louis Missouri

2. Department of Computer Science and Engineering Washington University in St. Louis St. Louis Missouri

3. Mallinckrodt Institute of Radiology Washington University in St. Louis St. Louis Missouri

4. Department of Biomedical Engineering Washington University in St. Louis St. Louis Missouri

5. Department of Neurology Washington University in St. Louis St. Louis Missouri

Abstract

AbstractPurposeTo introduce a novel deep model‐based architecture (DMBA), SPICER, that uses pairs of noisy and undersampled k‐space measurements of the same object to jointly train a model for MRI reconstruction and automatic coil sensitivity estimation.MethodsSPICER consists of two modules to simultaneously reconstructs accurate MR images and estimates high‐quality coil sensitivity maps (CSMs). The first module, CSM estimation module, uses a convolutional neural network (CNN) to estimate CSMs from the raw measurements. The second module, DMBA‐based MRI reconstruction module, forms reconstructed images from the input measurements and the estimated CSMs using both the physical measurement model and learned CNN prior. With the benefit of our self‐supervised learning strategy, SPICER can be efficiently trained without any fully sampled reference data.ResultsWe validate SPICER on both open‐access datasets and experimentally collected data, showing that it can achieve state‐of‐the‐art performance in highly accelerated data acquisition settings (up to ). Our results also highlight the importance of different modules of SPICER—including the DMBA, the CSM estimation, and the SPICER training loss—on the final performance of the method. Moreover, SPICER can estimate better CSMs than pre‐estimation methods especially when the ACS data is limited.ConclusionDespite being trained on noisy undersampled data, SPICER can reconstruct high‐quality images and CSMs in highly undersampled settings, which outperforms other self‐supervised learning methods and matches the performance of the well‐known E2E‐VarNet trained on fully sampled ground‐truth data.

Funder

National Science Foundation

National Institutes of Health

Publisher

Wiley

Cited by 3 articles. 订阅此论文施引文献 订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献

1. Self‐supervised learning for improved calibrationless radial MRI with NLINV‐Net;Magnetic Resonance in Medicine;2024-07-30

2. Deep learning for accelerated and robust MRI reconstruction;Magnetic Resonance Materials in Physics, Biology and Medicine;2024-07-23

3. Deep Learned Non-Linear Propagation Model Regularizer for Compressive Spectral Imaging;IEEE Transactions on Computational Imaging;2024

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