Compressed sensing for longitudinal MRI: An adaptive-weighted approach
Lior Weizman, Yonina C. Eldar, Dafna Ben Bashat

TL;DR
This paper introduces a novel adaptive compressed sensing method for longitudinal MRI that leverages prior scans to improve reconstruction quality and reduce scan time in repeated brain MRI studies.
Contribution
The authors propose a new adaptive-weighted compressed sensing approach that adjusts sampling and reconstruction based on scan similarity, enhancing efficiency in longitudinal MRI.
Findings
Outperforms other CS-based methods in reconstruction quality.
Achieves high spatial resolution with significant undersampling.
Demonstrates improved SNR in 3D brain MRI scans.
Abstract
Purpose: Repeated brain MRI scans are performed in many clinical scenarios, such as follow up of patients with tumors and therapy response assessment. In this paper, the authors show an approach to utilize former scans of the patient for the acceleration of repeated MRI scans. Methods: The proposed approach utilizes the possible similarity of the repeated scans in longitudinal MRI studies. Since similarity is not guaranteed, sampling and reconstruction are adjusted during acquisition to match the actual similarity between the scans. The baseline MR scan is utilized both in the sampling stage, via adaptive sampling, and in the reconstruction stage, with weighted reconstruction. In adaptive sampling, k-space sampling locations are optimized during acquisition. Weighted reconstruction uses the locations of the nonzero coefficients in the sparse domains as a prior in the recovery process.…
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