NexOP: Joint Optimization of NEX-Aware k-space Sampling and Image Reconstruction for Low-Field MRI
Tal Oved, Efrat Shimron

TL;DR
NexOP is a deep-learning framework that jointly optimizes k-space sampling and image reconstruction for low-field MRI, significantly improving image quality and scan efficiency in low-SNR settings.
Contribution
It introduces a novel joint optimization approach for sampling and reconstruction tailored for multi-NEX low-field MRI, exploiting the NEX dimension for better performance.
Findings
NexOP outperforms existing methods in quantitative and qualitative evaluations.
It produces non-uniform, decreasing sampling strategies across repetitions.
Theoretical analysis supports the empirical improvements.
Abstract
Modern low-field magnetic resonance imaging (MRI) technology offers a compelling alternative to standard high-field MRI, with portable, low-cost systems. However, its clinical utility is limited by a low Signal-to-Noise Ratio (SNR), which hampers diagnostic image quality. A common approach to increase SNR is through repetitive signal acquisitions, known as NEX, but this results in excessively long scan durations. Although recent work has introduced methods to accelerate MRI scans through k-space sampling optimization, the NEX dimension remains unexploited; typically, a single sampling mask is used across all repetitions. Here we introduce NexOP, a deep-learning framework for joint optimization of the sampling and reconstruction in multi-NEX acquisitions, tailored for low-SNR settings. NexOP enables optimizing the sampling density probabilities across the extended k-space-NEX domain,…
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