Rapid 2D 23Na MRI of the calf using a denoising convolutional neural network
Rebecca R. Baker, Vivek Muthurangu, Marilena Rega, Stephen B. Walsh,, Jennifer A. Steeden

TL;DR
This study demonstrates that a denoising CNN trained on 1H MRI data can effectively improve 23Na MRI image quality, enabling faster scans with minimal loss of quantification accuracy.
Contribution
The paper introduces a novel approach of training a denoising CNN on 1H MRI data and applying it to 23Na MRI, reducing scan times significantly.
Findings
CNN denoising increased SNR compared to other methods.
Image quality and TSC quantification were preserved with reduced scan time.
CNN approach achieved similar results to reference images with fewer averages.
Abstract
23Na MRI can be used to quantify in-vivo tissue sodium concentration (TSC), but the low 23Na signal leads to long scan times and/or noisy or low-resolution images. Reconstruction algorithms such as CS have been proposed to mitigate low SNR; although, these can result in unnatural images, suboptimal denoising and long processing times. Recently, ML has been used to denoise 1H MRI acquisitions; however, this approach typically requires large volumes of high-quality training data, which is not readily available for 23Na MRI. Here, we train a denoising CNN using 1H data, which we subsequently demonstrate on prospective 23Na images of the calf. 1893 1H transverse slices of the knee were used to train denoising CNNs for different levels of noise. Low SNR images were generated by adding gaussian noise to the high-quality 1H kspace data before reconstruction to create paired training data. For…
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Taxonomy
TopicsAdvanced MRI Techniques and Applications · Radiomics and Machine Learning in Medical Imaging · MRI in cancer diagnosis
