WALINET: A water and lipid identification convolutional Neural Network for nuisance signal removal in 1H MR Spectroscopic Imaging
Paul Weiser, Georg Langs, Stanislav Motyka, Wolfgang Bogner, S\'ebastien Courvoisier, Malte Hoffmann, Antoine Klauser, Ovidiu C. Andronesi

TL;DR
This paper introduces WALINET, a deep neural network that effectively removes lipid and water signals from 1H-MRSI data, significantly improving spectral quality and processing speed over traditional methods.
Contribution
The study presents a novel deep-learning approach for nuisance signal removal in 1H-MRSI, outperforming conventional techniques in accuracy and efficiency.
Findings
WALINET reduces lipid signals more effectively than traditional methods.
WALINET is 280 times faster than conventional HLSVD+L2.
WALINET improves metabolite signal preservation and spectral quality.
Abstract
Purpose. Proton Magnetic Resonance Spectroscopic Imaging (1H-MRSI) provides non-invasive spectral-spatial mapping of metabolism. However, long-standing problems in whole-brain 1H-MRSI are spectral overlap of metabolite peaks with large lipid signal from scalp, and overwhelming water signal that distorts spectra. Fast and effective methods are needed for high-resolution 1H-MRSI to accurately remove lipid and water signals while preserving the metabolite signal. The potential of supervised neural networks for this task remains unexplored, despite their success for other MRSI processing. Methods. We introduce a deep-learning method based on a modified Y-NET network for water and lipid removal in whole-brain 1H-MRSI. The WALINET (WAter and LIpid neural NETwork) was compared to conventional methods such as the state-of-the-art lipid L2 regularization and Hankel-Lanczos singular value…
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Taxonomy
TopicsMetabolomics and Mass Spectrometry Studies · Advanced Chemical Sensor Technologies
