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Training a neural network for Gibbs and noise removal in diffusion MRI

Matthew J. Muckley, Benjamin Ades‐Aron, Antonios Papaioannou, Gregory Lemberskiy, Eddy Solomon, Yvonne W. Lui, Daniel K. Sodickson, Els Fieremans, Dmitry S. Novikov, Florian Knoll

2020Magnetic Resonance in Medicine47 citationsDOIOpen Access PDF

Abstract

PURPOSE: To develop and evaluate a neural network-based method for Gibbs artifact and noise removal. METHODS: A convolutional neural network (CNN) was designed for artifact removal in diffusion-weighted imaging data. Two implementations were considered: one for magnitude images and one for complex images. Both models were based on the same encoder-decoder structure and were trained by simulating MRI acquisitions on synthetic non-MRI images. RESULTS: Both machine learning methods were able to mitigate artifacts in diffusion-weighted images and diffusion parameter maps. The CNN for complex images was also able to reduce artifacts in partial Fourier acquisitions. CONCLUSIONS: The proposed CNNs extend the ability of artifact correction in diffusion MRI. The machine learning method described here can be applied on each imaging slice independently, allowing it to be used flexibly in clinical applications.

Topics & Concepts

Computer scienceArtifact (error)Artificial intelligenceNoise (video)Artificial neural networkDiffusionPattern recognition (psychology)Training (meteorology)Diffusion MRIMagnetic resonance imagingComputer visionTraining setDiffusion imagingAlgorithmDeep learningConvolutional neural networkMachine learningReal-time MRIAdvanced Neuroimaging Techniques and ApplicationsAdvanced MRI Techniques and ApplicationsFunctional Brain Connectivity Studies
Training a neural network for Gibbs and noise removal in diffusion MRI | Litcius