Cardiac MR Motion Artefact Correction from K-space Using Deep Learning-Based Reconstruction

Oksuz, Ilkay; Clough, James; Bustin, Aurelien; Cruz, Gastao; Prieto, Claudia; Botnar, Rene; Rueckert, Daniel; Schnabel, Julia A.; King, Andrew P.; Knoll, F; Maier, A; Rueckert, D

Abstract

Incorrect ECG gating of cardiac magnetic resonance (CMR) acquisitions can lead to artefacts, which hampers the accuracy of diagnostic imaging. Therefore, there is a need for robust reconstruction methods to ensure high image quality. In this paper, we propose a method to automatically correct motion-related artefacts in CMR acquisitions during reconstruction from k-space data. Our method is based on the Automap reconstruction method, which directly reconstructs high quality MR images from k-space using deep learning. Our main methodological contribution is the addition of an adversarial element to this architecture, in which the quality of image reconstruction (the generator) is increased by using a discriminator. We train the reconstruction network to automatically correct for motion-related artefacts using synthetically corrupted CMR k-space data and uncorrupted reconstructed images. Using 25000 images from the UK Biobank dataset we achieve good image quality in the presence of synthetic motion artefacts, but some structural information was lost. We quantitatively compare our method to a standard inverse Fourier reconstruction. In addition, we qualitatively evaluate the proposed technique using k-space data containing real motion artefacts.

Más información

Título según WOS: ID WOS:000477767500003 Not found in local WOS DB
Título de la Revista: LEARNING AND INTELLIGENT OPTIMIZATION, LION 15
Volumen: 11074
Editorial: SPRINGER INTERNATIONAL PUBLISHING AG
Fecha de publicación: 2018
Página de inicio: 21
Página final: 29
DOI:

10.1007/978-3-030-00129-2_3

Notas: ISI