Automatic CNN-based detection of cardiac MR motion artefacts using k-space data augmentation and curriculum learning
Ilkay Oksuz, Bram Ruijsink, Esther Puyol-Anton, James Clough, Gastao, Cruz, Aurelien Bustin, Claudia Prieto, Rene Botnar, Daniel Rueckert, Julia A., Schnabel, Andrew P. King

TL;DR
This paper presents a deep learning approach for automatic detection of motion artefacts in cardiac MRI images, utilizing synthetic k-space data augmentation and curriculum learning to improve classification accuracy in imbalanced datasets.
Contribution
It introduces a novel data augmentation scheme based on synthetic artefact creation in k-space and a curriculum learning strategy to enhance deep learning-based image quality assessment.
Findings
LRCN architecture outperforms 3D-CNN in detection accuracy.
Achieved an AUC of 0.89 in classifying motion artefacts.
Synthetic data augmentation and curriculum learning improve performance.
Abstract
Good quality of medical images is a prerequisite for the success of subsequent image analysis pipelines. Quality assessment of medical images is therefore an essential activity and for large population studies such as the UK Biobank (UKBB), manual identification of artefacts such as those caused by unanticipated motion is tedious and time-consuming. Therefore, there is an urgent need for automatic image quality assessment techniques. In this paper, we propose a method to automatically detect the presence of motion-related artefacts in cardiac magnetic resonance (CMR) cine images. We compare two deep learning architectures to classify poor quality CMR images: 1) 3D spatio-temporal Convolutional Neural Networks (3D-CNN), 2) Long-term Recurrent Convolutional Network (LRCN). Though in real clinical setup motion artefacts are common, high-quality imaging of UKBB, which comprises…
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