2022
DOI: 10.48550/arxiv.2206.03359
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An efficient semi-supervised quality control system trained using physics-based MRI-artefact generators and adversarial training

Abstract: Large medical imaging data sets are becoming increasingly available. A common challenge in these data sets is to ensure that each sample meets minimum quality requirements devoid of significant artefacts. Despite a wide range of existing automatic methods having been developed to identify imperfections and artefacts in medical imaging, they mostly rely on data-hungry methods. In particular, the lack of sufficient scans with artefacts available for training has created a barrier in designing and deploying machi… Show more

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