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Adversarial Robustness of MR Image Reconstruction under Realistic Perturbations

Authors :
Morshuis, Jan Nikolas
Gatidis, Sergios
Hein, Matthias
Baumgartner, Christian F.
Publication Year :
2022

Abstract

Deep Learning (DL) methods have shown promising results for solving ill-posed inverse problems such as MR image reconstruction from undersampled $k$-space data. However, these approaches currently have no guarantees for reconstruction quality and the reliability of such algorithms is only poorly understood. Adversarial attacks offer a valuable tool to understand possible failure modes and worst case performance of DL-based reconstruction algorithms. In this paper we describe adversarial attacks on multi-coil $k$-space measurements and evaluate them on the recently proposed E2E-VarNet and a simpler UNet-based model. In contrast to prior work, the attacks are targeted to specifically alter diagnostically relevant regions. Using two realistic attack models (adversarial $k$-space noise and adversarial rotations) we are able to show that current state-of-the-art DL-based reconstruction algorithms are indeed sensitive to such perturbations to a degree where relevant diagnostic information may be lost. Surprisingly, in our experiments the UNet and the more sophisticated E2E-VarNet were similarly sensitive to such attacks. Our findings add further to the evidence that caution must be exercised as DL-based methods move closer to clinical practice.<br />Accepted at the MICCAI-2022 workshop: Machine Learning for Medical Image Reconstruction

Details

Language :
English
Database :
OpenAIRE
Accession number :
edsair.doi.dedup.....d2d0f64052c491f39c4dee671bf06729