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 mri banding removal


MRI Banding Removal via Adversarial Training

Neural Information Processing Systems

MR images reconstructed from sub-sampled Cartesian data using deep learning techniques show a characteristic banding (sometimes described as streaking), which is particularly strong in low signal-to-noise regions of the reconstructed image. In this work, we propose the use of an adversarial loss that penalizes banding structures without requiring any human annotation. Our technique greatly reduces the appearance of banding, without requiring any additional computation or post-processing at reconstruction time. We report the results of a blind comparison against a strong baseline by a group of expert evaluators (board-certified radiologists), where our approach is ranked superior at banding removal with no statistically significant loss of detail. A reference implementation of our method is available in the supplementary material.


Review for NeurIPS paper: MRI Banding Removal via Adversarial Training

Neural Information Processing Systems

Weaknesses: - The dithering method used for comparison purpose has been optimized using the feedbacks of a single radiologist. The authors stated that adding extra noise is more effective for banding artefact removal but could lead to artefact details suppression. It would have been interesting to compare the proposed approach with the dithering method with two different levels of noise in order to back up this claim. Using standard monitors it is quite complicated to spot differences in the different approaches, and without radiologist expertise it is impossible to rate the different techniques. Does that not suggest that the problem is not so significant (given the high prevalence of 3T clinical scanners?


MRI Banding Removal via Adversarial Training

Neural Information Processing Systems

MR images reconstructed from sub-sampled Cartesian data using deep learning techniques show a characteristic banding (sometimes described as streaking), which is particularly strong in low signal-to-noise regions of the reconstructed image. In this work, we propose the use of an adversarial loss that penalizes banding structures without requiring any human annotation. Our technique greatly reduces the appearance of banding, without requiring any additional computation or post-processing at reconstruction time. We report the results of a blind comparison against a strong baseline by a group of expert evaluators (board-certified radiologists), where our approach is ranked superior at banding removal with no statistically significant loss of detail. A reference implementation of our method is available in the supplementary material.


MRI Banding Removal via Adversarial Training

arXiv.org Machine Learning

MRI images reconstructed from sub-sampled data using deep learning techniques often show a characteristic banding, which is particularly strong in low signal-to-noise regions of the reconstructed image. In this work, we propose the use of an adversarial loss that penalizes banding structures without requiring any human annotation. Our technique greatly reduces the appearance of banding, without requiring any additional computation or post-processing at reconstruction time. We report the results of a blind comparison against a strong baseline by a group of expert evaluators (board-certified radiologists), where our approach is ranked superior at banding removal with no statistically significant loss of detail.