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Published in: Japanese Journal of Radiology 9/2018

01-09-2018 | Original Article

Denoising of 3D magnetic resonance images with multi-channel residual learning of convolutional neural network

Authors: Dongsheng Jiang, Weiqiang Dou, Luc Vosters, Xiayu Xu, Yue Sun, Tao Tan

Published in: Japanese Journal of Radiology | Issue 9/2018

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Abstract

Purpose

To test if the proposed deep learning based denoising method denoising convolutional neural networks (DnCNN) with residual learning and multi-channel strategy can denoise three dimensional MR images with Rician noise robustly.

Materials and methods

Multi-channel DnCNN (MCDnCNN) method with two training strategies was developed to denoise MR images with and without a specific noise level, respectively. To evaluate our method, three datasets from two public data sources of IXI dataset and Brainweb, including T1 weighted MR images acquired at 1.5 and 3 T as well as MR images simulated with a widely used MR simulator, were randomly selected and artificially added with different noise levels ranging from 1 to 15%. For comparison, four other state-of-the-art denoising methods were also tested using these datasets.

Results

In terms of the highest peak-signal-to-noise-ratio and global of structure similarity index, our proposed MCDnCNN model for a specific noise level showed the most robust denoising performance in all three datasets. Next to that, our general noise-applicable model also performed better than the rest four methods in two datasets. Furthermore, our training model showed good general applicability.

Conclusion

Our proposed MCDnCNN model has been demonstrated to robustly denoise three dimensional MR images with Rician noise.
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Metadata
Title
Denoising of 3D magnetic resonance images with multi-channel residual learning of convolutional neural network
Authors
Dongsheng Jiang
Weiqiang Dou
Luc Vosters
Xiayu Xu
Yue Sun
Tao Tan
Publication date
01-09-2018
Publisher
Springer Japan
Published in
Japanese Journal of Radiology / Issue 9/2018
Print ISSN: 1867-1071
Electronic ISSN: 1867-108X
DOI
https://doi.org/10.1007/s11604-018-0758-8

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