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Open AccessJournal ArticleDOI

Artifact Disentanglement Network for Unsupervised Metal Artifact Reduction

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TLDR
A novel artifact disentanglement network that disentangles the metal artifacts from CT images in the latent space is introduced that achieves comparable performance to existing supervised models for MAR and demonstrates better generalization ability over the supervised models.
Abstract
Current deep neural network based approaches to computed tomography (CT) metal artifact reduction (MAR) are supervised methods which rely heavily on synthesized data for training. However, as synthesized data may not perfectly simulate the underlying physical mechanisms of CT imaging, the supervised methods often generalize poorly to clinical applications. To address this problem, we propose, to the best of our knowledge, the first unsupervised learning approach to MAR. Specifically, we introduce a novel artifact disentanglement network that enables different forms of generations and regularizations between the artifact-affected and artifact-free image domains to support unsupervised learning. Extensive experiments show that our method significantly outperforms the existing unsupervised models for image-to-image translation problems, and achieves comparable performance to existing supervised models on a synthesized dataset. When applied to clinical datasets, our method achieves considerable improvements over the supervised models. The source code of this paper is publicly available at this https URL.

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Citations
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Journal ArticleDOI

Deep learning for tomographic image reconstruction

TL;DR: Wang et al. as mentioned in this paper provided a general background, highlighted representative results with an emphasis on medical imaging, and discussed key issues that need to be addressed in this emerging field.
Book ChapterDOI

InDuDoNet: An Interpretable Dual Domain Network for CT Metal Artifact Reduction

TL;DR: Wang et al. as discussed by the authors proposed an interpretable dual domain network, termed as InDuDoNet, which combines the advantages of model-driven and data-driven methodologies, and utilized the proximal gradient technique to design an iterative algorithm for solving it.
Posted Content

Decomposing Normal and Abnormal Features of Medical Images for Content-based Image Retrieval.

TL;DR: An encoder-decoder network is proposed to decompose a medical image into two discrete latent codes: a normal anatomy code and an abnormal anatomy code, which are demonstrated to demonstrate similarity retrieval by focusing on either normal or abnormal features of medical images.
References
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Journal ArticleDOI

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Feature Pyramid Networks for Object Detection

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Proceedings ArticleDOI

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