Paper
9 March 2017 Deep learning methods to guide CT image reconstruction and reduce metal artifacts
Lars Gjesteby, Qingsong Yang, Yan Xi, Ye Zhou, Junping Zhang, Ge Wang
Author Affiliations +
Abstract
The rapidly-rising field of machine learning, including deep learning, has inspired applications across many disciplines. In medical imaging, deep learning has been primarily used for image processing and analysis. In this paper, we integrate a convolutional neural network (CNN) into the computed tomography (CT) image reconstruction process. Our first task is to monitor the quality of CT images during iterative reconstruction and decide when to stop the process according to an intelligent numerical observer instead of using a traditional stopping rule, such as a fixed error threshold or a maximum number of iterations. After training on ground truth images, the CNN was successful in guiding an iterative reconstruction process to yield high-quality images. Our second task is to improve a sinogram to correct for artifacts caused by metal objects. A large number of interpolation and normalization-based schemes were introduced for metal artifact reduction (MAR) over the past four decades. The NMAR algorithm is considered a state-of-the-art method, although residual errors often remain in the reconstructed images, especially in cases of multiple metal objects. Here we merge NMAR with deep learning in the projection domain to achieve additional correction in critical image regions. Our results indicate that deep learning can be a viable tool to address CT reconstruction challenges.
© (2017) COPYRIGHT Society of Photo-Optical Instrumentation Engineers (SPIE). Downloading of the abstract is permitted for personal use only.
Lars Gjesteby, Qingsong Yang, Yan Xi, Ye Zhou, Junping Zhang, and Ge Wang "Deep learning methods to guide CT image reconstruction and reduce metal artifacts", Proc. SPIE 10132, Medical Imaging 2017: Physics of Medical Imaging, 101322W (9 March 2017); https://doi.org/10.1117/12.2254091
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CITATIONS
Cited by 39 scholarly publications and 3 patents.
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KEYWORDS
Metals

Image processing

CT reconstruction

Image quality

Computed tomography

Reconstruction algorithms

Image restoration

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