Open Access
13 March 2021 Sinogram + image domain neural network approach for metal artifact reduction in low-dose cone-beam computed tomography
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Abstract

Purpose: Cone-beam computed tomography (CBCT) is commonly used in the operating room to evaluate the placement of surgical implants in relation to critical anatomical structures. A particularly problematic setting, however, is the imaging of metallic implants, where strong artifacts can obscure visualization of both the implant and surrounding anatomy. Such artifacts are compounded when combined with low-dose imaging techniques such as sparse-view acquisition.

Approach: This work presents a dual convolutional neural network approach, one operating in the sinogram domain and one in the reconstructed image domain, that is specifically designed for the physics and setting of intraoperative CBCT to address the sources of beam hardening and sparse view sampling that contribute to metal artifacts. The networks were trained with images from cadaver scans with simulated metal hardware.

Results: The trained networks were tested on images of cadavers with surgically implanted metal hardware, and performance was compared with a method operating in the image domain alone. While both methods removed most image artifacts, superior performance was observed for the dual-convolutional neural network (CNN) approach in which beam-hardening and view sampling effects were addressed in both the sinogram and image domain.

Conclusion: The work demonstrates an innovative approach for eliminating metal and sparsity artifacts in CBCT using a dual-CNN framework which does not require a metal segmentation.

© 2021 Society of Photo-Optical Instrumentation Engineers (SPIE) 2329-4302/2021/$28.00 © 2021 SPIE
Michael D. Ketcha, Michael Marrama, Andre Souza, Ali Uneri, Pengwei Wu, Xiaoxuan Zhang, Patrick A. Helm, and Jeffrey H. Siewerdsen "Sinogram + image domain neural network approach for metal artifact reduction in low-dose cone-beam computed tomography," Journal of Medical Imaging 8(5), 052103 (13 March 2021). https://doi.org/10.1117/1.JMI.8.5.052103
Received: 16 October 2020; Accepted: 22 February 2021; Published: 13 March 2021
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Cited by 15 scholarly publications.
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KEYWORDS
Metals

Image segmentation

Neural networks

Signal attenuation

Data modeling

3D image processing

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