Four-dimensional Cone Beam CT Reconstruction and Enhancement using a Temporal Non-Local Means Method
Xun Jia, Zhen Tian, Yifei Lou, Jan-Jakob Sonke, Steve B. Jiang

TL;DR
This paper introduces two novel 4D-CBCT algorithms utilizing a temporal nonlocal means method to improve image quality and reduce artifacts in respiratory phase-resolved imaging for radiation therapy, with high computational efficiency on GPU.
Contribution
The paper proposes new iterative reconstruction and enhancement algorithms for 4D-CBCT using a temporal nonlocal means approach, improving image quality and artifact reduction over traditional methods.
Findings
Reconstruction improves contrast-to-noise ratio by up to 3.13 times.
Enhancement reduces streak artifacts by over 80%.
Algorithms run in under 10 minutes on GPU.
Abstract
Four-dimensional Cone Beam Computed Tomography (4D-CBCT) has been developed to provide respiratory phase resolved volumetric imaging in image guided radiation therapy (IGRT). Inadequate number of projections in each phase bin results in low quality 4D-CBCT images with obvious streaking artifacts. In this work, we propose two novel 4D-CBCT algorithms: an iterative reconstruction algorithm and an enhancement algorithm, utilizing a temporal nonlocal means (TNLM) method. We define a TNLM energy term for a given set of 4D-CBCT images. Minimization of this term favors those 4D-CBCT images such that any anatomical features at one spatial point at one phase can be found in a nearby spatial point at neighboring phases. 4D-CBCT reconstruction is achieved by minimizing a total energy containing a data fidelity term and the TNLM energy term. As for the image enhancement, 4D-CBCT images generated by…
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