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Clinical Micro-CT Empowered by Interior Tomography, Robotic Scanning, and Deep Learning

While micro-CT systems are instrumental in preclinical research, clinical micro-CT imaging has long been desired with cochlear implantation as a primary application. The structural details of the cochlear implant and the temporal bone require a significantly higher image resolution than that (about...

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Autores principales: LI, MENGZHOU, FANG, ZHENG, CONG, WENXIANG, NIU, CHUANG, WU, WEIWEN, UHER, JOSEF, BENNETT, JAMES, RUBINSTEIN, JAY T., WANG, GE
Formato: Online Artículo Texto
Lenguaje:English
Publicado: 2020
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7996632/
https://www.ncbi.nlm.nih.gov/pubmed/33777595
http://dx.doi.org/10.1109/access.2020.3046187
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author LI, MENGZHOU
FANG, ZHENG
CONG, WENXIANG
NIU, CHUANG
WU, WEIWEN
UHER, JOSEF
BENNETT, JAMES
RUBINSTEIN, JAY T.
WANG, GE
author_facet LI, MENGZHOU
FANG, ZHENG
CONG, WENXIANG
NIU, CHUANG
WU, WEIWEN
UHER, JOSEF
BENNETT, JAMES
RUBINSTEIN, JAY T.
WANG, GE
author_sort LI, MENGZHOU
collection PubMed
description While micro-CT systems are instrumental in preclinical research, clinical micro-CT imaging has long been desired with cochlear implantation as a primary application. The structural details of the cochlear implant and the temporal bone require a significantly higher image resolution than that (about 0.2 mm) provided by current medical CT scanners. In this paper, we propose a clinical micro-CT (CMCT) system design integrating conventional spiral cone-beam CT, contemporary interior tomography, deep learning techniques, and the technologies of a micro-focus X-ray source, a photon-counting detector (PCD), and robotic arms for ultrahigh-resolution localized tomography of a freely-selected volume of interest (VOI) at a minimized radiation dose level. The whole system consists of a standard CT scanner for a clinical CT exam and VOI specification, and a robotic micro-CT scanner for a local scan of high spatial and spectral resolution at minimized radiation dose. The prior information from the global scan is also fully utilized for background compensation of the local scan data for accurate and stable VOI reconstruction. Our results and analysis show that the proposed hybrid reconstruction algorithm delivers accurate high-resolution local reconstruction, and is insensitive to the misalignment of the isocenter position, initial view angle and scale mismatch in the data/image registration. These findings demonstrate the feasibility of our system design. We envision that deep learning techniques can be leveraged for optimized imaging performance. With high-resolution imaging, high dose efficiency and low system cost synergistically, our proposed CMCT system has great promise in temporal bone imaging as well as various other clinical applications.
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spelling pubmed-79966322021-03-26 Clinical Micro-CT Empowered by Interior Tomography, Robotic Scanning, and Deep Learning LI, MENGZHOU FANG, ZHENG CONG, WENXIANG NIU, CHUANG WU, WEIWEN UHER, JOSEF BENNETT, JAMES RUBINSTEIN, JAY T. WANG, GE IEEE Access Article While micro-CT systems are instrumental in preclinical research, clinical micro-CT imaging has long been desired with cochlear implantation as a primary application. The structural details of the cochlear implant and the temporal bone require a significantly higher image resolution than that (about 0.2 mm) provided by current medical CT scanners. In this paper, we propose a clinical micro-CT (CMCT) system design integrating conventional spiral cone-beam CT, contemporary interior tomography, deep learning techniques, and the technologies of a micro-focus X-ray source, a photon-counting detector (PCD), and robotic arms for ultrahigh-resolution localized tomography of a freely-selected volume of interest (VOI) at a minimized radiation dose level. The whole system consists of a standard CT scanner for a clinical CT exam and VOI specification, and a robotic micro-CT scanner for a local scan of high spatial and spectral resolution at minimized radiation dose. The prior information from the global scan is also fully utilized for background compensation of the local scan data for accurate and stable VOI reconstruction. Our results and analysis show that the proposed hybrid reconstruction algorithm delivers accurate high-resolution local reconstruction, and is insensitive to the misalignment of the isocenter position, initial view angle and scale mismatch in the data/image registration. These findings demonstrate the feasibility of our system design. We envision that deep learning techniques can be leveraged for optimized imaging performance. With high-resolution imaging, high dose efficiency and low system cost synergistically, our proposed CMCT system has great promise in temporal bone imaging as well as various other clinical applications. 2020-12-21 2020 /pmc/articles/PMC7996632/ /pubmed/33777595 http://dx.doi.org/10.1109/access.2020.3046187 Text en This work is licensed under a Creative Commons Attribution 4.0 License. For more information, see https://creativecommons.org/licenses/by/4.0/
spellingShingle Article
LI, MENGZHOU
FANG, ZHENG
CONG, WENXIANG
NIU, CHUANG
WU, WEIWEN
UHER, JOSEF
BENNETT, JAMES
RUBINSTEIN, JAY T.
WANG, GE
Clinical Micro-CT Empowered by Interior Tomography, Robotic Scanning, and Deep Learning
title Clinical Micro-CT Empowered by Interior Tomography, Robotic Scanning, and Deep Learning
title_full Clinical Micro-CT Empowered by Interior Tomography, Robotic Scanning, and Deep Learning
title_fullStr Clinical Micro-CT Empowered by Interior Tomography, Robotic Scanning, and Deep Learning
title_full_unstemmed Clinical Micro-CT Empowered by Interior Tomography, Robotic Scanning, and Deep Learning
title_short Clinical Micro-CT Empowered by Interior Tomography, Robotic Scanning, and Deep Learning
title_sort clinical micro-ct empowered by interior tomography, robotic scanning, and deep learning
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7996632/
https://www.ncbi.nlm.nih.gov/pubmed/33777595
http://dx.doi.org/10.1109/access.2020.3046187
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