Prior-image-based CT reconstruction using attenuation-mismatched priors Journal Article


Authors: Zhang, H.; Capaldi, D.; Zeng, D.; Ma, J.; Xing, L.
Article Title: Prior-image-based CT reconstruction using attenuation-mismatched priors
Abstract: Prior-image-based reconstruction (PIBR) methods are powerful tools for reducing radiation doses and improving the image quality of low-dose computed tomography (CT). Apart from anatomical changes, prior and current images can also have different attenuations because they originated from different scanners or from the same scanner but with different X-ray beam qualities (e.g., kVp settings, beam filters) during data acquisition. In such scenarios, with attenuation-mismatched priors, PIBR is challenging. In this work, we investigate a specific PIBR method, called statistical image reconstruction, using normal-dose image-induced nonlocal means regularization (SIR-ndiNLM), to address PIBR with such attenuation-mismatched priors and achieve quantitative low-dose CT imaging. We propose two corrective schemes for the original SIR-ndiNLM method, (1) a global histogram-matching approach and (2) a local attenuation correction approach, to account for the attenuation differences between the prior and current images in PIBR. We validate the efficacy of the proposed schemes using images acquired from dual-energy CT scanners to simulate attenuation mismatches. Meanwhile, we utilize different CT slices to simulate anatomical mismatches or changes between the prior and the current low-dose image. We observe that the original SIR-ndiNLM introduces artifacts to the reconstruction when an attenuation-mismatched prior is used. Furthermore, we find that a larger attenuation mismatch between the prior and current images results in more severe artifacts in the SIR-ndiNLM reconstruction. Our two proposed corrective schemes enable SIR-ndiNLM to effectively handle the attenuation mismatch and anatomical changes between the two images and successfully eliminate the artifacts. We demonstrate that the proposed techniques permit SIR-ndiNLM to leverage the attenuation-mismatched prior and achieve quantitative low-dose CT reconstruction from both low-flux and sparse-view data acquisitions. This work permits robust and reliable PIBR for CT data acquired using different beam settings. © 2021 Institute of Physics and Engineering in Medicine.
Keywords: scanning; image enhancement; computerized tomography; image reconstruction; attenuation correction; low-dose ct; data acquisition; dual-energy ct; anatomical changes; ct reconstruction; attenuation-mismatched prior; prior-image-based reconstruction; histogram matching; non-local means; statistical image reconstruction; x-ray beam qualities
Journal Title: Physics in Medicine and Biology
Volume: 66
Issue: 6
ISSN: 0031-9155
Publisher: IOP Publishing Ltd  
Date Published: 2021-03-21
Start Page: 064007
Language: English
DOI: 10.1088/1361-6560/abe760
PROVIDER: scopus
PUBMED: 33729997
PMCID: PMC8494193
DOI/URL:
Notes: Article -- Export Date: 3 May 2021 -- Source: Scopus
Altmetric
Citation Impact
BMJ Impact Analytics
MSK Authors
  1. Hao Zhang
    15 Zhang