Machine learned texture prior from full-dose CT database via multi-modality feature selection for bayesian reconstruction of low-dose CT Journal Article


Authors: Gao, Y.; Tan, J.; Shi, Y.; Zhang, H.; Lu, S.; Gupta, A.; Li, H.; Reiter, M.; Liang, Z.
Article Title: Machine learned texture prior from full-dose CT database via multi-modality feature selection for bayesian reconstruction of low-dose CT
Abstract: In our earlier study, we proposed a regional Markov random field type tissue-specific texture prior from previous full-dose computed tomography (FdCT) scan for current low-dose CT (LdCT) imaging, which showed clinical benefits through task-based evaluation. Nevertheless, two assumptions were made for early study. One assumption is that the center pixel has a linear relationship with its nearby neighbors and the other is previous FdCT scans of the same subject are available. To eliminate the two assumptions, we proposed a database assisted end-to-end LdCT reconstruction framework which includes a deep learning texture prior model and a multi-modality feature based candidate selection model. A convolutional neural network-based texture prior is proposed to eliminate the linear relationship assumption. And for scenarios in which the concerned subject has no previous FdCT scans, we propose to select one proper prior candidate from the FdCT database using multi-modality features. Features from three modalities are used including the subjects' physiological factors, the CT scan protocol, and a novel feature named Lung Mark which is deliberately proposed to reflect the z-axial property of human anatomy. Moreover, a majority vote strategy is designed to overcome the noise effect from LdCT scans. Experimental results showed the effectiveness of Lung Mark. The selection model has accuracy of 84% testing on 1,470 images from 49 subjects. The learned texture prior from FdCT database provided reconstruction comparable to the subjects having corresponding FdCT. This study demonstrated the feasibility of bringing clinically relevant textures from available FdCT database to perform Bayesian reconstruction of any current LdCT scan. © 1982-2012 IEEE.
Keywords: adult; major clinical study; bayes theorem; tomography, x-ray computed; diagnostic imaging; algorithms; feasibility study; algorithm; computerized tomography; lung; image processing, computer-assisted; image processing; biological systems; decision trees; image reconstruction; computed tomography; ct imaging; random forests; human experiment; artificial neural network; database systems; textures; feature extraction; procedures; low-dose computed tomography; machine learning; noise; low-dose ct; neural networks; humans; human; male; female; article; bayesian networks; markov processes; random forest; feature selection; x-ray computed tomography; deep learning; convolution; convolutional neural network; machine-learning; neural networks, computer; images reconstruction; features extraction; bayesian reconstruction; fdct database; ldct imaging; texture prior; biological system modeling; dose computed tomographies; full-dose computed tomography database; low-dose ct imaging
Journal Title: IEEE Transactions on Medical Imaging
Volume: 42
Issue: 11
ISSN: 0278-0062
Publisher: IEEE  
Date Published: 2023-11-01
Start Page: 3129
End Page: 3139
Language: English
DOI: 10.1109/tmi.2021.3139533
PUBMED: 34968178
PROVIDER: scopus
PMCID: PMC9243192
DOI/URL:
Notes: Article -- Source: Scopus
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  1. Hao Zhang
    62 Zhang