Using tissue-energy response to generate virtual monoenergetic images from conventional CT for computer-aided diagnosis of lesions Conference Paper


Authors: Chang, S.; Gao, Y.; Pomeroy, M. J.; Bai, T.; Zhang, H.; Liang, Z.
Title: Using tissue-energy response to generate virtual monoenergetic images from conventional CT for computer-aided diagnosis of lesions
Conference Title: 7th International Conference on Image Formation in X-Ray Computed Tomography (ICIFXCT 2022)
Abstract: Based on the X-ray physics in computed tomography (CT) imaging, the linear attenuation coefficient (LAC) of each human tissue is described as a function of the X-ray photon energy. Different tissue types (i.e. muscle, fat, bone, and lung tissue) have their energy responses and bring more tissue contrast distribution information along the energy axis, which we call tissue-energy response (TER). In this study, we propose to use TER to generate virtual monoenergetic images (VMIs) from conventional CT for computer-aided diagnosis (CADx) of lesions. Specifically, for a conventional CT image, each tissue fraction can be identified by the TER curve at the effective energy of the setting tube voltage. Based on this, a series of VMIs can be generated by the tissue fractions multiplying the corresponding TER. Moreover, a machine learning (ML) model is developed to exploit the energy-enhanced tissue material features for differentiating malignant from benign lesions, which is based on the data-driven deep learning (DL)-CNN method. Experimental results demonstrated that the DL-CADx models with the proposed method can achieve better classification performance than the conventional CT-based CADx method from three sets of pathologically proven lesion datasets. © 2022 SPIE.
Keywords: computerized tomography; medical imaging; computed tomography images; energy; malignant; tissue; computer-aided diagnosis; computer aided diagnosis; machine learning; classification (of information); learning systems; energy response; deep learning; computer aided instruction; machine-learning; computer aided analysis; e-learning; benign differentiation; ct image analysis; computed tomography image analyse; monoenergetic; tissue fractions; tomography image analysis
Journal Title Proceedings of SPIE
Volume: 12304
Conference Dates: 2022 Jun 12-16
Conference Location: Baltimore, MD
ISBN: 0277-786X
Publisher: SPIE  
Date Published: 2022-01-01
Start Page: 123041L
Language: English
DOI: 10.1117/12.2646551
PROVIDER: scopus
DOI/URL:
Notes: Conference Paper -- (ISBN: 9781510656697) -- Export Date: 1 December 2022 -- Source: Scopus
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  1. Hao Zhang
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