Cong, Wenxiang and Xi, Yan and De Man, Bruno and Wang, Ge (2021) Monochromatic image reconstruction via machine learning. Machine Learning: Science and Technology, 2 (2). 025032. ISSN 2632-2153
Cong_2021_Mach._Learn.__Sci._Technol._2_025032.pdf - Published Version
Download (3MB)
Abstract
X-ray computed tomography (CT) is a nondestructive imaging technique to reconstruct cross-sectional images of an object using x-ray measurements taken from different view angles for medical diagnosis, therapeutic planning, security screening, and other applications. In clinical practice, the x-ray tube emits polychromatic x-rays, and the x-ray detector array operates in the energy-integrating mode to acquire energy intensity. This physical process of x-ray imaging is accurately described by an energy-dependent non-linear integral equation on the basis of the Beer–Lambert law. However, the non-linear model is not invertible using a computationally efficient solution and is often approximated as a linear integral model in the form of the Radon transform, which basically loses energy-dependent information. This approximate model produces an inaccurate quantification of attenuation images, suffering from beam-hardening effects. In this paper, a machine learning-based approach is proposed to correct the model mismatch to achieve quantitative CT imaging. Specifically, a one-dimensional network model is proposed to learn a non-linear transform from a training dataset to map a polychromatic CT image to its monochromatic sinogram at a pre-specified energy level, realizing virtual monochromatic (VM) imaging effectively and efficiently. Our results show that the proposed method recovers high-quality monochromatic projections with an average relative error of less than 2%. The resultant x-ray VM imaging can be applied for beam-hardening correction, material differentiation and tissue characterization, and proton therapy treatment planning.
Item Type: | Article |
---|---|
Subjects: | ScienceOpen Library > Multidisciplinary |
Depositing User: | Managing Editor |
Date Deposited: | 01 Jul 2023 09:19 |
Last Modified: | 28 Oct 2024 08:07 |
URI: | http://scholar.researcherseuropeans.com/id/eprint/1718 |