Virtual differential phase-contrast and dark-field imaging of x-ray absorption images via deep learning.
Xin GePengfei YangZhao WuChen LuoPeng JinZhili WangShengxiang WangYongsheng HuangTianye NiuPublished in: Bioengineering & translational medicine (2023)
Weak absorption contrast in biological tissues has hindered x-ray computed tomography from accessing biological structures. Recently, grating-based imaging has emerged as a promising solution to biological low-contrast imaging, providing complementary and previously unavailable structural information of the specimen. Although it has been successfully applied to work with conventional x-ray sources, grating-based imaging is time-consuming and requires a sophisticated experimental setup. In this work, we demonstrate that a deep convolutional neural network trained with a generative adversarial network can directly convert x-ray absorption images into differential phase-contrast and dark-field images that are comparable to those obtained at both a synchrotron beamline and a laboratory facility. By smearing back all of the virtual projections, high-quality tomographic images of biological test specimens deliver the differential phase-contrast- and dark-field-like contrast and quantitative information, broadening the horizon of x-ray image contrast generation.
Keyphrases
- high resolution
- deep learning
- convolutional neural network
- magnetic resonance
- contrast enhanced
- dual energy
- computed tomography
- artificial intelligence
- mass spectrometry
- magnetic resonance imaging
- optical coherence tomography
- gene expression
- machine learning
- body composition
- photodynamic therapy
- drinking water
- positron emission tomography
- electron microscopy
- social media