X-ray computed tomography energy spectrum estimation method based on convolutional neural network

A convolutional neural network and tomographic imaging technology, applied in the field of X-ray computed tomography energy spectrum estimation based on convolutional neural network, can solve problems such as increased workflow, large estimation results, unfavorable imaging systems, etc., to improve work efficiency Effect

Active Publication Date: 2019-06-21
PLA STRATEGIC SUPPORT FORCE INFORMATION ENG UNIV PLA SSF IEU
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Problems solved by technology

The model-based method mainly uses empirical formulas or semi-empirical physical models to generate energy spectra, but for specific different ray sources and different energy intervals, the adaptability of the model method is limited
Measurement-based methods mainly estimate the used ray energy spectrum by indirectly measuring phantom attenuation information, which is relatively simple and has been implemented in a wide range of X-ray CT systems, but it requires auxiliary hardware, such as wedge models, resulting in the entire CT System scans require the addition of dedicated workflows
[0004] In 2008, Zhang Peng and others attributed the indirect measurement of energy spectrum to an optimization problem with regularization terms, but the regularization parameters in the model need prior information, otherwise the estimation results will be large
However, this method requires additional scanning of the auxiliary phantom, which makes the process of energy spectrum estimation more complicated, which is not conducive to direct application to existing imaging systems

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  • X-ray computed tomography energy spectrum estimation method based on convolutional neural network
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  • X-ray computed tomography energy spectrum estimation method based on convolutional neural network

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[0023] In order to make the purpose, technical solutions and advantages of the present invention clearer, the technical solutions in the embodiments of the present invention will be clearly described below in conjunction with the accompanying drawings in the embodiments of the present invention. Obviously, the described embodiments are part of the present invention Examples, not all examples. Based on the embodiments of the present invention, all other embodiments obtained by persons of ordinary skill in the art without making creative efforts belong to the protection scope of the present invention.

[0024] figure 1 It is a schematic flowchart of a convolutional neural network-based X-ray computed tomography energy spectrum estimation method provided by an embodiment of the present invention. Such as figure 1 As shown, the method includes the following steps:

[0025] S101, designing a convolutional neural network for describing the coupling relationship between the CT ima...

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Abstract

The invention provides an X-ray computed tomography energy spectrum estimation method based on a convolutional neural network. The method comprises the following steps: step 1, designing a convolutional neural network for describing a coupling relationship between a CT image and a photon distribution probability in an energy spectrum; step 2, training the convolutional neural network by using theconstructed training data set to obtain a trained convolutional neural network; and step 3, performing energy spectrum estimation on the CT image by using the trained convolutional neural network to obtain CT image energy spectrum information. The method is mainly used for estimating the X-ray energy spectrum information through the characteristics of the CT reconstructed image from the perspective of the image domain, does not need additional hardware or a special working process, can be directly applied to an existing CT scanning system, and is beneficial to improving the efficiency.

Description

technical field [0001] The invention relates to the technical field of CT imaging, in particular to a convolutional neural network-based X-ray computed tomography energy spectrum estimation method. Background technique [0002] X-ray computed tomography (Computed Tomography, CT) is a technology to reverse the attenuation distribution of an object from the X-ray projection, covering nuclear physics, mathematics, computers, precision instruments and other disciplines. This technology uses the X-ray transmission information of the object at different angles, and obtains the attenuation characteristic distribution of the object through the image reconstruction algorithm, so as to realize the three-dimensional internal structure of the object without loss. Since Hounsfield successfully developed the first CT, CT has been widely used in non-destructive testing, medical diagnosis, material analysis and other fields. Among them, the X-rays generated by the tube in conventional CT ha...

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Application Information

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IPC IPC(8): G01N23/046G01T1/36G06T11/00
Inventor 李磊张文昆李子恒王林元蔡爱龙唐超梁宁宁闫镔孙艳敏
Owner PLA STRATEGIC SUPPORT FORCE INFORMATION ENG UNIV PLA SSF IEU
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