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Deep Learning-Based Electric Field Enhancement Imaging Method for Brain Stroke
by
Zuo, Tong
, Cao, Rui
, Cheng, Yuhan
, Jiang, Lihui
, Tao, Xiaohui
, Yu, Xiaolong
, Zhang, Yan
in
Algorithms
/ Antennas
/ Antennas (Electronics)
/ Born Iterative Method
/ Brain - diagnostic imaging
/ convolutional neural network
/ CT imaging
/ Deep Learning
/ degree of freedom
/ Design
/ Electric fields
/ Electric properties
/ Electromagnetism
/ Humans
/ Image Processing, Computer-Assisted - methods
/ Magnetic Resonance Imaging - methods
/ Medical imaging
/ Methods
/ microwave tomography
/ Neural networks
/ Neural Networks, Computer
/ Neuroimaging
/ PET imaging
/ Receivers & amplifiers
/ Simulation
/ Stroke - diagnostic imaging
/ stroke detection
/ Tomography
2024
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Deep Learning-Based Electric Field Enhancement Imaging Method for Brain Stroke
by
Zuo, Tong
, Cao, Rui
, Cheng, Yuhan
, Jiang, Lihui
, Tao, Xiaohui
, Yu, Xiaolong
, Zhang, Yan
in
Algorithms
/ Antennas
/ Antennas (Electronics)
/ Born Iterative Method
/ Brain - diagnostic imaging
/ convolutional neural network
/ CT imaging
/ Deep Learning
/ degree of freedom
/ Design
/ Electric fields
/ Electric properties
/ Electromagnetism
/ Humans
/ Image Processing, Computer-Assisted - methods
/ Magnetic Resonance Imaging - methods
/ Medical imaging
/ Methods
/ microwave tomography
/ Neural networks
/ Neural Networks, Computer
/ Neuroimaging
/ PET imaging
/ Receivers & amplifiers
/ Simulation
/ Stroke - diagnostic imaging
/ stroke detection
/ Tomography
2024
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Deep Learning-Based Electric Field Enhancement Imaging Method for Brain Stroke
by
Zuo, Tong
, Cao, Rui
, Cheng, Yuhan
, Jiang, Lihui
, Tao, Xiaohui
, Yu, Xiaolong
, Zhang, Yan
in
Algorithms
/ Antennas
/ Antennas (Electronics)
/ Born Iterative Method
/ Brain - diagnostic imaging
/ convolutional neural network
/ CT imaging
/ Deep Learning
/ degree of freedom
/ Design
/ Electric fields
/ Electric properties
/ Electromagnetism
/ Humans
/ Image Processing, Computer-Assisted - methods
/ Magnetic Resonance Imaging - methods
/ Medical imaging
/ Methods
/ microwave tomography
/ Neural networks
/ Neural Networks, Computer
/ Neuroimaging
/ PET imaging
/ Receivers & amplifiers
/ Simulation
/ Stroke - diagnostic imaging
/ stroke detection
/ Tomography
2024
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Deep Learning-Based Electric Field Enhancement Imaging Method for Brain Stroke
Journal Article
Deep Learning-Based Electric Field Enhancement Imaging Method for Brain Stroke
2024
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Overview
In clinical settings, computed tomography (CT), magnetic resonance imaging (MRI), or positron emission tomography (PET) are commonly employed in brain imaging to assist clinicians in determining the type of stroke in patients. However, these modalities are associated with potential hazards or limitations. In contrast, microwave imaging emerges as a promising technique, offering advantages such as non-ionizing radiation, low cost, lightweight, and portability. The primary challenges faced by microwave tomography include the severe ill-posedness of the electromagnetic inverse scattering problem and the time-consuming nature and unsatisfactory resolution of iterative quantitative algorithms. This paper proposes a learning electric field enhancement imaging method (LEFEIM) to achieve quantitative brain imaging based on a microwave tomography system. LEFEIM comprises two cascaded networks. The first, based on a convolutional neural network, utilizes the electric field from the receiving antenna to predict the electric field distribution within the imaging domain. The second network employs the electric field distribution as input to learn the dielectric constant distribution, thereby realizing quantitative brain imaging. Compared to the Born Iterative Method (BIM), LEFEIM significantly improves imaging time, while enhancing imaging quality and goodness-of-fit to a certain extent. Simultaneously, LEFEIM exhibits anti-noise capabilities.
Publisher
MDPI AG,MDPI
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