Full 3D Microwave Breast Imaging Using a Deep-Learning Technique

被引:41
作者
Khoshdel, Vahab [1 ]
Asefi, Mohammad [1 ]
Ashraf, Ahmed [1 ]
LoVetri, Joe [1 ]
机构
[1] Univ Manitoba, Dept Elect & Comp Engn, Winnipeg, MB R3T 5V6, Canada
基金
加拿大自然科学与工程研究理事会;
关键词
microwave breast imaging; image reconstruction; tumor detection; convolutional neural networks; deep learning; CONVOLUTIONAL NEURAL-NETWORKS; INTEGRATING PRIOR INFORMATION; INVERSE-SCATTERING; DIELECTRIC-PROPERTIES; RECONSTRUCTION; TOMOGRAPHY; IMPACT;
D O I
10.3390/jimaging6080080
中图分类号
TB8 [摄影技术];
学科分类号
0804 ;
摘要
A deep learning technique to enhance 3D images of the complex-valued permittivity of the breast obtained via microwave imaging is investigated. The developed technique is an extension of one created to enhance 2D images. We employ a 3D Convolutional Neural Network, based on the U-Net architecture, that takes in 3D images obtained using the Contrast-Source Inversion (CSI) method and attempts to produce the true 3D image of the permittivity. The training set consists of 3D CSI images, along with the true numerical phantom images from which the microwave scattered field utilized to create the CSI reconstructions was synthetically generated. Each numerical phantom varies with respect to the size, number, and location of tumors within the fibroglandular region. The reconstructed permittivity images produced by the proposed 3D U-Net show that the network is not only able to remove the artifacts that are typical of CSI reconstructions, but it also enhances the detectability of the tumors. We test the trained U-Net with 3D images obtained from experimentally collected microwave data as well as with images obtained synthetically. Significantly, the results illustrate that although the network was trained using only images obtained from synthetic data, it performed well with images obtained from both synthetic and experimental data. Quantitative evaluations are reported using Receiver Operating Characteristics (ROC) curves for the tumor detectability and RMS error for the enhancement of the reconstructions.
引用
收藏
页数:18
相关论文
共 50 条
  • [21] 3D Imaging Restoration of Spinning-Disk Confocal Microscopy Via Deep Learning
    Bai, Chen
    Yu, Xianghua
    Peng, Tong
    Liu, Chao
    Min, Junwei
    Dan, Dan
    Yao, Baoli
    IEEE PHOTONICS TECHNOLOGY LETTERS, 2020, 32 (18) : 1131 - 1134
  • [22] 3D photogrammetry and deep-learning deliver accurate estimates of epibenthic biomass
    Marlow, Joseph
    Halpin, John Edward
    Wilding, Thomas Andrew
    METHODS IN ECOLOGY AND EVOLUTION, 2024, 15 (05): : 965 - 977
  • [23] Deep imitation learning for 3D navigation tasks
    Hussein, Ahmed
    Elyan, Eyad
    Gaber, Mohamed Medhat
    Jayne, Chrisina
    NEURAL COMPUTING & APPLICATIONS, 2018, 29 (07) : 389 - 404
  • [24] Deep imitation learning for 3D navigation tasks
    Ahmed Hussein
    Eyad Elyan
    Mohamed Medhat Gaber
    Chrisina Jayne
    Neural Computing and Applications, 2018, 29 : 389 - 404
  • [25] Full-View 3D Imaging System for Functional and Anatomical Screening of the Breast
    Oraevsky, Alexander
    Su, Richard
    Nguyen, Ha
    Moore, James
    Lou, Yang
    Bhadra, Sayantan
    Forte, Luca
    Anastasio, Mark
    Yang, Wei
    PHOTONS PLUS ULTRASOUND: IMAGING AND SENSING 2018, 2018, 10494
  • [26] 3D Breast Ultrasound Image Classification Using 2.5D Deep learning
    Yang, Zhikai
    Fan, Tianyu
    Smedby, Orjan
    Moreno, Rodrigo
    17TH INTERNATIONAL WORKSHOP ON BREAST IMAGING, IWBI 2024, 2024, 13174
  • [27] A deep-learning approach for 3D realization of mean wake flow of marine hydrokinetic turbine arrays
    Zhang, Zexia
    Sotiropoulos, Fotis
    Khosronejad, Ali
    ENERGY REPORTS, 2024, 12 : 2621 - 2630
  • [28] An efficient deep learning approach for arrhythmia classification using 3D temporal SVCG
    Simone, Lorenzo
    Camporeale, Mauro Giuseppe
    Lomonte, Nunzia
    Dimauro, Giovanni
    Gervasi, Vincenzo
    2023 IEEE INTERNATIONAL CONFERENCE ON DIGITAL HEALTH, ICDH, 2023, : 234 - 239
  • [29] Deep learning for diagnosis of COVID-19 using 3D CT scans
    Serte, Sertan
    Demirel, Hasan
    COMPUTERS IN BIOLOGY AND MEDICINE, 2021, 132
  • [30] Classification of occluded 2D objects using deep learning of 3D shape surfaces
    Tzitzilonis, Vasileios
    Kappatos, Vassilios
    Dermatas, Evangelos
    Apostolopoulos, George
    10TH HELLENIC CONFERENCE ON ARTIFICIAL INTELLIGENCE (SETN 2018), 2018,