Transfer learning enhanced generative adversarial networks for multi-channel MRI reconstruction

被引:55
作者
Lv, Jun [1 ]
Li, Guangyuan [1 ]
Tong, Xiangrong [1 ]
Chen, Weibo [2 ]
Huang, Jiahao [3 ]
Wang, Chengyan [4 ]
Yang, Guang [5 ,6 ]
机构
[1] Yantai Univ, Sch Comp & Control Engn, Yantai, Peoples R China
[2] Philips Healthcare, Shanghai, Peoples R China
[3] Beijing Inst Technol, Sch Opt & Photon, Beijing, Peoples R China
[4] Fudan Univ, Human Phenome Inst, Shanghai, Peoples R China
[5] Royal Brompton Hosp, Cardiovasc Res Ctr, London SW3 6NP, England
[6] Imperial Coll London, Natl Heart & Lung Inst, London SW7 2AZ, England
基金
欧盟地平线“2020”; 中国国家自然科学基金; 欧洲研究理事会;
关键词
Multi-channel MRI; Image reconstruction; Generative adversarial networks; Transfer learning; CONVOLUTIONAL NEURAL-NETWORKS; CASCADE; SENSE;
D O I
10.1016/j.compbiomed.2021.104504
中图分类号
Q [生物科学];
学科分类号
07 ; 0710 ; 09 ;
摘要
Deep learning based generative adversarial networks (GAN) can effectively perform image reconstruction with under-sampled MR data. In general, a large number of training samples are required to improve the reconstruction performance of a certain model. However, in real clinical applications, it is difficult to obtain tens of thousands of raw patient data to train the model since saving k-space data is not in the routine clinical flow. Therefore, enhancing the generalizability of a network based on small samples is urgently needed. In this study, three novel applications were explored based on parallel imaging combined with the GAN model (PI-GAN) and transfer learning. The model was pre-trained with public Calgary brain images and then fine-tuned for use in (1) patients with tumors in our center; (2) different anatomies, including knee and liver; (3) different k-space sampling masks with acceleration factors (AFs) of 2 and 6. As for the brain tumor dataset, the transfer learning results could remove the artifacts found in PI-GAN and yield smoother brain edges. The transfer learning results for the knee and liver were superior to those of the PI-GAN model trained with its own dataset using a smaller number of training cases. However, the learning procedure converged more slowly in the knee datasets compared to the learning in the brain tumor datasets. The reconstruction performance was improved by transfer learning both in the models with AFs of 2 and 6. Of these two models, the one with AF = 2 showed better results. The results also showed that transfer learning with the pre-trained model could solve the problem of inconsistency between the training and test datasets and facilitate generalization to unseen data.
引用
收藏
页数:12
相关论文
共 50 条
[21]   Channel Estimation Enhancement With Generative Adversarial Networks [J].
Hu, Tianyu ;
Huang, Yang ;
Zhu, Qiuming ;
Wu, Qihui .
IEEE TRANSACTIONS ON COGNITIVE COMMUNICATIONS AND NETWORKING, 2021, 7 (01) :145-156
[22]   Multi-scale reconstruction of mural inpainting based on generative adversarial enhanced by joint dual encoders [J].
Chen Y. ;
Tao M. ;
Chen J. ;
Zhao M. .
Huazhong Keji Daxue Xuebao (Ziran Kexue Ban)/Journal of Huazhong University of Science and Technology (Natural Science Edition), 2023, 51 (09) :96-102
[23]   Generating Synthetic Sidescan Sonar Snippets Using Transfer-Learning in Generative Adversarial Networks [J].
Steiniger, Yannik ;
Kraus, Dieter ;
Meisen, Tobias .
JOURNAL OF MARINE SCIENCE AND ENGINEERING, 2021, 9 (03) :1-17
[24]   Transfer Generative Adversarial Networks (T-GAN)-based Terahertz Temporal Channel Modeling and Generating [J].
Hu, Zhengdong ;
Li, Yuanbo ;
Han, Chong .
PROCEEDINGS OF THE 2023 THE 7TH ACM WORKSHOP ON MILLIMETER-WAVE AND TERAHERTZ NETWORKS AND SENSING SYSTEMS, MMNETS 2023, 2023, :7-12
[25]   Generative Adversarial Networks and Transfer Learning for Non-Intrusive Load Monitoring in Smart Grids [J].
Ahmed, Awadelrahman M. A. ;
Zhang, Yan ;
Eliassen, Frank .
2020 IEEE INTERNATIONAL CONFERENCE ON COMMUNICATIONS, CONTROL, AND COMPUTING TECHNOLOGIES FOR SMART GRIDS, SMARTGRIDCOMM, 2020,
[26]   Multi-CryoGAN: Reconstruction of Continuous Conformations in Cryo-EM Using Generative Adversarial Networks [J].
Gupta, Harshit ;
Phan, Thong H. ;
Yoo, Jaejun ;
Unser, Michael .
COMPUTER VISION - ECCV 2020 WORKSHOPS, PT I, 2020, 12535 :429-444
[27]   Improving the Generalization of Deep Learning Classification Models in Medical Imaging Using Transfer Learning and Generative Adversarial Networks [J].
Venu, Sagar Kora .
AGENTS AND ARTIFICIAL INTELLIGENCE, ICAART 2021, 2022, 13251 :218-235
[28]   CSI2Image: Image Reconstruction From Channel State Information Using Generative Adversarial Networks [J].
Kato, Sorachi ;
Fukushima, Takeru ;
Murakami, Tomoki ;
Abeysekera, Hirantha ;
Iwasaki, Yusuke ;
Fujihashi, Takuya ;
Watanabe, Takashi ;
Saruwatari, Shunsuke .
IEEE ACCESS, 2021, 9 :47154-47168
[29]   Image Style Transfer with Generative Adversarial Networks [J].
Li, Ru .
PROCEEDINGS OF THE 29TH ACM INTERNATIONAL CONFERENCE ON MULTIMEDIA, MM 2021, 2021, :2950-2954
[30]   A New Framework for Visual Classification of Multi-Channel Malware Based on Transfer Learning [J].
Zhao, Zilin ;
Yang, Shumian ;
Zhao, Dawei .
APPLIED SCIENCES-BASEL, 2023, 13 (04)