Style Transfer Using Generative Adversarial Networks for Multi-site MRI Harmonization

被引:39
|
作者
Liu, Mengting [1 ]
Maiti, Piyush [1 ]
Thomopoulos, Sophia [1 ]
Zhu, Alyssa [1 ]
Chai, Yaqiong [1 ]
Kim, Hosung [1 ]
Jahanshad, Neda [1 ]
机构
[1] Univ Southern Calif, Keck Sch Med USC, USC Mark & Mary Stevens Neuroimaging & Informat I, Los Angeles, CA 90007 USA
关键词
MRI harmonization; Style encoding; GAN;
D O I
10.1007/978-3-030-87199-4_30
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
Large data initiatives and high-powered brain imaging analyses require the pooling of MR images acquired across multiple scanners, often using different protocols. Prospective cross-site harmonization often involves the use of a phantom or traveling subjects. However, as more datasets are becoming publicly available, there is a growing need for retrospective harmonization, pooling data from sites not originally coordinated together. Several retrospective harmonization techniques have shown promise in removing cross-site image variation. However, most unsupervised methods cannot distinguish between image-acquisition based variability and cross-site population variability, so they require that datasets contain subjects or patient groups with similar clinical or demographic information. To overcome this limitation, we consider cross-site MRI image harmonization as a style transfer problem rather than a domain transfer problem. Using a fully unsupervised deep-learning framework based on a generative adversarial network (GAN), we show that MR images can be harmonized by inserting the style information encoded from a reference image directly, without knowing their site/scanner labels a priori. We trained our model using data from five large-scale multi-site datasets with varied demographics. Results demonstrated that our style-encoding model can harmonize MR images, and match intensity profiles, successfully, without relying on traveling subjects. This model also avoids the need to control for clinical, diagnostic, or demographic information. Moreover, we further demonstrated that if we included diverse enough images into the training set, our method successfully harmonized MR images collected from unseen scanners and protocols, suggesting a promising novel tool for ongoing collaborative studies.
引用
收藏
页码:313 / 322
页数:10
相关论文
共 50 条
  • [1] Image Style Transfer with Generative Adversarial Networks
    Li, Ru
    [J]. PROCEEDINGS OF THE 29TH ACM INTERNATIONAL CONFERENCE ON MULTIMEDIA, MM 2021, 2021, : 2950 - 2954
  • [2] Generative Adversarial Style Transfer Networks for Face Aging
    Palsson, Sveinn
    Agustsson, Eirikur
    Timofte, Radu
    Van Gool, Luc
    [J]. PROCEEDINGS 2018 IEEE/CVF CONFERENCE ON COMPUTER VISION AND PATTERN RECOGNITION WORKSHOPS (CVPRW), 2018, : 2165 - 2173
  • [3] TACHIEGAN: GENERATIVE ADVERSARIAL NETWORKS FOR TACHIE STYLE TRANSFER
    Chen, Zihan
    Chen, Xuejin
    [J]. 2022 IEEE INTERNATIONAL CONFERENCE ON MULTIMEDIA AND EXPO WORKSHOPS (IEEE ICMEW 2022), 2022,
  • [4] Multi-site harmonization of 7 tesla MRI neuroimaging protocols
    Clarke, William T.
    Mougin, Olivier
    Driver, Ian D.
    Rua, Catarina
    Morgan, Andrew T.
    Asghar, Michael
    Clare, Stuart
    Francis, Susan
    Wise, Richard G.
    Rodgers, Christopher T.
    Carpenter, Adrian
    Muir, Keith
    Bowtell, Richard
    [J]. NEUROIMAGE, 2020, 206
  • [5] Multi-site harmonization of diffusion MRI data in a registration framework
    Mirzaalian, Hengameh
    Ning, Lipeng
    Savadjiev, Peter
    Pasternak, Ofer
    Bouix, Sylvain
    Michailovich, Oleg
    Karmacharya, Sarina
    Grant, Gerald
    Marx, Christine E.
    Morey, Rajendra A.
    Flashman, Laura A.
    George, Mark S.
    McAllister, Thomas W.
    Andaluz, Norberto
    Shutter, Lori
    Coimbra, Raul
    Zafonte, Ross D.
    Coleman, Mike J.
    Kubicki, Marek
    Westin, Carl-Fredrik
    Stein, Murray B.
    Shenton, Martha E.
    Rathi, Yogesh
    [J]. BRAIN IMAGING AND BEHAVIOR, 2018, 12 (01) : 284 - 295
  • [6] Multi-site harmonization of diffusion MRI data in a registration framework
    Hengameh Mirzaalian
    Lipeng Ning
    Peter Savadjiev
    Ofer Pasternak
    Sylvain Bouix
    Oleg Michailovich
    Sarina Karmacharya
    Gerald Grant
    Christine E. Marx
    Rajendra A. Morey
    Laura A. Flashman
    Mark S. George
    Thomas W. McAllister
    Norberto Andaluz
    Lori Shutter
    Raul Coimbra
    Ross D. Zafonte
    Mike J. Coleman
    Marek Kubicki
    Carl-Fredrik Westin
    Murray B. Stein
    Martha E. Shenton
    Yogesh Rathi
    [J]. Brain Imaging and Behavior, 2018, 12 : 284 - 295
  • [7] The use of generative adversarial networks for multi-site one-class follicular lymphoma classification
    Upeka Vianthi Somaratne
    Kok Wai Wong
    Jeremy Parry
    Hamid Laga
    [J]. Neural Computing and Applications, 2023, 35 : 20569 - 20579
  • [8] The use of generative adversarial networks for multi-site one-class follicular lymphoma classification
    Somaratne, Upeka Vianthi
    Wong, Kok Wai
    Parry, Jeremy
    Laga, Hamid
    [J]. NEURAL COMPUTING & APPLICATIONS, 2023, 35 (28): : 20569 - 20579
  • [9] Multicenter PET image harmonization using generative adversarial networks
    Haberl, David
    Spielvogel, Clemens P.
    Jiang, Zewen
    Orlhac, Fanny
    Iommi, David
    Carrio, Ignasi
    Buvat, Irene
    Haug, Alexander R.
    Papp, Laszlo
    [J]. EUROPEAN JOURNAL OF NUCLEAR MEDICINE AND MOLECULAR IMAGING, 2024, 51 (09) : 2532 - 2546
  • [10] PDEGAN: A Panoramic Style Transfer Based on Generative Adversarial Networks
    Wang, Qinghua
    Long, Xinling
    Huang, Jingwei
    Chen, Yang
    Yang, Lirong
    Zhang, Fuquan
    [J]. Journal of Network Intelligence, 2024, 9 (04): : 2112 - 2121