Style transfer generative adversarial networks to harmonize multisite MRI to a single reference image to avoid overcorrection

被引:20
作者
Liu, Mengting [1 ,2 ]
Zhu, Alyssa H. [2 ]
Maiti, Piyush [2 ]
Thomopoulos, Sophia, I [2 ]
Gadewar, Shruti [2 ]
Chai, Yaqiong [2 ]
Kim, Hosung [2 ]
Jahanshad, Neda [2 ]
机构
[1] Sun Yat Sen Univ, Sch Biomed Engn, Shenzhen, Peoples R China
[2] Univ Southern Calif, USC Mark & Mary Stevens Neuroimaging & Informat I, Keck Sch Med USC, Los Angeles, CA 90007 USA
基金
美国国家卫生研究院;
关键词
harmonization; GAN; MRI; style-transfer; THICKNESS; DISEASE;
D O I
10.1002/hbm.26422
中图分类号
Q189 [神经科学];
学科分类号
071006 ;
摘要
Recent work within neuroimaging consortia have aimed to identify reproducible, and often subtle, brain signatures of psychiatric or neurological conditions. To allow for high-powered brain imaging analyses, it is often necessary to pool MR images that were acquired with different protocols across multiple scanners. Current retrospective harmonization techniques have shown promise in removing site-related image variation. However, most statistical approaches may over-correct for technical, scanning-related, variation as they cannot distinguish between confounded image-acquisition based variability and site-related population variability. Such statistical methods often require that datasets contain subjects or patient groups with similar clinical or demographic information to isolate the acquisition-based variability. To overcome this limitation, we consider site-related magnetic resonance (MR) imaging 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 single reference image, without knowing their site/scanner labels a priori. We trained our model using data from five large-scale multisite datasets with varied demographics. Results demonstrated that our style-encoding model can harmonize MR images, and match intensity profiles, without relying on traveling subjects. This model also avoids the need to control for clinical, diagnostic, or demographic information. We highlight the effectiveness of our method for clinical research by comparing extracted cortical and subcortical features, brain-age estimates, and case-control effect sizes before and after the harmonization. We showed that our harmonization removed the site-related variances, while preserving the anatomical information and clinical meaningful patterns. We further demonstrated that with a diverse training set, our method successfully harmonized MR images collected from unseen scanners and protocols, suggesting a promising tool for ongoing collaborative studies. Source code is released in USC-IGC/style_transfer_harmonization (github.com).
引用
收藏
页码:4875 / 4892
页数:18
相关论文
共 40 条
[1]  
Bashyam VM, 2020, Arxiv, DOI arXiv:2010.05355
[2]   Deep Generative Medical Image Harmonization for Improving Cross-Site Generalization in Deep Learning Predictors [J].
Bashyam, Vishnu M. ;
Doshi, Jimit ;
Erus, Guray ;
Srinivasan, Dhivya ;
Abdulkadir, Ahmed ;
Singh, Ashish ;
Habes, Mohamad ;
Fan, Yong ;
Masters, Colin L. ;
Maruff, Paul ;
Zhuo, Chuanjun ;
Voelzke, Henry ;
Johnson, Sterling C. ;
Fripp, Jurgen ;
Koutsouleris, Nikolaos ;
Satterthwaite, Theodore D. ;
Wolf, Daniel H. ;
Gur, Raquel E. ;
Gur, Ruben C. ;
Morris, John C. ;
Albert, Marilyn S. ;
Grabe, Hans J. ;
Resnick, Susan M. ;
Bryan, Nick R. ;
Wittfeld, Katharina ;
Bulow, Robin ;
Wolk, David A. ;
Shou, Haochang ;
Nasrallah, Ilya M. ;
Davatzikos, Christos .
JOURNAL OF MAGNETIC RESONANCE IMAGING, 2022, 55 (03) :908-916
[3]   MRI signatures of brain age and disease over the lifespan based on a deep brain network and 14 468 individuals worldwide [J].
Bashyam, Vishnu M. ;
Erus, Guray ;
Doshi, Jimit ;
Habes, Mohamad ;
Nasralah, Ilya ;
Truelove-Hill, Monica ;
Srinivasan, Dhivya ;
Mamourian, Liz ;
Pomponio, Raymond ;
Fan, Yong ;
Launer, Lenore J. ;
Masters, Colin L. ;
Maruff, Paul ;
Zhuo, Chuanjun ;
Volzke, Henry ;
Johnson, Sterling C. ;
Fripp, Jurgen ;
Koutsouleris, Nikolaos ;
Satterthwaite, Theodore D. ;
Wolf, Daniel ;
Gur, Raquel E. ;
Gur, Ruben C. ;
Morris, John ;
Albert, Marilyn S. ;
Grabe, Hans J. ;
Resnick, Susan ;
Bryan, R. Nick ;
Wolk, David A. ;
Shou, Haochang ;
Davatzikos, Christos .
BRAIN, 2020, 143 :2312-2324
[4]  
Bayer J.M. M., 2022, Site effects how-to when: an overview of retrospective techniques to accommodate site effects in multi-site neuroimaging analyses
[5]   Harmonizing functional connectivity reduces scanner effects in community detection [J].
Chen, Andrew A. ;
Srinivasan, Dhivya ;
Pomponio, Raymond ;
Fan, Yong ;
Nasrallah, Ilya M. ;
Resnick, Susan M. ;
Beason-Held, Lori L. ;
Davatzikos, Christos ;
Satterthwaite, Theodore D. ;
Bassett, Dani S. ;
Shinohara, Russell T. ;
Shou, Haochang .
NEUROIMAGE, 2022, 256
[6]  
Choi Y., 2020, IEEE IC COMP COM NET
[7]   StarGAN: Unified Generative Adversarial Networks for Multi-Domain Image-to-Image Translation [J].
Choi, Yunjey ;
Choi, Minje ;
Kim, Munyoung ;
Ha, Jung-Woo ;
Kim, Sunghun ;
Choo, Jaegul .
2018 IEEE/CVF CONFERENCE ON COMPUTER VISION AND PATTERN RECOGNITION (CVPR), 2018, :8789-8797
[8]  
Dewey Blake E., 2020, Medical Image Computing and Computer Assisted Intervention - MICCAI 2020. 23rd International Conference. Proceedings. Lecture Notes in Computer Science (LNCS 12267), P720, DOI 10.1007/978-3-030-59728-3_70
[9]   DeepHarmony: A deep learning approach to contrast harmonization across scanner changes [J].
Dewey, Blake E. ;
Zhao, Can ;
Reinhold, Jacob C. ;
Carass, Aaron ;
Fitzgerald, Kathryn C. ;
Sotirchos, Elias S. ;
Saidha, Shiv ;
Oh, Jiwon ;
Pham, Dzung L. ;
Calabresi, Peter A. ;
van Zijl, Peter C. M. ;
Prince, Jerry L. .
MAGNETIC RESONANCE IMAGING, 2019, 64 :160-170
[10]   Deep learning-based unlearning of dataset bias for MRI harmonisation and confound removal [J].
Dinsdale, Nicola K. ;
Jenkinson, Mark ;
Namburete, Ana I. L. .
NEUROIMAGE, 2021, 228