Back to Search Start Over

Medical Image Harmonization Using Deep Learning Based Canonical Mapping: Toward Robust and Generalizable Learning in Imaging

Authors :
Bashyam, Vishnu M.
Doshi, Jimit
Erus, Guray
Srinivasan, Dhivya
Abdulkadir, Ahmed
Habes, Mohamad
Fan, Yong
Masters, Colin L.
Maruff, Paul
Zhuo, Chuanjun
Völzke, 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, R. Nick
Wolk, David A.
Shou, Haochang
Nasrallah, Ilya M.
Davatzikos, Christos
Bashyam, Vishnu M.
Doshi, Jimit
Erus, Guray
Srinivasan, Dhivya
Abdulkadir, Ahmed
Habes, Mohamad
Fan, Yong
Masters, Colin L.
Maruff, Paul
Zhuo, Chuanjun
Völzke, 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, R. Nick
Wolk, David A.
Shou, Haochang
Nasrallah, Ilya M.
Davatzikos, Christos
Publication Year :
2020

Abstract

Conventional and deep learning-based methods have shown great potential in the medical imaging domain, as means for deriving diagnostic, prognostic, and predictive biomarkers, and by contributing to precision medicine. However, these methods have yet to see widespread clinical adoption, in part due to limited generalization performance across various imaging devices, acquisition protocols, and patient populations. In this work, we propose a new paradigm in which data from a diverse range of acquisition conditions are "harmonized" to a common reference domain, where accurate model learning and prediction can take place. By learning an unsupervised image to image canonical mapping from diverse datasets to a reference domain using generative deep learning models, we aim to reduce confounding data variation while preserving semantic information, thereby rendering the learning task easier in the reference domain. We test this approach on two example problems, namely MRI-based brain age prediction and classification of schizophrenia, leveraging pooled cohorts of neuroimaging MRI data spanning 9 sites and 9701 subjects. Our results indicate a substantial improvement in these tasks in out-of-sample data, even when training is restricted to a single site.

Details

Database :
OAIster
Publication Type :
Electronic Resource
Accession number :
edsoai.on1228437726
Document Type :
Electronic Resource