NeuroImage | |
A deep learning-based multisite neuroimage harmonization framework established with a traveling-subject dataset | |
Huanjie Li1  Yong He1  Zilong Zeng1  Hongjian He2  Xiaoyi Sun2  Mingrui Xia2  Jia-Hong Gao3  Qiqi Tong3  Dezheng Tian3  | |
[1] Beijing Key Laboratory of Brain Imaging and Connectomics, Beijing Normal University, Beijing 100875, China;IDG/McGovern Institute for Brain Research, Beijing Normal University, Beijing 100875, China;State Key Laboratory of Cognitive Neuroscience and Learning, Beijing Normal University, Beijing 100875, China; | |
关键词: Big data; Machine learning; Multicenter; Gray matter; Convolutional network; Site effect; | |
DOI : | |
来源: DOAJ |
【 摘 要 】
The accumulation of multisite large-sample MRI datasets collected during large brain research projects in the last decade has provided critical resources for understanding the neurobiological mechanisms underlying cognitive functions and brain disorders. However, the significant site effects observed in imaging data and their derived structural and functional features have prevented the derivation of consistent findings across multiple studies. The development of harmonization methods that can effectively eliminate complex site effects while maintaining biological characteristics in neuroimaging data has become a vital and urgent requirement for multisite imaging studies. Here, we propose a deep learning-based framework to harmonize imaging data obtained from pairs of sites, in which site factors and brain features can be disentangled and encoded. We trained the proposed framework with a publicly available traveling subject dataset from the Strategic Research Program for Brain Sciences (SRPBS) and harmonized the gray matter volume maps derived from eight source sites to a target site. The proposed framework significantly eliminated intersite differences in gray matter volumes. The embedded encoders successfully captured both the abstract textures of site factors and the concrete brain features. Moreover, the proposed framework exhibited outstanding performance relative to conventional statistical harmonization methods in terms of site effect removal, data distribution homogenization, and intrasubject similarity improvement. Finally, the proposed harmonization network provided fixable expandability, through which new sites could be linked to the target site via indirect schema without retraining the whole model. Together, the proposed method offers a powerful and interpretable deep learning-based harmonization framework for multisite neuroimaging data that can enhance reliability and reproducibility in multisite studies regarding brain development and brain disorders.
【 授权许可】
Unknown