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Deep transfer learning for cerebral cortex using area-preserving geometry mapping

Authors :
Jubo Zhu
Dewen Hu
Zhipeng Fan
Kai Gao
Jianpo Su
Ling-Li Zeng
Hui Shen
Source :
Cerebral Cortex. 32:2972-2984
Publication Year :
2021
Publisher :
Oxford University Press (OUP), 2021.

Abstract

Limited sample size hinders the application of deep learning in brain image analysis, and transfer learning is a possible solution. However, most pretrained models are 2D based and cannot be applied directly to 3D brain images. In this study, we propose a novel framework to apply 2D pretrained models to 3D brain images by projecting surface-based cortical morphometry into planar images using computational geometry mapping. Firstly, 3D cortical meshes are reconstructed from magnetic resonance imaging (MRI) using FreeSurfer and projected into 2D planar meshes with topological preservation based on area-preserving geometry mapping. Then, 2D deep models pretrained on ImageNet are adopted and fine-tuned for cortical image classification on morphometric shape metrics. We apply the framework to sex classification on the Human Connectome Project dataset and autism spectrum disorder (ASD) classification on the Autism Brain Imaging Data Exchange dataset. Moreover, a 2-stage transfer learning strategy is suggested to boost the ASD classification performance by using the sex classification as an intermediate task. Our framework brings significant improvement in sex classification and ASD classification with transfer learning. In summary, the proposed framework builds a bridge between 3D cortical data and 2D models, making 2D pretrained models available for brain image analysis in cognitive and psychiatric neuroscience.

Details

ISSN :
14602199 and 10473211
Volume :
32
Database :
OpenAIRE
Journal :
Cerebral Cortex
Accession number :
edsair.doi.dedup.....39dfb011a3b96f95bdbbda593f2b0e84