Publication: Brain graph super-resolution using adversarial graph neural network with application to functional brain connectivity
Loading...
Date
Authors
Advisor
Journal Title
Journal ISSN
Volume Title
Publisher
Elsevier BV
Type
Abstract
Brain image analysis has advanced substantially in recent years with the proliferation of neuroimaging datasets acquired at different resolutions. While research on brain image super-resolution has undergone a rapid development in the recent years, brain graph super-resolution is still poorly investigated because of the complex nature of non-Euclidean graph data. In this paper, we propose the first-ever deep graph super-resolution (GSR) framework that attempts to automatically generate high-resolution (HR) brain graphs with N' nodes (i.e., anatomical regions of interest (ROIs)) from low-resolution (LR) graphs with N nodes where N < N'. First, we formalize our GSR problem as a node feature embedding learning task. Once the HR nodes' embeddings are learned, the pairwise connectivity strength between brain ROIs can be derived through an aggregation rule based on a novel Graph U-Net architecture. While typically the Graph U-Net is a node-focused architecture where graph embedding depends mainly on node attributes, we propose a graph-focused architecture where the node feature embedding is based on the graph topology. Second, inspired by graph spectral theory, we break the symmetry of the U-Net architecture by super-resolving the low-resolution brain graph structure and node content with a GSR layer and two graph convolutional network layers to further learn the node embeddings in the HR graph. Third, to handle the domain shift between the ground-truth and the predicted HR brain graphs, we incorporate adversarial regularization to align their respective distributions. Our proposed AGSR-Net framework outperformed its variants for predicting high-resolution functional brain graphs from low-resolution ones. Our AGSR-Net code is available on GitHub at https://github.com/basiralab/AGSR-Net.
arXiv admin note: text overlap with arXiv:2009.11080
arXiv admin note: text overlap with arXiv:2009.11080
Description
Subject
FOS: Computer and information sciences, Computer Science - Machine Learning, Computer Vision and Pattern Recognition (cs.CV), Computer Science - Computer Vision and Pattern Recognition, Spectral upsampling, Neuroimaging, Machine Learning (cs.LG), /dk/atira/pure/subjectarea/asjc/2700/2741, /dk/atira/pure/subjectarea/asjc/3600/3614, Image Processing, Computer-Assisted, FOS: Electrical engineering, electronic engineering, information engineering, Humans, Adversarial learning, Brain connectivity, name=Radiological and Ultrasound Technology, /dk/atira/pure/subjectarea/asjc/1700/1707, /dk/atira/pure/subjectarea/asjc/1700/1704, Graph super-resolution, Image and Video Processing (eess.IV), name=Health Informatics, Brain, /dk/atira/pure/subjectarea/asjc/2700/2718, Electrical Engineering and Systems Science - Image and Video Processing, name=Computer Graphics and Computer-Aided Design, Graph neural network, Graph node embedding, Quantitative Biology - Neurons and Cognition, FOS: Biological sciences, name=Radiology Nuclear Medicine and imaging, Neurons and Cognition (q-bio.NC), Neural Networks, Computer, name=Computer Vision and Pattern Recognition