English

Feature-selected Graph Spatial Attention Network for Addictive Brain-Networks Identification

Image and Video Processing 2022-07-12 v2 Computer Vision and Pattern Recognition Neurons and Cognition

Abstract

Functional alterations in the relevant neural circuits occur from drug addiction over a certain period. And these significant alterations are also revealed by analyzing fMRI. However, because of fMRI's high dimensionality and poor signal-to-noise ratio, it is challenging to encode efficient and robust brain regional embeddings for both graph-level identification and region-level biomarkers detection tasks between nicotine addiction (NA) and healthy control (HC) groups. In this work, we represent the fMRI of the rat brain as a graph with biological attributes and propose a novel feature-selected graph spatial attention network(FGSAN) to extract the biomarkers of addiction and identify from these brain networks. Specially, a graph spatial attention encoder is employed to capture the features of spatiotemporal brain networks with spatial information. The method simultaneously adopts a Bayesian feature selection strategy to optimize the model and improve classification task by constraining features. Experiments on an addiction-related neural imaging dataset show that the proposed model can obtain superior performance and detect interpretable biomarkers associated with addiction-relevant neural circuits.

Keywords

Cite

@article{arxiv.2207.00583,
  title  = {Feature-selected Graph Spatial Attention Network for Addictive Brain-Networks Identification},
  author = {Changwei Gong and Changhong Jing and Junren Pan and Shuqiang Wang},
  journal= {arXiv preprint arXiv:2207.00583},
  year   = {2022}
}
R2 v1 2026-06-24T12:11:30.885Z