Deep Feature Fusion via Graph Convolutional Network for Intracranial Artery Labeling
This work addresses the need for accurate artery labeling to aid clinical applications and disease diagnoses, representing an incremental improvement in domain-specific methods.
The study tackled the challenging problem of automating anatomical labeling of intracranial arteries by proposing a novel graph convolutional neural network with deep feature fusion, achieving superior results over baselines on public datasets.
Intracranial arteries are critical blood vessels that supply the brain with oxygenated blood. Intracranial artery labels provide valuable guidance and navigation to numerous clinical applications and disease diagnoses. Various machine learning algorithms have been carried out for automation in the anatomical labeling of cerebral arteries. However, the task remains challenging because of the high complexity and variations of intracranial arteries. This study investigates a novel graph convolutional neural network with deep feature fusion for cerebral artery labeling. We introduce stacked graph convolutions in an encoder-core-decoder architecture, extracting high-level representations from graph nodes and their neighbors. Furthermore, we efficiently aggregate intermediate features from different hierarchies to enhance the proposed model's representation capability and labeling performance. We perform extensive experiments on public datasets, in which the results prove the superiority of our approach over baselines by a clear margin.