Litcius/Paper detail

Data-Efficient Brain Connectome Analysis via Multi-Task Meta-Learning

Yi‐Hsin Yang, Yanqiao Zhu, Hejie Cui, Xuan Kan, Lifang He, Ying Guo, Carl Yang

2022Proceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining18 citationsDOIOpen Access PDF

Abstract

Brain networks characterize complex connectivities among brain regions as graph structures, which provide a powerful means to study brain connectomes. In recent years, graph neural networks have emerged as a prevalent paradigm of learning with structured data. However, most brain network datasets are limited in sample sizes due to the relatively high cost of data collection, which hinders the deep learning models from sufficient training. Inspired by meta-learning that learns new concepts fast with limited training examples, this paper studies data-efficient training strategies for analyzing brain connectomes in a cross-dataset setting. Specifically, we propose to meta-train the model on datasets of large sample sizes and transfer the knowledge to small datasets. In addition, we also explore brain-network-oriented designs, including atlas transformation and adaptive task reweighing. Compared to other pre-training strategies, our meta-learning-based approach achieves higher and stabler performance, which demonstrates the effectiveness of our proposed solutions. The framework is also able to derive new insights regarding the similarities among datasets and diseases in a data-driven fashion.

Topics & Concepts

Computer scienceConnectomeMachine learningArtificial intelligenceHuman Connectome ProjectGraphTask (project management)Meta learning (computer science)Artificial neural networkTransfer of learningDeep learningFunctional connectivityTheoretical computer scienceBiologyNeuroscienceEconomicsManagementFunctional Brain Connectivity StudiesNeonatal and fetal brain pathologyDomain Adaptation and Few-Shot Learning