One Representative-Shot Learning Using a Population-Driven Template with Application to Brain Connectivity Classification and Evolution Prediction
Umut Guvercin, Mohammed Amine Gharsallaoui, Islem Rekik

TL;DR
This paper introduces a novel one-shot learning approach for brain connectivity classification using a population-driven template called a connectional brain template (CBT), enabling effective GNN training with a single sample.
Contribution
It proposes the first one-shot GNN training paradigm using a CBT, reducing data requirements and improving performance in neuroimaging tasks.
Findings
Outperformed benchmark one-shot learning methods
Achieved competitive results with traditional training strategies
Demonstrated effectiveness on classification and brain graph forecasting
Abstract
Few-shot learning presents a challenging paradigm for training discriminative models on a few training samples representing the target classes to discriminate. However, classification methods based on deep learning are ill-suited for such learning as they need large amounts of training data --let alone one-shot learning. Recently, graph neural networks (GNNs) have been introduced to the field of network neuroscience, where the brain connectivity is encoded in a graph. However, with scarce neuroimaging datasets particularly for rare diseases and low-resource clinical facilities, such data-devouring architectures might fail in learning the target task. In this paper, we take a very different approach in training GNNs, where we aim to learn with one sample and achieve the best performance --a formidable challenge to tackle. Specifically, we present the first one-shot paradigm where a GNN…
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Taxonomy
TopicsAdvanced Graph Neural Networks · Functional Brain Connectivity Studies · Domain Adaptation and Few-Shot Learning
