Multi-Sensory Cognitive Computing for Learning Population-level Brain Connectivity
Mayssa Soussia, Mohamed Ali Mahjoub, and Islem Rekik

TL;DR
This paper introduces mCOCO, a novel multi-sensory reservoir computing framework for learning interpretable, efficient, and cognitively meaningful population-level brain connectivity templates from BOLD signals, outperforming existing graph neural network methods.
Contribution
mCOCO is the first framework to integrate multi-sensory inputs with reservoir computing for brain connectivity modeling, capturing cognitive traits and dynamics efficiently.
Findings
Outperforms GNN-based templates in centeredness and discriminativeness
Enhances interpretability and cognitive modeling of brain connectivity
Efficiently captures multi-sensory memory and processing dynamics
Abstract
The generation of connectional brain templates (CBTs) has recently garnered significant attention for its potential to identify unique connectivity patterns shared across individuals. However, existing methods for CBT learning such as conventional machine learning and graph neural networks (GNNs) are hindered by several limitations. These include: (i) poor interpretability due to their black-box nature, (ii) high computational cost, and (iii) an exclusive focus on structure and topology, overlooking the cognitive capacity of the generated CBT. To address these challenges, we introduce mCOCO (multi-sensory COgnitive COmputing), a novel framework that leverages Reservoir Computing (RC) to learn population-level functional CBT from BOLD (Blood-Oxygen-level-Dependent) signals. RC's dynamic system properties allow for tracking state changes over time, enhancing interpretability and enabling…
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