Von Economo neurons enable reliable social skill acquisition in recurrent spiking neural networks: a computational account with clinical predictions
Esila Keskin

TL;DR
This study demonstrates that Von Economo neurons (VENs) significantly enhance social skill learning in recurrent spiking neural networks, providing a computational explanation for their role in social cognition and clinical conditions.
Contribution
The paper introduces a novel neural network model embedding VEN-like neurons, showing their critical role in reliable learning and offering a formal account of their computational function.
Findings
VEN-intact networks almost always converge in learning tasks
VEN removal disrupts learning especially during mid-training
VENs act as scaffolds facilitating stable social skill acquisition
Abstract
Von Economo neurons (VENs) are selectively lost in behavioural-variant frontotemporal dementia (bvFTD) and reduced in autism spectrum conditions (ASC), yet their computational role in social learning remains unexplained. We train a spiking neural network (the VENCircuit) embedding VEN-like projection neurons (K=40, 2% of total) in a recurrent pyramidal circuit across 50 matched random initialisations with and without VENs. The network is trained on a controlled binary classification task; we make no claim to model social cognition directly. VEN-intact networks converged in 49/50 cases (98%) versus 35/50 (70%) for VEN-ablated networks (Fisher's exact OR=21.0, 95% CI 2.7-167, p=8.7e-5). Failed ablated networks showed complete absence of learning, inconsistent with a speed-of-learning account. Phase-ablation experiments show VEN removal is most disruptive during mid-training (epochs 5-25),…
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