Signal denoising through topographic modularity of neural circuits
Publication year
2023Source
Elife, 12, (2023), article e77009ISSN
Publication type
Article / Letter to editor
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Organization
SW OZ DCC AI
Journal title
Elife
Volume
vol. 12
Languages used
English (eng)
Subject
Cognitive artificial intelligenceAbstract
Information from the sensory periphery is conveyed to the cortex via structured projection pathways that spatially segregate stimulus features, providing a robust and efficient encoding strategy. Beyond sensory encoding, this prominent anatomical feature extends throughout the neocortex. However, the extent to which it influences cortical processing is unclear. In this study, we combine cortical circuit modeling with network theory to demonstrate that the sharpness of topographic projections acts as a bifurcation parameter, controlling the macroscopic dynamics and representational precision across a modular network. By shifting the balance of excitation and inhibition, topographic modularity gradually increases task performance and improves the signal-to-noise ratio across the system. We demonstrate that in biologically constrained networks, such a denoising behavior is contingent on recurrent inhibition. We show that this is a robust and generic structural feature that enables a broad range of behaviorally-relevant operating regimes, and provide an in-depth theoretical analysis unravelling the dynamical principles underlying the mechanism.
This item appears in the following Collection(s)
- Academic publications [244228]
- Electronic publications [131195]
- Faculty of Social Sciences [30034]
- Open Access publications [105227]
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