Downstream network transformations dissociate neural activity from causal functional contributions

Author:

Fakhar Kayson,Dixit Shrey,Hadaeghi Fatemeh,Kording Konrad P.,Hilgetag Claus C.

Abstract

AbstractNeuroscientists rely on distributed spatio-temporal patterns of neural activity to understand how neural units contribute to cognitive functions and behavior. However, the extent to which neural activity reliably indicates a unit's causal contribution to the behavior is not well understood. To address this issue, we provide a systematic multi-site perturbation framework that captures time-varying causal contributions of elements to a collectively produced outcome. Applying our framework to intuitive toy examples and artificial neural networks revealed that recorded activity patterns of neural elements may not be generally informative of their causal contribution due to activity transformations within a network. Overall, our findings emphasize the limitations of inferring causal mechanisms from neural activities and offer a rigorous lesioning framework for elucidating causal neural contributions.

Funder

Deutsche Forschungsgemeinschaft

National Institutes of Health

The Human Brain Project, EU

Universitätsklinikum Hamburg-Eppendorf (UKE)

Publisher

Springer Science and Business Media LLC

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