A framework for disentangling spatial and visual neural representations
Mai M. Morimoto, Julien Fournier, Aman B. Saleem

TL;DR
This paper introduces a new framework combining virtual corridor design and a GLM to disentangle visual and spatial neural signals, revealing significant spatial modulation in V1 neurons during virtual navigation.
Contribution
The framework uniquely separates visual and spatial contributions in neural responses, enabling detailed analysis of spatial signals in sensory cortices.
Findings
Successfully isolated spatial components in V1 neurons
Revealed heterogeneous, multi-peaked spatial profiles
Demonstrated high specificity and effectiveness of the method
Abstract
Neurons in cortical areas often integrate signals from different origins. In the primary visual cortex (V1), neural responses are modulated by non-visual context such as the animal's position. However, the spatial profile of these position signals across the environment remains unknown. Here, we propose a new framework to disentangle visual and spatial contributions in virtual reality. This method relies on two principles: 1) a virtual corridor design that decorrelates vision and space through targeted cue repetitions and manipulations and 2) a Generalized Linear Model (GLM) that explicitly estimates visual contributions in retinotopic rather than environmental coordinates. In simulations, we demonstrate that this framework is highly specific (recovering spatial modulation only when present) and effectively captures the profile and weight of spatial gain fields across the environment.…
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Taxonomy
TopicsNeural dynamics and brain function · Visual perception and processing mechanisms · Memory and Neural Mechanisms
