Distributed context-dependent choice information in mouse posterior cortex

JG Orlandi, M Abdolrahmani, R Aoki… - Nature …, 2023 - nature.com
Nature communications, 2023nature.com
Choice information appears in multi-area brain networks mixed with sensory, motor, and
cognitive variables. In the posterior cortex—traditionally implicated in decision computations—
the presence, strength, and area specificity of choice signals are highly variable, limiting a
cohesive understanding of their computational significance. Examining the mesoscale
activity in the mouse posterior cortex during a visual task, we found that choice signals
defined a decision variable in a low-dimensional embedding space with a prominent …
Abstract
Choice information appears in multi-area brain networks mixed with sensory, motor, and cognitive variables. In the posterior cortex—traditionally implicated in decision computations—the presence, strength, and area specificity of choice signals are highly variable, limiting a cohesive understanding of their computational significance. Examining the mesoscale activity in the mouse posterior cortex during a visual task, we found that choice signals defined a decision variable in a low-dimensional embedding space with a prominent contribution along the ventral visual stream. Their subspace was near-orthogonal to concurrently represented sensory and motor-related activations, with modulations by task difficulty and by the animals’ attention state. A recurrent neural network trained with animals’ choices revealed an equivalent decision variable whose context-dependent dynamics agreed with that of the neural data. Our results demonstrated an independent, multi-area decision variable in the posterior cortex, controlled by task features and cognitive demands, possibly linked to contextual inference computations in dynamic animal–environment interactions.
nature.com
以上显示的是最相近的搜索结果。 查看全部搜索结果