Litcius/Paper detail

Learning prediction error neurons in a canonical interneuron circuit

Loreen Hertäg, Henning Sprekeler

2020eLife84 citationsDOIOpen Access PDF

Abstract

Sensory systems constantly compare external sensory information with internally generated predictions. While neural hallmarks of prediction errors have been found throughout the brain, the circuit-level mechanisms that underlie their computation are still largely unknown. Here, we show that a well-orchestrated interplay of three interneuron types shapes the development and refinement of negative prediction-error neurons in a computational model of mouse primary visual cortex. By balancing excitation and inhibition in multiple pathways, experience-dependent inhibitory plasticity can generate different variants of prediction-error circuits, which can be distinguished by simulated optogenetic experiments. The experience-dependence of the model circuit is consistent with that of negative prediction-error circuits in layer 2/3 of mouse primary visual cortex. Our model makes a range of testable predictions that may shed light on the circuitry underlying the neural computation of prediction errors.

Topics & Concepts

OptogeneticsInterneuronVisual cortexSensory systemNeuroscienceComputer scienceBiological neural networkModels of neural computationComputational modelArtificial intelligenceArtificial neural networkInhibitory postsynaptic potentialBiologyNeural dynamics and brain functionNeuroscience and Neuropharmacology ResearchPhotoreceptor and optogenetics research
Learning prediction error neurons in a canonical interneuron circuit | Litcius