Prediction error drives associative learning and conditioned behavior in a spiking model of Drosophila larva

iScience. 2023 Dec 26;27(1):108640. doi: 10.1016/j.isci.2023.108640. eCollection 2024 Jan 19.

Abstract

Predicting reinforcement from sensory cues is beneficial for goal-directed behavior. In insect brains, underlying associations between cues and reinforcement, encoded by dopaminergic neurons, are formed in the mushroom body. We propose a spiking model of the Drosophila larva mushroom body. It includes a feedback motif conveying learned reinforcement expectation to dopaminergic neurons, which can compute prediction error as the difference between expected and present reinforcement. We demonstrate that this can serve as a driving force in learning. When combined with synaptic homeostasis, our model accounts for theoretically derived features of acquisition and loss of associations that depend on the intensity of the reinforcement and its temporal proximity to the cue. From modeling olfactory learning over the time course of behavioral experiments and simulating the locomotion of individual larvae toward or away from odor sources in a virtual environment, we conclude that learning driven by prediction errors can explain larval behavior.

Keywords: Bioinformatics; Biological sciences; Natural sciences; Neuroscience; Techniques in neuroscience.