Abstract

The maintenance of short-term memories is critical for survival in a dynamically changing world. Previous studies suggest that this memory can be stored in the form of persistent neural activity or using a synaptic mechanism, such as with short-term plasticity. Here, we compare the predictions of these two mechanisms to neural and behavioral measurements in a visual change detection task. Mice were trained to respond to changes in a repeated sequence of natural images while neural activity was recorded using two-photon calcium imaging. We also trained two types of artificial neural networks on the same change detection task as the mice. Following fixed pre-processing using a pretrained convolutional neural network, either a recurrent neural network (RNN) or a feedforward neural network with short-term synaptic depression (STPNet) was trained to the same level of performance as the mice. While both networks are able to learn the task, the STPNet model contains units whose activity are more similar to the in vivo data and produces errors which are more similar to the mice. When images are omitted, an unexpected perturbation which was absent during training, mice often do not respond to the omission but are more likely to respond to the subsequent image. Unlike the RNN model, STPNet produces a similar pattern of behavior. These results suggest that simple neural adaptation mechanisms may serve as an important bottom-up memory signal in this task, which can be used by downstream areas in the decision-making process.

Highlights

  • Short-term memory, or the ability to temporarily store and maintain task-relevant information, is a fundamental cognitive function

  • We focus on a visual change detection task in mice which requires short-term memory

  • Learning which features need to be maintained in shortterm memory can be realized in a recurrent neural network by changing connections in the network, resulting in memory maintenance through persistent activity

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Summary

Introduction

Short-term memory, or the ability to temporarily store and maintain task-relevant information, is a fundamental cognitive function. A large body of experimental and computational work suggests that this information can be maintained in persistent neural activity arising from local recurrent connections [1] or even cortical-subcortical loops [2] (for a recent review, we refer the reader to [3]). Both sustained and sequential forms of persistent activity have been observed across tasks and brain regions [4], including the prefrontal cortex (PFC) [5,6,7]. Adaptation at the synaptic level or intrinsic firing rate adaptation [14, 15] may play an important functional role in the brain

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