A stochastic model of hippocampal synaptic plasticity with geometrical readout of enzyme dynamics

Elife. 2023 Aug 17:12:e80152. doi: 10.7554/eLife.80152.

Abstract

Discovering the rules of synaptic plasticity is an important step for understanding brain learning. Existing plasticity models are either (1) top-down and interpretable, but not flexible enough to account for experimental data, or (2) bottom-up and biologically realistic, but too intricate to interpret and hard to fit to data. To avoid the shortcomings of these approaches, we present a new plasticity rule based on a geometrical readout mechanism that flexibly maps synaptic enzyme dynamics to predict plasticity outcomes. We apply this readout to a multi-timescale model of hippocampal synaptic plasticity induction that includes electrical dynamics, calcium, CaMKII and calcineurin, and accurate representation of intrinsic noise sources. Using a single set of model parameters, we demonstrate the robustness of this plasticity rule by reproducing nine published ex vivo experiments covering various spike-timing and frequency-dependent plasticity induction protocols, animal ages, and experimental conditions. Our model also predicts that in vivo-like spike timing irregularity strongly shapes plasticity outcome. This geometrical readout modelling approach can be readily applied to other excitatory or inhibitory synapses to discover their synaptic plasticity rules.

Keywords: computational biology; computational neurosciences; hippocampus; neuroscience; synaptic plasticity; systems biology.

Publication types

  • Research Support, Non-U.S. Gov't

MeSH terms

  • Animals
  • Brain*
  • Calcineurin*
  • Calcium, Dietary
  • Hippocampus
  • Neuronal Plasticity

Substances

  • Calcineurin
  • Calcium, Dietary