4.7 Article

Computational principles of synaptic memory consolidation

Journal

NATURE NEUROSCIENCE
Volume 19, Issue 12, Pages 1697-1706

Publisher

NATURE PUBLISHING GROUP
DOI: 10.1038/nn.4401

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Funding

  1. Gatsby Charitable Foundation
  2. Simons Foundation
  3. Swartz Foundation
  4. Kavli Foundation
  5. Grossman Foundation
  6. RISE, the Research Initiatives for Science and Engineering

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Memories are stored and retained through complex, coupled processes operating on multiple timescales. To understand the computational principles behind these intricate networks of interactions, we construct a broad class of synaptic models that efficiently harness biological complexity to preserve numerous memories by protecting them against the adverse effects of overwriting. The memory capacity scales almost linearly with the number of synapses, which is a substantial improvement over the square root scaling of previous models. This was achieved by combining multiple dynamical processes that initially store memories in fast variables and then progressively transfer them to slower variables. Notably, the interactions between fast and slow variables are bidirectional. The proposed models are robust to parameter perturbations and can explain several properties of biological memory, including delayed expression of synaptic modifications, metaplasticity, and spacing effects.

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