Metastable attractors explain the variable timing of stable behavioral action sequences

Neuron. 2022 Jan 5;110(1):139-153.e9. doi: 10.1016/j.neuron.2021.10.011. Epub 2021 Oct 29.

Abstract

The timing of self-initiated actions shows large variability even when they are executed in stable, well-learned sequences. Could this mix of reliability and stochasticity arise within the same neural circuit? We trained rats to perform a stereotyped sequence of self-initiated actions and recorded neural ensemble activity in secondary motor cortex (M2), which is known to reflect trial-by-trial action-timing fluctuations. Using hidden Markov models, we established a dictionary between activity patterns and actions. We then showed that metastable attractors, representing activity patterns with a reliable sequential structure and large transition timing variability, could be produced by reciprocally coupling a high-dimensional recurrent network and a low-dimensional feedforward one. Transitions between attractors relied on correlated variability in this mesoscale feedback loop, predicting a specific structure of low-dimensional correlations that were empirically verified in M2 recordings. Our results suggest a novel mesoscale network motif based on correlated variability supporting naturalistic animal behavior.

Keywords: attractor neural network; decision-making; low-dimensional correlations; motor cortex; motor generation; multi-area networks; naturalistic behavior; neural decoding; temporal variability.

Publication types

  • Research Support, N.I.H., Extramural
  • Research Support, Non-U.S. Gov't

MeSH terms

  • Animals
  • Behavior, Animal
  • Motor Cortex*
  • Rats
  • Reproducibility of Results