Automatized offline and online exploration to achieve a target dynamics in biohybrid neural circuits built with living and model neurons

Neural Netw. 2023 Jul:164:464-475. doi: 10.1016/j.neunet.2023.04.034. Epub 2023 Apr 26.

Abstract

Biohybrid circuits of interacting living and model neurons are an advantageous means to study neural dynamics and to assess the role of specific neuron and network properties in the nervous system. Hybrid networks are also a necessary step to build effective artificial intelligence and brain hybridization. In this work, we deal with the automatized online and offline adaptation, exploration and parameter mapping to achieve a target dynamics in hybrid circuits and, in particular, those that yield dynamical invariants between living and model neurons. We address dynamical invariants that form robust cycle-by-cycle relationships between the intervals that build neural sequences from such interaction. Our methodology first attains automated adaptation of model neurons to work in the same amplitude regime and time scale of living neurons. Then, we address the automatized exploration and mapping of the synapse parameter space that lead to a specific dynamical invariant target. Our approach uses multiple configurations and parallel computing from electrophysiological recordings of living neurons to build full mappings, and genetic algorithms to achieve an instance of the target dynamics for the hybrid circuit in a short time. We illustrate and validate such strategy in the context of the study of functional sequences in neural rhythms, which can be easily generalized for any variety of hybrid circuit configuration. This approach facilitates both the building of hybrid circuits and the accomplishment of their scientific goal.

Keywords: Automatic parameterization; Biohybrid coupling; Hybrid neural dynamics; Interacting living and model neurons; Neural sequences; Neurotechnology.

MeSH terms

  • Artificial Intelligence*
  • Brain / physiology
  • Models, Neurological
  • Neurons* / physiology
  • Synapses / physiology