Investigation of the input-output relationship of engineered neural networks using high-density microelectrode arrays

Biosens Bioelectron. 2023 Nov 1:239:115591. doi: 10.1016/j.bios.2023.115591. Epub 2023 Aug 18.

Abstract

Bottom-up neuroscience utilizes small, engineered biological neural networks to study neuronal activity in systems of reduced complexity. We present a platform that establishes up to six independent networks formed by primary rat neurons on planar complementary metal-oxide-semiconductor (CMOS) microelectrode arrays (MEAs). We introduce an approach that allows repetitive stimulation and recording of network activity at any of the over 700 electrodes underlying a network. We demonstrate that the continuous application of a repetitive super-threshold stimulus yields a reproducible network answer within a 15 ms post-stimulus window. This response can be tracked with high spatiotemporal resolution across the whole extent of the network. Moreover, we show that the location of the stimulation plays a significant role in the networks' early response to the stimulus. By applying a stimulation pattern to all network-underlying electrodes in sequence, the sensitivity of the whole network to the stimulus can be visualized. We demonstrate that microchannels reduce the voltage stimulation threshold and induce the strongest network response. By varying the stimulation amplitude and frequency we reveal discrete network transition points. Finally, we introduce vector fields to follow stimulation-induced spike propagation pathways within the network. Overall we show that our defined neural networks on CMOS MEAs enable us to elicit highly reproducible activity patterns that can be precisely modulated by stimulation amplitude, stimulation frequency and the site of stimulation.

Keywords: Activity modulation; Bottom-up neuroscience; Controlled neural networks; Electrical stimulation; Microphysiological systems; PDMS microstructures.

MeSH terms

  • Animals
  • Biosensing Techniques*
  • Microelectrodes
  • Neural Networks, Computer
  • Neurons
  • Oxides
  • Rats

Substances

  • Oxides