Optogenetics in Silicon: A Neural Processor for Predicting Optically Active Neural Networks.

Journal: IEEE transactions on biomedical circuits and systems
Published Date:

Abstract

We present a reconfigurable neural processor for real-time simulation and prediction of opto-neural behaviour. We combined a detailed Hodgkin-Huxley CA3 neuron integrated with a four-state Channelrhodopsin-2 (ChR2) model into reconfigurable silicon hardware. Our architecture consists of a Field Programmable Gated Array (FPGA) with a custom-built computing data-path, a separate data management system and a memory approach based router. Advancements over previous work include the incorporation of short and long-term calcium and light-dependent ion channels in reconfigurable hardware. Also, the developed processor is computationally efficient, requiring only 0.03 ms processing time per sub-frame for a single neuron and 9.7 ms for a fully connected network of 500 neurons with a given FPGA frequency of 56.7 MHz. It can therefore be utilized for exploration of closed loop processing and tuning of biologically realistic optogenetic circuitry.

Authors

  • Junwen Luo
  • Konstantin Nikolic
  • Benjamin D Evans
  • Na Dong
  • Xiaohan Sun
  • Peter Andras
  • Alex Yakovlev
  • Patrick Degenaar