Optimal solid state neurons.

Optimal solid state neurons.

Abu-Hassan, Kamal;Taylor, Joseph D;Morris, Paul G;Donati, Elisa;Bortolotto, Zuner A;Indiveri, Giacomo;Paton, Julian F R;Nogaret, Alain;
Nature communications 2019 Vol. 10 pp. 5309
235
abuhassan2019optimalnature

Abstract

Bioelectronic medicine is driving the need for neuromorphic microcircuits that integrate raw nervous stimuli and respond identically to biological neurons. However, designing such circuits remains a challenge. Here we estimate the parameters of highly nonlinear conductance models and derive the ab initio equations of intracellular currents and membrane voltages embodied in analog solid-state electronics. By configuring individual ion channels of solid-state neurons with parameters estimated from large-scale assimilation of electrophysiological recordings, we successfully transfer the complete dynamics of hippocampal and respiratory neurons in silico. The solid-state neurons are found to respond nearly identically to biological neurons under stimulation by a wide range of current injection protocols. The optimization of nonlinear models demonstrates a powerful method for programming analog electronic circuits. This approach offers a route for repairing diseased biocircuits and emulating their function with biomedical implants that can adapt to biofeedback.

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69684
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