Concealing Organic Neuromorphic Devices with Neuronal‐Inspired Supported Lipid Bilayers

Author:

Ausilio Chiara12,Lubrano Claudia34,Rana Daniela34,Matrone Giovanni Maria1,Bruno Ugo12,Santoro Francesca134ORCID

Affiliation:

1. Center for Advanced Biomaterials for HealthCare@CRIB Istituto Italiano di Tecnologia Naples 80125 Italy

2. Dipartimento di Chimica Materiali e Produzione Industriale Università di Napoli Federico II Naples 80125 Italy

3. Faculty of Electrical Engineering and Information Technology RWTH Aachen 52072 Aachen Germany

4. Institute of Biological Information Processing – Bioelectronics IBI‐3 Forschungszentrum Juelich 52428 Juelich Germany

Abstract

AbstractNeurohybrid systems have gained large attention for their potential as in vitro and in vivo platform to interrogate and modulate the activity of cells and tissue within nervous system. In this scenario organic neuromorphic devices have been engineered as bioelectronic platforms to resemble characteristic neuronal functions. However, aiming to a functional communication with neuronal cells, material synthesis, and surface engineering can yet be exploited for optimizing bio‐recognition processes at the neuromorphic‐neuronal hybrid interface. In this work, artificial neuronal‐inspired lipid bilayers have been assembled on an electrochemical neuromorphic organic device (ENODe) to resemble post‐synaptic structural and functional features of living synapses. Here, synaptic conditioning has been achieved by introducing two neurotransmitter‐mediated biochemical signals, to induce an irreversible change in the device conductance thus achieving Pavlovian associative learning. This new class of in vitro devices can be further exploited for assembling hybrid neuronal networks and potentially for in vivo integration within living neuronal tissues.

Funder

European Research Council

Publisher

Wiley

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