Synthetic biological neural networks: From current implementations to future perspectives

Biosystems. 2024 Mar:237:105164. doi: 10.1016/j.biosystems.2024.105164. Epub 2024 Feb 23.

Abstract

Artificial neural networks, inspired by the biological networks of the human brain, have become game-changing computing models in modern computer science. Inspired by their wide scope of applications, synthetic biology strives to create their biological counterparts, which we denote synthetic biological neural networks (SYNBIONNs). Their use in the fields of medicine, biosensors, biotechnology, and many more shows great potential and presents exciting possibilities. So far, many different synthetic biological networks have been successfully constructed, however, SYNBIONN implementations have been sparse. The latter are mostly based on neural networks pretrained in silico and being heavily dependent on extensive human input. In this paper, we review current implementations and models of SYNBIONNs. We briefly present the biological platforms that show potential for designing and constructing perceptrons and/or multilayer SYNBIONNs. We explore their future possibilities along with the challenges that must be overcome to successfully implement a scalable in vivo biological neural network capable of online learning.

Keywords: Modelling and simulation; Molecular computing; Neural networks; Neuromorphic computing; Perceptron; Synthetic biology.

Publication types

  • Review

MeSH terms

  • Biomimetics
  • Brain*
  • Humans
  • Neural Networks, Computer*
  • Synthetic Biology