Synthetic biology routes to bio-artificial intelligence
Author(s) -
Darren Nesbeth,
Alexey Zaikin,
Yasushi Saka,
M. Carmen Romano,
Claudiu V. Giuraniuc,
Oleg Kanakov,
T. V. Laptyeva
Publication year - 2016
Publication title -
essays in biochemistry
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 3.351
H-Index - 66
eISSN - 1744-1358
pISSN - 0071-1365
DOI - 10.1042/ebc20160014
Subject(s) - artificial intelligence , synthetic biology , computer science , perceptron , machine learning , field (mathematics) , population , associative learning , artificial neural network , biology , computational biology , mathematics , neuroscience , pure mathematics , demography , sociology
The design of synthetic gene networks (SGNs) has advanced to the extent that novel genetic circuits are now being tested for their ability to recapitulate archetypal learning behaviours first defined in the fields of machine and animal learning. Here, we discuss the biological implementation of a perceptron algorithm for linear classification of input data. An expansion of this biological design that encompasses cellular 'teachers' and 'students' is also examined. We also discuss implementation of Pavlovian associative learning using SGNs and present an example of such a scheme and in silico simulation of its performance. In addition to designed SGNs, we also consider the option to establish conditions in which a population of SGNs can evolve diversity in order to better contend with complex input data. Finally, we compare recent ethical concerns in the field of artificial intelligence (AI) and the future challenges raised by bio-artificial intelligence (BI).
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