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Scaling up molecular pattern recognition with DNA-based winner-take-all neural networks

Authors :
Cherry, Kevin M.
Qian, Lulu
Source :
Nature. July, 2018, Vol. 559 Issue 7714, p370, 7 p.
Publication Year :
2018

Abstract

From bacteria following simple chemical gradients.sup.1 to the brain distinguishing complex odour information.sup.2, the ability to recognize molecular patterns is essential for biological organisms. This type of information-processing function has been implemented using DNA-based neural networks.sup.3, but has been limited to the recognition of a set of no more than four patterns, each composed of four distinct DNA molecules. Winner-take-all computation.sup.4 has been suggested.sup.5,6 as a potential strategy for enhancing the capability of DNA-based neural networks. Compared to the linear-threshold circuits.sup.7 and Hopfield networks.sup.8 used previously.sup.3, winner-take-all circuits are computationally more powerful.sup.4, allow simpler molecular implementation and are not constrained by the number of patterns and their complexity, so both a large number of simple patterns and a small number of complex patterns can be recognized. Here we report a systematic implementation of winner-take-all neural networks based on DNA-strand-displacement.sup.9,10 reactions. We use a previously developed seesaw DNA gate motif.sup.3,11,12, extended to include a simple and robust component that facilitates the cooperative hybridization.sup.13 that is involved in the process of selecting a 'winner'. We show that with this extended seesaw motif DNA-based neural networks can classify patterns into up to nine categories. Each of these patterns consists of 20 distinct DNA molecules chosen from the set of 100 that represents the 100 bits in 10 × 10 patterns, with the 20 DNA molecules selected tracing one of the handwritten digits '1' to '9'. The network successfully classified test patterns with up to 30 of the 100 bits flipped relative to the digit patterns 'remembered' during training, suggesting that molecular circuits can robustly accomplish the sophisticated task of classifying highly complex and noisy information on the basis of similarity to a memory.DNA-strand-displacement reactions are used to implement a neural network that can distinguish complex and noisy molecular patterns from a set of nine possibilities--an improvement on previous demonstrations that distinguished only four simple patterns.<br />Author(s): Kevin M. Cherry [sup.1] , Lulu Qian [sup.1] [sup.2] Author Affiliations:(1) Bioengineering, California Institute of Technology, Pasadena, USA(2) Computer Science, California Institute of Technology, Pasadena, USAMain Winner-take-all computation[sup.4] is [...]

Details

Language :
English
ISSN :
00280836
Volume :
559
Issue :
7714
Database :
Gale General OneFile
Journal :
Nature
Publication Type :
Academic Journal
Accession number :
edsgcl.572710414
Full Text :
https://doi.org/10.1038/s41586-018-0289-6