Publication | Closed Access
Supervised Learning in Adaptive DNA Strand Displacement Networks
86
Citations
38
References
2016
Year
Dna CircuitEngineeringMachine LearningMolecular BiologySynthetic CircuitBiological ComputingGene RecognitionMolecular ComputingBiological NetworkDna ComputingBiophysicsEngineered Biochemical CircuitsMedicineKnowledge DiscoveryDna ReplicationAdaptive Molecular CircuitsBioinformaticsBioelectronicsComputational BiologySynthetic BiologySystems BiologyBiological Computation
The development of engineered biochemical circuits that exhibit adaptive behavior is a key goal of synthetic biology and molecular computing. Such circuits could be used for long-term monitoring and control of biochemical systems, for instance, to prevent disease or to enable the development of artificial life. In this article, we present a framework for developing adaptive molecular circuits using buffered DNA strand displacement networks, which extend existing DNA strand displacement circuit architectures to enable straightforward storage and modification of behavioral parameters. As a proof of concept, we use this framework to design and simulate a DNA circuit for supervised learning of a class of linear functions by stochastic gradient descent. This work highlights the potential of buffered DNA strand displacement as a powerful circuit architecture for implementing adaptive molecular systems.
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