TL;DR
This paper demonstrates how engineered astrocyte cells can be used to create logic gates using calcium signaling, optimized through reinforcement learning, paving the way for neural-molecular computing chips.
Contribution
It introduces a novel method of engineering astrocytes for logic gates and a reinforcement learning platform to optimize their parameters for accurate computation.
Findings
Achieved up to 90% accuracy in logic gate operations
Validated the approach with a calcium signaling-based simulator
Optimized parameters for reliable neural-molecular computing
Abstract
This paper proposes the use of Eukaryotic cells, namely astrocytes, to develop logic gates. The logic gates are achieved by manipulating the threshold of Ca ion flows between the cells, based on the input signals. Through wet-lab experiments that engineer the astrocytes cells with pcDNA3.1-hGPR17 genes, we show that both AND and OR gates can be implemented by controlling Ca signals that flow through the population. A reinforced learning platform is also presented in the paper to optimize two main parameters, which are the Ca activation threshold and time slot of input signals into the gate. This design platform caters for any size and connectivity of the cell population, by taking into consideration the delay and noise produced from the signalling between the cells, in order to fine-tune the activation threshold and input signal time slot parameters. To…
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