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1.
Sci Rep ; 11(1): 595, 2021 01 12.
Article in English | MEDLINE | ID: mdl-33436729

ABSTRACT

This paper proposes the use of astrocytes to realize Boolean logic gates, through manipulation of the threshold of [Formula: see text] ion flows between the cells based on the input signals. Through wet-lab experiments that engineer the astrocytes cells with pcDNA3.1-hGPR17 genes as well as chemical compounds, we show that both AND and OR gates can be implemented by controlling [Formula: see text] signals that flow through the population. A reinforced learning platform is also presented in the paper to optimize the [Formula: see text] activated level and time slot of input signals [Formula: see text] 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. To validate the effectiveness of the reinforced learning platform, a [Formula: see text] signalling simulator was used to simulate the signalling between the astrocyte cells. The results from the simulation show that an optimum value for both the [Formula: see text] activated level and time slot of input signals [Formula: see text] is required to achieve up to 90% accuracy for both the AND and OR gates. Our method can be used as the basis for future Neural-Molecular Computing chips, constructed from engineered astrocyte cells, which can form the basis for a new generation of brain implants.


Subject(s)
Astrocytes/metabolism , Calcium Signaling , Calcium/metabolism , Computer Simulation , Mechanotransduction, Cellular , Receptors, G-Protein-Coupled/metabolism , Astrocytes/drug effects , Cells, Cultured , Humans , Indoles/pharmacology , Ion Channel Gating , Logic , Models, Biological , Propionates/pharmacology , Receptors, G-Protein-Coupled/agonists , Receptors, G-Protein-Coupled/genetics
2.
IEEE Trans Nanobioscience ; 13(3): 278-88, 2014 Sep.
Article in English | MEDLINE | ID: mdl-25167555

ABSTRACT

Calcium-signaling-based molecular communication has been proposed as one form of communication for short range transmission between nanomachines. This form of communication is naturally found within cellular tissues, where Ca(2+) ions propagate and diffuse between cells. However, the naturally flexible structure of cells usually leads to the cells dynamically changing shape under strain. Since the interconnected cells form the tissue, a change in shape of one cell will change the shape of the neighboring cells and the tissue as a whole. This will in turn dramatically impair the communication channel between the nanomachines. We propose a process for nanomachines utilizing Ca(2+) based molecular communication to infer and detect the state of the tissue, which we term the Molecular Nanonetwork Inference Process. The process employs a threshold based classifier that identifies its threshold boundaries based on a training process. The inference/detection mechanism allows the destination nanomachine to determine: i) the type of tissue deformation; ii) the amount of tissue deformation; iii) the amount of Ca(2+) concentration emitted from the source nanomachine; and iv) its distance from the destination nanomachines. We evaluate the use of three information metrics: mutual information, mutual information with generalized entropy and information distance. Our analysis, which is conducted on two different topologies, finds that mutual information with generalized entropy provides the most accurate inferencing/detection process, enabling the classifier to obtain 80% of accuracy on average.


Subject(s)
Calcium Signaling/physiology , Cell Physiological Phenomena/physiology , Information Theory , Models, Biological , Nanotechnology/methods , Calcium/metabolism , Computers, Molecular
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