Code accompanying "Evolving spiking neuron cellular automata and networks to emulate in vitro neuronal activity," accepted to IEEE SSCI ICES 2021

Overview

Evolving-spiking-neuron-cellular-automata-and-networks-to-emulate-in-vitro-neuronal-activity

Code accompanying "Evolving spiking neuron cellular automata and networks to emulate in vitro neuronal activity" [1], accepted to the International Conference on Evolvable Systems (IEEE SSCI 2021).

ICES page: https://attend.ieee.org/ssci-2021/international-conference-on-evolvable-systems-ices/

STRUCTURE:
There are two folders in the main directory.

Resources contains the neural data used in this study as .txt files. The data were collected by Wagenaar et al. [2], and the full open dataset can be found here: http://neurodatasharing.bme.gatech.edu/development-data/html/index.html

Each file contains the time (column 1) and recording channel (column 2) of each spike detected in the data.

The project code is found in the src-folder. The code to run the models and evolutionary algorithm is found here. Additionally there is a separate folder for plotting results.

RUNNING SINGLE MODEL:
A single model with desired parameters can be run with the Model.py file. Parameters are set at the top of this file.

RUNNING EVOLUTIONARY ALGORITHM:
To run the evolutionary algorithm, the Main.py file is run and parameters are set in the default_parameters dict.

RUNNING SAVED MODEL:
To run a saved model, the RunSavedModel.py files is run from terminal with the first argument being the GraphML file and the second argument being simulation duration in seconds.

RUNNING BATCH FILES:
Multiple simulations can be run by passing batch files as arguments when running Main.py. Batch files must be .csv files. An example can be seen in batch_example.csv. Each row is a separate run.

EXTERNAL LIBRARIES:

  • Pandas
  • Numpy
  • NetworkX
  • Scipy
  • Matplotlib
  • Pylab
  • Seaborn
  • Pandas

[1] J Jensen Farner, H Weydahl, CR Jahren, O Huse Ramstad, S Nichele, and K Heiney. "Evolving spiking neuron cellular automata and networks to emulate in vitro neuronal activity," International Conference on Evolvable Systems (IEEE Symposium Series on Computational Intelligence 2021), 2021.

[2] DA Wagenaar, J Pine, and SM Potter, "An extremely rich repertoire of bursting patterns during the development of cortical cultures," BMC Neuroscience, 7(1):11, 2006.

Owner
SOCRATES: Self-Organizing Computational substRATES
SOCRATES is a long-term time horizon project seeking radical breakthroughs toward efficient and powerful data analysis available everywhere.
SOCRATES: Self-Organizing Computational substRATES
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