Item

Minimal model of regeneration

Grasso, Caitlin S
Citations
Altmetric:
License
License
DOI
Abstract
This research aims to develop a minimal computational model of simulated organisms in a cellular automaton that are capable of growth and regeneration to a specified target shape. The set of local rules that update the state of the organism at each time step are executed by each cell individually in the organism and are embodied as a simple feed forward neural network. The inputs to the network include signaling information and presence or absence of neighboring cells. Most computational models which aim to reproduce biological phenomena are complex and/or require a lot of computational effort. This minimal model can be used as a platform to reverse-engineer regenerative processes by gradually incorporating biological insights into the model in hopes of determining some of the necessary elements which lead to regeneration.
Description
1:00pm-3:00pm
Graduate
Date
2020-01-01
Journal Title
Journal ISSN
Volume Title
Publisher
Research Projects
Organizational Units
Journal Issue
Citation
DOI
Embedded videos