Dynamics of a 3 cluster cell-cycle system with positive linear feedback
Bastien Fernandez, Todd R. Young

TL;DR
This paper analyzes the dynamics of a three-cluster cell cycle model with positive linear feedback, revealing that the stable synchronized state is the most likely observed, while cyclic solutions are generally unstable or neutrally stable.
Contribution
It provides a detailed mathematical analysis of a three-cluster cell cycle model with positive feedback, identifying stability properties of cyclic and synchronized solutions.
Findings
Single cluster synchronization is asymptotically stable.
Three-cluster cyclic solutions are either unstable or neutrally stable.
Small perturbations can lead to cluster merging or loss of cyclic behavior.
Abstract
In this technical note we calculate the dynamics of a linear feedback model of progression in the cell cycle in the case that the cells are organized into k=3 clusters. We examine the dynamics in detail for a specific subset of parameters with non-empty interior. There is an interior fixed point of the Poincare' map defined by the system. This fixed point corresponds to a periodic solution with period in which the three cluster exchange positions after time . We call this solution 3=cyclic. In all the parameters studied, the fixed point is either: * isolated and locally unstable, or, * contained in a neutrally stable set of period 3 points. In the later case the edges of the neutrally stable set are unstable. This case exists if either the three clusters are isolated from each other, or, if they interact in a non-essential way. In both cases the orbits of all other…
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Taxonomy
TopicsGene Regulatory Network Analysis · Microtubule and mitosis dynamics · Nonlinear Dynamics and Pattern Formation
