Homeostasis in Input-Output Networks: Structure, Classification and Applications
Fernando Antoneli, Martin Golubitsky, Jiaxin Jin, Ian Stewart

TL;DR
This paper reviews the mathematical framework of infinitesimal homeostasis in input-output networks, using singularity theory and graph theory to classify mechanisms and apply them to various biological systems.
Contribution
It introduces a systematic classification of homeostasis types in input-output networks based on network topology and develops new concepts like homeostasis subnetworks and patterns.
Findings
Classification of homeostasis mechanisms using network topology
Introduction of homeostasis subnetworks and mode interactions
Application to biological systems like gene regulatory networks
Abstract
Homeostasis is concerned with regulatory mechanisms, present in biological systems, where some specific variable is kept close to a set value as some external disturbance affects the system. Mathematically, the notion of homeostasis can be formalized in terms of an input-output function that maps the parameter representing the external disturbance to the output variable that must be kept within a fairly narrow range. This observation inspired the introduction of the notion of infinitesimal homeostasis, namely, the derivative of the input-output function is zero at an isolated point. This point of view allows for the application of methods from singularity theory to characterize infinitesimal homeostasis points (i.e. critical points of the input-output function). In this paper we review the infinitesimal approach to the study of homeostasis in input-output networks. An input-output…
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Taxonomy
TopicsGene Regulatory Network Analysis
MethodsSparse Evolutionary Training
