Identification of control targets in Boolean molecular network models via computational algebra
David Murrugarra, Alan Veliz-Cuba, Boris Aguilar, Reinhard, Laubenbacher

TL;DR
This paper introduces an algebraic method to identify control targets in Boolean molecular networks, aiding in designing interventions for cellular processes by solving polynomial equations.
Contribution
It presents a novel algebraic approach to determine intervention targets in Boolean network models, enabling systematic identification of control strategies.
Findings
Validated method on p53-mdm2 network
Successfully identified control targets in leukemia signaling
Demonstrated effectiveness of algebraic techniques in biological control
Abstract
Motivation: Many problems in biomedicine and other areas of the life sciences can be characterized as control problems, with the goal of finding strategies to change a disease or otherwise undesirable state of a biological system into another, more desirable, state through an intervention, such as a drug or other therapeutic treatment. The identification of such strategies is typically based on a mathematical model of the process to be altered through targeted control inputs. This paper focuses on processes at the molecular level that determine the state of an individual cell, involving signaling or gene regulation. The mathematical model type considered is that of Boolean networks. The potential control targets can be represented by a set of nodes and edges that can be manipulated to produce a desired effect on the system. Experimentally, node manipulation requires technology to…
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