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Atlas of Computational Cell Reprogramming

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L3 · Explicit model-based inverse intervention P

Murrugarra et al.

Murrugarra D, Veliz-Cuba A, Aguilar B, Laubenbacher R

2016 · BMC systems biology

BACKGROUND: 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…

Abstract

From the original paper, BMC systems biology · PubMed

BACKGROUND: 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. RESULTS: This paper presents a method for the identification of potential intervention targets in Boolean molecular network models using algebraic techniques. The approach exploits an algebraic representation of Boolean networks to encode the control candidates in the network wiring diagram as the solutions of a system of polynomials equations, and then uses computational algebra techniques to find such controllers. The control methods in this paper are validated through the identification of combinatorial interventions in the signaling pathways of previously reported control targets in two well studied systems, a p53-mdm2 network and a blood T cell lymphocyte granular leukemia survival signaling network. Supplementary data is available online and our code in Macaulay2 and Matlab are available via http://www.ms.uky.edu/~dmu228/ControlAlg . CONCLUSIONS: This paper presents a novel method for the identification of intervention targets in Boolean network models. The results in this paper show that the proposed methods are useful and efficient for moderately large networks.

Summary

Editorial summary pending review by the maintainer. The paper's own abstract appears above; the Atlas summary in the maintainer's voice will explain how Murrugarra et al. relates to the cross-modality inverse-design framework of the review.

Why this level

Level 3 because candidate interventions enter an explicit forward operator FθuF_{\theta_u} and the predicted post-intervention outcome is what scores each candidate. Representation family is executable intervention model. Cited in §3.4 of the review. Editorial rationale pending review by the maintainer.

Classification

Level
L3
Representation
Executable intervention model
Modalities
P
Intervention
Transcription factors
Framework
Boolean network

Software

Reproducibility
2 of 4
FAIR4RS
0 of 5

Last audited 2026-05-24

Citation

Murrugarra D et al. (2016). Identification of control targets in Boolean molecular network models via computational algebra., BMC systems biology.

DOI: 10.1186/s12918-016-0332-x

PMID: 27662842

BibTeX
@article{murrugarra2016,
  title  = {Identification of control targets in Boolean molecular network models via computational algebra.},
  author = {Murrugarra D et al.},
  year   = {2016},
  journal = {BMC systems biology},
  pmid = {27662842},
  doi  = {10.1186/s12918-016-0332-x}
}