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Atlas of Computational Cell Reprogramming

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L3 · Explicit model-based inverse intervention P

DCGS

An S, Jang SY, Park SM, Lee CK, Kim HM, Cho KH

2023 · Bioinformatics (Oxford, England)

MOTIVATION: Cellular behavior is determined by complex non-linear interactions between numerous intracellular molecules that are often represented by Boolean network models.

Abstract

From the original paper, Bioinformatics (Oxford, England) · PubMed

MOTIVATION: Cellular behavior is determined by complex non-linear interactions between numerous intracellular molecules that are often represented by Boolean network models. To achieve a desired cellular behavior with minimal intervention, we need to identify optimal control targets that can drive heterogeneous cellular states to the desired phenotypic cellular state with minimal node intervention. Previous attempts to realize such global stabilization were based solely on either network structure information or simple linear dynamics. Other attempts based on non-linear dynamics are not scalable. RESULTS: Here, we investigate the underlying relationship between structurally identified control targets and optimal global stabilizing control targets based on non-linear dynamics. We discovered that optimal global stabilizing control targets can be identified by analyzing the dynamics between structurally identified control targets. Utilizing these findings, we developed a scalable global stabilizing control framework using both structural and dynamic information. Our framework narrows down the search space based on strongly connected components and feedback vertex sets then identifies global stabilizing control targets based on the canalization of Boolean network dynamics. We find that the proposed global stabilizing control is superior with respect to the number of control target nodes, scalability, and computational complexity. AVAILABILITY AND IMPLEMENTATION: We provide a GitHub repository that contains the DCGS framework written in Python as well as biological random Boolean network datasets (https://github.com/sugyun/DCGS). SUPPLEMENTARY INFORMATION: Supplementary data are available at Bioinformatics online.

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 DCGS 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
4 of 4
FAIR4RS
1 of 5

Last audited 2026-05-24

Citation

An S et al. (2023). Global stabilizing control of large-scale biomolecular regulatory networks., Bioinformatics (Oxford, England).

DOI: 10.1093/bioinformatics/btad045

PMID: 36688702

BibTeX
@article{dcgs2023,
  title  = {Global stabilizing control of large-scale biomolecular regulatory networks.},
  author = {An S et al.},
  year   = {2023},
  journal = {Bioinformatics (Oxford, England)},
  pmid = {36688702},
  doi  = {10.1093/bioinformatics/btad045}
}