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Statistical Control of Structural Networks with Limited Interventions to Minimize Cellular Phenotypic Diversity Represented by Point Attractors

Overview
Journal Sci Rep
Specialty Science
Date 2023 Apr 18
PMID 37072458
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Abstract

The underlying genetic networks of cells give rise to diverse behaviors known as phenotypes. Control of this cellular phenotypic diversity (CPD) may reveal key targets that govern differentiation during development or drug resistance in cancer. This work establishes an approach to control CPD that encompasses practical constraints, including model limitations, the number of simultaneous control targets, which targets are viable for control, and the granularity of control. Cellular networks are often limited to the structure of interactions, due to the practical difficulty of modeling interaction dynamics. However, these dynamics are essential to CPD. In response, our statistical control approach infers the CPD directly from the structure of a network, by considering an ensemble average function over all possible Boolean dynamics for each node in the network. These ensemble average functions are combined with an acyclic form of the network to infer the number of point attractors. Our approach is applied to several known biological models and shown to outperform existing approaches. Statistical control of CPD offers a new avenue to contend with systemic processes such as differentiation and cancer, despite practical limitations in the field.

References
1.
Steinway S, G T Zanudo J, Ding W, Rountree C, Feith D, Loughran Jr T . Network modeling of TGFβ signaling in hepatocellular carcinoma epithelial-to-mesenchymal transition reveals joint sonic hedgehog and Wnt pathway activation. Cancer Res. 2014; 74(21):5963-77. PMC: 4851164. DOI: 10.1158/0008-5472.CAN-14-0225. View

2.
Liu Y, Slotine J, Barabasi A . Controllability of complex networks. Nature. 2011; 473(7346):167-73. DOI: 10.1038/nature10011. View

3.
Dahlhaus M, Burkovski A, Hertwig F, Mussel C, Volland R, Fischer M . Boolean modeling identifies Greatwall/MASTL as an important regulator in the AURKA network of neuroblastoma. Cancer Lett. 2015; 371(1):79-89. DOI: 10.1016/j.canlet.2015.11.025. View

4.
G T Zanudo J, Albert R . An effective network reduction approach to find the dynamical repertoire of discrete dynamic networks. Chaos. 2013; 23(2):025111. DOI: 10.1063/1.4809777. View

5.
Helikar T, Kowal B, McClenathan S, Bruckner M, Rowley T, Madrahimov A . The Cell Collective: toward an open and collaborative approach to systems biology. BMC Syst Biol. 2012; 6:96. PMC: 3443426. DOI: 10.1186/1752-0509-6-96. View