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Boolean Networks as Predictive Models of Emergent Biological Behaviors

Boolean Networks as Predictive Models of Emergent Biological Behaviors

Boolean Networks as Predictive Models of Emergent Biological Behaviors

Jordan C. Rozum , Binghamton University, State University of New York
Colin Campbell , University of Mount Union
Eli Newby , Pennsylvania State University
Fatemeh Sadat Fatemi Nasrollahi , Indiana University
Réka Albert , Pennsylvania State University
March 2024
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9781009292979
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    Interacting biological systems at all organizational levels display emergent behavior. Modeling these systems is made challenging by the number and variety of biological components and interactions – from molecules in gene regulatory networks to species in ecological networks – and the often-incomplete state of system knowledge, such as the unknown values of kinetic parameters for biochemical reactions. Boolean networks have emerged as a powerful tool for modeling these systems. This Element provides a methodological overview of Boolean network models of biological systems. After a brief introduction, the authors describe the process of building, analyzing, and validating a Boolean model. They then present the use of the model to make predictions about the system's response to perturbations and about how to control its behavior. The Element emphasizes the interplay between structural and dynamical properties of Boolean networks and illustrates them in three case studies from disparate levels of biological organization.

    Product details

    March 2024
    Adobe eBook Reader
    9781009292979
    0 pages
    This ISBN is for an eBook version which is distributed on our behalf by a third party.

    Table of Contents

    • 1. Types of biological networks
    • 2. Modeling the dynamics of biological networks
    • 3. Boolean modeling of the dynamics of biological networks
    • 4. How to build and validate a boolean network model of a specific biological system
    • 5. Case study boolean systems
    • 6. How to analyze a boolean model: state transition graphs, attractors, and trap sets
    • 7. The parity-expanded network
    • 8. State-space compression and attractor identification using stable motifs
    • 9. Attractor control
    • Conclusions
    • References.
      Authors
    • Jordan C. Rozum , Binghamton University, State University of New York
    • Colin Campbell , University of Mount Union
    • Eli Newby , Pennsylvania State University
    • Fatemeh Sadat Fatemi Nasrollahi , Indiana University
    • Réka Albert , Pennsylvania State University