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Open AccessJournal ArticleDOI

Probabilistic Boolean networks: a rule-based uncertainty model for gene regulatory networks

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TLDR
Probabilistic Boolean Networks (PBN) are introduced that share the appealing rule-based properties of Boolean networks, but are robust in the face of uncertainty.
Abstract
Motivation: Our goal is to construct a model for genetic regulatory networks such that the model class: (i) incorporates rule-based dependencies between genes; (ii) allows the systematic study of global network dynamics; (iii) is able to cope with uncertainty, both in the data and the model selection; and (iv) permits the quantification of the relative influence and sensitivity of genes in their interactions with other genes. Results: We introduce Probabilistic Boolean Networks (PBN) that share the appealing rule-based properties of Boolean networks, but are robust in the face of uncertainty. We show how the dynamics of these networks can be studied in the probabilistic context of Markov chains, with standard Boolean networks being special cases. Then, we discuss the relationship between PBNs and Bayesian networks—a family of graphical models that explicitly represent probabilistic relationships between variables. We show how probabilistic dependencies between a gene and its parent genes, constituting the basic building blocks of Bayesian networks, can be obtained from PBNs. Finally, we present methods for quantifying the influence of genes on other genes, within the context of PBNs. Examples illustrating the above concepts are presented throughout the paper.

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Citations
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Book ChapterDOI

AGN Simulation and Validation Model

TL;DR: This work presents an approach to validate algorithms for the identification of gene networks from temporal data, considering three main aspects: AGN model generation and simulation; gene network identification; and validation of identified network.
Journal ArticleDOI

Dynamical regimes in non-ergodic random Boolean networks

TL;DR: In this article, a more detailed study based on the properties of system's attractors is presented, which makes it possible to predict with higher precision important properties, such as system's response to gene knock-out.
Journal ArticleDOI

Untangling statistical and biological models to understand network inference: the need for a genomics network ontology

TL;DR: The results indicate the imperative need for a genomic network ontology in order to avoid increasing confusion about the biological interpretation of inferred networks, which can be even enhanced by approaches that integrate multiple data sets, respectively, data types.
Journal ArticleDOI

A Novel Data-Driven Boolean Model for Genetic Regulatory Networks.

TL;DR: The novel Boolean model and related Fundamental Boolean Networks (FBNs) could show significant trajectories in genes to reveal how genes regulated each other over a given period and could facilitate further research on drug interventions to detect the side effects of a newly-proposed drug.
References
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Book

The Origins of Order: Self-Organization and Selection in Evolution

TL;DR: The structure of rugged fitness landscapes and the structure of adaptive landscapes underlying protein evolution, and the architecture of genetic regulatory circuits and its evolution.
Journal ArticleDOI

Metabolic stability and epigenesis in randomly constructed genetic nets

TL;DR: The hypothesis that contemporary organisms are also randomly constructed molecular automata is examined by modeling the gene as a binary (on-off) device and studying the behavior of large, randomly constructed nets of these binary “genes”.
Journal ArticleDOI

Using Bayesian networks to analyze expression data

TL;DR: A new framework for discovering interactions between genes based on multiple expression measurements is proposed and a method for recovering gene interactions from microarray data is described using tools for learning Bayesian networks.
Book

An introduction to Bayesian networks

TL;DR: The principal ideas of probabilistic reasoning - known as Bayesian networks - are outlined and their practical implications illustrated and are intended for MSc students in knowledge-based systems, artificial intelligence and statistics, and for professionals in decision support systems applications and research.
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