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Predicting genetic interactions from Boolean models of biological networks

Laurence Calzone, Emmanuel Barillot, Andrei Zinovyev
doi: https://doi.org/10.1101/018507
Laurence Calzone
aInstitut Curie, 26 rue d’Ulm, Paris, France
bINSERM U900. Paris, France
cMines ParisTech, Fontainbleau, France
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Emmanuel Barillot
aInstitut Curie, 26 rue d’Ulm, Paris, France
bINSERM U900. Paris, France
cMines ParisTech, Fontainbleau, France
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Andrei Zinovyev
aInstitut Curie, 26 rue d’Ulm, Paris, France
bINSERM U900. Paris, France
cMines ParisTech, Fontainbleau, France
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Abstract

Genetic interaction can be defined as a deviation of the phenotypic quantitative effect of a double gene mutation from the effect predicted from single mutations using a simple (e.g., multiplicative or linear additive) statistical model. Experimentally characterized genetic interaction networks in model organisms provide important insights into relationships between different biological functions. We describe a computational methodology allowing to systematically and quantitatively characterize a Boolean mathematical model of a biological network in terms of genetic interactions between all loss of function and gain of function mutations with respect to all model phenotypes or outputs. We use the probabilistic framework defined in MaBoSS software, based on continuous time Markov chains and stochastic simulations. In addition, we suggest several computational tools for studying the distribution of double mutants in the space of model phenotype probabilities. We demonstrate this methodology on three published models for each of which we derive the genetic interaction networks and analyze their properties. We classify the obtained interactions according to their class of epistasis, dependence on the chosen initial conditions and phenotype. The use of this methodology for validating mathematical models from experimental data and designing new experiments is discussed.†

Footnotes

  • † Electronic Supplementary Information (ESI) available: http://maboss.curie.fr/gins. See DOI: 10.1039/b000000x/

  • ↵d E-mail: Laurence.Calzone{at}curie.fr

  • ↵e E-mail: Emmanuel.Barillot{at}curie.fr

  • ↵f E-mail: Andrei.Zinovyev{at}curie.fr

Copyright 
The copyright holder for this preprint is the author/funder, who has granted bioRxiv a license to display the preprint in perpetuity. It is made available under a CC-BY-NC-ND 4.0 International license.
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Posted April 24, 2015.
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Predicting genetic interactions from Boolean models of biological networks
Laurence Calzone, Emmanuel Barillot, Andrei Zinovyev
bioRxiv 018507; doi: https://doi.org/10.1101/018507
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Predicting genetic interactions from Boolean models of biological networks
Laurence Calzone, Emmanuel Barillot, Andrei Zinovyev
bioRxiv 018507; doi: https://doi.org/10.1101/018507

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