Bayesian Networks as Approximations of Biochemical Networks

dc.contributor.author Adrien Le Coent
dc.contributor.author Benoit Barbot
dc.contributor.author Nihal Pekergin
dc.contributor.author Cuneyt Guzelis
dc.contributor.editor M Iacono
dc.contributor.editor M Scarpa
dc.contributor.editor E Barbierato
dc.contributor.editor S Serrano
dc.contributor.editor D Cerotti
dc.contributor.editor F Longo
dc.coverage.spatial 27th International Conference on Analytical & Stochastic Modeling Techniques & Applications
dc.date.accessioned 2025-10-06T16:21:47Z
dc.date.issued 2023
dc.description.abstract Biochemical networks are usually modeled by Ordinary Differential Equations (ODEs) that describe time evolution of the concentrations of the interacting (biochemical) species for specific initial concentrations and certain values of the interaction rates. The uncertainty in the measurements of the model parameters (i.e. interaction rates) and the concentrations (i.e. state variables) is not an uncommon occurrence due to biological variability and noise. So there is a great need to predict the evolution of the species for some intervals or probability distributions instead of specific initial conditions and parameter values. To this end one can employ either phase portrait method together with bifurcation analysis as a dynamical system approach or Dynamical Bayesian Networks (DBNs) in a probabilistic domain. The first approach is restricted to the case of a few number of parameters while DBNs have recently been used for large biochemical networks. In this paper we show that time-homogeneous ODE parameters can be efficiently estimated with Bayesian Networks. The accuracy and computation time of our approach is compared to two-slice time-invariant DBNs that have already been used for this purpose. The efficiency of our approach is demonstrated on two toy examples and the EGF-NGF signaling pathway.
dc.identifier.doi 10.1007/978-3-031-43185-2_15
dc.identifier.isbn 978-3-031-43184-5, 978-3-031-43185-2
dc.identifier.issn 0302-9743
dc.identifier.uri http://dx.doi.org/10.1007/978-3-031-43185-2_15
dc.identifier.uri https://gcris.yasar.edu.tr/handle/123456789/7042
dc.language.iso English
dc.publisher SPRINGER INTERNATIONAL PUBLISHING AG
dc.relation.ispartof 27th International Conference on Analytical & Stochastic Modeling Techniques & Applications
dc.source COMPUTER PERFORMANCE ENGINEERING AND STOCHASTIC MODELLING EPEW 2023 ASMTA 2023
dc.subject Ordinary Differential Equations based models, Markov Chains, Bayesian Networks, Biochemical Networks, Time Homogeneous Systems
dc.title Bayesian Networks as Approximations of Biochemical Networks
dc.type Conference Object
dspace.entity.type Publication
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gdc.collaboration.industrial false
gdc.identifier.openalex W4387401744
gdc.index.type WoS
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gdc.oaire.influence 2.4661762E-9
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gdc.oaire.keywords Biochemical Networks
gdc.oaire.keywords Ordinary Differential Equations based models
gdc.oaire.keywords Bayesian Networks
gdc.oaire.keywords [INFO.INFO-LG] Computer Science [cs]/Machine Learning [cs.LG]
gdc.oaire.keywords [INFO.INFO-MO] Computer Science [cs]/Modeling and Simulation
gdc.oaire.keywords [INFO] Computer Science [cs]
gdc.oaire.keywords Time Homogeneous Systems
gdc.oaire.keywords Markov Chains
gdc.oaire.popularity 2.6853335E-9
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gdc.openalex.collaboration International
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oaire.citation.endPage 233
oaire.citation.startPage 216
publicationvolume.volumeNumber 14231
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