Literature DB >> 20824469

An introduction to Gaussian Bayesian networks.

Marco Grzegorczyk1.   

Abstract

The extraction of regulatory networks and pathways from postgenomic data is important for drug -discovery and development, as the extracted pathways reveal how genes or proteins regulate each other. Following up on the seminal paper of Friedman et al. (J Comput Biol 7:601-620, 2000), Bayesian networks have been widely applied as a popular tool to this end in systems biology research. Their popularity stems from the tractability of the marginal likelihood of the network structure, which is a consistent scoring scheme in the Bayesian context. This score is based on an integration over the entire parameter space, for which highly expensive computational procedures have to be applied when using more complex -models based on differential equations; for example, see (Bioinformatics 24:833-839, 2008). This chapter gives an introduction to reverse engineering regulatory networks and pathways with Gaussian Bayesian networks, that is Bayesian networks with the probabilistic BGe scoring metric [see (Geiger and Heckerman 235-243, 1995)]. In the BGe model, the data are assumed to stem from a Gaussian distribution and a normal-Wishart prior is assigned to the unknown parameters. Gaussian Bayesian network methodology for analysing static observational, static interventional as well as dynamic (observational) time series data will be described in detail in this chapter. Finally, we apply these Bayesian network inference methods (1) to observational and interventional flow cytometry (protein) data from the well-known RAF pathway to evaluate the global network reconstruction accuracy of Bayesian network inference and (2) to dynamic gene expression time series data of nine circadian genes in Arabidopsis thaliana to reverse engineer the unknown regulatory network topology for this domain.

Entities:  

Mesh:

Substances:

Year:  2010        PMID: 20824469     DOI: 10.1007/978-1-60761-800-3_6

Source DB:  PubMed          Journal:  Methods Mol Biol        ISSN: 1064-3745


  9 in total

1.  Encoding Growth Factor Identity in the Temporal Dynamics of FOXO3 under the Combinatorial Control of ERK and AKT Kinases.

Authors:  Somponnat Sampattavanich; Bernhard Steiert; Bernhard A Kramer; Benjamin M Gyori; John G Albeck; Peter K Sorger
Journal:  Cell Syst       Date:  2018-06-06       Impact factor: 10.304

2.  Discovering gene regulatory networks of multiple phenotypic groups using dynamic Bayesian networks.

Authors:  Polina Suter; Jack Kuipers; Niko Beerenwinkel
Journal:  Brief Bioinform       Date:  2022-07-18       Impact factor: 13.994

3.  Network modeling reveals steps in angiotensin peptide processing.

Authors:  John H Schwacke; John Christian G Spainhour; Jessalyn L Ierardi; Jose M Chaves; John M Arthur; Michael G Janech; Juan Carlos Q Velez
Journal:  Hypertension       Date:  2013-01-02       Impact factor: 10.190

4.  Uncovering distinct protein-network topologies in heterogeneous cell populations.

Authors:  Jakob Wieczorek; Rahuman S Malik-Sheriff; Yessica Fermin; Hernán E Grecco; Eli Zamir; Katja Ickstadt
Journal:  BMC Syst Biol       Date:  2015-06-04

5.  Fusing gene expressions and transitive protein-protein interactions for inference of gene regulatory networks.

Authors:  Wenting Liu; Jagath C Rajapakse
Journal:  BMC Syst Biol       Date:  2019-04-05

6.  Causal network inference from gene transcriptional time-series response to glucocorticoids.

Authors:  Jonathan Lu; Bianca Dumitrascu; Ian C McDowell; Brian Jo; Alejandro Barrera; Linda K Hong; Sarah M Leichter; Timothy E Reddy; Barbara E Engelhardt
Journal:  PLoS Comput Biol       Date:  2021-01-29       Impact factor: 4.475

7.  Dissecting Response to Cancer Immunotherapy by Applying Bayesian Network Analysis to Flow Cytometry Data.

Authors:  Andrei S Rodin; Grigoriy Gogoshin; Seth Hilliard; Lei Wang; Colt Egelston; Russell C Rockne; Joseph Chao; Peter P Lee
Journal:  Int J Mol Sci       Date:  2021-02-26       Impact factor: 5.923

8.  Reconstructing Causal Biological Networks through Active Learning.

Authors:  Hyunghoon Cho; Bonnie Berger; Jian Peng
Journal:  PLoS One       Date:  2016-03-01       Impact factor: 3.240

9.  Bayesian modeling suggests that IL-12 (p40), IL-13 and MCP-1 drive murine cytokine networks in vivo.

Authors:  Sarah L Field; Tathagata Dasgupta; Michele Cummings; Richard S Savage; Julius Adebayo; Hema McSara; Jeremy Gunawardena; Nicolas M Orsi
Journal:  BMC Syst Biol       Date:  2015-11-09
  9 in total

北京卡尤迪生物科技股份有限公司 © 2022-2023.