Literature DB >> 34007522

BAYESIAN INFERENCE OF STOCHASTIC REACTION NETWORKS USING MULTIFIDELITY SEQUENTIAL TEMPERED MARKOV CHAIN MONTE CARLO.

Thomas A Catanach1, Huy D Vo2, Brian Munsky2.   

Abstract

Stochastic reaction network models are often used to explain and predict the dynamics of gene regulation in single cells. These models usually involve several parameters, such as the kinetic rates of chemical reactions, that are not directly measurable and must be inferred from experimental data. Bayesian inference provides a rigorous probabilistic framework for identifying these parameters by finding a posterior parameter distribution that captures their uncertainty. Traditional computational methods for solving inference problems such as Markov Chain Monte Carlo methods based on classical Metropolis-Hastings algorithm involve numerous serial evaluations of the likelihood function, which in turn requires expensive forward solutions of the chemical master equation (CME). We propose an alternate approach based on a multifidelity extension of the Sequential Tempered Markov Chain Monte Carlo (ST-MCMC) sampler. This algorithm is built upon Sequential Monte Carlo and solves the Bayesian inference problem by decomposing it into a sequence of efficiently solved subproblems that gradually increase both model fidelity and the influence of the observed data. We reformulate the finite state projection (FSP) algorithm, a well-known method for solving the CME, to produce a hierarchy of surrogate master equations to be used in this multifidelity scheme. To determine the appropriate fidelity, we introduce a novel information-theoretic criteria that seeks to extract the most information about the ultimate Bayesian posterior from each model in the hierarchy without inducing significant bias. This novel sampling scheme is tested with high performance computing resources using biologically relevant problems.

Entities:  

Keywords:  Bayesian inference; MCMC; SMC; Stochastic modeling; Systems Biology; UQ

Year:  2020        PMID: 34007522      PMCID: PMC8127724          DOI: 10.1615/int.j.uncertaintyquantification.2020033241

Source DB:  PubMed          Journal:  Int J Uncertain Quantif        ISSN: 2152-5080            Impact factor:   2.083


  32 in total

1.  Moment-based inference predicts bimodality in transient gene expression.

Authors:  Christoph Zechner; Jakob Ruess; Peter Krenn; Serge Pelet; Matthias Peter; John Lygeros; Heinz Koeppl
Journal:  Proc Natl Acad Sci U S A       Date:  2012-05-07       Impact factor: 11.205

2.  Visualization of single RNA transcripts in situ.

Authors:  A M Femino; F S Fay; K Fogarty; R H Singer
Journal:  Science       Date:  1998-04-24       Impact factor: 47.728

3.  Bayesian Estimation for Stochastic Gene Expression Using Multifidelity Models.

Authors:  Huy D Vo; Zachary Fox; Ania Baetica; Brian Munsky
Journal:  J Phys Chem B       Date:  2019-03-05       Impact factor: 2.991

4.  Approximate Bayesian computation schemes for parameter inference of discrete stochastic models using simulated likelihood density.

Authors:  Qianqian Wu; Kate Smith-Miles; Tianhai Tian
Journal:  BMC Bioinformatics       Date:  2014-11-06       Impact factor: 3.169

Review 5.  Taking chances and making mistakes: non-genetic phenotypic heterogeneity and its consequences for surviving in dynamic environments.

Authors:  Coco van Boxtel; Johan H van Heerden; Niclas Nordholt; Phillipp Schmidt; Frank J Bruggeman
Journal:  J R Soc Interface       Date:  2017-07       Impact factor: 4.118

6.  Bayesian inference on stochastic gene transcription from flow cytometry data.

Authors:  Simone Tiberi; Mark Walsh; Massimo Cavallaro; Daniel Hebenstreit; Bärbel Finkenstädt
Journal:  Bioinformatics       Date:  2018-09-01       Impact factor: 6.937

7.  Distribution shapes govern the discovery of predictive models for gene regulation.

Authors:  Brian Munsky; Guoliang Li; Zachary R Fox; Douglas P Shepherd; Gregor Neuert
Journal:  Proc Natl Acad Sci U S A       Date:  2018-06-29       Impact factor: 11.205

8.  Listening to the noise: random fluctuations reveal gene network parameters.

Authors:  Brian Munsky; Brooke Trinh; Mustafa Khammash
Journal:  Mol Syst Biol       Date:  2009-10-13       Impact factor: 11.429

9.  Direct solution of the Chemical Master Equation using quantized tensor trains.

Authors:  Vladimir Kazeev; Mustafa Khammash; Michael Nip; Christoph Schwab
Journal:  PLoS Comput Biol       Date:  2014-03-13       Impact factor: 4.475

10.  A scalable computational framework for establishing long-term behavior of stochastic reaction networks.

Authors:  Ankit Gupta; Corentin Briat; Mustafa Khammash
Journal:  PLoS Comput Biol       Date:  2014-06-26       Impact factor: 4.475

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