Literature DB >> 28931636

Comparing two sequential Monte Carlo samplers for exact and approximate Bayesian inference on biological models.

Aidan C Daly1, Jonathan Cooper2, David J Gavaghan3, Chris Holmes4.   

Abstract

Bayesian methods are advantageous for biological modelling studies due to their ability to quantify and characterize posterior variability in model parameters. When Bayesian methods cannot be applied, due either to non-determinism in the model or limitations on system observability, approximate Bayesian computation (ABC) methods can be used to similar effect, despite producing inflated estimates of the true posterior variance. Owing to generally differing application domains, there are few studies comparing Bayesian and ABC methods, and thus there is little understanding of the properties and magnitude of this uncertainty inflation. To address this problem, we present two popular strategies for ABC sampling that we have adapted to perform exact Bayesian inference, and compare them on several model problems. We find that one sampler was impractical for exact inference due to its sensitivity to a key normalizing constant, and additionally highlight sensitivities of both samplers to various algorithmic parameters and model conditions. We conclude with a study of the O'Hara-Rudy cardiac action potential model to quantify the uncertainty amplification resulting from employing ABC using a set of clinically relevant biomarkers. We hope that this work serves to guide the implementation and comparative assessment of Bayesian and ABC sampling techniques in biological models.
© 2017 The Author(s).

Entities:  

Keywords:  approximate Bayesian computation; cardiac modelling; identifiability; sequential Monte Carlo; summary statistics

Mesh:

Year:  2017        PMID: 28931636      PMCID: PMC5636270          DOI: 10.1098/rsif.2017.0340

Source DB:  PubMed          Journal:  J R Soc Interface        ISSN: 1742-5662            Impact factor:   4.118


  28 in total

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Authors:  S A Niederer; S Land; S W Omholt; N P Smith
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9.  Parameter and structural identifiability concepts and ambiguities: a critical review and analysis.

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10.  Chaste: an open source C++ library for computational physiology and biology.

Authors:  Gary R Mirams; Christopher J Arthurs; Miguel O Bernabeu; Rafel Bordas; Jonathan Cooper; Alberto Corrias; Yohan Davit; Sara-Jane Dunn; Alexander G Fletcher; Daniel G Harvey; Megan E Marsh; James M Osborne; Pras Pathmanathan; Joe Pitt-Francis; James Southern; Nejib Zemzemi; David J Gavaghan
Journal:  PLoS Comput Biol       Date:  2013-03-14       Impact factor: 4.475

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  4 in total

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Authors:  Alejandro Nieto Ramos; Conner J Herndon; Flavio H Fenton; Elizabeth M Cherry
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Authors:  Joao A N Filipe; Ilias Kyriazakis
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3.  Reducing complexity and unidentifiability when modelling human atrial cells.

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Journal:  Philos Trans A Math Phys Eng Sci       Date:  2020-05-25       Impact factor: 4.226

4.  Efficient exact inference for dynamical systems with noisy measurements using sequential approximate Bayesian computation.

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Journal:  Bioinformatics       Date:  2020-07-01       Impact factor: 6.937

  4 in total

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