Literature DB >> 25139179

In silico model-based inference: a contemporary approach for hypothesis testing in network biology.

David J Klinke1.   

Abstract

Inductive inference plays a central role in the study of biological systems where one aims to increase their understanding of the system by reasoning backwards from uncertain observations to identify causal relationships among components of the system. These causal relationships are postulated from prior knowledge as a hypothesis or simply a model. Experiments are designed to test the model. Inferential statistics are used to establish a level of confidence in how well our postulated model explains the acquired data. This iterative process, commonly referred to as the scientific method, either improves our confidence in a model or suggests that we revisit our prior knowledge to develop a new model. Advances in technology impact how we use prior knowledge and data to formulate models of biological networks and how we observe cellular behavior. However, the approach for model-based inference has remained largely unchanged since Fisher, Neyman and Pearson developed the ideas in the early 1900s that gave rise to what is now known as classical statistical hypothesis (model) testing. Here, I will summarize conventional methods for model-based inference and suggest a contemporary approach to aid in our quest to discover how cells dynamically interpret and transmit information for therapeutic aims that integrates ideas drawn from high performance computing, Bayesian statistics, and chemical kinetics.
© 2014 American Institute of Chemical Engineers.

Entities:  

Keywords:  Markov chain Monte Carlo; computational Bayesian statistics; dynamic systems; inductive inference; scientific method

Mesh:

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Year:  2014        PMID: 25139179      PMCID: PMC4261023          DOI: 10.1002/btpr.1982

Source DB:  PubMed          Journal:  Biotechnol Prog        ISSN: 1520-6033


  66 in total

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  9 in total

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