Literature DB >> 25328249

TWO-LAYER MATHEMATICAL MODELING OF GENE EXPRESSION: INCORPORATING DNA-LEVEL INFORMATION AND SYSTEM DYNAMICS.

Jacqueline M Dresch1, Marc A Thompson2, David N Arnosti3, Chichia Chiu4.   

Abstract

High-throughput genome sequencing and transcriptome analysis have provided researchers with a quantitative basis for detailed modeling of gene expression using a wide variety of mathematical models. Two of the most commonly employed approaches used to model eukaryotic gene regulation are systems of differential equations, which describe time-dependent interactions of gene networks, and thermodynamic equilibrium approaches that can explore DNA-level transcriptional regulation. To combine the strengths of these approaches, we have constructed a new two-layer mathematical model that provides a dynamical description of gene regulatory systems, using detailed DNA-based information, as well as spatial and temporal transcription factor concentration data. We also developed a semi-implicit numerical algorithm for solving the model equations and demonstrate here the efficiency of this algorithm through stability and convergence analyses. To test the model, we used it together with the semi-implicit algorithm to simulate a Drosophila gene regulatory circuit that drives development in the dorsal-ventral axis of the blastoderm-stage embryo, involving three genes. For model validation, we have done both mathematical and statistical comparisons between the experimental data and the model's simulated data. Where protein and cis-regulatory information is available, our two-layer model provides a method for recapitulating and predicting dynamic aspects of eukaryotic transcriptional systems that will greatly improve our understanding of gene regulation at a global level.

Entities:  

Keywords:  reaction-diffusion equation; thermodynamic equilibrium; transcriptional regulation

Year:  2013        PMID: 25328249      PMCID: PMC4198071          DOI: 10.1137/120887588

Source DB:  PubMed          Journal:  SIAM J Appl Math        ISSN: 0036-1399            Impact factor:   2.080


  33 in total

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8.  Thermodynamic modeling of transcription: sensitivity analysis differentiates biological mechanism from mathematical model-induced effects.

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7.  Global sensitivity analysis of a dynamic model for gene expression in Drosophila embryos.

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9.  Expression pattern determines regulatory logic.

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  9 in total

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