Abstract
BackgroundmRNA translation involves simultaneous movement of multiple ribosomes on the mRNA and is also subject to regulatory mechanisms at different stages. Translation can be described by various codon-based models, including ODE, TASEP, and Petri net models. Although such models have been extensively used, the overlap and differences between these models and the implications of the assumptions of each model has not been systematically elucidated. The selection of the most appropriate modelling framework, and the most appropriate way to develop coarse-grained/fine-grained models in different contexts is not clear.ResultsWe systematically analyze and compare how different modelling methodologies can be used to describe translation. We define various statistically equivalent codon-based simulation algorithms and analyze the importance of the update rule in determining the steady state, an aspect often neglected. Then a novel probabilistic Boolean network (PBN) model is proposed for modelling translation, which enjoys an exact numerical solution. This solution matches those of numerical simulation from other methods and acts as a complementary tool to analytical approximations and simulations. The advantages and limitations of various codon-based models are compared, and illustrated by examples with real biological complexities such as slow codons, premature termination and feedback regulation. Our studies reveal that while different models gives broadly similiar trends in many cases, important differences also arise and can be clearly seen, in the dependence of the translation rate on different parameters. Furthermore, the update rule affects the steady state solution.ConclusionsThe codon-based models are based on different levels of abstraction. Our analysis suggests that a multiple model approach to understanding translation allows one to ascertain which aspects of the conclusions are robust with respect to the choice of modelling methodology, and when (and why) important differences may arise. This approach also allows for an optimal use of analysis tools, which is especially important when additional complexities or regulatory mechanisms are included. This approach can provide a robust platform for dissecting translation, and results in an improved predictive framework for applications in systems and synthetic biology.
Highlights
MRNA translation involves simultaneous movement of multiple ribosomes on the mRNA and is subject to regulatory mechanisms at different stages
We present our analysis in the following sequence: 1) the definition of codon-based models and an analysis of the simulation algorithms; 2) the effect of the update rules in codon-based models; 3) a new probabilistic Boolean network (PBN) model for mRNA translation; 4) a comparison of the different modelling methodologies with added biological complexities; and 5) discussion
To formally describe the PBN model for mRNA translation, we introduce the following matrix expression of a Boolean function, in which a Boolean function is uniquely expressed as a linear system, as follows
Summary
MRNA translation involves simultaneous movement of multiple ribosomes on the mRNA and is subject to regulatory mechanisms at different stages. Translation can be described by various codon-based models, including ODE, TASEP, and Petri net models. Such models have been extensively used, the overlap and differences between these models and the implications of the assumptions of each model has not been systematically elucidated. MRNA translation is a ubiquitous process seen in almost all biological systems. The mRNA translation process involves three main players: the mRNA (genetic template), the ribosome (assembly machinery), and the aminoacyl transfer RNAs (aa-tRNAs), and is conceptually divided into three stages: initiation, elongation and termination. To elucidate the mechanism and functions of mRNA translation, a thorough, systems-level understanding is necessary, which requires well-defined quantitative models. The understanding obtained from these quantitative models provides an important foundation for synthetic biology investigations [10,11,12,13,14,15]
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