Genome-scale analysis of translation elongation with a ribosome flow model.

We describe the first large scale analysis of gene translation that is based on a model that takes into account the physical and dynamical nature of this process. The Ribosomal Flow Model (RFM) predicts fundamental features of the translation process, including translation rates, protein abundance l...

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Main Authors: Shlomi Reuveni, Isaac Meilijson, Martin Kupiec, Eytan Ruppin, Tamir Tuller
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2011-09-01
Series:PLoS Computational Biology
Online Access:https://www.ncbi.nlm.nih.gov/pmc/articles/pmid/21909250/?tool=EBI
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spelling doaj-c7bba5c4181a407d947b76b5c77493712021-04-21T15:28:52ZengPublic Library of Science (PLoS)PLoS Computational Biology1553-734X1553-73582011-09-0179e100212710.1371/journal.pcbi.1002127Genome-scale analysis of translation elongation with a ribosome flow model.Shlomi ReuveniIsaac MeilijsonMartin KupiecEytan RuppinTamir TullerWe describe the first large scale analysis of gene translation that is based on a model that takes into account the physical and dynamical nature of this process. The Ribosomal Flow Model (RFM) predicts fundamental features of the translation process, including translation rates, protein abundance levels, ribosomal densities and the relation between all these variables, better than alternative ('non-physical') approaches. In addition, we show that the RFM can be used for accurate inference of various other quantities including genes' initiation rates and translation costs. These quantities could not be inferred by previous predictors. We find that increasing the number of available ribosomes (or equivalently the initiation rate) increases the genomic translation rate and the mean ribosome density only up to a certain point, beyond which both saturate. Strikingly, assuming that the translation system is tuned to work at the pre-saturation point maximizes the predictive power of the model with respect to experimental data. This result suggests that in all organisms that were analyzed (from bacteria to Human), the global initiation rate is optimized to attain the pre-saturation point. The fact that similar results were not observed for heterologous genes indicates that this feature is under selection. Remarkably, the gap between the performance of the RFM and alternative predictors is strikingly large in the case of heterologous genes, testifying to the model's promising biotechnological value in predicting the abundance of heterologous proteins before expressing them in the desired host.https://www.ncbi.nlm.nih.gov/pmc/articles/pmid/21909250/?tool=EBI
collection DOAJ
language English
format Article
sources DOAJ
author Shlomi Reuveni
Isaac Meilijson
Martin Kupiec
Eytan Ruppin
Tamir Tuller
spellingShingle Shlomi Reuveni
Isaac Meilijson
Martin Kupiec
Eytan Ruppin
Tamir Tuller
Genome-scale analysis of translation elongation with a ribosome flow model.
PLoS Computational Biology
author_facet Shlomi Reuveni
Isaac Meilijson
Martin Kupiec
Eytan Ruppin
Tamir Tuller
author_sort Shlomi Reuveni
title Genome-scale analysis of translation elongation with a ribosome flow model.
title_short Genome-scale analysis of translation elongation with a ribosome flow model.
title_full Genome-scale analysis of translation elongation with a ribosome flow model.
title_fullStr Genome-scale analysis of translation elongation with a ribosome flow model.
title_full_unstemmed Genome-scale analysis of translation elongation with a ribosome flow model.
title_sort genome-scale analysis of translation elongation with a ribosome flow model.
publisher Public Library of Science (PLoS)
series PLoS Computational Biology
issn 1553-734X
1553-7358
publishDate 2011-09-01
description We describe the first large scale analysis of gene translation that is based on a model that takes into account the physical and dynamical nature of this process. The Ribosomal Flow Model (RFM) predicts fundamental features of the translation process, including translation rates, protein abundance levels, ribosomal densities and the relation between all these variables, better than alternative ('non-physical') approaches. In addition, we show that the RFM can be used for accurate inference of various other quantities including genes' initiation rates and translation costs. These quantities could not be inferred by previous predictors. We find that increasing the number of available ribosomes (or equivalently the initiation rate) increases the genomic translation rate and the mean ribosome density only up to a certain point, beyond which both saturate. Strikingly, assuming that the translation system is tuned to work at the pre-saturation point maximizes the predictive power of the model with respect to experimental data. This result suggests that in all organisms that were analyzed (from bacteria to Human), the global initiation rate is optimized to attain the pre-saturation point. The fact that similar results were not observed for heterologous genes indicates that this feature is under selection. Remarkably, the gap between the performance of the RFM and alternative predictors is strikingly large in the case of heterologous genes, testifying to the model's promising biotechnological value in predicting the abundance of heterologous proteins before expressing them in the desired host.
url https://www.ncbi.nlm.nih.gov/pmc/articles/pmid/21909250/?tool=EBI
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