Teasing apart translational and transcriptional components of stochastic variations in eukaryotic gene expression.

The intrinsic stochasticity of gene expression leads to cell-to-cell variations, noise, in protein abundance. Several processes, including transcription, translation, and degradation of mRNA and proteins, can contribute to these variations. Recent single cell analyses of gene expression in yeast hav...

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Main Authors: Raheleh Salari, Damian Wojtowicz, Jie Zheng, David Levens, Yitzhak Pilpel, Teresa M Przytycka
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2012-01-01
Series:PLoS Computational Biology
Online Access:https://journals.plos.org/ploscompbiol/article/file?id=10.1371/journal.pcbi.1002644&type=printable
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author Raheleh Salari
Damian Wojtowicz
Jie Zheng
David Levens
Yitzhak Pilpel
Teresa M Przytycka
author_facet Raheleh Salari
Damian Wojtowicz
Jie Zheng
David Levens
Yitzhak Pilpel
Teresa M Przytycka
author_sort Raheleh Salari
collection DOAJ
description The intrinsic stochasticity of gene expression leads to cell-to-cell variations, noise, in protein abundance. Several processes, including transcription, translation, and degradation of mRNA and proteins, can contribute to these variations. Recent single cell analyses of gene expression in yeast have uncovered a general trend where expression noise scales with protein abundance. This trend is consistent with a stochastic model of gene expression where mRNA copy number follows the random birth and death process. However, some deviations from this basic trend have also been observed, prompting questions about the contribution of gene-specific features to such deviations. For example, recent studies have pointed to the TATA box as a sequence feature that can influence expression noise by facilitating expression bursts. Transcription-originated noise can be potentially further amplified in translation. Therefore, we asked the question of to what extent sequence features known or postulated to accompany translation efficiency can also be associated with increase in noise strength and, on average, how such increase compares to the amplification associated with the TATA box. Untangling different components of expression noise is highly nontrivial, as they may be gene or gene-module specific. In particular, focusing on codon usage as one of the sequence features associated with efficient translation, we found that ribosomal genes display a different relationship between expression noise and codon usage as compared to other genes. Within nonribosomal genes we found that sequence high codon usage is correlated with increased noise relative to the average noise of proteins with the same abundance. Interestingly, by projecting the data on a theoretical model of gene expression, we found that the amplification of noise strength associated with codon usage is comparable to that of the TATA box, suggesting that the effect of translation on noise in eukaryotic gene expression might be more prominent than previously appreciated.
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spelling doaj.art-769077d1d5bb46f0a3d98143f80c056d2025-02-21T05:32:11ZengPublic Library of Science (PLoS)PLoS Computational Biology1553-734X1553-73582012-01-0188e100264410.1371/journal.pcbi.1002644Teasing apart translational and transcriptional components of stochastic variations in eukaryotic gene expression.Raheleh SalariDamian WojtowiczJie ZhengDavid LevensYitzhak PilpelTeresa M PrzytyckaThe intrinsic stochasticity of gene expression leads to cell-to-cell variations, noise, in protein abundance. Several processes, including transcription, translation, and degradation of mRNA and proteins, can contribute to these variations. Recent single cell analyses of gene expression in yeast have uncovered a general trend where expression noise scales with protein abundance. This trend is consistent with a stochastic model of gene expression where mRNA copy number follows the random birth and death process. However, some deviations from this basic trend have also been observed, prompting questions about the contribution of gene-specific features to such deviations. For example, recent studies have pointed to the TATA box as a sequence feature that can influence expression noise by facilitating expression bursts. Transcription-originated noise can be potentially further amplified in translation. Therefore, we asked the question of to what extent sequence features known or postulated to accompany translation efficiency can also be associated with increase in noise strength and, on average, how such increase compares to the amplification associated with the TATA box. Untangling different components of expression noise is highly nontrivial, as they may be gene or gene-module specific. In particular, focusing on codon usage as one of the sequence features associated with efficient translation, we found that ribosomal genes display a different relationship between expression noise and codon usage as compared to other genes. Within nonribosomal genes we found that sequence high codon usage is correlated with increased noise relative to the average noise of proteins with the same abundance. Interestingly, by projecting the data on a theoretical model of gene expression, we found that the amplification of noise strength associated with codon usage is comparable to that of the TATA box, suggesting that the effect of translation on noise in eukaryotic gene expression might be more prominent than previously appreciated.https://journals.plos.org/ploscompbiol/article/file?id=10.1371/journal.pcbi.1002644&type=printable
spellingShingle Raheleh Salari
Damian Wojtowicz
Jie Zheng
David Levens
Yitzhak Pilpel
Teresa M Przytycka
Teasing apart translational and transcriptional components of stochastic variations in eukaryotic gene expression.
PLoS Computational Biology
title Teasing apart translational and transcriptional components of stochastic variations in eukaryotic gene expression.
title_full Teasing apart translational and transcriptional components of stochastic variations in eukaryotic gene expression.
title_fullStr Teasing apart translational and transcriptional components of stochastic variations in eukaryotic gene expression.
title_full_unstemmed Teasing apart translational and transcriptional components of stochastic variations in eukaryotic gene expression.
title_short Teasing apart translational and transcriptional components of stochastic variations in eukaryotic gene expression.
title_sort teasing apart translational and transcriptional components of stochastic variations in eukaryotic gene expression
url https://journals.plos.org/ploscompbiol/article/file?id=10.1371/journal.pcbi.1002644&type=printable
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