Protein Abundance Prediction Through Machine Learning Methods
[Display omitted] •Protein abundance is impacted by translation kinetics, which rely on codon usage.•Coding sequences for highly and lowly abundance proteins differ in codon usage patterns.•Machine learning algorithms are able to detect these patterns and predict protein abundance.•Predicted protein...
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Veröffentlicht in: | Journal of molecular biology 2021-11, Vol.433 (22), p.167267-167267, Article 167267 |
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Sprache: | eng |
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•Protein abundance is impacted by translation kinetics, which rely on codon usage.•Coding sequences for highly and lowly abundance proteins differ in codon usage patterns.•Machine learning algorithms are able to detect these patterns and predict protein abundance.•Predicted protein abundances can be used for systems biology approaches.
Proteins are responsible for most physiological processes, and their abundance provides crucial information for systems biology research. However, absolute protein quantification, as determined by mass spectrometry, still has limitations in capturing the protein pool. Protein abundance is impacted by translation kinetics, which rely on features of codons. In this study, we evaluated the effect of codon usage bias of genes on protein abundance. Notably, we observed differences regarding codon usage patterns between genes coding for highly abundant proteins and genes coding for less abundant proteins. Analysis of synonymous codon usage and evolutionary selection showed a clear split between the two groups. Our machine learning models predicted protein abundances from codon usage metrics with remarkable accuracy, achieving strong correlation with experimental data. Upon integration of the predicted protein abundance in enzyme-constrained genome-scale metabolic models, the simulated phenotypes closely matched experimental data, which demonstrates that our predictive models are valuable tools for systems metabolic engineering approaches. |
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ISSN: | 0022-2836 1089-8638 |
DOI: | 10.1016/j.jmb.2021.167267 |