Literature DB >> 33531410

Harnessing Machine Learning To Unravel Protein Degradation in Escherichia coli.

Natan Nagar1, Noa Ecker1, Gil Loewenthal1, Oren Avram1, Daniella Ben-Meir1, Dvora Biran1, Eliora Ron1, Tal Pupko2.   

Abstract

Degradation of intracellular proteins in Gram-negative bacteria regulates various cellular processes and serves as a quality control mechanism by eliminating damaged proteins. To understand what causes the proteolytic machinery of the cell to degrade some proteins while sparing others, we employed a quantitative pulsed-SILAC (stable isotope labeling with amino acids in cell culture) method followed by mass spectrometry analysis to determine the half-lives for the proteome of exponentially growing Escherichia coli, under standard conditions. We developed a likelihood-based statistical test to find actively degraded proteins and identified dozens of fast-degrading novel proteins. Finally, we used structural, physicochemical, and protein-protein interaction network descriptors to train a machine learning classifier to discriminate fast-degrading proteins from the rest of the proteome, achieving an area under the receiver operating characteristic curve (AUC) of 0.72.IMPORTANCE Bacteria use protein degradation to control proliferation, dispose of misfolded proteins, and adapt to physiological and environmental shifts, but the factors that dictate which proteins are prone to degradation are mostly unknown. In this study, we have used a combined computational-experimental approach to explore protein degradation in E. coli We discovered that the proteome of E. coli is composed of three protein populations that are distinct in terms of stability and functionality, and we show that fast-degrading proteins can be identified using a combination of various protein properties. Our findings expand the understanding of protein degradation in bacteria and have implications for protein engineering. Moreover, as rapidly degraded proteins may play an important role in pathogenesis, our findings may help to identify new potential antibacterial drug targets.
Copyright © 2021 Nagar et al.

Entities:  

Keywords:  SILAC; machine learning; protein degradation; proteomics

Year:  2021        PMID: 33531410     DOI: 10.1128/mSystems.01296-20

Source DB:  PubMed          Journal:  mSystems        ISSN: 2379-5077            Impact factor:   6.496


  4 in total

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Authors:  Yoav Kaplan; Shaked Reich; Elyaqim Oster; Shani Maoz; Irit Levin-Reisman; Irine Ronin; Orit Gefen; Oded Agam; Nathalie Q Balaban
Journal:  Nature       Date:  2021-11-17       Impact factor: 49.962

2.  Dynamic gene expression and growth underlie cell-to-cell heterogeneity in Escherichia coli stress response.

Authors:  Nadia M V Sampaio; Caroline M Blassick; Virgile Andreani; Jean-Baptiste Lugagne; Mary J Dunlop
Journal:  Proc Natl Acad Sci U S A       Date:  2022-03-28       Impact factor: 12.779

3.  Posttranscriptional Regulation by Copper with a New Upstream Open Reading Frame.

Authors:  Gauthier Roy; Rudy Antoine; Annie Schwartz; Stéphanie Slupek; Alex Rivera-Millot; Marc Boudvillain; Françoise Jacob-Dubuisson
Journal:  mBio       Date:  2022-07-13       Impact factor: 7.786

4.  A Plasmid-Based Fluorescence Reporter System for Monitoring Oxidative Damage in E. coli.

Authors:  Hariharan Dandapani; Pasi Kankaanpää; Patrik R Jones; Pauli Kallio
Journal:  Sensors (Basel)       Date:  2022-08-23       Impact factor: 3.847

  4 in total

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