Novel twin-arginine translocation pathway-dependent phenotypes of Bacillus subtilis unveiled by quantitative proteomics


The Twin-arginine Translocation (Tat) pathway is known to translocate fully folded proteins across bacterial, archaeal and organellar membranes. To date, the mechanisms involved in processing, proofreading and quality control of Tat substrates have remained largely elusive. Bacillus subtilis is an industrially relevant Gram-positive model bacterium. The Tat pathway in B. subtilis differs from that of other well-studied organisms in that it is composed of two complexes operating in parallel. To obtain a better understanding of this pathway in B. subtilis and to identify Tat-associated proteins, the B. subtilis 'Tat proteome' was investigated by quantitative proteomics. Metabolically labeled proteins from cytoplasmic, membrane and extracellular fractions were analyzed by LC-MS/MS. Changes in the amounts of identified peptides allowed for quantitative comparisons of their abundance in tat mutant strains. The observed differences were suggestive of indirect or direct protein-protein relationships. The rich data set generated was then approached in hypothesis-driving and hypothesis-driven manners. The hypothesis-driving approach led to the identification of a novel delayed biofilm phenotype of certain tat mutant strains, whereas the hypothesis-driven approach identified the membrane protein QcrA as a new Tat substrate of B. subtilis. Thus, our quantitative proteomics analyses have unveiled novel Tat pathway-dependent phenotypes in Bacillus.


PubMed ID: 23256564

Projects: BaCell-SysMO

Publication type: Not specified

Journal: J. Proteome Res.


Date Published: 22nd Dec 2012

Registered Mode: Not specified

Authors: Vivianne J Goosens, Andreas Otto, Corinna Glasner, Carmine G Monteferrante, René van der Ploeg, , Dörte Becher,

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Views: 3734

Created: 7th Jan 2013 at 12:38

Last updated: 7th Jan 2013 at 12:38

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