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The Pseudomonas aeruginosa sphBC genes are important for growth in the presence of sphingosine by promoting sphingosine metabolism

DiGianivittorio, P.; Hinkel, L. A.; Mackinder, J. R.; Schutz, K.; Klein, E. A.; Wargo, M. J.

2024-09-03 microbiology
10.1101/2024.09.03.611043 bioRxiv
Show abstract

Sphingoid bases, including sphingosine, are important components of the antimicrobial barrier at epithelial surfaces where they can cause growth inhibition and killing of susceptible bacteria. Pseudomonas aeruginosa is a common opportunistic pathogen that is less susceptible to sphingosine than many Gram-negative bacteria. Here, we determined that deletion of the sphBCD operon reduced growth in the presence of sphingosine. Using deletion mutants, complementation, and growth assays in P. aeruginosa PAO1, we determined that the sphC and sphB genes, encoding a periplasmic oxidase and periplasmic cytochrome c, respectively, were important for growth on sphingosine, while sphD was dispensable under these conditions. Deletion of sphBCD in P. aeruginosa PA14, P. protegens Pf-5, and P. fluorescens Pf01 also showed reduced growth in the presence of sphingosine. The P. aeruginosa sphBC genes were also important for growth in the presence of two other sphingoid bases, phytosphingosine and sphinganine. In wild-type P. aeruginosa, sphingosine is metabolized to an unknown non-inhibitory product, as sphingosine concentrations drop in the culture. However, in the absence of sphBC, sphingosine accumulates, pointing to SphC and SphB as having a role in sphingosine metabolism. Finally, metabolism of sphingosine by wild-type P. aeruginosa protected susceptible cells from full growth inhibition by sphingosine, pointing to a role for sphingosine metabolism as a public good. This work shows that metabolism of sphingosine by P. aeruginosa presents a novel pathway by which bacteria can alter host-derived sphingolipids, but it remains an open question whether SphB and SphC act directly on sphingosine.

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