Background: We present an overview of bacterial non-classical
secretion and a prediction method for identification of proteins
following signal peptide independent secretion pathways. We have
compiled a list of proteins found extracellularly despite the
absence of a signal peptide. Some of these proteins also have
known roles in the cytoplasm, which means they could be so-called
``moon-lightning'' proteins having more than one function.
Methods: A thorough literature search was conducted to compile a list of
currently known bacterial non-classically secreted proteins.
Pattern finding methods were applied to the sequences in order to
identify putative signal sequences or motifs responsible for their
secretion. Finally, artificial neural networks were used to
construct protein feature based methods for identification of
non-classically secreted proteins in both Gram-positive and
Gram-negative bacteria.
Results: We have found no signal or motif characteristic to any majority of the proteins
in the compiled list of non-classically secreted proteins, and
conclude that these proteins, indeed, seem to be secreted in a
novel fashion. However, we also show that the apparently
non-classically secreted proteins are still distinguished from
cellular proteins by properties such as amino acid composition,
secondary structure and disordered regions. Specifically,
prediction of disorder reveals that bacterial secretory proteins
are more structurally disordered than their cytoplasmic
counterparts.
Conclusions: We present a publicly
available prediction method capable of discriminating between this
group of proteins and other proteins, thus allowing for the
identification of novel non-classically secreted proteins. We
suggest candidates for non-classically secreted proteins in
Escherichia coli and Bacillus subtilis. The
prediction method is available at
http://www.cbs.dtu.dk/services/SecretomeP-2.0/.
PMID: 16212653
doi: 10.1186/1471-2180-5-58