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Journal article

In Silico Prediction of Human Pathogenicity in the gamma-Proteobacteria

Edited by Neyrolles, Olivier

From

Center for Biological Sequence Analysis, Department of Systems Biology, Technical University of Denmark1

Department of Systems Biology, Technical University of Denmark2

Division of Microbiology and Risk Assessment, National Food Institute, Technical University of Denmark3

National Food Institute, Technical University of Denmark4

In Background: Although the majority of bacteria are innocuous or even beneficial for their host, others are highly infectious pathogens that can cause widespread and deadly diseases. When investigating the relationships between bacteria and other living organisms, it is therefore essential to be able to separate pathogenic organisms from non-pathogenic ones.

Using traditional experimental methods for this purpose can be very costly and time-consuming, and also uncertain since animal models are not always good predictors for pathogenicity in humans. Bioinformatics-based methods are therefore strongly needed to mine the fast growing number of genome sequences and assess in a rapid and reliable way the pathogenicity of novel bacteria.

Methodology/Principal Findings: We describe a new in silico method for the prediction of bacterial pathogenicity, based on the identification in microbial genomes of features that appear to correlate with virulence. The method does not rely on identifying genes known to be involved in pathogenicity (for instance virulence factors), but rather it inherently builds families of proteins that, irrespective of their function, are consistently present in only one of the two kinds of organisms, pathogens or non-pathogens.

Whether a new bacterium carries proteins contained in these families determines its prediction as pathogenic or non-pathogenic. The application of the method on a set of known genomes correctly classified the virulence potential of 86% of the organisms tested. An additional validation on an independent test-set assigned correctly 22 out of 24 bacteria.

Conclusions: The proposed approach was demonstrated to go beyond the species bias imposed by evolutionary relatedness, and performs better than predictors based solely on taxonomy or sequence similarity. A set of protein families that differentiate pathogenic and non-pathogenic strains were identified, including families of yet uncharacterized proteins that are suggested to be involved in bacterial pathogenicity.

Language: English
Publisher: Public Library of Science
Year: 2010
Pages: e13680
ISSN: 19326203
Types: Journal article
DOI: 10.1371/journal.pone.0013680
ORCIDs: Nielsen, Morten , Aarestrup, Frank Møller and Lund, Ole

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