2012
DOI: 10.1371/journal.pone.0042517
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A Comparison of Computational Methods for Identifying Virulence Factors

Abstract: Bacterial pathogens continue to threaten public health worldwide today. Identification of bacterial virulence factors can help to find novel drug/vaccine targets against pathogenicity. It can also help to reveal the mechanisms of the related diseases at the molecular level. With the explosive growth in protein sequences generated in the postgenomic age, it is highly desired to develop computational methods for rapidly and effectively identifying virulence factors according to their sequence information alone. … Show more

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Cited by 31 publications
(24 citation statements)
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“…While bioinformatics has been used to identify other putative virulence factors 16 , the number of available data sets for each group of virulence factors is limited when compared to the number of identified bARTT sequences and available crystal structures 186 . However, although the ability to predict a bARTT is strongly supported, this predictive capability wanes when he aim is to identify the substrate.…”
Section: Discussionmentioning
confidence: 99%
“…While bioinformatics has been used to identify other putative virulence factors 16 , the number of available data sets for each group of virulence factors is limited when compared to the number of identified bARTT sequences and available crystal structures 186 . However, although the ability to predict a bARTT is strongly supported, this predictive capability wanes when he aim is to identify the substrate.…”
Section: Discussionmentioning
confidence: 99%
“…92.44.117/virulent/index.html). Differently from the previously described sequence based training, some publicly unavailable approaches rely on classification algorithms utilizing sequence associated information from biological repositories such as gene ontology, functional domains and protein-protein network information [79][80][81]. A recent review concludes that ML-based virulence prediction methods frequently perform worse than BLAST-similarity based approaches [77].…”
Section: Pathotyping Of Foodborne Pathogens Using Wgs Datamentioning
confidence: 99%
“…These include virulent-GO, 49 integrated query networks, 50 and protein–protein interaction networks. 51 Virulent-GO is a Gene Ontology (GO) annotation-based tool for the prediction of virulent proteins in bacterial pathogens. 49 GO annotation describes the functions of genes and their products across the species.…”
Section: Selected Sequence Databases and Bioinformatics Tools Relevanmentioning
confidence: 99%
“…Protein–protein interaction (PPI) networks are based on Search Tool for the Retrieval of Interactive Genes/Proteins database for the identification of virulence factors in the proteomes of different bacteria. 51 In PPI networks, two types of information are considered for the prediction of virulence factors: (i) the number of neighbouring nodes (to proteins), and (ii) confidence scores based on strengths of interactions with them. The identification accuracy of PPI networks is around 0.9–significantly higher than those obtained using sequence-based prediction methods.…”
Section: Selected Sequence Databases and Bioinformatics Tools Relevanmentioning
confidence: 99%