Journal article
DeepVF: A deep learning-based hybrid framework for identifying virulence factors using the stacking strategy
R Xie, J Li, J Wang, W Dai, A Leier, TT Marquez-Lago, T Akutsu, T Lithgow, J Song, Y Zhang
Briefings in Bioinformatics | Published : 2021
DOI: 10.1093/bib/bbaa125
Abstract
Virulence factors (VFs) enable pathogens to infect their hosts. A wealth of individual, disease-focused studies has identified a wide variety of VFs, and the growing mass of bacterial genome sequence data provides an opportunity for computational methods aimed at predicting VFs. Despite their attractive advantages and performance improvements, the existing methods have some limitations and drawbacks. Firstly, as the characteristics and mechanisms of VFs are continually evolving with the emergence of antibiotic resistance, it is more and more difficult to identify novel VFs using existing tools that were previously developed based on the outdated data sets; secondly, few systematic feature en..
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Grants
Awarded by Australian Research Council