3 results match your criteria: "Department of Microbiology at Monash University[Affiliation]"

DeepBL: a deep learning-based approach for in silico discovery of beta-lactamases.

Brief Bioinform

July 2021

Monash Biomedicine Discovery Institute and Department of Biochemistry and Molecular Biology, Monash University, Melbourne, Australia.

Article Synopsis
  • Beta-lactamases (BLs) are enzymes in bacteria that provide resistance to beta-lactam antibiotics, and identifying them experimentally is costly but important.
  • DeepBL is a deep learning approach that uses sequence data to predict the presence of BLs quickly and efficiently, utilizing a Small VGGNet architecture and TensorFlow.
  • The DeepBL model's performance is tested with varying levels of sequence redundancy and negative sample selection, and results from a comprehensive proteome-wide screening are available for free on the DeepBL webserver.
View Article and Find Full Text PDF

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.

View Article and Find Full Text PDF

In the course of infecting their hosts, pathogenic bacteria secrete numerous effectors, namely, bacterial proteins that pervert host cell biology. Many Gram-negative bacteria, including context-dependent human pathogens, use a type IV secretion system (T4SS) to translocate effectors directly into the cytosol of host cells. Various type IV secreted effectors (T4SEs) have been experimentally validated to play crucial roles in virulence by manipulating host cell gene expression and other processes.

View Article and Find Full Text PDF