Journal article

PeNGaRoo, a combined gradient boosting and ensemble learning framework for predicting non-classical secreted proteins

Y Zhang, S Yu, R Xie, J Li, A Leier, TT Marquez-Lago, T Akutsu, AI Smith, Z Ge, J Wang, T Lithgow, J Song

Bioinformatics | Published : 2020

Abstract

Motivation: Gram-positive bacteria have developed secretion systems to transport proteins across their cell wall, a process that plays an important role during host infection. These secretion mechanisms have also been harnessed for therapeutic purposes in many biotechnology applications. Accordingly, the identification of features that select a protein for efficient secretion from these microorganisms has become an important task. Among all the secreted proteins, 'non-classical' secreted proteins are difficult to identify as they lack discernable signal peptide sequences and can make use of diverse secretion pathways. Currently, several computational methods have been developed to facilitate..

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University of Melbourne Researchers