Litcius/Paper detail

HAPPENN is a novel tool for hemolytic activity prediction for therapeutic peptides which employs neural networks

Patrick Brendan Timmons, Chandralal M. Hewage

2020Scientific Reports150 citationsDOIOpen Access PDF

Abstract

The growing prevalence of resistance to antibiotics motivates the search for new antibacterial agents. Antimicrobial peptides are a diverse class of well-studied membrane-active peptides which function as part of the innate host defence system, and form a promising avenue in antibiotic drug research. Some antimicrobial peptides exhibit toxicity against eukaryotic membranes, typically characterised by hemolytic activity assays, but currently, the understanding of what differentiates hemolytic and non-hemolytic peptides is limited. This study leverages advances in machine learning research to produce a novel artificial neural network classifier for the prediction of hemolytic activity from a peptide's primary sequence. The classifier achieves best-in-class performance, with cross-validated accuracy of [Formula: see text] and Matthews correlation coefficient of 0.71. This innovative classifier is available as a web server at https://research.timmons.eu/happenn , allowing the research community to utilise it for in silico screening of peptide drug candidates for high therapeutic efficacies.

Topics & Concepts

In silicoComputational biologyClassifier (UML)Artificial intelligenceAntimicrobial peptidesPeptidePseudo amino acid compositionComputer scienceAntimicrobialMachine learningArtificial neural networkInteraction networkBiologyMicrobiologyBiochemistryGeneDipeptideAntimicrobial Peptides and Activitiesvaccines and immunoinformatics approachesMachine Learning in Bioinformatics