Litcius/Paper detail

Identifying novel antimicrobial peptides from venom gland of spider Pardosa astrigera by deep multi-task learning

Byungjo Lee, Min Kyoung Shin, Jung Sun Yoo, Wonhee Jang, Jung‐Suk Sung

2022Frontiers in Microbiology13 citationsDOIOpen Access PDF

Abstract

Antimicrobial peptides (AMPs) show promises as valuable compounds for developing therapeutic agents to control the worldwide health threat posed by the increasing prevalence of antibiotic-resistant bacteria. Animal venom can be a useful source for screening AMPs due to its various bioactive components. Here, the deep learning model was developed to predict species-specific antimicrobial activity. To overcome the data deficiency, a multi-task learning method was implemented, achieving F 1 scores of 0.818, 0.696, 0.814, 0.787, and 0.719 for Bacillus subtilis , Escherichia coli , Pseudomonas aeruginosa , Staphylococcus aureus , and Staphylococcus epidermidis , respectively. Peptides PA-Full and PA-Win were identified from the model using different inputs of full and partial sequences, broadening the application of transcriptome data of the spider Pardosa astrigera . Two peptides exhibited strong antimicrobial activity against all five strains along with cytocompatibility. Our approach enables excavating AMPs with high potency, which can be expanded into the fields of biology to address data insufficiency.

Topics & Concepts

Antimicrobial peptidesAntimicrobialBacillus subtilisVenomStaphylococcus epidermidisBiologyMicrobiologyPseudomonas aeruginosaEscherichia coliComputational biologyStaphylococcus aureusAntibioticsBacteriaBiochemistryGeneGeneticsAntimicrobial Peptides and ActivitiesMachine Learning in BioinformaticsBiochemical and Structural Characterization