Abstract

BackgroundAntimicrobial resistance is one of our most serious health threats. Antimicrobial peptides (AMPs), effecter molecules of innate immune system, can defend host organisms against microbes and most have shown a lowered likelihood for bacteria to form resistance compared to many conventional drugs. Thus, AMPs are gaining popularity as better substitute to antibiotics. To aid researchers in novel AMPs discovery, we design computational approaches to screen promising candidates.ResultsIn this work, we design a deep learning model that can learn amino acid embedding patterns, automatically extract sequence features, and fuse heterogeneous information. Results show that the proposed model outperforms state-of-the-art methods on recognition of AMPs. By visualizing data in some layers of the model, we overcome the black-box nature of deep learning, explain the working mechanism of the model, and find some import motifs in sequences.ConclusionsACEP model can capture similarity between amino acids, calculate attention scores for different parts of a peptide sequence in order to spot important parts that significantly contribute to final predictions, and automatically fuse a variety of heterogeneous information or features. For high-throughput AMPs recognition, open source software and datasets are made freely available at https://github.com/Fuhaoyi/ACEP.

Highlights

  • IntroductionAntimicrobial peptides (AMPs), effecter molecules of innate immune system, can defend host organisms against microbes and most have shown a lowered likelihood for bacteria to form resistance compared to many conventional drugs

  • Antimicrobial resistance is one of our most serious health threats

  • Known as host defense peptides or antimicrobial peptides (AMPs), defend host organisms against microbes, and most have shown a lowered likelihood for bacteria to form resistance compared to many conventional drugs [2]

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Summary

Introduction

Antimicrobial peptides (AMPs), effecter molecules of innate immune system, can defend host organisms against microbes and most have shown a lowered likelihood for bacteria to form resistance compared to many conventional drugs. AMPs are gaining popularity as better substitute to antibiotics. To aid researchers in novel AMPs discovery, we design computational approaches to screen promising candidates. Known as host defense peptides or antimicrobial peptides (AMPs), defend host organisms against microbes, and most have shown a lowered likelihood for bacteria to form resistance compared to many conventional drugs [2]. Over the last few decades, several AMPs have successfully been approved as drugs by FDA, which has prompted an interest in these AMPs. To aid researchers in novel AMP discovery, a variety of computational approaches are proposed for AMP recognition. Many incorporate machine learning algorithms or statistical analysis techniques, such as artificial neural networks (ANN) [5], Fu et al BMC Genomics (2020) 21:597 discriminant analysis (DA) [6, 7], fuzzy k-nearest neighbors (KNN) [8], hidden Markov models (HM) [9], logistic regression (LR) [10, 11], random forests (RF) [6, 10], support vector machines (SVM) [6, 12] and deep neural network (DNN) [13]

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