Designing antimicrobial peptides using deep learning and molecular dynamic simulations

Author:

Cao Qiushi12ORCID,Ge Cheng12ORCID,Wang Xuejie23,Harvey Peta J4,Zhang Zixuan12,Ma Yuan12,Wang Xianghong23,Jia Xinying5,Mobli Mehdi5,Craik David J4,Jiang Tao12,Yang Jinbo12,Wei Zhiqiang26,Wang Yan23,Chang Shan7ORCID,Yu Rilei12

Affiliation:

1. Key Laboratory of Marine Drugs, Chinese Ministry of Education, School of Medicine and Pharmacy, Ocean University of China , 5 Yushan Road, Qingdao 266003 , China

2. Qingdao National Laboratory for Marine Science and Technology , Qingdao 266003 , China

3. College of Marine Life Sciences, Ocean University of China , Qingdao 266003 , China

4. Institute for Molecular Bioscience, Australian Research Council Centre of Excellence for Innovations in Peptide and Protein Science, The University of Queensland , Brisbane, QLD, 4072 Australia

5. Centre for Advanced Imaging, The University of Queensland , St Lucia QLD 4072

6. College of Computer Science and Technology, Ocean University of China , Qingdao 266100 , China

7. Institute of Bioinformatics and Medical Engineering, School of Electrical and Information Engineering, Jiangsu University of Technology , Changzhou 213001 , China

Abstract

AbstractWith the emergence of multidrug-resistant bacteria, antimicrobial peptides (AMPs) offer promising options for replacing traditional antibiotics to treat bacterial infections, but discovering and designing AMPs using traditional methods is a time-consuming and costly process. Deep learning has been applied to the de novo design of AMPs and address AMP classification with high efficiency. In this study, several natural language processing models were combined to design and identify AMPs, i.e. sequence generative adversarial nets, bidirectional encoder representations from transformers and multilayer perceptron. Then, six candidate AMPs were screened by AlphaFold2 structure prediction and molecular dynamic simulations. These peptides show low homology with known AMPs and belong to a novel class of AMPs. After initial bioactivity testing, one of the peptides, A-222, showed inhibition against gram-positive and gram-negative bacteria. The structural analysis of this novel peptide A-222 obtained by nuclear magnetic resonance confirmed the presence of an alpha-helix, which was consistent with the results predicted by AlphaFold2. We then performed a structure–activity relationship study to design a new series of peptide analogs and found that the activities of these analogs could be increased by 4–8-fold against Stenotrophomonas maltophilia WH 006 and Pseudomonas aeruginosa PAO1. Overall, deep learning shows great potential in accelerating the discovery of novel AMPs and holds promise as an important tool for developing novel AMPs.

Funder

National Natural Science Foundation of China

National Science and Technology Major Project for Significant New Drugs Development

Australian Research Council Centre of Excellence for Innovations in Peptide and Protein Science

National Health and Medical Research Council

Publisher

Oxford University Press (OUP)

Subject

Molecular Biology,Information Systems

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