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Antimicrobial peptide developed with machine learning sequence optimization targets drug resistant Staphylococcus aureus in mice
Biswajit Mishra, … , Paul P. Sotiriadis, Eleftherios Mylonakis
Biswajit Mishra, … , Paul P. Sotiriadis, Eleftherios Mylonakis
Published April 22, 2025
Citation Information: J Clin Invest. 2025;135(12):e185430. https://doi.org/10.1172/JCI185430.
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Research Article Infectious disease Microbiology

Antimicrobial peptide developed with machine learning sequence optimization targets drug resistant Staphylococcus aureus in mice

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Abstract

As antimicrobial resistance rises, new antibacterial candidates are urgently needed. Using sequence space information from over 14,743 functional antimicrobial peptides (AMPs), we improved the antimicrobial properties of citropin 1.1, an AMP with weak antimethicillin resistant Staphylococcus aureus (MRSA) activity, producing a short and potent antistaphylococcal peptide, CIT-8 (13 residues). At 40 μg/mL, CIT-8 eradicated 1 × 108 drug-resistant MRSA and vancomycin resistant S. aureus (VRSA) persister cells within 30 minutes of exposure and reduced the number of viable biofilm cells of MRSA and VRSA by 3 log10 and 4 log10 in established biofilms, respectively. CIT-8 (at 32 μg/mL) depolarized and permeated the S. aureus MW2 membrane. In a mouse model of MRSA skin infection, CIT-8 (2% w/w in petroleum jelly) significantly reduced the bacterial burden by 2.3 log10 (P < 0.0001). Our methodology accelerated AMP design by combining traditional peptide design strategies, such as truncation, substitution, and structure-guided alteration, with machine learning–backed sequence optimization.

Authors

Biswajit Mishra, Anindya Basu, Fadi Shehadeh, LewisOscar Felix, Sai Sundeep Kollala, Yashpal Singh Chhonker, Mandar T. Naik, Charilaos Dellis, Liyang Zhang, Narchonai Ganesan, Daryl J. Murry, Jianhua Gu, Michael B. Sherman, Frederick M. Ausubel, Paul P. Sotiriadis, Eleftherios Mylonakis

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Figure 4

Structural insights to membrane targeting by CIT-8.

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Structural insights to membrane targeting by CIT-8.
(A) Natural abundanc...
(A) Natural abundance 2D- 13C-HSQC spectrum of CIT-8. (B) 2D-NOESY spectrum and summary of important NOESY distance restraints used in the CIT-8 structure calculation. (C) CIT-8 NMR solution structure ensemble. (D) Ribbon representation of the first conformer in the ensemble. (E) Two surface representations obtained by 180º rotation along the x-axis showing the distribution of hydrophobic (yellow) and charged (blue) residues. All structure figures were prepared in Pymol using the YRB script. (F) Snapshot of an all-atom MD simulation of peptide CIT-8 in the presence of DOPC:DOPG (7:3) mimetic membrane model showing complete peptide insertion at 500 ns. Blue, charged residues; brown, hydrophobic residues. (G) Changes in membrane lipid density upon CIT-8-induced water perturbation. (H) Changes in membrane thickness upon CIT-8 interaction with model membrane.

Copyright © 2025 American Society for Clinical Investigation
ISSN: 0021-9738 (print), 1558-8238 (online)

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