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计算抗菌肽设计及对抗多重耐药临床分离菌的评估。

Computational antimicrobial peptide design and evaluation against multidrug-resistant clinical isolates of bacteria.

机构信息

From the Departments of Biochemistry and.

Computational and Data Sciences.

出版信息

J Biol Chem. 2018 Mar 9;293(10):3492-3509. doi: 10.1074/jbc.M117.805499. Epub 2017 Dec 19.

Abstract

There is a pressing need for new therapeutics to combat multidrug- and carbapenem-resistant bacterial pathogens. This challenge prompted us to use a long short-term memory (LSTM) language model to understand the underlying grammar, the arrangement and frequencies of amino acid residues, in known antimicrobial peptide sequences. According to the output of our LSTM network, we synthesized 10 peptides and tested them against known bacterial pathogens. All of these peptides displayed broad-spectrum antimicrobial activity, validating our LSTM-based peptide design approach. Our two most effective antimicrobial peptides displayed activity against multidrug-resistant clinical isolates of , , and coagulase-negative staphylococci strains. High activity against extended-spectrum β-lactamase, methicillin-resistant , and carbapenem-resistant strains was also observed. Our peptides selectively interacted with and disrupted bacterial cell membranes and caused secondary gene-regulatory effects. Initial structural characterization revealed that our most effective peptide appeared to be well folded. We conclude that our LSTM-based peptide design approach appears to have correctly deciphered the underlying grammar of antimicrobial peptide sequences, as demonstrated by the experimentally observed efficacy of our designed peptides.

摘要

迫切需要新的疗法来对抗多药耐药和碳青霉烯类耐药的细菌病原体。这一挑战促使我们使用长短期记忆(LSTM)语言模型来理解已知抗菌肽序列中的基本语法、氨基酸残基的排列和频率。根据我们的 LSTM 网络的输出,我们合成了 10 种肽并对其进行了测试,以对抗已知的细菌病原体。所有这些肽都显示出广谱抗菌活性,验证了我们基于 LSTM 的肽设计方法。我们两种最有效的抗菌肽对多药耐药的临床分离株、、和凝固酶阴性葡萄球菌菌株均具有活性。还观察到对扩展谱β-内酰胺酶、耐甲氧西林和碳青霉烯类耐药菌株的高活性。我们的肽选择性地与细菌细胞膜相互作用并破坏它们,并引起二级基因调控效应。初步结构表征表明,我们最有效的肽似乎折叠良好。我们的结论是,我们基于 LSTM 的肽设计方法似乎正确地破译了抗菌肽序列的基本语法,这一点可以从我们设计的肽的实验观察到的功效中得到证明。

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本文引用的文献

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Small cationic antimicrobial peptides delocalize peripheral membrane proteins.小阳离子抗菌肽使外周膜蛋白去定位。
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Antimicrobial peptides design by evolutionary multiobjective optimization.基于进化多目标优化的抗菌肽设计。
PLoS Comput Biol. 2013;9(9):e1003212. doi: 10.1371/journal.pcbi.1003212. Epub 2013 Sep 5.
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Antimicrobial peptides stage a comeback.抗菌肽卷土重来。
Nat Biotechnol. 2013 May;31(5):379-82. doi: 10.1038/nbt.2572.

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