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Machine learning-enabled discovery and design of membrane-active peptides
Authors:Ernest Y. Lee  Gerard C.L. Wong  Andrew L. Ferguson
Affiliation:1. Department of Bioengineering, University of California, Los Angeles, CA 90095, United States;2. California NanoSystems Institute, Los Angeles, CA 90095, United States;3. Department of Materials Science and Engineering, University of Illinois at Urbana-Champaign, Urbana, IL 61801, United States;4. Department of Chemical and Biomolecular Engineering, University of Illinois at Urbana-Champaign, Urbana, IL 61801, United States
Abstract:Antimicrobial peptides are a class of membrane-active peptides that form a critical component of innate host immunity and possess a diversity of sequence and structure. Machine learning approaches have been profitably employed to efficiently screen sequence space and guide experiment towards promising candidates with high putative activity. In this mini-review, we provide an introduction to antimicrobial peptides and summarize recent advances in machine learning-enabled antimicrobial peptide discovery and design with a focus on a recent work Lee et al. Proc. Natl. Acad. Sci. USA 2016;113(48):13588–13593. This study reports the development of a support vector machine classifier to aid in the design of membrane active peptides. We use this model to discover membrane activity as a multiplexed function in diverse peptide families and provide interpretable understanding of the physicochemical properties and mechanisms governing membrane activity. Experimental validation of the classifier reveals it to have learned membrane activity as a unifying signature of antimicrobial peptides with diverse modes of action. Some of the discriminating rules by which it performs classification are in line with existing “human learned” understanding, but it also unveils new previously unknown determinants and multidimensional couplings governing membrane activity. Integrating machine learning with targeted experimentation can guide both antimicrobial peptide discovery and design and new understanding of the properties and mechanisms underpinning their modes of action.
Keywords:AMP  antimicrobial peptide  ANN  artificial neural network  AUROC  area under the receiver operating characteristic  HMM  hidden Markov model  k-NN  k-nearest neighbor  MCC  Matthews correlation coefficient  MCMC  Markov Chain Monte Carlo  MIC  minimum inhibitory concentration  NGC  negative Gaussian curvature  NPV  negative predictive value  PPV  positive predictive value  QM  quantitative matrix  QSAR  quantitative structure–activity relationship  RF  random forest  SAXS  small angle X-ray scattering  SOM  self-organizing map  SVM  support vector machine  Machine learning  Quantitative structure activity relationship models  Antimicrobial peptides  Cell-penetrating peptides  Membrane-active peptides
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