Abstract

BackgroundCurrent methods in machine learning provide approaches for solving challenging, multiple constraint design problems. While deep learning and related neural networking methods have state-of-the-art performance, their vulnerability in decision making processes leading to irrational outcomes is a major concern for their implementation. With the rising antibiotic resistance, antimicrobial peptides (AMPs) have increasingly gained attention as novel therapeutic agents. This challenging design problem requires peptides which meet the multiple constraints of limiting drug-resistance in bacteria, preventing secondary infections from imbalanced microbial flora, and avoiding immune system suppression. AMPs offer a promising, bioinspired design space to targeting antimicrobial activity, but their versatility also requires the curated selection from a combinatorial sequence space. This space is too large for brute-force methods or currently known rational design approaches outside of machine learning. While there has been progress in using the design space to more effectively target AMP activity, a widely applicable approach has been elusive. The lack of transparency in machine learning has limited the advancement of scientific knowledge of how AMPs are related among each other, and the lack of general applicability for fully rational approaches has limited a broader understanding of the design space.MethodsHere we combined an evolutionary method with rough set theory, a transparent machine learning approach, for designing antimicrobial peptides (AMPs). Our method achieves the customization of AMPs using supervised learning boundaries. Our system employs in vitro bacterial assays to measure fitness, codon-representation of peptides to gain flexibility of sequence selection in DNA-space with a genetic algorithm and machine learning to further accelerate the process.ResultsWe use supervised machine learning and a genetic algorithm to find a peptide active against S. epidermidis, a common bacterial strain for implant infections, with an improved aggregation propensity average for an improved ease of synthesis.ConclusionsOur results demonstrate that AMP design can be customized to maintain activity and simplify production. To our knowledge, this is the first time when codon-based genetic algorithms combined with rough set theory methods is used for computational search on peptide sequences.

Highlights

  • Current methods in machine learning provide approaches for solving challenging, multiple constraint design problems

  • We apply this approach to designing antimicrobial peptides (AMPs) as alternative agents to antibiotics by incorporating a rough set theory method, a transparent machine learning approach, into an evolutionary design method

  • We offer a transparent machine learning algorithm, rough set theory, combined with an evolutionary search method with improved sequence diversity generation to customize antimicrobial peptides for simplified manufacturing while maintaining their activity

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Summary

Introduction

Current methods in machine learning provide approaches for solving challenging, multiple constraint design problems. We offer a transparent machine learning approach to increase the comprehension of relationships between the specific design solutions in a design space as well as to broaden the understanding of the structure of the design space beyond a single cluster of design iterations. We apply this approach to designing antimicrobial peptides (AMPs) as alternative agents to antibiotics by incorporating a rough set theory method, a transparent machine learning approach, into an evolutionary design method

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