Predicting antibacterial activity, efficacy, and hemotoxicity of peptides using an explainable machine learning framework

IF 3.7 3区 生物学 Q2 BIOCHEMISTRY & MOLECULAR BIOLOGY
Pranshul Bhatnagar , Yashi Khandelwal , Shagun Mishra , Sathish Kumar G , Arnab Dutta , Debirupa Mitra , Swati Biswas
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引用次数: 0

Abstract

Antimicrobial peptides have emerged as a potential alternative to combat the growing threat towards antimicrobial resistance. Owing to a large number of possible combinations of twenty naturally occurring amino acids, it is extremely resource intensive to experimentally identify whether a given peptide has desired therapeutic properties. To expedite the screening of therapeutic peptides, we propose a classification framework that can simultaneously predict the antibacterial activity, hemotoxicity, and efficacy against three most common pathogens i.e., Staphylococcus aureus, Escherichia coli, and Pseudomonas aeruginosa for any given peptide. The proposed framework uses support vector machine algorithm with amino acid compositions, sequence analysis, and physicochemical properties as features to develop three binary classifiers. Our models resulted in accuracies of 97.3 %, 86.2 %, and 84.1 % for antibacterial activity, combined efficacy against all three pathogens, and hemotoxicity, respectively. Explainable machine learning algorithm was implemented for each model to elucidate meaningful insights. It was evident that physicochemical properties along with the occurrence of certain amino acids play the most important role in determining antibacterial activity, efficacy, and hemolytic activity of peptides. The entire framework is made accessible freely in form of a web tool, which will further aid in rapid screening of antibacterial peptides with high therapeutic potential.

Abstract Image

利用可解释的机器学习框架预测多肽的抗菌活性、功效和血液毒性
抗菌肽已成为对抗日益增长的抗菌药耐药性威胁的潜在替代品。由于 20 种天然氨基酸可能存在大量的组合,要通过实验确定特定多肽是否具有理想的治疗特性,需要耗费大量资源。为了加快治疗肽的筛选,我们提出了一个分类框架,可以同时预测任何给定肽对三种最常见病原体(即金黄色葡萄球菌、大肠杆菌和绿脓杆菌)的抗菌活性、血液毒性和疗效。所提出的框架采用支持向量机算法,以氨基酸组成、序列分析和理化性质为特征,开发出三种二元分类器。我们的模型在抗菌活性、对所有三种病原体的综合效力和血液毒性方面的准确率分别为 97.3%、86.2% 和 84.1%。每个模型都采用了可解释的机器学习算法,以阐明有意义的见解。结果表明,物理化学特性和某些氨基酸的出现在决定多肽的抗菌活性、药效和溶血活性方面发挥着最重要的作用。整个框架以网络工具的形式免费提供,这将进一步帮助快速筛选出具有高治疗潜力的抗菌肽。
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来源期刊
Process Biochemistry
Process Biochemistry 生物-工程:化工
CiteScore
8.30
自引率
4.50%
发文量
374
审稿时长
53 days
期刊介绍: Process Biochemistry is an application-orientated research journal devoted to reporting advances with originality and novelty, in the science and technology of the processes involving bioactive molecules and living organisms. These processes concern the production of useful metabolites or materials, or the removal of toxic compounds using tools and methods of current biology and engineering. Its main areas of interest include novel bioprocesses and enabling technologies (such as nanobiotechnology, tissue engineering, directed evolution, metabolic engineering, systems biology, and synthetic biology) applicable in food (nutraceutical), healthcare (medical, pharmaceutical, cosmetic), energy (biofuels), environmental, and biorefinery industries and their underlying biological and engineering principles.
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