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Identification of Antimicrobial Peptides from Macroalgae with Machine Learning

机译:用机器学习鉴定大草原抗菌肽

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Antimicrobial peptides (AMPs) are essential components of innate host defense showing a broad spectrum of activity against bacteria, viruses, fungi, and multi-resistant pathogens. Despite their diverse nature, with high sequence similarities in distantly related mammals, invertebrate and plant species, their presence and functional roles in marine macroalgae remain largely unexplored. In recent years, computational tools have successfully predicted and identified encoded AMPs sourced from ubiquitous dual-functioning proteins, including histones and ribosomes, in various aquatic species. In this paper, a computational design is presented that uses machine learning classifiers, artificial neural networks and random forests, to identify putative AMPs in macroalgae. 42,213 protein sequences from five macroalgae were processed by the classifiers which identified 24 putative AMPs. While initial testing with AMP databases positively identifies these sequences as AMPs, an absolute determination cannot be made without in vitro extraction and purification techniques. If confirmed, these AMPs will be the first-ever identified in macroalgae.
机译:抗微生物肽(AMPs)是先天宿主防御的必要组分,显示对细菌,病毒,真菌和多种耐药病原体的广泛活性。尽管他们多样化的性质,但在远处相关的哺乳动物,无脊椎动物和植物物种中,海洋大草原的存在和功能作用具有高序列的相似性仍然很大程度上是未开发的。近年来,计算工具已成功预测和鉴定了从普遍存在的双重功能蛋白质,包括组蛋白和核糖体,包括各种水生物种的编码安培。在本文中,提出了一种计算设计,其使用机器学习分类器,人工神经网络和随机森林,以识别大理石凝固的AMP。通过鉴定24个推定安培的分类剂处理来自五种大甲骨的42,2,213个蛋白质序列。虽然使用AMP数据库的初始测试将这些序列呈现为AMPS,但不能在没有体外提取和净化技术的情况下进行绝对的确定。如果确认,这些放大器将是Macroalgae中的第一次识别。

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