通过机器学习策略鉴定凡纳滨对虾抗菌肽及其功能类型的一种先进方法。
An advanced approach to identify antimicrobial peptides and their function types for penaeus through machine learning strategies.
机构信息
Department of Computer Science, School of Information Science and Technology, Xiamen University, Xiamen, 361005, China.
Sparebanken Vest, Jonsvollsgaten 2, 5011 Bergen, Bergen, 5058, Norway.
出版信息
BMC Bioinformatics. 2019 Jun 10;20(Suppl 8):291. doi: 10.1186/s12859-019-2766-9.
BACKGROUND
Antimicrobial peptides (AMPs) are essential components of the innate immune system and can protect the host from various pathogenic bacteria. The marine environment is known to be one of the richest sources for AMPs. Effective usage of AMPs and their derivatives can greatly improve the immunity and breeding survival rate of aquatic products. It is highly desirable to develop computational tools for rapidly and accurately identifying AMPs and their functional types, for the purpose of helping design new and more effective antimicrobial agents.
RESULTS
In this study, we made an attempt to develop an advanced machine learning based computational approach, MAMPs-Pred, for identification of AMPs and its function types. Initially, SVM-prot 188-D features were extracted that were subsequently used as input to a two-layer multi-label classifier. In specific, the first layer is to identify whether it is an AMP by applying RF classifier, and the second layer addresses the multi-type problem by identifying the activites or function types of AMPs by applying PS-RF and LC-RF classifiers. To benchmark the methods,the MAMPs-Pred method is also compared with existing best-performing methods in literature and has shown an improved identification accuracy.
CONCLUSIONS
The results reported in this study indicate that the MAMP-Pred method achieves high performance for identifying AMPs and its functional types.The proposed approach is believed to supplement the tools and techniques that have been developed in the past for predicting AMPs and their function types.
背景
抗菌肽 (AMPs) 是先天免疫系统的重要组成部分,可以保护宿主免受各种病原菌的侵害。海洋环境是 AMPs 的丰富来源之一。有效利用 AMPs 及其衍生物可以极大地提高水产养殖的免疫力和繁殖成活率。因此,开发快速准确识别 AMPs 及其功能类型的计算工具,对于帮助设计新型、更有效的抗菌剂具有重要意义。
结果
在本研究中,我们尝试开发了一种基于先进机器学习的计算方法 MAMPs-Pred,用于识别 AMPs 及其功能类型。首先,提取了 SVM-prot 188-D 特征,随后将其用作两层多标签分类器的输入。具体来说,第一层通过应用 RF 分类器来识别是否为 AMP,第二层通过应用 PS-RF 和 LC-RF 分类器来识别 AMPs 的活性或功能类型来解决多类型问题。为了进行基准测试,还将 MAMPs-Pred 方法与文献中表现最佳的现有方法进行了比较,并显示出了更高的识别准确性。
结论
本研究报告的结果表明,MAMP-Pred 方法在识别 AMPs 及其功能类型方面具有出色的性能。该方法有望补充过去开发的用于预测 AMPs 及其功能类型的工具和技术。
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本文引用的文献
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