Accelerating antimicrobial peptide design: Leveraging deep learning for rapid discovery.

IF 2.6 3区 综合性期刊 Q1 MULTIDISCIPLINARY SCIENCES PLoS ONE Pub Date : 2024-12-20 eCollection Date: 2024-01-01 DOI:10.1371/journal.pone.0315477
Ahmad M Al-Omari, Yazan H Akkam, Ala'a Zyout, Shayma'a Younis, Shefa M Tawalbeh, Khaled Al-Sawalmeh, Amjed Al Fahoum, Jonathan Arnold
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Abstract

Antimicrobial peptides (AMPs) are excellent at fighting many different infections. This demonstrates how important it is to make new AMPs that are even better at eliminating infections. The fundamental transformation in a variety of scientific disciplines, which led to the emergence of machine learning techniques, has presented significant opportunities for the development of antimicrobial peptides. Machine learning and deep learning are used to predict antimicrobial peptide efficacy in the study. The main purpose is to overcome traditional experimental method constraints. Gram-negative bacterium Escherichia coli is the model organism in this study. The investigation assesses 1,360 peptide sequences that exhibit anti- E. coli activity. These peptides' minimal inhibitory concentrations have been observed to be correlated with a set of 34 physicochemical characteristics. Two distinct methodologies are implemented. The initial method involves utilizing the pre-computed physicochemical attributes of peptides as the fundamental input data for a machine-learning classification approach. In the second method, these fundamental peptide features are converted into signal images, which are then transmitted to a deep learning neural network. The first and second methods have accuracy of 74% and 92.9%, respectively. The proposed methods were developed to target a single microorganism (gram negative E.coli), however, they offered a framework that could potentially be adapted for other types of antimicrobial, antiviral, and anticancer peptides with further validation. Furthermore, they have the potential to result in significant time and cost reductions, as well as the development of innovative AMP-based treatments. This research contributes to the advancement of deep learning-based AMP drug discovery methodologies by generating potent peptides for drug development and application. This discovery has significant implications for the processing of biological data and the computation of pharmacology.

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加速抗菌肽设计:利用深度学习实现快速发现。
抗菌肽(AMPs)在对抗许多不同的感染方面表现出色。这证明了制造在消除感染方面更好的新型抗菌肽是多么重要。各种科学学科的根本转变导致了机器学习技术的出现,为抗菌肽的开发提供了重要的机会。在研究中,机器学习和深度学习被用于预测抗菌肽的功效。主要目的是克服传统实验方法的限制。革兰氏阴性杆菌大肠杆菌是本研究的模式生物。该研究评估了1,360个表现出抗大肠杆菌活性的肽序列。这些肽的最低抑制浓度已被观察到与一组34个物理化学特性相关。实现了两种不同的方法。最初的方法包括利用预先计算的肽的物理化学属性作为机器学习分类方法的基本输入数据。在第二种方法中,这些基本肽特征被转换成信号图像,然后传输到深度学习神经网络。第一种和第二种方法的准确率分别为74%和92.9%。所提出的方法是针对单一微生物(革兰氏阴性大肠杆菌)开发的,然而,它们提供了一个框架,可以潜在地适用于其他类型的抗菌、抗病毒和抗癌肽,并进一步验证。此外,它们有可能显著减少时间和成本,并开发出创新的基于amp的治疗方法。本研究通过生成用于药物开发和应用的有效肽,促进了基于深度学习的AMP药物发现方法的发展。这一发现对生物学数据的处理和药理学计算具有重要意义。
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来源期刊
PLoS ONE
PLoS ONE 生物-生物学
CiteScore
6.20
自引率
5.40%
发文量
14242
审稿时长
3.7 months
期刊介绍: PLOS ONE is an international, peer-reviewed, open-access, online publication. PLOS ONE welcomes reports on primary research from any scientific discipline. It provides: * Open-access—freely accessible online, authors retain copyright * Fast publication times * Peer review by expert, practicing researchers * Post-publication tools to indicate quality and impact * Community-based dialogue on articles * Worldwide media coverage
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