用于抑制 S100 钙结合 A9(S100A9)蛋白的硅学五肽设计

IF 2.1 4区 化学 Q4 BIOCHEMISTRY & MOLECULAR BIOLOGY
Jintao Pan, Chong Lee Ng, Theam Soon Lim, Yee Siew Choong
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引用次数: 0

摘要

s100钙结合蛋白A9 (S100A9)在溶液中很容易组装成淀粉样蛋白聚集体。这些淀粉样蛋白聚集体引起视网膜毒性,并作为β纤维斑块的附着核心,导致阿尔茨海默病的进展。S100A9在多种恶性肿瘤中也有过表达。因此,对S100A9淀粉样蛋白形成的抑制具有重要意义。与小分子药物相比,短肽具有更高的特异性、效力和生物安全性。因此,鉴定抑制或破坏S100A9淀粉样蛋白聚集的潜在肽可能是有益的。典型的肽设计和鉴定通过实验手段需要广泛的准备程序,并限于随机选择的肽。因此,虚拟筛选为多肽药物开发提供了一种公正、高通量和经济有效的方法。在这里,我们报道了针对S100A9的硅五肽设计,并研究了五肽与S100A9的相互作用,导致肽与S100A9结合。方法对接模拟得到3个最高结合自由能的三肽(WWF、WPW和YWF),它们对已知的S100A9抑制剂(多酚橄榄苦苷苷元;齐墩果)。随后,从预先构建的五肽库中选择由三个核心三肽组成的五肽,通过对接模拟进行进一步评估。基于最佳对接自由能,选择了两个五肽(WWPWH和WPWYW),进行了500 ns分子动力学(MD)模拟,研究了导致与S100A9结合的重要特征。MMGBSA结合自由能计算结果显示,WWPWH、WPWYW和OleA的结合自由能分别为- 30.38、- 24.58和- 30.31 kcal/mol。五肽- s100a9识别的主要驱动力是静电相互作用。结果表明,在硅水平上,该工作流程能够设计出与OleA相当的潜在五肽,并可能成为未来用于分解S100A9原纤维的先导分子。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
In silico pentapeptide design for the inhibition between S100 calcium-binding A9 (S100A9) proteins

Context

S100 calcium-binding protein A9 (S100A9) is easily assembled into amyloid aggregates in solution. These amyloid aggregates cause retinal toxicity and act as an attachment core for Aβ fibrillar plaques that contribute to Alzheimer’s disease progression. The overexpression of S100A9 is also noticed in various malignancies. Therefore, the S100A9 amyloid formation inhibition is of significant interest. In comparison with small-molecule drugs, short peptides demonstrate higher specificity, potency, and biosafety. Hence, it could be beneficial to identify potential peptides to inhibit or disrupt S100A9 amyloid aggregation. Typical peptide design and identification via experimental means requires extensive preparation procedures and is limited to random selection of peptides. Virtual screening therefore offers an unbiased, higher throughput, and economically efficient approach in peptide drug development. Here, we reported in silico pentapeptide design against S100A9 and studied the interaction of pentapeptide with S100A9 that leads to the binding of the peptide with S100A9.

Method

Docking simulation resulted in three top binding free energy tripeptides (WWF, WPW, and YWF) with comparable affinity towards a known S100A9 inhibitor (polyphenol oleuropein aglycone; OleA). Subsequently, pentapeptides that consist of the three core tripeptides were selected from a pre-constructed pentapeptide library for further evaluation with docking simulation. Based on best docked binding free energy, two pentapeptides (WWPWH and WPWYW) were selected and subjected to 500 ns molecular dynamics (MD) simulation to study the important features that lead to the binding with S100A9. MMGBSA binding free energy calculation estimated − 30.38, − 24.58, and − 30.31 kcal/mol for WWPWH, WPWYW, and OleA, respectively. The main driving force for pentapeptide-S100A9 recognition was contributed by the electrostatic interaction. The results demonstrate that at in silico level, this workflow is able to design potential pentapeptides that are comparable with OleA and might be the lead molecule for future use to disaggregate S100A9 fibrils.

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来源期刊
Journal of Molecular Modeling
Journal of Molecular Modeling 化学-化学综合
CiteScore
3.50
自引率
4.50%
发文量
362
审稿时长
2.9 months
期刊介绍: The Journal of Molecular Modeling focuses on "hardcore" modeling, publishing high-quality research and reports. Founded in 1995 as a purely electronic journal, it has adapted its format to include a full-color print edition, and adjusted its aims and scope fit the fast-changing field of molecular modeling, with a particular focus on three-dimensional modeling. Today, the journal covers all aspects of molecular modeling including life science modeling; materials modeling; new methods; and computational chemistry. Topics include computer-aided molecular design; rational drug design, de novo ligand design, receptor modeling and docking; cheminformatics, data analysis, visualization and mining; computational medicinal chemistry; homology modeling; simulation of peptides, DNA and other biopolymers; quantitative structure-activity relationships (QSAR) and ADME-modeling; modeling of biological reaction mechanisms; and combined experimental and computational studies in which calculations play a major role.
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