基于结构的药物发现中的结合特异性和局部挫折。

IF 3.5 4区 医学 Q2 BIOCHEMISTRY & MOLECULAR BIOLOGY
Zhiqiang Yan, Yuqing Li, Ying Cao, Xuetao Tao, Jin Wang, Yongsheng Jiang
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引用次数: 0

摘要

进化优化了蛋白质,通过减少不利的能量状态来平衡稳定性和功能,从而导致蛋白质表面的柔韧性和挫折区域。这些局部受挫的区域对应于功能重要的区域,如配体结合和构象可塑性的活性位点和区域。典型的基于结构的药物发现策略主要集中在化合物筛选和靶点鉴定过程中增强结合亲和力。然而,这往往忽略了结合特异性,这对于区分特定的结合伙伴和竞争伙伴以及避免脱靶效应至关重要。根据能量景观理论,内在结合特异性的优化涉及全局最小化生物分子相互作用中存在的挫折。最近的研究表明,识别局部挫折为筛选与靶标结合的更具体的化合物提供了一种有希望的方法,并且量化结合特异性补充了仅关注结合亲和力的典型策略。本文综述了结合特异性和局部挫折计算量化的原理和策略,并讨论了它们在基于结构的药物发现中的应用。此外,鉴于人工智能在蛋白质科学中的进展,本文旨在促进人工智能与现有方法在结合特异性和局部挫折量化方面的整合。我们期望人工智能驱动的预测模型将加速药物发现过程,提高命中化合物的成功率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Binding Specificity and Local Frustration in Structure-based Drug Discovery.

Evolution has optimized proteins to balance stability and function by reducing unfavorable energy states, leading to regions of flexibility and frustration on protein surfaces. These locally frustrated regions correspond to functionally important areas, such as active sites and regions for ligand binding and conformational plasticity. Typical strategies of structure-based drug discovery primarily concentrate on enhancing the binding affinity during compound screening and target identification. However, this often overlooks the binding specificity, which is critical for distinguishing specific binding partners from competing ones and avoiding off-target effects. According to the energy landscape theory, optimization of the intrinsic binding specificity involves globally minimizing the frustrations existing in the biomolecular interactions. Recent studies have demonstrated that identifying local frustrations provides a promising approach for screening more specific compounds binding with targets, and quantifying binding specificity complements typical strategies that focus on binding affinity only. This review explores the principles and strategies of computationally quantifying the binding specificity and local frustrations and discusses their applications in structure-based drug discovery. Moreover, given the advancements of artificial intelligence in protein science, this review aims to motivate the integration of AI and available approaches in quantifying the binding specificity and local frustration. We expect that an AI-powered prediction model will accelerate the drug discovery process and improve the success rate of hit compounds.

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来源期刊
Current medicinal chemistry
Current medicinal chemistry 医学-生化与分子生物学
CiteScore
8.60
自引率
2.40%
发文量
468
审稿时长
3 months
期刊介绍: Aims & Scope Current Medicinal Chemistry covers all the latest and outstanding developments in medicinal chemistry and rational drug design. Each issue contains a series of timely in-depth reviews and guest edited thematic issues written by leaders in the field covering a range of the current topics in medicinal chemistry. The journal also publishes reviews on recent patents. Current Medicinal Chemistry is an essential journal for every medicinal chemist who wishes to be kept informed and up-to-date with the latest and most important developments.
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