Yuanzhe Zhou, Shi-Jie Chen
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引用次数: 0

摘要

由于 RNA 分子在细胞内具有多种功能和调控作用,它们已成为前景广阔的治疗靶标。RNA 靶向药物发现中的计算建模为加快新型小分子化合物的发现提供了重要机会。然而,与蛋白质靶向药物设计相比,这一领域遇到了独特的挑战,主要原因是实验数据有限,而且目前的模型无法充分解决 RNA 在配体识别过程中的构象灵活性问题。尽管存在这些挑战,但仍有一些研究利用基于结构的方法或定量结构-活性关系(QSAR)模型成功鉴定出了活性 RNA 靶向化合物。本综述概述了 RNA-小分子相互作用建模的最新进展,强调了计算方法在 RNA 靶向药物发现中的实际应用。此外,我们还调查了现有的核酸-小分子相互作用数据库。随着人们对 RNA-小分子相互作用的兴趣与日俱增,编目数据库也在不断扩大,预计该领域将迅速发展。新颖的计算模型有望提高强效和选择性小分子调节剂的鉴定水平,满足治疗需求。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Harnessing Computational Approaches for RNA-Targeted Drug Discovery.

RNA molecules have emerged as promising therapeutic targets due to their diverse functional and regulatory roles within cells. Computational modeling in RNA-targeted drug discovery presents a significant opportunity to expedite the discovery of novel small molecule compounds. However, this field encounters unique challenges compared to protein-targeted drug design, primarily due to limited experimental data availability and current models' inability to adequately address RNA's conformational flexibility during ligand recognition. Despite these challenges, several studies have successfully identified active RNA-targeting compounds using structure-based approaches or quantitative structure-activity relationship (QSAR) models. This review offers an overview of recent advancements in modeling RNA-small molecule interactions, emphasizing practical applications of computational methods in RNA-targeted drug discovery. Additionally, we survey existing databases that catalog nucleic acid-small molecule interactions. As interest in RNA-small molecule interactions grows and curated databases expand, the field anticipates rapid development. Novel computational models are poised to enhance the identification of potent and selective small-molecule modulators for therapeutic needs.

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