利用几何图学习提高语言模型预测结构作为对接目标的可靠性

IF 6.8 1区 医学 Q1 CHEMISTRY, MEDICINAL
Chao Shen, Xiaoqi Han, Heng Cai, Tong Chen, Yu Kang, Peichen Pan, Xiangyang Ji, Chang-Yu Hsieh*, Yafeng Deng* and Tingjun Hou*, 
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引用次数: 0

摘要

近年来,应用人工智能技术灵活地模拟配体与蛋白质之间的结合引起了广泛的关注,但其适用性仍有待提高。在这项研究中,我们开发了CarsiDock-Flex,这是一种新的两步灵活对接范例,可以直接从预测的结构中生成绑定姿态。CarsiDock- flex包括一个称为carsi诱导的等变深度学习模型,该模型通过诱导特定配体来改进esmfold预测的蛋白质口袋,以及我们现有的CarsiDock算法,将配体重新连接到诱导的结合口袋中。大量的评估证明了carsiinduced的有效性,它可以在许多情况下成功地引导esmfold预测的口袋转变为它们的全息构象,从而导致CarsiDock-Flex即使在未见过的序列上也具有优越的对接精度。总的来说,我们的方法为蛋白质-配体结合姿势的灵活建模提供了一种新颖的设计,为更深层次地理解蛋白质-配体相互作用铺平了道路,这些相互作用解释了蛋白质的灵活性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Improving the Reliability of Language Model-Predicted Structures as Docking Targets through Geometric Graph Learning

Improving the Reliability of Language Model-Predicted Structures as Docking Targets through Geometric Graph Learning

Applying artificial intelligence techniques to flexibly model the binding between the ligand and protein has attracted extensive interest in recent years, but their applicability remains improved. In this study, we have developed CarsiDock-Flex, a novel two-step flexible docking paradigm that generates binding poses directly from predicted structures. CarsiDock-Flex consists of an equivariant deep learning-based model termed CarsiInduce to refine ESMFold-predicted protein pockets with the induction of specific ligands and our existing CarsiDock algorithm to redock the ligand into the induced binding pockets. Extensive evaluations demonstrate the effectiveness of CarsiInduce, which can successfully guide the transition of ESMFold-predicted pockets into their holo-like conformations for numerous cases, thus leading to the superior docking accuracy of CarsiDock-Flex even on unseen sequences. Overall, our approach offers a novel design for flexible modeling of protein–ligand binding poses, paving the way for a deeper understanding of protein–ligand interactions that account for protein flexibility.

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来源期刊
Journal of Medicinal Chemistry
Journal of Medicinal Chemistry 医学-医药化学
CiteScore
4.00
自引率
11.00%
发文量
804
审稿时长
1.9 months
期刊介绍: The Journal of Medicinal Chemistry is a prestigious biweekly peer-reviewed publication that focuses on the multifaceted field of medicinal chemistry. Since its inception in 1959 as the Journal of Medicinal and Pharmaceutical Chemistry, it has evolved to become a cornerstone in the dissemination of research findings related to the design, synthesis, and development of therapeutic agents. The Journal of Medicinal Chemistry is recognized for its significant impact in the scientific community, as evidenced by its 2022 impact factor of 7.3. This metric reflects the journal's influence and the importance of its content in shaping the future of drug discovery and development. The journal serves as a vital resource for chemists, pharmacologists, and other researchers interested in the molecular mechanisms of drug action and the optimization of therapeutic compounds.
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