基于持续定向标志拉普拉斯(PDFL)的机器学习用于蛋白质配体结合亲和力预测。

IF 5.7 1区 化学 Q2 CHEMISTRY, PHYSICAL
Mushal Zia, Benjamin Jones, Hongsong Feng, Guo-Wei Wei
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引用次数: 0

摘要

分子和生物分子网络中的方向性对于准确表达蛋白质配体结合、信号转导和生物通路中存在的复杂、动态和不对称的相互作用性质起着重要作用。大多数传统的拓扑数据分析(TDA)技术,如持久同源性(PH)和持久拉普拉斯(PL),在其标准形式中都忽略了这一点。为了解决这个问题,我们提出了持久有向标志拉普拉卡方(PDFL),它结合了有向标志复合体,以解释由极化、基因调控、异质相互作用等产生的具有方向性的边缘。这项研究标志着 PDFL 的首次应用,提供了光谱图理论与机器学习相结合的深入分析。除了卓越的准确性和可靠性,PDFL 模型还具有简便性,只需原始输入,无需复杂的数据处理。我们在三个流行基准(即 PDBbind v2007、v2013 和 v2016)上验证了我们的多核 PDFL 模型与其他一流方法的得分能力。计算结果表明,在蛋白质-配体结合亲和力预测方面,所提出的 PDFL 模型优于竞争对手,这表明 PDFL 是蛋白质工程、药物发现以及科学和工程领域一般应用的一种有前途的工具。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Persistent Directed Flag Laplacian (PDFL)-Based Machine Learning for Protein-Ligand Binding Affinity Prediction.

Directionality in molecular and biomolecular networks plays an important role in the accurate representation of the complex, dynamic, and asymmetrical nature of interactions present in protein-ligand binding, signal transduction, and biological pathways. Most traditional techniques of topological data analysis (TDA), such as persistent homology (PH) and persistent Laplacian (PL), overlook this aspect in their standard form. To address this, we present the persistent directed flag Laplacian (PDFL), which incorporates directed flag complexes to account for edges with directionality originated from polarization, gene regulation, heterogeneous interactions, etc. This study marks the first application of PDFL, providing an in-depth analysis of spectral graph theory combined with machine learning. In addition to its superior accuracy and reliability, the PDFL model offers simplicity by requiring only raw inputs without complex data processing. We validated our multikernel PDFL model for its scoring power against other state-of-the-art methods on three popular benchmarks, namely PDBbind v2007, v2013, and v2016. The computational results indicate that the proposed PDFL model outperforms competitors in protein-ligand binding affinity predictions, suggesting that PDFL is a promising tool for protein engineering, drug discovery, and general applications in science and engineering.

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来源期刊
Journal of Chemical Theory and Computation
Journal of Chemical Theory and Computation 化学-物理:原子、分子和化学物理
CiteScore
9.90
自引率
16.40%
发文量
568
审稿时长
1 months
期刊介绍: The Journal of Chemical Theory and Computation invites new and original contributions with the understanding that, if accepted, they will not be published elsewhere. Papers reporting new theories, methodology, and/or important applications in quantum electronic structure, molecular dynamics, and statistical mechanics are appropriate for submission to this Journal. Specific topics include advances in or applications of ab initio quantum mechanics, density functional theory, design and properties of new materials, surface science, Monte Carlo simulations, solvation models, QM/MM calculations, biomolecular structure prediction, and molecular dynamics in the broadest sense including gas-phase dynamics, ab initio dynamics, biomolecular dynamics, and protein folding. The Journal does not consider papers that are straightforward applications of known methods including DFT and molecular dynamics. The Journal favors submissions that include advances in theory or methodology with applications to compelling problems.
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