Flavonoid as a Potent Antioxidant: Quantitative Structure-Activity Relationship Analysis, Mechanism Study, and Molecular Design by Synergizing Molecular Simulation and Machine Learning.

IF 2.7 2区 化学 Q3 CHEMISTRY, PHYSICAL The Journal of Physical Chemistry A Pub Date : 2024-08-01 Epub Date: 2024-07-18 DOI:10.1021/acs.jpca.4c03241
Ling Lu, Yajie Luan, Huaqi Wang, Yangyang Gao, Sizhu Wu, Xiuying Zhao
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Abstract

In this work, a quantitative structure-antioxidant activity relationship of flavonoids was performed using a machine learning (ML) method. To achieve lipid-soluble, highly antioxidant flavonoids, 398 molecular structures with various substitute groups were designed based on the flavonoid skeleton. The hydrogen dissociation energies (ΔG1, ΔG2, and ΔG3) related to multiple hydrogen atom transfer processes and the solubility parameter (δ) of flavonoids were calculated using molecular simulation. The group decomposition results and the calculated antioxidant parameters constituted the ML data set. The artificial neural network and random forest models were constructed to predict and analyze the contribution of the substitute groups and positions to the antioxidant activity. The results showed the hydroxyl group at positions B4', B5', and B6' and the branched alkyl group at position C3 in the flavonoid skeleton were the optimal choice for improving antioxidant activity and compatibility with apolar organic materials. Compared to the pyrogallol group-grafted flavonoid, the designed potent flavonoid decreased ΔG1 and δ by 2.2 and 15.1%, respectively, while ΔG2 and ΔG3 kept the favorable lower values. These findings suggest that an efficient flavonoid prefers multiple ortho-phenolic hydroxyl groups and suitable sites with hydrophobic groups. The combination of molecular simulation and the ML method may offer a new research approach for the molecular design of novel antioxidants.

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黄酮类化合物作为一种强效抗氧化剂:通过分子模拟和机器学习的协同作用进行定量结构-活性关系分析、机理研究和分子设计。
本研究采用机器学习(ML)方法对黄酮类化合物的结构-抗氧化活性关系进行了定量分析。为了实现脂溶性高抗氧化黄酮类化合物,研究人员在黄酮类化合物骨架的基础上设计了398种具有不同替代基团的分子结构。利用分子模拟计算了与多个氢原子转移过程相关的氢离解能(ΔG1、ΔG2 和 ΔG3)以及黄酮类化合物的溶解度参数(δ)。基团分解结果和计算得出的抗氧化参数构成了 ML 数据集。建立了人工神经网络和随机森林模型来预测和分析替代基团和位置对抗氧化活性的贡献。结果表明,黄酮类骨架中 B4'、B5'和 B6'位的羟基和 C3 位的支链烷基是提高抗氧化活性和与极性有机物相容性的最佳选择。与焦醛基团接枝的类黄酮相比,所设计的强效类黄酮的ΔG1和δ分别降低了2.2%和15.1%,而ΔG2和ΔG3则保持了有利的较低值。这些发现表明,高效黄酮类化合物偏好多个正交酚羟基和带有疏水基团的合适位点。分子模拟与 ML 方法的结合可为新型抗氧化剂的分子设计提供一种新的研究方法。
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来源期刊
The Journal of Physical Chemistry A
The Journal of Physical Chemistry A 化学-物理:原子、分子和化学物理
CiteScore
5.20
自引率
10.30%
发文量
922
审稿时长
1.3 months
期刊介绍: The Journal of Physical Chemistry A is devoted to reporting new and original experimental and theoretical basic research of interest to physical chemists, biophysical chemists, and chemical physicists.
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