基于定量构效关系的1,3,4-恶二唑预测抗氧化模型的建立

I. O. Alisi, A. Uzairu, S. Abechi, S. Idris
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引用次数: 4

摘要

应用定量构效关系(QSAR)研究了1,3,4-恶二唑的自由基清除性能。恶二唑衍生物的整个数据集被最小化,随后在密度泛函理论(DFT)水平上结合Becke的三参数李-杨-帕尔混合泛函(B3LYP)混合泛函和6-311G*基集进行优化。Kennard-Stone算法用于将数据划分为训练集和测试集。训练集用于遗传函数算法(GFA)的QSAR模型开发,测试集用于验证开发的模型。已开发模型的适用范围是通过杠杆方法访问的。计算了每个描述符的变化膨胀因子、贡献度和平均效应。为数据集中的每个分子生成量子化学和分子描述符。开发了五个预测模型,这些模型符合可接受性的所有要求,并具有良好的验证结果。五个模型中最好的一个给出了以下验证结果:和c,rmsep。QSAR分析表明,路径长度为9(SHBint9)和拓扑半径(topoRadius)的潜在氢键的电子态强度描述符之和是影响1,3,4-恶二唑衍生物自由基清除活性的最关键的描述符。
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Development of Predictive Antioxidant Models for 1,3,4-Oxadiazoles by Quantitative Structure Activity Relationship
The free radical scavenging properties of 1,3,4-oxadiazoles have been explored by the application of quantitative structure activity relationship (QSAR) studies. The entire data set of the oxadiazole derivatives were minimized and subsequently optimized at the density functional theory (DFT) level in combination with the Becke's three-parameter Lee-Yang-Parr hybrid functional (B3LYP) hybrid functional and 6-311G* basis set. Kennard Stone algorithm was employed in data division into training and test sets. The training set were employed in QSAR model development by genetic function algorithm (GFA), while the test set were used to validate the developed models. The applicability domain of the developed model was accessed by the leverage approach. The varation inflation factor, degree of contribution and mean effect of each descriptor were calculated. Quantum chemical and molecular descriptors were generated for each molecule in the data set. Five predictive models that met all the requirements for acceptability with good validation results were developed. The best of the five models gave the following validation results: , , and c , rmsep . The QSAR analysis revealed that the sum of e-state descriptors of strength for potential hydrogen bonds of path length 9 ( SHBint9) and topological radius ( topoRadius ) are the most crucial descriptors that influence the free radical scavenging activities of 1,3,4-oxadiazole derivatives .
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来源期刊
CiteScore
1.60
自引率
0.00%
发文量
81
审稿时长
5 weeks
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