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用于镧系元素分离的 N-供体杂环配体的 HOMO 和 LUMO 能量的预测模型。

Predictive Models for HOMO and LUMO Energies of N-Donor Heterocycles as Ligands for Lanthanides Separation.

机构信息

A.N. Frumkin Institute of Physical Chemistry and Electrochemistry, Russian Academy of Sciences, Leninskiy prosp., 31, 119071, Moscow, Russia.

Chemistry Department, M.V. Lomonosov Moscow State University, 119991, Moscow, Russia.

出版信息

Mol Inform. 2018 Nov;37(11):e1800025. doi: 10.1002/minf.201800025. Epub 2018 Jul 4.

DOI:10.1002/minf.201800025
PMID:29971949
Abstract

Quantum chemical calculations combined with QSPR methodology reveal challenging perspectives for the solution of a number of fundamental and applied problems. In this work, we performed the PM7 and DFT calculations and QSPR modeling of HOMO and LUMO energies for polydentate N-heterocyclic ligands promising for the extraction separation of lanthanides because these values are related to the ligands selectivity in the respect to the target cations. Data for QSPR modeling comprised the PM7 calculated HOMO and LUMO energies of N-donor heterocycles, including several types of both known and virtual undescribed polydentate ligands. Ensemble modeling included various molecular fragments as descriptors and different variable selection techniques to build consensus models (CMs) on a training set of 388 ligands using external cross-validation. CMs were then verified to make predictions for two external test sets: 45 ligands (T1) that were similar to the ligands of the training set, and 1546 structures (T2), which were substantially different from the ligands of the training set. The consensus models predict well in 5-fold cross-validation (RMSE =0.097 eV, RMSE =0.064 eV), and on the external test sets (T1: RMSE =0.26 eV, RMSE =0.24 eV; T2: RMSE =0.26 eV, RMSE =0.17 eV). An analysis of the results reveals that substituents in heteroaromatic rings of the ligands and at the amide nitrogens can deeply influence their metal binding properties.

摘要

量子化学计算与 QSPR 方法相结合,为解决许多基础和应用问题带来了新的契机。在这项工作中,我们进行了 PM7 和 DFT 计算,并对具有多齿 N-杂环配体的 HOMO 和 LUMO 能量进行了 QSPR 建模,这些配体有望用于镧系元素的萃取分离,因为这些值与配体对目标阳离子的选择性有关。QSPR 建模数据包括 PM7 计算的 N-供体杂环的 HOMO 和 LUMO 能量,其中包括几种已知和虚拟的未描述的多齿配体。集合建模包括各种分子片段作为描述符和不同的变量选择技术,以使用外部交叉验证在 388 个配体的训练集上构建共识模型 (CM)。然后对 CM 进行验证,以对两个外部测试集进行预测:45 个配体 (T1),它们与训练集的配体相似,以及 1546 个结构 (T2),它们与训练集的配体有很大的不同。共识模型在 5 倍交叉验证 (RMSE=0.097 eV,RMSE=0.064 eV) 和外部测试集 (T1: RMSE=0.26 eV,RMSE=0.24 eV;T2: RMSE=0.26 eV,RMSE=0.17 eV) 中表现良好。对结果的分析表明,配体中杂芳环和酰胺氮上的取代基可以深刻影响其金属结合性能。

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