Bak Andrzej, Wyszomirski Miroslaw, Magdziarz Tomasz, Smolinski Adam, Polanski Jaroslaw
Department of Organic Chemistry, Institute of Chemistry, University of Silesia, PL-40-006 Katowice, Poland.
Comb Chem High Throughput Screen. 2014;17(6):485-502. doi: 10.2174/1386207317666140205195252.
A comparative structure-affinity study of anthraquinone dyes adsorption on cellulose fibre is presented in this paper. We used receptor-dependent 4D-QSAR methods based on grid and neural (SOM) methodology coupled with IVEPLS procedure. The applied RD 4D-QSAR approach focuses mainly on the ability of mapping dye properties to verify the concept of tinctophore in dye chemistry. Moreover, the stochastic SMV procedure to investigate the predictive ability of the method for a large population of 4D-QSAR models was employed. The obtained findings were compared with the previously published RI 3D/4D-QSAR models for the corresponding anthraquinone trainings sets. The neutral (protonated) and anionic (deprotonated) forms of anthraquinone scaffold were examined in order to deal with the uncertainty of the dye ionization state. The results are comparable to both the neutral and anionic dye sets regardless of the occupancy and charge descriptors applied, respectively. It is worth noting that the SOM-4D-QSAR behaves comparably to the cubic counterpart which is observed in each training/test subset specification (4D-QSAR-Jo vs SOM- 4D-QSARo and 4D-QSAR-Jq vs SOM-4D-QSARq). Additionally, an attempt was made to specify a common set of variables contributing significantly to dye-fiber binding affinity; it was simultaneously performed for some arbitrary chosen SMV models. The presented RD 4D-QSAR methodology together with IVE-PLS procedure provides a robust and predictive modeling technique, which facilitates detailed specification of the molecular motifs significantly contributing to the fiber-dye affinity.
本文介绍了蒽醌染料在纤维素纤维上吸附的结构-亲和力比较研究。我们使用了基于网格和神经(SOM)方法并结合IVEPLS程序的受体依赖性4D-QSAR方法。所应用的RD 4D-QSAR方法主要关注映射染料性质以验证染料化学中发色团概念的能力。此外,采用了随机SMV程序来研究该方法对大量4D-QSAR模型的预测能力。将获得的结果与先前发表的针对相应蒽醌训练集的RI 3D/4D-QSAR模型进行了比较。研究了蒽醌支架的中性(质子化)和阴离子(去质子化)形式,以处理染料电离状态的不确定性。无论分别应用的占有率和电荷描述符如何,结果与中性和阴离子染料集均具有可比性。值得注意的是,在每个训练/测试子集规范(4D-QSAR-Jo与SOM-4D-QSARo以及4D-QSAR-Jq与SOM-4D-QSARq)中观察到,SOM-4D-QSAR的表现与三次方对应物相当。此外,还尝试指定一组对染料-纤维结合亲和力有显著贡献的共同变量;同时对一些任意选择的SMV模型进行了此操作。所提出的RD 4D-QSAR方法与IVE-PLS程序一起提供了一种强大的预测建模技术,有助于详细指定对纤维-染料亲和力有显著贡献的分子基序。