Katritzky Alan R, Pacureanu Liliana, Dobchev Dimitar, Karelson Mati
Center for Heterocyclic Compounds, Department of Chemistry, University of Florida, Gainesville, Florida 32611, USA.
J Chem Inf Model. 2007 May-Jun;47(3):782-93. doi: 10.1021/ci600462d. Epub 2007 May 12.
A data set of 181 diverse anionic surfactants has been investigated to relate the logarithm of critical micelle concentration (cmc) to the molecular structure using Comprehensive Descriptors for Structural and Statistical Analysis (CODESSA Pro) software. A fragment approach provided superior quantitative structure-property relationship (QSPR) models in terms of statistical characteristics and predictive ability. The regression equations provided insight into the structural features of surfactants that influence cmc. The most obvious influence on cmc was manifested by hydrophobic fragments expressed by the topological and geometrical descriptors, while the hydrophilic fragment is represented by constitutional, geometrical, and charge related descriptors. Significantly important molecular descriptors in the selected QSPR models were topological, solvational, and charge-related descriptors as the driving force of the intermolecular interactions between anionic surfactants and water.
使用结构与统计分析综合描述符(CODESSA Pro)软件,对包含181种不同阴离子表面活性剂的数据集进行了研究,以将临界胶束浓度(cmc)的对数与分子结构相关联。就统计特征和预测能力而言,片段法提供了更优的定量结构-性质关系(QSPR)模型。回归方程揭示了影响cmc的表面活性剂结构特征。对cmc最明显的影响由拓扑和几何描述符所表示的疏水片段体现,而亲水片段由组成、几何和电荷相关描述符表示。所选QSPR模型中显著重要的分子描述符是拓扑、溶剂化和电荷相关描述符,它们是阴离子表面活性剂与水之间分子间相互作用的驱动力。