Department of Inorganic Chemistry, University of Sofia "St. Kl. Okhridski", Sofia, Bulgaria.
Department of Inorganic Chemistry, University of Sofia "St. Kl. Okhridski", Sofia, Bulgaria.
Chemosphere. 2022 Jan;287(Pt 2):132189. doi: 10.1016/j.chemosphere.2021.132189. Epub 2021 Sep 10.
Persistent Organic pollutants (POPs) are toxic chemicals with a shallow degradation rate and global negative impact. Their physicochemical is combined with the complex effects of long-term POPs accumulation in the environment and transport function through the food chain. That is why POPs have been linked to adverse effects on human health and animals. They circulate globally via different environmental pathways, and could be detected in regions far from their source of origin. The primary goal of the present study is to carry out classification of various representatives of POPs using different theoretical descriptors (molecular, structural) to develop quantitative structure-properties relationship (QSPR) models for predicting important properties POPs. Multivariate statistical methods such as hierarchical cluster analysis, principal components analysis and self-organizing maps were applied to reach excellent partitioning of 149 representatives of POPs into 4 classes using ten most appropriate descriptors (out of 63) defined by variable reduction procedure. The predictive capabilities of the defined classes could be applied as a pattern recognition for new and unidentified POPs, based only on structural properties that similar molecules may have. The additional self-organizing maps technique made it possible to visualize the feature-space and investigate possible patterns and similarities between POPs molecules. It contributes to confirmation of the proper classification into four classes. Based on SOM results, the effect of each variable and pattern formation has been presented.
持久性有机污染物 (POPs) 是具有低降解率和全球性负面影响的有毒化学物质。其物理化学性质与环境中长期 POPs 积累和通过食物链传输功能的复杂影响相结合。这就是为什么 POPs 与人类健康和动物的不良影响有关。它们通过不同的环境途径在全球范围内循环,并可在远离其来源的地区检测到。本研究的主要目的是使用不同的理论描述符(分子、结构)对各种 POPs 代表物进行分类,以开发预测 POPs 重要性质的定量构效关系 (QSPR) 模型。应用多元统计方法,如层次聚类分析、主成分分析和自组织映射,使用变量约简过程定义的 10 个最合适描述符(63 个中的 10 个)将 149 种 POPs 代表物分为 4 类,达到了极好的分区效果。基于相似分子可能具有的结构性质,所定义的类别的预测能力可作为新的和未识别的 POPs 的模式识别应用。自组织映射技术的附加应用使得在特征空间中可视化、研究 POPs 分子之间的可能模式和相似性成为可能。它有助于确认正确的四类分类。基于 SOM 的结果,呈现了每个变量和模式形成的影响。