In silico local QSAR modeling of bioconcentration factor of organophosphate pesticides.

In Silico Pharmacology Pub Date : 2021-04-04 eCollection Date: 2021-01-01 DOI:10.1007/s40203-021-00087-w
Purusottam Banjare, Balaji Matore, Jagadish Singh, Partha Pratim Roy
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Abstract

The persistent and accumulative nature of the pesticide of indiscriminate use emerged as ecotoxicological hazards. The bioconcentration factor (BCF) is one of the key elements for environmental assessments of the aquatic compartment. Limitations of prediction accuracy of global model facilitate the use of local predictive models in toxicity modeling of emerging compounds. The BCF data of diverse organophosphate (n = 55) was collected from the Pesticide Properties Database and used as a model data set in the present study to explore physicochemical properties and structural alert concerning BCF. The structures were downloaded from Pubchem, ChemSpider database. Two splitting techniques (biological sorting and structure-based) were used to divide the whole dataset into training and test set compounds. The QSAR study was carried out with two-dimensional descriptors (2D) calculated from PaDEL by applying genetic algorithm (GA) as chemometric tools using QSARINS software. The models were statistically robust enough both internally as well as externally (Q2: 0.709-0.722, Q2 Ext: 0.717-0.903, CCC: 0.857-0.880). Overall molecular mass, presence of fused, and heterocyclic ring with electron-withdrawing groups affect the BCF value. The developed models reflected extended applicability domain (AD) and reliable predictions than the reported models for the studied chemical class. Finally, predictions of unknown organophosphate pesticides and the toxic nature of unknown organophosphate pesticides were commented on. These findings may be useful for the scientific community in prioritizing high potential pesticides of organophosphate class.

有机磷农药生物富集因子的硅学局部 QSAR 模型。
滥用农药的持久性和累积性成为生态毒理学危害。生物富集系数(BCF)是水生环境评估的关键要素之一。由于全局模型的预测精度有限,因此在对新出现的化合物进行毒性建模时需要使用局部预测模型。本研究从农药性质数据库中收集了多种有机磷化合物(n = 55)的 BCF 数据,并将其作为模型数据集,以探索与 BCF 有关的理化性质和结构警报。这些结构是从 Pubchem、ChemSpider 数据库下载的。采用两种分割技术(生物分类和基于结构)将整个数据集分为训练集和测试集化合物。使用 QSARINS 软件,以遗传算法(GA)作为化学计量工具,利用 PaDEL 计算出的二维描述符(2D)进行 QSAR 研究。这些模型在内部和外部都具有足够的统计稳健性(Q2:0.709-0.722,Q2 Ext:0.717-0.903,CCC:0.857-0.880)。总分子质量、是否存在融合基团以及杂环上是否有夺电子基团都会影响生物浓缩系数值。所开发的模型比已报道的模型对所研究的化学品类别的适用域(AD)更广,预测结果更可靠。最后,对未知有机磷农药的预测和未知有机磷农药的毒性性质进行了评论。这些发现可能有助于科学界对高潜力的有机磷类农药进行优先排序。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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