Avram Sorin, Funar-Timofei Simona, Borota Ana, Chennamaneni Sridhar Rao, Manchala Anil Kumar, Muresan Sorel
Department of Computational Chemistry, Institute of Chemistry of Romanian Academy Timisoara, 24 Mihai Viteazul Avenue, 300223 Timisoara, Romania.
GVK Biosciences Pvt. Ltd., S1, Phase-1, Technocrats Industrial Estate, Balanagar Hyderabad, 500 037 India.
J Cheminform. 2014 Sep 12;6(1):42. doi: 10.1186/s13321-014-0042-6. eCollection 2014 Dec.
The design of chemical libraries, an early step in agrochemical discovery programs, is frequently addressed by means of qualitative physicochemical and/or topological rule-based methods. The aim of this study is to develop quantitative estimates of herbicide- (QEH), insecticide- (QEI), fungicide- (QEF), and, finally, pesticide-likeness (QEP). In the assessment of these definitions, we relied on the concept of desirability functions.
We found a simple function, shared by the three classes of pesticides, parameterized particularly, for six, easy to compute, independent and interpretable, molecular properties: molecular weight, logP, number of hydrogen bond acceptors, number of hydrogen bond donors, number of rotatable bounds and number of aromatic rings. Subsequently, we describe the scoring of each pesticide class by the corresponding quantitative estimate. In a comparative study, we assessed the performance of the scoring functions using extensive datasets of patented pesticides.
The hereby-established quantitative assessment has the ability to rank compounds whether they fail well-established pesticide-likeness rules or not, and offer an efficient way to prioritize (class-specific) pesticides. These findings are valuable for the efficient estimation of pesticide-likeness of vast chemical libraries in the field of agrochemical discovery. Graphical AbstractQuantitative models for pesticide-likeness were derived using the concept of desirability functions parameterized for six, easy to compute, independent and interpretable, molecular properties: molecular weight, logP, number of hydrogen bond acceptors, number of hydrogen bond donors, number of rotatable bounds and number of aromatic rings.
化学文库的设计是农用化学品发现计划的早期步骤,通常通过基于定性物理化学和/或拓扑规则的方法来解决。本研究的目的是开发除草剂相似性(QEH)、杀虫剂相似性(QEI)、杀菌剂相似性(QEF)以及最终的农药相似性(QEP)的定量估计。在评估这些定义时,我们依赖于合意函数的概念。
我们发现了一个简单的函数,这三类农药都有,特别针对六个易于计算、独立且可解释的分子性质进行了参数化:分子量、logP、氢键受体数量、氢键供体数量、可旋转键数量和芳香环数量。随后,我们描述了通过相应的定量估计对每种农药类别的评分。在一项比较研究中,我们使用大量专利农药数据集评估了评分函数的性能。
由此建立的定量评估能够对化合物进行排名,无论它们是否符合既定的农药相似性规则,并提供一种有效的方法来对(特定类别的)农药进行优先级排序。这些发现对于高效估计农用化学品发现领域中大量化学文库的农药相似性具有重要价值。图形摘要使用针对六个易于计算、独立且可解释的分子性质(分子量、logP、氢键受体数量、氢键供体数量、可旋转键数量和芳香环数量)进行参数化的合意函数概念,得出了农药相似性的定量模型。