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Ensemble QSAR: A QSAR method based on conformational ensembles and metric descriptors

机译:集成QSAR:一种基于构象集成和度量描述符的QSAR方法

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Quantitative structure-activity relationship (QSAR) is the most versatile tool in computer-assisted molecular design. One conceptual drawback seen in QSAR approaches is the "one chemical-one structure-one parameter value" dogma where the model development is based on physicochemical description for a single molecular conformation, while ignoring the rest of the conformational space. It is well known that molecules have several low-energy conformations populated at physiological temperature, and each conformer makes a significant impact on associated properties such as biological activity. At the level of molecular interaction, the dynamics around the molecular structure is of prime essence rather than the average structure. As a step toward understanding the role of these discrete microscopic states in biological activity, we have put together a theoretically rigorous and computationally tractable formalism coined as eQSAR. In this approach, the biological activity is modeled as a function of physicochemical description for a selected set of low-energy conformers, rather than that's for a single lowest energy conformation. Eigenvalues derived from the "Physicochemical property integrated distance matrices" (PD-matrices) that encompass both 3D structure and physicochemical properties, have been used as descriptors; is a novel addition. eQSAR is validated on three peptide datasets and explicitly elaborated for bradykinin-potentiating peptides. The conformational ensembles were generated by a simple molecular dynamics and consensus dynamics approaches. The eQSAR models are statistically significant and possess the ability to select the most biologically relevant conformation(s) with the relevant physicochemical attributes that have the greatest meaning for description of the biological activity.
机译:定量构效关系(QSAR)是计算机辅助分子设计中最通用的工具。在QSAR方法中看到的一个概念上的缺陷是“一个化学一结构一个参数值”教条,其中模型开发基于对单个分子构象的物理化学描述,而忽略了其余的构象空间。众所周知,分子在生理温度下具有几个低能构象,并且每个构象异构体都会对相关的特性(例如生物活性)产生重大影响。在分子相互作用的水平上,围绕分子结构的动力学是主要本质,而不是平均结构。为了理解这些离散的微观状态在生物活性中的作用,我们将一种被称为eQSAR的理论上严格且在计算上易于处理的形式主义组合在一起。在这种方法中,针对选定的一组低能量构象体,将生物活性建模为物理化学描述的函数,而不是针对单个最低能量构象。从“物理化学性质综合距离矩阵”(PD矩阵)得到的特征值已被用作描述子,该矩阵包含3D结构和物理化学性质。是一种新颖的补充。 eQSAR在三个肽数据集上得到验证,并明确阐述了缓激肽增强肽。通过简单的分子动力学和共有动力学方法生成构象合奏。 eQSAR模型具有统计学意义,并且具有选择具有相关理化属性的,生物学上最相关的构象的能力,这些构想对描述生物活性具有最大的意义。

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