Multi-conformational Ligand Representation in 4D-QSAR: Reducing the Bias Associated with Ligand Alignment

A. Vedani, D. McMasters, M. Dobler
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引用次数: 24

Abstract

Quantitative structure-activity relationship (QSAR) is an area of computational research which builds mathematical or atomistic models to predict biological activities of molecules. While more powerful approaches make use of a genetic algorithm to reduce the bias with respect to model construction, the predictive power of the resulting surrogate still critically depends on the spatial alignment of the ligand molecules used to construct it. The 4D-QSAR concept Quasar developed at our laboratory not only takes local induced fit and H-bond flip-flop into account but also allows for the representation of the ligand molecules by an ensemble of conformations and/or orientations. The contribution of a single entity within this ensemble to the total ligand-receptor interaction energy is determined by a Boltzmann criterion. The three-dimensional surrogate is represented by a family of receptor-surface models, populated with atomistic properties—hydrogen bonds, salt bridges, hydrophobic particles, and solvent—mapped onto it. Quasar has been used to establish QSARs for the enzyme dopamine β-hydroxylase and for the aryl hydrocarbon receptor. The surrogates were able to predict free energies of ligand binding, ΔG°, for external sets of 15 and 26 test ligand molecules, respectively, to within 0.7 kcal/mol (rms) of the experimental value, with the largest individual deviation not exceeding 1.3 kcal/mol. The results indicate that the use of a multiple-ligand representation is superior to a single-conformer concept and reduces the user bias associated with the ligand alignment. Moreover, the selection protocol demonstrates that the technique is capable of identifying a small number of active conformations and does not prefer a larger selection of lesser-contributing entities.
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4D-QSAR中的多构象配体表征:减少与配体对齐相关的偏差
定量构效关系(Quantitative structure-activity relationship, QSAR)是建立数学或原子模型来预测分子生物活性的一个计算研究领域。虽然更强大的方法利用遗传算法来减少模型构建方面的偏差,但所得到的替代物的预测能力仍然严重依赖于用于构建它的配体分子的空间排列。我们实验室开发的4D-QSAR概念类星体不仅考虑了局部诱导配合和氢键触发器,而且还允许通过构象和/或取向的集合来表示配体分子。该系综内单个实体对配体-受体总相互作用能的贡献由玻尔兹曼准则确定。三维替代物由一系列受体表面模型表示,这些模型具有原子性质——氢键、盐桥、疏水粒子和溶剂——映射到其上。Quasar已被用来建立多巴胺β-羟化酶和芳烃受体的qsar。对于15个和26个测试配体分子的外部组合,该代物能够分别预测配体结合的自由能ΔG°,与实验值的误差不超过0.7 kcal/mol (rms),最大个体偏差不超过1.3 kcal/mol。结果表明,使用多配体表示优于单一构象概念,并减少了与配体对齐相关的用户偏差。此外,选择协议表明,该技术能够识别少量的活跃构象,而不是更倾向于选择贡献较小的实体。
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