Garg S, Achenie L E
Department of Chemical Engineering, University of Connecticut, Storrs, Connecticut 06269, USA.
Biotechnol Prog. 2001 May-Jun;17(3):412-8. doi: 10.1021/bp010034q.
A concept from optimization theory, specifically, mathematical programming, is proposed for designing drugs with desired properties. The mathematical programming formulation is solved to obtain the optimal descriptor values, which are employed in the Cerius(2) modeling environment to infer the optimal lead candidates, in the sense that they exhibit both high selectivity and activity while ensuring low toxicity. It has been observed that unique substituent groups and their molecular conformations are responsible for attaining the goal of simultaneous high selectivity and activity. Both linear and nonlinear quantitative structure activity relationships (QSARs) have been developed for use in the proposed approach. A comparative study of these models is done, and it is shown that the QSARs are well represented by nonlinear models. The proposed mathematical programming strategy has been demonstrated for a class of nonclassical antifolates for Pneumocistis carinii and Toxoplasma gondii dihydofolate reductase. Some of the potential leads found in this study have biological properties similar to those in the open literature. We believe the technique proposed is general and can be applied to other structure based drug design.
提出了一种来自优化理论,特别是数学规划的概念,用于设计具有所需特性的药物。求解数学规划公式以获得最佳描述符值,这些值在Cerius(2)建模环境中用于推断最佳先导候选物,即它们在确保低毒性的同时表现出高选择性和活性。据观察,独特的取代基及其分子构象是实现同时具有高选择性和活性这一目标的原因。已开发出线性和非线性定量构效关系(QSAR)用于所提出的方法。对这些模型进行了比较研究,结果表明QSAR由非线性模型很好地表示。已针对一类用于卡氏肺孢子虫和弓形虫二氢叶酸还原酶的非经典抗叶酸药物证明了所提出的数学规划策略。本研究中发现的一些潜在先导物具有与公开文献中相似的生物学特性。我们相信所提出的技术具有通用性,可应用于其他基于结构的药物设计。