Redpoint Bio., Ewing NJ, USA.
Curr Top Med Chem. 2010;10(6):619-37. doi: 10.2174/156802610791111506.
The field of quantitative structure activity relationships (QSAR) has evolved into an integral tool for pharmaceutical discovery. It is presently an accessible technology, as can be shown by the number papers which are easily found through PubMed literature searches. At one level, QSAR is used routinely and invisibly as an aid for the bench chemist for logP, logS, pK(a)/pK(b), metabolic stability and other such properties. Chemoinformaticians and computational chemists develop models from scratch for less routine purposes associated with lead optimization around a single target or library design around a target family such as kinase, ion channel or GPCR inhibitors. Regardless of the differences in frequency of use and the end user, any successful QSAR is successful because it rests on appropriate mathematics linking valid data and relevant descriptors. Though success is defined by the end user, the QSAR originator is well advised to validate his model and understand how it performs in different situations. The present review will cover QSAR from the ground up as it is used in pharmaceutical research environments. It will focus towards larger dataset methodologies (a minimum 100 of compounds) and by consequence will focus on 2D descriptors. It will start with the critical base of data, descriptors, equations and validation methods. It will review the broadly used and invisible QSARs for logP, pKa/pKb and metabolic stability. The review will then present progress in QSARs of broad interest which are under active development: 1) hERG liability models, 2) modeling for 2a) drug-likeness and related properties, 2b) kinase ligand likeness and 2c) GPCR ligand likeness.
定量构效关系(QSAR)领域已发展成为药物发现的重要工具。通过 PubMed 文献搜索轻松找到的大量论文可以证明,它现在是一种易于获取的技术。在一个层面上,QSAR 作为一种辅助手段,常规且无形地用于帮助实验化学家预测 logP、logS、pKa/pKb、代谢稳定性等性质。化学信息学家和计算化学家从零开始为不太常见的目的开发模型,例如针对单一靶标进行先导化合物优化或针对激酶、离子通道或 GPCR 抑制剂等靶标家族进行库设计。无论使用频率和最终用户的差异如何,任何成功的 QSAR 都是因为它建立在将有效数据和相关描述符联系起来的适当数学基础上。尽管成功是由最终用户定义的,但 QSAR 开发者最好验证他的模型并了解它在不同情况下的表现。本综述将从药物研究环境中使用的 QSAR 开始,涵盖从基础到高级的内容。它将侧重于更大的数据集方法(至少 100 个化合物),因此将重点关注 2D 描述符。它将从数据、描述符、方程和验证方法的关键基础开始。然后,它将回顾广泛使用且无形的 QSAR 用于预测 logP、pKa/pKb 和代谢稳定性。然后,综述将介绍正在积极开发的具有广泛兴趣的 QSAR 的进展:1)hERG 毒性模型,2)用于 2a)药物相似性和相关性质、2b)激酶配体相似性和 2c)GPCR 配体相似性的建模。