Ekins S, Mestres J, Testa B
ACT LLC, 1 Penn Plaza, New York, NY 10119, USA.
Br J Pharmacol. 2007 Sep;152(1):9-20. doi: 10.1038/sj.bjp.0707305. Epub 2007 Jun 4.
Pharmacology over the past 100 years has had a rich tradition of scientists with the ability to form qualitative or semi-quantitative relations between molecular structure and activity in cerebro. To test these hypotheses they have consistently used traditional pharmacology tools such as in vivo and in vitro models. Increasingly over the last decade however we have seen that computational (in silico) methods have been developed and applied to pharmacology hypothesis development and testing. These in silico methods include databases, quantitative structure-activity relationships, pharmacophores, homology models and other molecular modeling approaches, machine learning, data mining, network analysis tools and data analysis tools that use a computer. In silico methods are primarily used alongside the generation of in vitro data both to create the model and to test it. Such models have seen frequent use in the discovery and optimization of novel molecules with affinity to a target, the clarification of absorption, distribution, metabolism, excretion and toxicity properties as well as physicochemical characterization. The aim of this review is to illustrate some of the in silico methods for pharmacology that are used in drug discovery. Further applications of these methods to specific targets and their limitations will be discussed in the second accompanying part of this review.
在过去的100年里,药理学领域有着丰富的传统,科学家们能够在分子结构与大脑活性之间建立定性或半定量关系。为了验证这些假设,他们一直使用传统的药理学工具,如体内和体外模型。然而,在过去十年中,我们越来越多地看到计算(计算机模拟)方法已被开发并应用于药理学假设的提出和测试。这些计算机模拟方法包括数据库、定量构效关系、药效团、同源模型和其他分子建模方法、机器学习、数据挖掘、网络分析工具以及使用计算机的数据分析工具。计算机模拟方法主要与体外数据的生成一起使用,用于创建模型和测试模型。此类模型在发现和优化与靶点具有亲和力的新型分子、阐明吸收、分布、代谢、排泄和毒性特性以及进行物理化学表征方面经常得到应用。本综述的目的是阐述一些用于药物发现的药理学计算机模拟方法。这些方法在特定靶点上的进一步应用及其局限性将在本综述的第二篇配套文章中讨论。