Physical & Theoretical Chemistry Laboratory, University of Oxford, South Parks Road, Oxford OX1 3QZ, UK.
J R Soc Interface. 2010 Feb 6;7(43):335-42. doi: 10.1098/rsif.2009.0170. Epub 2009 Jul 8.
There is currently a shortage of chemical molecules that can be used as bioactive probes to study molecular targets and potentially as starting points for drug discovery. One inexpensive way to address this problem is to use computational methods to screen a comprehensive database of small molecules to discover novel structures that could lead to alternative and better bioactive probes. Despite that pleasing logic the results have been somewhat mixed. Here we describe a virtual screening technique based on ligand-receptor shape complementarity, Ultrafast Shape Recognition (USR). USR is specifically applied to identify novel inhibitors of arylamine N-acetyltransferases by computationally screening almost 700 million molecular conformers in a time- and resource-efficient manner. A small number of the predicted active compounds were purchased and tested obtaining a confirmed hit rate of 40 per cent which is an outstanding result for a prospective virtual screening.
目前,可用作生物活性探针以研究分子靶标、并可能用作药物发现起点的化学分子非常短缺。解决这个问题的一种廉价方法是使用计算方法筛选小分子的综合数据库,以发现可能导致替代和更好生物活性探针的新结构。尽管这种逻辑令人欣慰,但结果却有些混杂。在这里,我们描述了一种基于配体-受体形状互补性的虚拟筛选技术,即超快形状识别(USR)。USR 专门用于通过以高效省时的方式计算筛选近 7 亿个分子构象,来识别芳基胺 N-乙酰基转移酶的新型抑制剂。购买并测试了预测的少数活性化合物,获得了 40%的确认命中率,这对于预期的虚拟筛选来说是一个出色的结果。