...
首页> 外文期刊>Journal of Molecular Modeling >3-D clustering: a tool for high throughput docking
【24h】

3-D clustering: a tool for high throughput docking

机译:3-D群集:高吞吐量对接的工具

获取原文
获取原文并翻译 | 示例
           

摘要

This report describes a computer program for clustering docking poses based on their 3-dimensional (3D) coordinates as well as on their chemical structures. This is chiefly intended for reducing a set of hits coming from high throughput docking, since the capacity to prepare and biologically test such molecules is generally far more limited than the capacity to generate such hits. The advantage of clustering molecules based on 3D, rather than 2D, criteria is that small variations on a scaffold may bring about different binding modes for molecules that would not be predicted by 2D similarity alone. The program does a pose-by-pose/atom-by-atom comparison of a set of docking hits (poses), scoring both spatial and chemical similarity. Using these pair-wise similarities, the whole set is clustered based on a user-supplied similarity threshold. An output coordinate file is created that mirrors the input coordinate file, but contains two new properties: a cluster number and similarity to the cluster center. Poses in this output file can easily be sorted by cluster and displayed together for visual inspection with any standard molecular viewing program, and decisions made about which molecule should be selected for biological testing as the best representative of this group of similar molecules with similar binding modes.
机译:该报告描述了一种计算机程序,用于基于其3维(3D)坐标及其化学结构将对接姿势聚类。这主要是为了减少来自高通量对接的一系列命中,因为制备和生物测试此类分子的能力通常比产生此类命中的能力受到更大的限制。基于3D(而不是2D)标准对分子进行聚类的优势在于,支架上的微小变化可能会为单独的2D相似性无法预测的分子带来不同的结合模式。该程序对一组对接命中(姿势)进行逐个姿势/逐个原子的比较,对空间和化学相似性进行评分。使用这些成对相似性,可以基于用户提供的相似性阈值对整个集合进行聚类。创建了一个输出坐标文件,该文件映射了输入坐标文件,但包含两个新属性:聚类编号和与聚类中心的相似性。该输出文件中的位置可以轻松地按簇进行分类,并与任何标准分子查看程序一起显示在一起以进行视觉检查,并且可以决定应该选择哪个分子进行生物学测试,以最好地代表具有相似结合模式的这组相似分子。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号