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作为理解靶点空间和活性预测基础的化学片段

Chemical fragments as foundations for understanding target space and activity prediction.

作者信息

Sutherland Jeffrey J, Higgs Richard E, Watson Ian, Vieth Michal

机构信息

Discovery Informatics, Discovery Statistics, and Discovery Chemistry of Lilly Research Laboratories, Eli Lilly and Company, Lilly Corporate Center, Indianapolis, Indiana 46285, USA.

出版信息

J Med Chem. 2008 May 8;51(9):2689-700. doi: 10.1021/jm701399f. Epub 2008 Apr 4.

Abstract

The use of small inhibitors' fragment frequencies for understanding kinase potency and selectivity is described. By quantification of differences in the frequency of occurrence of fragments, similarities between small molecules and their targets can be determined. Naive Bayes models employing fragments provide highly interpretable and reliable means for predicting potency in individual kinases, as demonstrated in retrospective tests and prospective selections that were subsequently screened. Statistical corrections for prospective validation allowed us to accurately estimate success rates in the prospective experiment. Selectivity relationships between kinase targets are substantially explained by differences in the fragment composition of actives. By application of fragment similarities to the broader proteome, it is shown that targets related by sequence exhibit similar fragment preferences in small molecules. Of greater interest, certain targets unrelated by sequence are shown to have similar fragment preferences, even when the chemical similarity of ligands active at each target is low.

摘要

描述了利用小分子抑制剂的片段频率来理解激酶效力和选择性。通过量化片段出现频率的差异,可以确定小分子与其靶点之间的相似性。如在后续筛选的回顾性测试和前瞻性选择中所证明的,采用片段的朴素贝叶斯模型为预测单个激酶的效力提供了高度可解释且可靠的方法。前瞻性验证的统计校正使我们能够准确估计前瞻性实验中的成功率。激酶靶点之间的选择性关系很大程度上由活性片段组成的差异所解释。通过将片段相似性应用于更广泛的蛋白质组,结果表明,序列相关的靶点在小分子中表现出相似的片段偏好。更有趣的是,某些序列不相关的靶点也显示出相似的片段偏好,即使在每个靶点上具有活性的配体的化学相似性很低。

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