首页> 外文期刊>Journal of Cheminformatics >Assessing the information content of structural and protein–ligand interaction representations for the classification of kinase inhibitor binding modes via machine learning and active learning
【24h】

Assessing the information content of structural and protein–ligand interaction representations for the classification of kinase inhibitor binding modes via machine learning and active learning

机译:通过机器学习和主动学习评估用于分类激酶抑制剂结合模式的结构和蛋白质 - 配体相互作用表示的信息含量

获取原文
           

摘要

For kinase inhibitors, X-ray crystallography has revealed different types of binding modes. Currently, more than 2000 kinase inhibitors with known binding modes are available, which makes it possible to derive and test machine learning models for the prediction of inhibitors with different binding modes. We have addressed this prediction task to evaluate and compare the information content of distinct molecular representations including protein–ligand interaction fingerprints (IFPs) and compound structure-based structural fingerprints (i.e., atom environment/fragment fingerprints). IFPs were designed to capture binding mode-specific interaction patterns at different resolution levels. Accurate predictions of kinase inhibitor binding modes were achieved with random forests using both representations. The performance of IFPs was consistently superior to atom environment fingerprints, albeit only by less than 10%. An active learning strategy applying information entropy-based selection of training instances was applied as a diagnostic approach to assess the relative information content of distinct representations. IFPs were found to capture more binding mode-relevant information than atom environment fingerprints, leading to highly predictive models even when training instances were randomly selected. By contrast, for atom environment fingerprints, the derivation of accurate models via active learning depended on entropy-based selection of informative training compounds. Notably, higher information content of IFPs confirmed by active learning only resulted in small improvements in global prediction accuracy compared to models derived using atom environment fingerprints. For practical applications, prediction of binding modes of new kinase inhibitors on the basis of chemical structure is highly attractive.
机译:对于激酶抑制剂,X射线晶体学揭示了不同类型的结合模式。目前,有超过2000个具有已知结合模式的激酶抑制剂,这使得可以导出和测试用于预测具有不同结合模式的抑制剂的机器学习模型。我们已经解决了这种预测任务来评估和比较不同分子表示的信息含量,包括蛋白质 - 配体相互作用指纹(IFP)和基于化合物结构的结构指纹(即原子环境/片段指纹)。设计用于捕获不同分辨率水平的绑定模式特异性交互模式。使用两个表示的随机林实现了对激酶抑制剂结合模式的精确预测。 IFPS的性能始终优于原子环境指纹,尽管仅少于10%。应用基于信息熵的培训实例的主动学习策略被应用为评估不同表示的相对信息内容的诊断方法。发现IFPS捕获比Atom环境指纹更多的绑定模式相关信息,即使在随机选择训练实例时,也导致高度预测模型。相比之下,对于原子环境指纹,通过主动学习的准确模型推导取决于基于熵的信息培训化合物。值得注意的是,与使用Atom环境指纹导出的模型相比,通过主动学习确认的IFP的更高信息内容仅导致全局预测准确性的少量提高。对于实际应用,在化学结构的基础上,新激酶抑制剂的结合模式的预测具有高度吸引力。

著录项

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