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Designing Focused Chemical Libraries Enriched in Protein-Protein Interaction Inhibitors using Machine-Learning Methods

机译:使用机器学习方法设计富含蛋白质-蛋白质相互作用抑制剂的重点化学图书馆

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Protein-protein interactions (PPIs) may represent one of the next major classes of therapeutic targets. So far, only a minute fraction of the estimated 650,000 PPIs that comprise the human interactome are known with a tiny number of complexes being drugged. Such intricate biological systems cannot be cost-efficiently tackled using conventional high-throughput screening methods. Rather, time has come for designing new strategies that will maximize the chance for hit identification through a rationalization of the PPI inhibitor chemical space and the design of PPI-focused compound libraries (global or target-specific). Here, we train machine-learning-based models, mainly decision trees, using a dataset of known PPI inhibitors and of regular drugs in order to determine a global physico-chemical profile for putative PPI inhibitors. This statistical analysis unravels two important molecular descriptors for PPI inhibitors characterizing specific molecular shapes and the presence of a privileged number of aromatic bonds. The best model has been transposed into a computer program, PPI-HitProfiler, that can output from any drug-like compound collection a focused chemical library enriched in putative PPI inhibitors. Our PPI inhibitor profiler is challenged on the experimental screening results of 11 different PPIs among which the p53/MDM2 interaction screened within our own CDithem platform, that in addition to the validation of our concept led to the identification of 4 novel p53/MDM2 inhibitors. Collectively, our tool shows a robust behavior on the 11 experimental datasets by correctly profiling 70% of the experimentally identified hits while removing 52% of the inactive compounds from the initial compound collections. We strongly believe that this new tool can be used as a global PPI inhibitor profiler prior to screening assays to reduce the size of the compound collections to be experimentally screened while keeping most of the true PPI inhibitors. PPI-HitProfiler is freely available on request from our CDithem platform website, www.CDithem.com.
机译:蛋白质-蛋白质相互作用(PPI)可能代表了下一类主要的治疗靶标。到目前为止,在构成人类交互组的估计65万个PPI中,只有一小部分是已知的,并且有少量的复合物正在服药。使用常规的高通量筛选方法无法有效地解决此类复杂的生物系统。相反,设计新策略的时机已经到来,它将通过合理化PPI抑制剂化学空间以及以PPI为中心的化合物库(全局或目标特定)的设计来最大化命中鉴定的机会。在这里,我们使用已知的PPI抑制剂和常规药物的数据集训练基于机器学习的模型,主要是决策树,以确定推定的PPI抑制剂的整体理化特性。这项统计分析揭示了PPI抑制剂的两个重要分子描述符,这些描述符描述了特定的分子形状和存在特权数量的芳族键。最好的模型已被转换成计算机程序PPI-HitProfiler,该程序可以从任何类似药物的化合物集中输出集中了推定的PPI抑制剂的化学库。我们的PPI抑制剂概况分析器受到11种不同PPI的实验筛选结果的挑战,其中在我们自己的CDithem平台内筛选了p53 / MDM2相互作用,这除了验证我们的概念之外还导致了4种新型p53 / MDM2抑制剂的鉴定。总体而言,我们的工具在11个实验数据集上表现出了强大的行为,可以正确地剖析70%的实验性识别结果,同时从初始化合物集合中删除52%的非活性化合物。我们坚信,这种新工具可以在筛选试验之前用作全局PPI抑制剂分析仪,以减少要通过实验筛选的化合物集合的大小,同时保留大多数真正的PPI抑制剂。可从CDithem平台网站www.CDithem.com免费获得PPI-HitProfiler。

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