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Multi-objective active machine learning rapidly improves structure–activity models and reveals new protein–protein interaction inhibitors

机译:多目标主动机器学习可快速改善结构-活动模型并揭示新的蛋白质-蛋白质相互作用抑制剂

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摘要

Active machine learning puts artificial intelligence in charge of a sequential, feedback-driven discovery process. We present the application of a multi-objective active learning scheme for identifying small molecules that inhibit the protein–protein interaction between the anti-cancer target CXC chemokine receptor 4 (CXCR4) and its endogenous ligand CXCL-12 (SDF-1). Experimental design by active learning was used to retrieve informative active compounds that continuously improved the adaptive structure–activity model. The balanced character of the compound selection function rapidly delivered new molecular structures with the desired inhibitory activity and at the same time allowed us to focus on informative compounds for model adjustment. The results of our study validate active learning for prospective ligand finding by adaptive, focused screening of large compound repositories and virtual compound libraries.
机译:主动机器学习使人工智能负责顺序的,反馈驱动的发现过程。我们提出了一种多目标主动学习方案的应用,以识别抑制抗癌靶标CXC趋化因子受体4(CXCR4)及其内源性配体CXCL-12(SDF-1)之间的蛋白质-蛋白质相互作用的小分子。通过主动学习进行的实验设计被用于检索信息性活性化合物,从而不断改进自适应结构-活​​性模型。化合物选择功能的平衡特性迅速提供了具有所需抑制活性的新分子结构,同时使我们能够专注于提供信息的化合物以进行模型调整。我们的研究结果通过对大型化合物存储库和虚拟化合物库进行自适应,集中筛选来验证主动学习的预期配体发现。

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