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Current Advances in Studying Clinically Relevant Transporters of the Solute Carrier (SLC) Family by Connecting Computational Modeling and Data Science

机译:通过连接计算建模和数据科学研究溶质载体(SLC)系列的临床相关转运蛋白的最新进展

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Organic anion and cation transporting proteins (OATs, OATPs, and OCTs), as well as the Multidrug and Toxin Extrusion (MATE) transporters of the Solute Carrier (SLC) family are playing a pivotal role in the discovery and development of new drugs due to their involvement in drug disposition, drug-drug interactions, adverse drug effects and related toxicity. Computational methods to understand and predict clinically relevant transporter interactions can provide useful guidance at early stages in drug discovery and design, especially if they include contemporary data science approaches. In this review, we summarize the current state-of-the-art of computational approaches for exploring ligand interactions and selectivity for these drug (uptake) transporters. The computational methods discussed here by highlighting interesting examples from the current literature are ranging from semiautomatic data mining and integration, to ligand-based methods (such as quantitative structure-activity relationships, and combinatorial pharmacophore modeling), and finally structure-based methods (such as comparative modeling, molecular docking, and molecular dynamics simulations). We are focusing on promising computational techniques such as fold-recognition methods, proteochemometric modeling or techniques for enhanced sampling of protein conformations used in the context of these ADMET-relevant SLC transporters with a special focus on methods useful for studying ligand selectivity.
机译:有机阴离子和阳离子转运蛋白(OAT,OATP和OCT)以及溶质载体(SLC)家族的多药和毒素挤出(MATE)转运蛋白在新药的发现和开发中起着举足轻重的作用,原因是它们参与药物处置,药物相互作用,药物不良反应和相关毒性。用于理解和预测临床相关转运蛋白相互作用的计算方法可以在药物发现和设计的早期阶段提供有用的指导,尤其是当它们包括当代数据科学方法时。在这篇综述中,我们总结了用于探索这些药物(摄取)转运蛋白的配体相互作用和选择性的最新计算方法。本文通过重点介绍当前文献中的有趣示例讨论了计算方法,包括半自动数据挖掘和集成,基于配体的方法(例如定量结构-活性关系和组合药效团建模),最后是基于结构的方法(例如作为比较模型,分子对接和分子动力学模拟)。我们专注于有前途的计算技术,例如折叠识别方法,蛋白质化学计量学模型或用于这些ADMET相关SLC转运蛋白背景下的蛋白质构象增强采样技术,特别关注可用于研究配体选择性的方法。

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