Department of R&D Center, Arontier Co., Ltd., 15F, 241, Gangnam-daero, Seocho-gu, Seoul, Korea.
ChemMedChem. 2023 Oct 4;18(19):e202200693. doi: 10.1002/cmdc.202200693. Epub 2023 Sep 4.
Kinases are prominent drug targets in the pharmaceutical and research community due to their involvement in signal transduction, physiological responses, and upon dysregulation, in diseases such as cancer, neurological and autoimmune disorders. Several FDA-approved small-molecule drugs have been developed to combat human diseases since Gleevec was approved for the treatment of chronic myelogenous leukemia. Kinases were considered "undruggable" in the beginning. Several FDA-approved small-molecule drugs have become available in recent years. Most of these drugs target ATP-binding sites, but a few target allosteric sites. Among kinases that belong to the same family, the catalytic domain shows high structural and sequence conservation. Inhibitors of ATP-binding sites can cause off-target binding. Because members of the same family have similar sequences and structural patterns, often complex relationships between kinases and inhibitors are observed. To design and develop drugs with desired selectivity, it is essential to understand the target selectivity for kinase inhibitors. To create new inhibitors with the desired selectivity, several experimental methods have been designed to profile the kinase selectivity of small molecules. Experimental approaches are often expensive, laborious, time-consuming, and limited by the available kinases. Researchers have used computational methodologies to address these limitations in the design and development of effective therapeutics. Many computational methods have been developed over the last few decades, either to complement experimental findings or to forecast kinase inhibitor activity and selectivity. The purpose of this review is to provide insight into recent advances in theoretical/computational approaches for the design of new kinase inhibitors with the desired selectivity and optimization of existing inhibitors.
激酶由于参与信号转导、生理反应以及在疾病(如癌症、神经和自身免疫性疾病)中失调,成为药物研发领域中药物靶点的重要研究对象。自格列卫(Gleevec)被批准用于治疗慢性髓性白血病以来,已有几种 FDA 批准的小分子药物被开发用于治疗人类疾病。激酶在开始时被认为是“不可成药”的。近年来已经有几种 FDA 批准的小分子药物上市。这些药物大多数靶向 ATP 结合位点,但也有一些靶向变构位点。在属于同一家族的激酶中,催化结构域表现出高度的结构和序列保守性。ATP 结合位点抑制剂可能导致非靶标结合。由于同一家族的成员具有相似的序列和结构模式,经常观察到激酶和抑制剂之间存在复杂的关系。为了设计和开发具有所需选择性的药物,了解激酶抑制剂的靶标选择性至关重要。为了设计具有所需选择性的新抑制剂,已经设计了几种实验方法来分析小分子的激酶选择性。实验方法通常昂贵、费力、耗时,并且受到可用激酶的限制。研究人员已经使用计算方法学来解决在设计和开发有效治疗方法中的这些限制。在过去几十年中,已经开发出许多计算方法,要么补充实验发现,要么预测激酶抑制剂的活性和选择性。本文综述的目的是提供对理论/计算方法在设计具有所需选择性的新型激酶抑制剂和优化现有抑制剂方面的最新进展的深入了解。