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解析激酶抑制剂诱导的心脏毒性。

Deconvoluting Kinase Inhibitor Induced Cardiotoxicity.

机构信息

Department of Drug Safety and Metabolism, AstraZeneca Pharmaceuticals, Waltham, Massachusetts 02451.

Department of Drug Safety and Metabolism, AstraZeneca Pharmaceuticals, 43153 Mölndal, Sweden.

出版信息

Toxicol Sci. 2017 Jul 1;158(1):213-226. doi: 10.1093/toxsci/kfx082.

Abstract

Many drugs designed to inhibit kinases have their clinical utility limited by cardiotoxicity-related label warnings or prescribing restrictions. While this liability is widely recognized, designing safer kinase inhibitors (KI) requires knowledge of the causative kinase(s). Efforts to unravel the kinases have encountered pharmacology with nearly prohibitive complexity. At therapeutically relevant concentrations, KIs show promiscuity distributed across the kinome. Here, to overcome this complexity, 65 KIs with known kinome-scale polypharmacology profiles were assessed for effects on cardiomyocyte (CM) beating. Changes in human iPSC-CM beat rate and amplitude were measured using label-free cellular impedance. Correlations between beat effects and kinase inhibition profiles were mined by computation analysis (Matthews Correlation Coefficient) to identify associated kinases. Thirty kinases met criteria of having (1) pharmacological inhibition correlated with CM beat changes, (2) expression in both human-induced pluripotent stem cell-derived cardiomyocytes and adult heart tissue, and (3) effects on CM beating following single gene knockdown. A subset of these 30 kinases were selected for mechanistic follow up. Examples of kinases regulating processes spanning the excitation-contraction cascade were identified, including calcium flux (RPS6KA3, IKBKE) and action potential duration (MAP4K2). Finally, a simple model was created to predict functional cardiotoxicity whereby inactivity at three sentinel kinases (RPS6KB1, FAK, STK35) showed exceptional accuracy in vitro and translated to clinical KI safety data. For drug discovery, identifying causative kinases and introducing a predictive model should transform the ability to design safer KI medicines. For cardiovascular biology, discovering kinases previously unrecognized as influencing cardiovascular biology should stimulate investigation of underappreciated signaling pathways.

摘要

许多旨在抑制激酶的药物由于与心脏毒性相关的标签警告或处方限制,其临床应用受到限制。虽然这种责任是广泛认可的,但设计更安全的激酶抑制剂(KI)需要了解致病激酶。为了解开这些激酶,药理学遇到了几乎无法克服的复杂性。在治疗相关浓度下,KI 表现出对激酶组的广泛混杂性。在这里,为了克服这种复杂性,评估了 65 种具有已知激酶组多药理学特征的 KI 对心肌细胞(CM)跳动的影响。使用无标记细胞阻抗测量人 iPSC-CM 跳动率和幅度的变化。通过计算分析(马修斯相关系数)挖掘跳动效应与激酶抑制谱之间的相关性,以识别相关激酶。30 种激酶符合以下标准:(1)与 CM 跳动变化相关的药理学抑制作用,(2)在人诱导多能干细胞衍生的心肌细胞和成人心脏组织中均有表达,以及(3)在单一基因敲低后对 CM 跳动的影响。这些 30 种激酶中的一部分被选中进行机制后续研究。确定了调节兴奋-收缩偶联级联过程的激酶,包括钙通量(RPS6KA3、IKBKE)和动作电位持续时间(MAP4K2)。最后,创建了一个简单的模型来预测功能性心脏毒性,其中三个哨兵激酶(RPS6KB1、FAK、STK35)的不活跃在体外具有出色的准确性,并转化为临床 KI 安全性数据。对于药物发现,确定致病激酶并引入预测模型应该能够设计更安全的 KI 药物。对于心血管生物学,发现以前未被认为影响心血管生物学的激酶应该会刺激对未被充分认识的信号通路的研究。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/ea31/5837613/10d31eb62411/kfx082f1.jpg

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