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Systematically Studying Kinase Inhibitor Induced Signaling Network Signatures by Integrating Both Therapeutic and Side Effects

机译:通过综合治疗和副作用系统研究激酶抑制剂诱导的信号网络特征

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摘要

Substantial effort in recent years has been devoted to analyzing data based large-scale biological networks, which provide valuable insight into the topologies of complex biological networks but are rarely context specific and cannot be used to predict the responses of cell signaling proteins to specific ligands or compounds. In this work, we proposed a novel strategy to investigate kinase inhibitor induced pathway signatures by integrating multiplex data in Library of Integrated Network-based Cellular Signatures (LINCS), e.g. KINOMEscan data and cell proliferation/mitosis imaging data. Using this strategy, we first established a PC9 cell line specific pathway model to investigate the pathway signatures in PC9 cell line when perturbed by a small molecule kinase inhibitor . This specific pathway revealed the role of PI3K/AKT in modulating the cell proliferation process and the absence of two anti-proliferation links, which indicated a potential mechanism of abnormal expansion in PC9 cell number. Incorporating the pathway model for side effects on primary human hepatocytes, it was used to screen 27 kinase inhibitors in LINCS database and PF02341066, known as Crizotinib, was finally suggested with an optimal concentration 4.6 uM to suppress PC9 cancer cell expansion while avoiding severe damage to primary human hepatocytes. Drug combination analysis revealed that the synergistic effect region can be predicted straightforwardly based on a threshold which is an inherent property of each kinase inhibitor. Furthermore, this integration strategy can be easily extended to other specific cell lines to be a powerful tool for drug screen before clinical trials.
机译:近年来,人们已投入大量精力来分析基于数据的大规模生物网络,这些网络为复杂生物网络的拓扑结构提供了宝贵的见识,但很少因上下文而异,无法用于预测细胞信号蛋白对特定配体或化合物。在这项工作中,我们提出了一种通过整合基于网络的集成细胞签名库(LINCS)中的多重数据来研究激酶抑制剂诱导的途径签名的新策略。 KINOMEscan数据和细胞增殖/有丝分裂成像数据。使用这种策略,我们首先建立了PC9细胞系特异性途径模型,以研究PC9细胞系中受小分子激酶抑制剂干扰时的途径特征。该特定途径揭示了PI3K / AKT在调节细胞增殖过程中的作用,并且不存在两个抗增殖链接,这表明了PC9细胞数量异常扩增的潜在机制。结合对人类原代肝细胞副作用的途径模型,将其用于筛选LINCS数据库中的27种激酶抑制剂,并最终建议以4.6 uM的最佳浓度使用PF02341066(抑制克唑替尼)抑制PC9癌细胞扩增,同时避免对PC9癌细胞造成严重损害原代人肝细胞。药物组合分析显示,可以基于阈值直接预测协同作用区域,该阈值是每种激酶抑制剂的固有特性。此外,这种整合策略可以轻松扩展到其他特定细胞系,成为临床试验之前进行药物筛选的强大工具。

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