逻辑模型预测复杂药物组合在结直肠癌细胞中的协同作用

Evelina Folkesson, B. C. Sakshaug, Andrea D. Hoel, G. Klinkenberg, Å. Flobak
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引用次数: 3

摘要

已经提出了药物组合来对抗癌症的耐药性,但由于大量可能的药物靶点,对所有可能的药物组合进行体外测试是具有挑战性的。一种疾病的计算模型作为预测治疗反应的工具具有很大的前景,在这里,我们构建了一个逻辑模型,整合癌症中经常失调的信号通路,以及DNA损伤激活的通路,以研究临床相关药物组合的效果。通过将模型拟合到针对MEK, PI3K和TAK1的药物成对组合的数据集,以及几种临床批准的药物(帕博西尼,奥拉帕尼,奥沙利铂和5FU),我们能够进行模型模拟,使我们能够预测更复杂的药物组合,包括三种和四种药物,与成对药物组合相比,可能具有更强的效果。在结直肠癌细胞系HCT-116的体外实验中,所有预测的三阶协同作用以及一部分非协同作用都得到了成功的证实,突出了使用计算策略来使药物测试合理化的力量。
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Synergistic effects of complex drug combinations in colorectal cancer cells predicted by logical modelling
Drug combinations have been proposed to combat drug resistance in cancer, but due to the large number of possible drug targets, in vitro testing of all possible combinations of drugs is challenging. Computational models of a disease hold great promise as tools for prediction of response to treatment, and here we constructed a logical model integrating signaling pathways frequently dysregulated in cancer, as well as pathways activated upon DNA damage, to study the effect of clinically relevant drug combinations. By fitting the model to a dataset of pairwise combinations of drugs targeting MEK, PI3K, and TAK1, as well as several clinically approved agents (palbociclib, olaparib, oxaliplatin, and 5FU), we were able to perform model simulations that allowed us to predict more complex drug combinations, encompassing sets of three and four drugs, with potentially stronger effects compared to pairwise drug combinations. All predicted third-order synergies, as well as a subset of non-synergies, were successfully confirmed by in vitro experiments in the colorectal cancer cell line HCT-116, highlighting the strength of using computational strategies to rationalize drug testing.
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