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首页> 外文期刊>Science translational medicine >Survival and death signals can predict tumor response to therapy after oncogene inactivation.
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Survival and death signals can predict tumor response to therapy after oncogene inactivation.

机译:生存和死亡信号可以预测致癌基因失活后肿瘤对治疗的反应。

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Cancers can exhibit marked tumor regression after oncogene inhibition through a phenomenon called "oncogene addiction." The ability to predict when a tumor will exhibit oncogene addiction would be useful in the development of targeted therapeutics. Oncogene addiction is likely the consequence of many cellular programs. However, we reasoned that many of these inputs may converge on aggregate survival and death signals. To test this, we examined conditional transgenic models of K-ras(G12D)--or MYC-induced lung tumors and lymphoma combined with quantitative imaging and an in situ analysis of biomarkers of proliferation and apoptotic signaling. We then used computational modeling based on ordinary differential equations (ODEs) to show that oncogene addiction could be modeled as differential changes in survival and death intracellular signals. Our mathematical model could be generalized to different imaging methods (computed tomography and bioluminescence imaging), different oncogenes (K-ras(G12D) and MYC), and several tumor types (lung and lymphoma). Our ODE model could predict the differential dynamics of several putative prosurvival and prodeath signaling factors [phosphorylated extracellular signal-regulated kinase 1 and 2, Akt1, Stat3/5 (signal transducer and activator of transcription 3/5), and p38] that contribute to the aggregate survival and death signals after oncogene inactivation. Furthermore, we could predict the influence of specific genetic lesions (p53/, Stat3-d358L, and myr-Akt1) on tumor regression after oncogene inactivation. Then, using machine learning based on support vector machine, we applied quantitative imaging methods to human patients to predict both their EGFR genotype and their progression-free survival after treatment with the targeted therapeutic erlotinib. Hence, the consequences of oncogene inactivation can be accurately modeled on the basis of a relatively small number of parameters that may predict when targeted therapeutics will elicit oncogene addiction after oncogene inactivation and hence tumor regression.
机译:癌基因被抑制后,通过一种称为“癌基因成瘾”的现象,癌症可表现出明显的肿瘤消退。预测肿瘤何时会出现癌基因成瘾的能力将在开发靶向疗法中有用。致癌基因成瘾可能是许多细胞程序的结果。但是,我们认为许多此类输入可能会收敛到总的生存和死亡信号上。为了测试这一点,我们检查了条件条件下的K-ras(G12D)转基因模型-或MYC诱导的肺肿瘤和淋巴瘤,结合定量成像和增殖和凋亡信号的生物标志物的原位分析。然后,我们使用基于普通微分方程(ODE)的计算模型来表明,致癌基因成瘾可以建模为生存和死亡细胞内信号的差异变化。我们的数学模型可以推广到不同的成像方法(计算机断层扫描和生物发光成像),不同的癌基因(K-ras(G12D)和MYC)以及几种肿瘤类型(肺癌和淋巴瘤)。我们的ODE模型可以预测一些可能的生存和死亡信号转导因子[磷酸化的细胞外信号调节激酶1和2,Akt1,Stat3 / 5(信号转导子和转录激活子3/5)和p38)的差异动态。致癌基因失活后的总生存和死亡信号。此外,我们可以预测致癌基因失活后特定遗传病变(p53 /,Stat3-d358L和myr-Akt1)对肿瘤消退的影响。然后,使用基于支持向量机的机器学习,我们对人类患者应用了定量成像方法,以预测他们在靶向厄洛替尼治疗后的EGFR基因型和无进展生存期。因此,可以基于相对少量的参数来精确地模拟致癌基因失活的后果,这些参数可以预测靶向治疗药物何时会在致癌基因失活并因此消退肿瘤后引起致癌基因上瘾。

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