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Model-based global sensitivity analysis as applied to identification of anti-cancer drug targets and biomarkers of drug resistance in the ErbB2/3 network

机译:基于模型的全局敏感性分析,用于识别ErbB2 / 3网络中的抗癌药物靶标和耐药性生物标志物

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摘要

High levels of variability in cancer-related cellular signalling networks and a lack of parameter identifiability in large-scale network models hamper translation of the results of modelling studies into the process of anti-cancer drug development. Recently global sensitivity analysis (GSA) has been recognised as a useful technique, capable of addressing the uncertainty of the model parameters and generating valid predictions on parametric sensitivities. Here we propose a novel implementation of model-based GSA specially designed to explore how multi-parametric network perturbations affect signal propagation through cancer-related networks. We use area-under-the-curve for time course of changes in phosphorylation of proteins as a characteristic for sensitivity analysis and rank network parameters with regard to their impact on the level of key cancer-related outputs, separating strong inhibitory from stimulatory effects. This allows interpretation of the results in terms which can incorporate the effects of potential anti-cancer drugs on targets and the associated biological markers of cancer. To illustrate the method we applied it to an ErbB signalling network model and explored the sensitivity profile of its key model readout, phosphorylated Akt, in the absence and presence of the ErbB2 inhibitor pertuzumab. The method successfully identified the parameters associated with elevation or suppression of Akt phosphorylation in the ErbB2/3 network. From analysis and comparison of the sensitivity profiles of pAkt in the absence and presence of targeted drugs we derived predictions of drug targets, cancer-related biomarkers and generated hypotheses for combinatorial therapy. Several key predictions have been confirmed in experiments using human ovarian carcinoma cell lines. We also compared GSA-derived predictions with the results of local sensitivity analysis and discuss the applicability of both methods. We propose that the developed GSA procedure can serve as a refining tool in combinatorial anti-cancer drug discovery.
机译:癌症相关的细胞信号网络中的高度可变性以及大规模网络模型中缺乏参数可识别性阻碍了将建模研究的结果转化为抗癌药物开发过程。最近,全球灵敏度分析(GSA)被认为是一种有用的技术,能够解决模型参数的不确定性并生成关于参数灵敏度的有效预测。在这里,我们提出了一种基于模型的GSA的新颖实现方式,该设计旨在探索多参数网络扰动如何影响信号通过癌症相关网络的传播。我们使用曲线下面积来分析蛋白质磷酸化的时间变化,作为敏感性分析的特征,并根据其对关键癌症相关输出水平的影响对网络参数进行排名,将刺激作用与强抑制作用分开。这允许以可以并入潜在抗癌药对靶标和癌症相关生物标志物的作用的术语来解释结果。为了说明该方法,我们将其应用于ErbB信号网络模型,并探讨了在不存在和存在ErbB2抑制剂pertuzumab的情况下其关键模型读数磷酸化的Akt的敏感性特征。该方法成功地鉴定了与ErbB2 / 3网络中Akt磷酸化的升高或抑制有关的参数。通过在不存在和存在靶向药物的情况下对pAkt敏感性分布进行分析和比较,我们得出了药物靶标,癌症相关生物标志物的预测,并得出了联合治疗的假设。在使用人卵巢癌细胞系的实验中已经确认了几个关键预测。我们还比较了GSA衍生的预测与局部敏感性分析的结果,并讨论了这两种方法的适用性。我们建议,已开发的GSA程序可作为组合抗癌药物发现中的提炼工具。

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