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Inference of dynamic biological networks based on responses to drug perturbations

机译:根据对药物扰动的反应推断动态生物网络

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摘要

Drugs that target specific proteins are a major paradigm in cancer research. In this article, we extend a modeling framework for drug sensitivity prediction and combination therapy design based on drug perturbation experiments. The recently proposed target inhibition map approach can infer stationary pathway models from drug perturbation experiments, but the method is limited to a steady-state snapshot of the underlying dynamical model. We consider the inverse problem of possible dynamic models that can generate the static target inhibition map model. From a deterministic viewpoint, we analyze the inference of Boolean networks that can generate the observed binarized sensitivities under different target inhibition scenarios. From a stochastic perspective, we investigate the generation of Markov chain models that satisfy the observed target inhibition sensitivities.Electronic supplementary materialThe online version of this article (doi:10.1186/s13637-014-0014-1) contains supplementary material, which is available to authorized users.
机译:靶向特定蛋白质的药物是癌症研究的主要范例。在本文中,我们扩展了基于药物扰动实验的药物敏感性预测和联合疗法设计的建模框架。最近提出的目标抑制图方法可以从药物扰动实验中推导平稳途径模型,但该方法仅限于基础动力学模型的稳态快照。我们考虑可以生成静态目标抑制图模型的可能动态模型的反问题。从确定性的角度,我们分析了布尔网络的推理,该布尔网络可以在不同目标抑制情况下生成观察到的二值化敏感性。从随机角度出发,我们研究了满足观察到的目标抑制敏感性的马尔可夫链模型的生成。电子补充材料本文的在线版本(doi:10.1186 / s13637-014-0014-1)包含补充材料,可用于授权用户。

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