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Development of a Model-Based Inference Approach to Detect Malfunctioned Components in Biological Systems from Clinical Data

机译:从临床资料中检测生物系统中的出故障组分的模型的推理方法的开发

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Detection of malfunctioned reactions or preexisting molecules from the clinical data is essential for drug selection to treat human diseases. Existing approaches based upon Boolean-models or data-driven techniques either ignore the transient information or the detailed description of the reaction networks. In order to address this, a kinetic-model based approach is developed in this work to infer the malfunctioned reactions/preexisting molecules by quantifying the similarity between the output profiles from the malfunctioned model and the profiles shown in the clinical data. The developed approach was tested for four abnormal clinical conditions in IL-6 signaling pathway that include the up/down regulation of single reaction rate constants and up/down regulation of single preexisting molecules. The results show that the developed approach was able to successfully identify the malfunctioned reactions/preexisting molecules from the clinical data. It was found that the developed approach was noise-robust and that it was able to obtained unique solution for the fault in the network from the two measured outputs (i.e., nuclear STAT3 and SOCS3) in the clinical data.
机译:从临床数据中检测出现故障反应或预先存在的分子对于治疗人类疾病的药物选择是必不可少的。基于布尔模型或数据驱动技术的现有方法忽略瞬态信息或反应网络的详细描述。为了解决这一点,在这项工作中开发了一种基于动力学模型的方法,通过量化来自故障模型的输出谱系与临床数据所示的轮廓之间的输出曲线之间的相似性来推断出故障的反应/预先存在的分子。在IL-6信号传导途径中测试了开发的方法,包括单一反应速率常数的上/下调节单个预先存在的分子的上/下调。结果表明,发育方法能够从临床数据中成功识别出故障的反应/预先存在的分子。结果发现,发达的方法是噪声稳健的,并且它能够在临床数据中从两个测量的输出(即核STAT3和SOCS3)中的网络中的故障获得独特的解决方案。

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