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Designing Logical Rules to Model the Response of Biomolecular Networks with Complex Interactions: An Application to Cancer Modeling

机译:设计逻辑规则以建模具有复杂相互作用的生物分子网络的响应:在癌症建模中的应用

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摘要

We discuss the propagation of constraints in eukaryotic interaction networks in relation to model prediction and the identification of critical pathways. In order to cope with posttranslational interactions, we consider two types of nodes in the network, corresponding to proteins and to RNA. Microarray data provides very lacunar information for such types of networks because protein nodes, although needed in the model, are not observed. Propagation of observations in such networks leads to poor and nonsignificant model predictions, mainly because rules used to propagate informationȁ4;usually disjunctive constraintsȁ4;are weak. Here, we propose a new, stronger type of logical constraints that allow us to strengthen the analysis of the relation between microarray and interaction data. We use these rules to identify the nodes which are responsible for a phenotype, in particular for cell cycle progression. As the benchmark, we use an interaction network describing major pathways implied in Ewing''s tumor development. The Python library used to obtain our results is publicly available on our supplementary web page.
机译:我们讨论了与模型预测和关键途径鉴定有关的真核相互作用网络中约束的传播。为了应付翻译后的相互作用,我们考虑了网络中的两种类型的节点,分别对应于蛋白质和RNA。微阵列数据为此类网络提供了非常详尽的信息,因为虽然未观察到蛋白质节点,但并未观察到蛋白质节点。在这样的网络中传播观测值会导致模型预测不佳且不重要,主要是因为用于传播信息的规则ȁ4;通常是析取约束ȁ4;弱。在这里,我们提出了一种新的,更强大的逻辑约束类型,它使我们能够加强对微阵列和相互作用数据之间关系的分析。我们使用这些规则来识别负责表型的节点,尤其是负责细胞周期进程的节点。作为基准,我们使用一个相互作用网络描述了尤因肿瘤发展中隐含的主要途径。用于获取结果的Python库可在我们的补充网页上公开获得。

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