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Generating the Logicome of a Biological Network

机译:生成生物网络的逻辑组

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There has been much progress in recent years towards building larger and larger computational models for biochemical networks, driven by advances both in high throughput data techniques, and in computational modeling and simulation. Such models are often given as unstructured lists of species and interactions between them, making it very difficult to understand the logicome of the network, i.e. the logical connections describing the activation of its key nodes. The problem we are addressing here is to predict whether these key nodes will get activated at any point during a fixed time interval (even transiently), depending on their initial activation status. We solve the problem in terms of a Boolean network over the key nodes, that we call the logicome of the biochemical network. The main advantage of the logicome is that it allows the modeler to focus on a well-chosen small set of key nodes, while abstracting away from the rest of the model, seen as biochemical implementation details of the model. We validate our results by showing that the interpretation of the obtained logicome is in line with literature-based knowledge of the EGFR signalling pathway.
机译:近年来,在高通量数据技术以及计算建模和仿真方面的进步推动下,在为生化网络建立越来越大的计算模型方面取得了很大进展。这种模型通常以物种的非结构化列表以及它们之间的相互作用的形式给出,这使得很难理解网络的逻辑组,即描述其关键节点激活的逻辑连接。我们在此要解决的问题是预测这些关键节点是否会在固定时间间隔内的任何时候(甚至是瞬时)被激活,这取决于它们的初始激活状态。我们通过关键节点上的布尔网络来解决该问题,我们将其称为生化网络的逻辑组。逻辑组的主要优点是,它使建模者可以专注于精心选择的一小组关键节点,同时从模型的其余部分中抽象出来,这被视为模型的生化实现细节。我们通过证明所获得的逻辑组的解释与EGFR信号通路的基于文献的知识相符来验证我们的结果。

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