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Inferring dynamic architecture of cellular networks using time series of gene expression, protein and metabolite data

机译:利用基因表达,蛋白质和代谢产物数据的时间序列推断细胞网络的动态架构

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Motivation: High-throughput technologies have facilitated the acquisition of large genomics and proteomics datasets. However, these data provide snapshots of cellular behavior, rather than help us reveal causal relations. Here, we propose how these technologies can be utilized to infer the topology and strengths of connections among genes, proteins and metabolites by monitoring time-dependent responses of cellular networks to experimental interventions. Results: We demonstrate that all connections leading to a given network node, e.g. to a particular gene, can be deduced from responses to perturbations none of which directly influences that node, e.g. using strains with knock-outs to other genes. To infer all interactions from stationary data, each node should be perturbed separately or in combination with other nodes. Monitoring time series provides richer information and does not require perturbations to all nodes. Overall, the methods we propose are capable of deducing and quantifying functional interactions within and across cellular gene, signaling and metabolic networks.
机译:动机:高通量技术促进了大型基因组学和蛋白质组学数据集的获取。但是,这些数据提供了细胞行为的快照,而不是帮助我们揭示因果关系。在这里,我们提出如何利用这些技术通过监测细胞对实验干预的时间依赖性响应来推断基因,蛋白质和代谢物之间的拓扑结构和连接强度。结果:我们证明,所有连接均通向给定的网络节点,例如可以从对扰动的响应中推导出对特定基因的“异性”,而这些扰动都不直接影响该节点。使用对其他基因有敲除作用的菌株。为了从固定数据推断所有交互,应该分别干扰每个节点或与其他节点组合干扰。监视时间序列可提供更丰富的信息,并且不需要对所有节点进行干扰。总体而言,我们提出的方法能够推断和量化细胞基因,信号传导和代谢网络内部和之间的功能相互作用。

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