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Inferring Time-Varying Network Topologies from Gene Expression Data

机译:从基因表达数据推断时变网络拓扑

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Most current methods for gene regulatory network identification lead to the inference of steady-state networks, that is, networks prevalent over all times, a hypothesis which has been challenged. There has been a need to infer and represent networks in a dynamic, that is, time-varying fashion, in order to account for different cellular states affecting the interactions amongst genes. In this work, we present an approach, regime-SSM , to understand gene regulatory networks within such a dynamic setting. The approach uses a clustering method based on these underlying dynamics, followed by system identification using a state-space model for each learnt cluster—to infer a network adjacency matrix. We finally indicate our results on the mouse embryonic kidney dataset as well as the T-cell activation-based expression dataset and demonstrate conformity with reported experimental evidence.
机译:目前,用于基因调控网络识别的大多数方法都可以推断出稳态网络,即一直存在的网络,这一假设受到了挑战。为了解释影响基因间相互作用的不同细胞状态,需要以动态的,即随时间变化的方式来推断和表示网络。在这项工作中,我们提出了一种方法,即SSM制度,来了解这种动态环境中的基因调控网络。该方法使用基于这些基础动态的聚类方法,然后对每个学习到的聚类使用状态空间模型进行系统识别,以推断网络邻接矩阵。最后,我们在小鼠胚胎肾脏数据集以及基于T细胞活化的表达数据集上表明了我们的结果,并证明了与报道的实验证据的一致性。

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