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ROBUST IDENTIFICATION OF LARGE GENETIC NETWORKS

机译:大型遗传网络的鲁棒识别

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摘要

Temporal and spatial gene expression, together with the concentration of proteins and metabolites, is tightly controlled in the cell. This is possible thanks to complex regulatory networks between these different elements. The identification of these networks would be extremely valuable. We developed a novel algorithm to identify a large genetic network, as a set of linear differential equations, starting from measurements of gene expression at steady state following transcriptional perturbations. Experimentally, it is possible to overexpress each of the genes in the network using an episomal expression plasmid and measure the change in mRNA concentration of all the genes, following the perturbation. Computationally, we reduced the identification problem to a multiple linear regression, assuming that the network is sparse. We implemented a heuristic search method in order to apply the algorithm to large networks. The algorithm can correctly identify the network, even in the presence of large noise in the data, and can be used to predict the genes that directly mediate the action of a compound. Our novel approach is experimentally feasible and it is readily applicable to large genetic networks.
机译:细胞中时空基因表达以及蛋白质和代谢产物的浓度受到严格控制。这要归功于这些不同要素之间的复杂监管网络。这些网络的识别将非常有价值。我们开发了一种新颖的算法,可以将大型遗传网络识别为一组线性微分方程式,从对转录扰动后稳态下的基因表达进行测量开始。实验上,可以使用附加型表达质粒在网络中过表达每个基因,并在扰动后测量所有基因的mRNA浓度变化。在计算上,假设网络稀疏,我们将识别问题简化为多元线性回归。为了将算法应用于大型网络,我们实施了启发式搜索方法。该算法即使在数据中存在较大噪声的情况下也可以正确识别网络,并可用于预测直接介导化合物作用的基因。我们的新方法在实验上是可行的,并且很容易应用于大型遗传网络。

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