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Linear Modeling of Genetic Networks from Experimental Data

机译:实验数据基因网络的线性建模

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In this paper, the regulatory interactions between genes are modeled by a linear genetic network that is estimated from gene expression data. The inference of such a genetic network is hampered by the dimensionality problem. this problem is inherent in all gene expression data since the number of genes by far exceeds the number of measured time points. Consequently, there are infinitely many solutions that fit the data set perfectly. In this paper, this problem is tackled by combining genes with similar expression profiles in a single prototypical 'gene'. Instead of modeling the genes individually, the relations between prototypical genes are modeled. In this way, genes that cannot be distinguished based on their expression profiles are grouped together and their common control action is modeled instead. This process reduces the number of signals and imposes a structure on the model that is supported by the fact that biological genetic networks are thought to be redundant and sparsely connected. In essence, the ambiguity in model solutions is represented explicitly by providing a generalized model that expresses the basic regulatory interactions between groups of similarly expressed genes. The modeling approach is illustrated on artificial as well as real data.
机译:在本文中,基因之间的调节相互作用由基因表达数据估计的线性遗传网络进行建模。这种遗传网络的推断是由维度问题所阻碍的。该问题是所有基因表达数据中固有的,因为远远超过测量时间点的数量。因此,无限的许多解决方案适合数据集合。在本文中,通过将具有类似表达谱的基因组合在单个原型的“基因”中来解决这个问题。代替单独建模基因,原型基因之间的关系是模拟的。以这种方式,基于其表达轮廓不能分地的基因被分组在一起,并且它们的共同控制作用是模拟的。该过程减少了信号的数量,并在模型上施加了一个结构,该结构由生物遗传网络被认为是多余的并且稀疏连接的事实支持。从本质上讲,模型解决方案中的模糊性通过提供表达类似表达基因组之间的基本调节相互作用的广义模型来明确表示。建模方法是在人造以及真实数据上示出。

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