利用定向信息建立生物学相关的影响网络。

Arvind Rao, Alfred O Hero, David J States, James Douglas Engel
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引用次数: 0

摘要

生物学相关影响网络的系统推断仍然是计算生物学中的一个具有挑战性的问题。尽管高通量数据的可用性使得使用概率模型来推断这种网络的合理结构成为可能,但它们对这一过程的生物学真正解释是值得怀疑的。在这项工作中,我们提出了一种基于定向信息(DTI)标准的网络推理方法,该方法将转录生物学纳入框架内,从而实现实验验证的推理。我们使用公开可用的胚胎肾脏和t细胞微阵列数据集来证明我们的结果。我们通过DTI提出了两种网络推断的变体(监督和无监督),以及与哺乳动物肾形成和t细胞激活相关的推断网络。我们证明了得到的相互作用与文献的一致性,并与确定系数(CoD)方法进行了比较。除了网络推理之外,所提出的框架还可以探索特定的交互作用,而不仅仅是数据揭示的交互作用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Using directed information to build biologically relevant influence networks.

The systematic inference of biologically relevant influence networks remains a challenging problem in computational biology. Even though the availability of high-throughput data has enabled the use of probabilistic models to infer the plausible structure of such networks, their true interpretation of the biology of the process is questionable. In this work, we propose a network inference methodology, based on the directed information (DTI) criterion, which incorporates the biology of transcription within the framework, so as to enable experimentally verifiable inference. We use publicly available embryonic kidney and T-cell microarray datasets to demonstrate our results. We present two variants of network inference via DTI (supervised and unsupervised) and the inferred networks relevant to mammalian nephrogenesis as well as T-cell activation. We demonstrate the conformity of the obtained interactions with literature as well as comparison with the coefficient of determination (CoD) method. Apart from network inference, the proposed framework enables the exploration of specific interactions, not just those revealed by data.

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