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MicroRNA-Integrated and Network-Embedded Gene Selection with Diffusion Distance

机译:具有扩散距离的MicroRNA集成和网络嵌入式基因选择

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摘要

Gene network information has been used to improve gene selection in microarray-based studies by selecting marker genes based both on their expression and the coordinate expression of genes within their gene network under a given condition. Here we propose a new network-embedded gene selection model. In this model, we first address the limitations of microarray data. Microarray data, although widely used for gene selection, measures only mRNA abundance, which does not always reflect the ultimate gene phenotype, since it does not account for post-transcriptional effects. To overcome this important (critical in certain cases) but ignored-in-almost-all-existing-studies limitation, we design a new strategy to integrate together microarray data with the information of microRNA, the major post-transcriptional regulatory factor. We also handle the challenges led by gene collaboration mechanism. To incorporate the biological facts that genes without direct interactions may work closely due to signal transduction and that two genes may be functionally connected through multi paths, we adopt the concept of diffusion distance. This concept permits us to simulate biological signal propagation and therefore to estimate the collaboration probability for all gene pairs, directly or indirectly-connected, according to multi paths connecting them. We demonstrate, using type 2 diabetes (DM2) as an example, that the proposed strategies can enhance the identification of functional gene partners, which is the key issue in a network-embedded gene selection model. More importantly, we show that our gene selection model outperforms related ones. Genes selected by our model 1) have improved classification capability; 2) agree with biological evidence of DM2-association; and 3) are involved in many well-known DM2-associated pathways.
机译:在基于微阵列的研究中,通过基于标记基因的表达和在给定条件下基因在其基因网络中的协调表达来选择标记基因,基因网络信息已用于改善基因选择。在这里,我们提出了一种新的网络嵌入式基因选择模型。在此模型中,我们首先解决微阵列数据的局限性。尽管微阵列数据被广泛用于基因选择,但只能测量mRNA丰度,因为它不能解释转录后的影响,因此它并不总是反映最终的基因表型。为了克服这一重要(在某些情况下很关键)但几乎被所有研究都忽略了的局限性,我们设计了一种新的策略,将微阵列数据与microRNA信息(转录后主要调控因子)整合在一起。我们还应对基因协作机制带来的挑战。为了整合生物学事实,即没有直接相互作用的基因可能由于信号转导而紧密起作用,并且两个基因可能通过多条路径功能连接,我们采用了扩散距离的概念。这个概念使我们能够模拟生物信号的传播,从而根据连接基因的所有路径来估计所有直接或间接连接的基因对的协作概率。我们以2型糖尿病(DM2)为例,证明了所提出的策略可以增强对功能基因伴侣的识别,这是网络嵌入式基因选择模型中的关键问题。更重要的是,我们证明了我们的基因选择模型优于相关模型。我们的模型选择的基因1)具有改进的分类能力; 2)同意DM2关联的生物学证据;和3)参与许多众所周知的DM2相关途径。

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