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Discovery of synergistic genetic network: A minimum spanning tree-based approach

机译:协同遗传网络的发现:基于最小生成树的方法

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摘要

Identification of gene interactions is one of the very well-known and important problems in the field of genetics. However, discovering synergistic gene interactions is a relatively new problem which has been proven to be as significant as the former in genetics. Several approaches have been proposed in this regard and most of them depend upon information theoretic measures. These approaches quantize the gene expression levels, explicitly or implicitly and therefore, may lose information. Here, we have proposed a novel approach for identifying synergistic gene interactions directly from the continuous expression levels, using a minimum spanning tree (MST)-based algorithm. We have used this approach to find pairs of synergistically interacting genes in prostate cancer. The advantages of our method are that it does not need any discretization and it can be extended straightway to find synergistically interacting sets of genes having three or more elements as per the requirement of the situation. We have demonstrated the relevance of the synergistic genes in cancer biology using KEGG pathway analysis and otherwise.
机译:基因相互作用的鉴定是遗传学领域众所周知的重要问题之一。然而,发现协同基因相互作用是一个相对较新的问题,在遗传学中已被证明与前者同样重要。在这方面已经提出了几种方法,并且大多数方法依赖于信息理论方法。这些方法显式或隐式量化基因表达水平,因此可能会丢失信息。在这里,我们提出了一种新颖的方法,可以使用基于最小生成树(MST)的算法直接从连续表达水平识别协同基因相互作用。我们已经使用这种方法来寻找前列腺癌中的协同相互作用的基因对。我们的方法的优点是它不需要任何离散化,并且可以根据情况的需要直接扩展以找到具有三个或更多元素的协同​​相互作用的基因集。我们已经使用KEGG通路分析和其他方法证明了协同基因在癌症生物学中的相关性。

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