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Narratives in the Network: Interactive Methods for Mining Cell Signaling Networks

机译:网络中的叙述:小区信令网络的交互方法

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In this article, we describe our work on graph mining as applied to the cellular signaling pathways in the Signal Transduction Knowledge Environment (STKE). We present new algorithms and a graphical tool that can help biologists discover relationships between pathways by looking at structural overlaps within the database. We address the problem of determining pathway relationships by using two data mining approaches: clustering and storytelling. In the first approach, our tool brings similar pathways to the same cluster, and in the second, our tool determines intermediate overlapping pathways that can lead biologists to new hypotheses and experiments regarding relationships between the pathways. We formulate the problem of discovering pathway relationships as a subgraph discovery problem and propose a new technique called Subgraph-Extension Generation (SEG), which outperforms the traditional Frequent Subgraph Discovery (FSG) approach by magnitudes. Our tool provides an interface to compare these two approaches with a variety of similarity measures and clustering techniques as well as in terms of computational performance measures such as runtime and memory consumption.
机译:在本文中,我们描述了我们在信号挖掘知识环境(STKE)中应用于细胞信号通路的图挖掘工作。我们提出了新的算法和图形工具,可以帮助生物学家通过查看数据库中的结构重叠来发现途径之间的关系。我们通过使用两种数据挖掘方法来解决确定路径关系的问题:聚类和讲故事。在第一种方法中,我们的工具将相似的途径带入同一聚类,在第二种方法中,我们的工具确定了中间重叠的途径,这些途径可以使生物学家提出有关途径之间关系的新假设和实验。我们将发现路径关系的问题表述为子图发现问题,并提出了一种称为子图扩展生成(SEG)的新技术,该技术在数量上优于传统的子图发现(FSG)方法。我们的工具提供了一个界面,用于将这两种方法与各种相似性度量和聚类技术以及计算性能度量(例如运行时和内存消耗)进行比较。

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