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GRAPH KERNELS FOR DISEASE OUTCOME PREDICTION FROM PROTEIN-PROTEIN INTERACTION NETWORKS

机译:从蛋白质-蛋白质相互作用网络预测疾病结果的图形内核

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It is widely believed that comparing discrepancies in the protein-protein interaction (PPI) networks of individuals will become an important tool in understanding and preventing diseases. Currently PPI networks for individuals are not available, but gene expression data is becoming easier to obtain and allows us to represent individuals by a co-integrated gene expression/protein interaction network. Two major problems hamper the application of graph kernels - state-of-the-art methods for whole-graph comparison - to compare PPI networks. First, these methods do not scale to graphs of the size of a PPI network. Second, missing edges in these interaction networks are biologically relevant for detecting discrepancies, yet, these methods do not take this into account. In this article we present graph kernels for biological network comparison that are fast to compute and take into account missing interactions. We evaluate their practical performance on two datasets of co-integrated gene expression/PPI networks.
机译:普遍认为,比较个体的蛋白质-蛋白质相互作用(PPI)网络中的差异将成为了解和预防疾病的重要工具。当前没有用于个体的PPI网络,但是基因表达数据变得越来越容易获得,并允许我们通过共同整合的基因表达/蛋白质相互作用网络来代表个体。两个主要问题阻碍了图形内核的应用-用于比较整个图形的最新技术-比较PPI网络。首先,这些方法无法缩放为PPI网络规模的图形。其次,这些交互网络中缺失的边缘在生物学上与检测差异有关,但是,这些方法没有考虑到这一点。在本文中,我们提出了用于生物网络比较的图形内核,它们可以快速计算并考虑到缺少的交互。我们在两个基因整合/ PPI网络数据集上评估它们的实际性能。

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