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Joint inference of tissue-specific networks with a scale free topology

机译:具有无标度拓扑的组织特定网络的联合推理

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High-throughput experimental techniques have produced an enormous number of gene expression profiles for various tissues of the human body. Tissue-specificity is a key component in reflecting the potentially different roles of proteins in diverse cell lineages. One way of understanding the tissue specificity is by reconstructing the tissue-specific co-expression networks (CENs) to analyze the correlation between genes. A few methods have been developed for estimating CENs, but it still remains challenging in terms of both accuracy and efficiency. In this paper we propose a new method, JointNet, for predicting tissue-specific co-expression networks. JointNet is exploiting the observation that, functionally related tissues have similar expression patterns and thus, similar networks. It uses different node penalties for hubs and non-hub nodes to accurately estimate the scale-free networks. Our experimental results show that the resulting tissue-specific CENs are accurate and that our method outperforms the current state of the art.
机译:高通量实验技术已经为人体的各种组织产生了大量的基因表达谱。组织特异性是反映蛋白质在不同细胞谱系中潜在不同作用的关键组成部分。了解组织特异性的一种方法是通过重建组织特异性共表达网络(CEN)来分析基因之间的相关性。已经开发了几种估计CEN的方法,但是就准确性和效率而言,它仍然具有挑战性。在本文中,我们提出了一种用于预测组织特异性共表达网络的新方法JointNet。 JointNet正在利用这样的观察结果,即功能相关的组织具有相似的表达模式,因此具有相似的网络。它对集线器和非集线器节点使用不同的节点惩罚,以准确估计无标度网络。我们的实验结果表明,所得的组织特异性CEN是准确的,并且我们的方法优于现有技术。

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