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首页> 外文期刊>Journal of proteome research >New Method for Joint Network Analysis Reveals Common and Different Coexpression Patterns among Genes and Proteins in Breast Cancer
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New Method for Joint Network Analysis Reveals Common and Different Coexpression Patterns among Genes and Proteins in Breast Cancer

机译:联合网络分析的新方法揭示了乳腺癌基因和蛋白质之间共同和不同的共表达模式

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We focus on characterizing common and different coexpression patterns among RNAs and proteins in breast cancer tumors. To address this problem, we introduce Joint Random Forest (JRF), a novel nonparametric algorithm to simultaneously estimate multiple coexpression networks by effectively borrowing information across protein and gene expression data. The performance of JRF was evaluated through extensive simulation studies using different network topologies and data distribution functions. Advantages of JRF over other algorithms that estimate class-specific networks separately were observed across all simulation settings. JRF also outperformed a competing method based on Gaussian graphic models. We then applied JRF to simultaneously construct gene and protein coexpression networks based on protein and RNAseq data from CPTAC-TCGA breast cancer study. We identified interesting common and differential coexpression patterns among genes and proteins. This information can help to cast light on the potential disease mechanisms of breast cancer.
机译:我们专注于表征乳腺癌肿瘤中RNA和蛋白质之间共同和不同的共表达模式。为了解决这个问题,我们引入了联合随机森林(JRF),这是一种新颖的非参数算法,可以通过有效地借用蛋白质和基因表达数据之间的信息来同时估计多个共表达网络。 JRF的性能通过使用不同网络拓扑和数据分发功能的大量模拟研究进行了评估。在所有模拟设置中,都观察到JRF优于其他算法的优势,其他算法分别估计特定类别的网络。 JRF还优于基于高斯图形模型的竞争方法。然后,我们根据来自CPTAC-TCGA乳腺癌研究的蛋白质和RNAseq数据,应用JRF来同时构建基因和蛋白质共表达网络。我们确定了有趣的共同和差异共表达模式之间的基因和蛋白质。这些信息可以帮助阐明乳腺癌的潜在疾病机理。

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