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首页> 外文期刊>Journal of molecular cell biology >Diagnosing phenotypes of single-sample individuals by edge biomarkers
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Diagnosing phenotypes of single-sample individuals by edge biomarkers

机译:边缘生物标志物诊断单样本的表型

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Network or edge biomarkers are a reliable form to characterize phenotypes or diseases. However, obtainingedges or correlations between molecules for an individual requires measurement of multiple samples of that individual, which are generally unavailable in clinical practice. Thus, it is strongly demanded to diagnose a disease by edge or network biomarkers in one-sample-for-one-individual context. Here, we developed a new computational framework, EdgeBiomarker, to integrate edge and node biomarkers to diagnose phenotype of each single test sample. By applying the method to datasets of lung and breast cancer, it reveals new marker genes/gene-pairs and related sub-networks for distinguishing earlier and advanced cancer stages. Our method shows advantages over traditional methods: (i) edge biomarkers extracted from non-differentially expressed genes achieve better cross-validation accuracy of diagnosis than molecule or node biomarkers from differentially expressed genes, suggesting that certain pathogenic information is only present at the level of network and under-estimated by traditional methods; (ii) edge biomarkers categorize patients into low/high survival rate in a more reliable manner; (iii) edge biomarkers are significantly enriched in relevant biological functions or pathways, implying that the association changes in a network, rather than expression changes in individual molecules, tend to be causally related to cancer development. The new framework of edge biomarkers paves the way for diagnosing diseases and analyzingtheir molecular mechanisms by edges or networks in one-sample-for-one-individual basis. This also provides a powerful tool for precision medicine or big-data medicine.
机译:网络或边缘生物标志物是表征表型或疾病的可靠形式。然而,个人分子之间的耐受或相关性需要测量该个体的多个样本,这通常在临床实践中不可用。因此,强烈要求通过边缘或网络生物标志物在一个样本 - 一个单独的上下文中诊断疾病。在这里,我们开发了一个新的计算框架,EdgeBiomarker,集成了边缘和节点生物标志物,以诊断每个测试样品的表型。通过将方法应用于肺和乳腺癌的数据集,它揭示了新的标记基因/基因对和相关的子网,用于区分早期和晚期癌症阶段。我们的方法显示出传统方法的优点:(i)从非差异表达基因提取的边缘生物标志物达到诊断的更好的交叉验证精度,而不是来自差异表达基因的分子或节点生物标志物,表明某些致病信息仅存在于级别通过传统方法网络和估计; (ii)以更可靠的方式将患者分类为低/高存活率的边缘生物标志物; (iii)边缘生物标志物在相关的生物学功能或途径中显着富集,这意味着网络中的关联变化,而不是单个分子的表达变化,往往与癌症发育有关。边缘生物标志物的新框架铺平了诊断疾病,并在一个样本的基础上通过边缘或网络分析了患者的分子机制。这也为精密药物或大数据医学提供了强大的工具。

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