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Identification of Gene Biomarkers for Distinguishing Small-Cell Lung Cancer from Non-Small-Cell Lung Cancer Using a Network-Based Approach

机译:利用基于网络的方法鉴定基因生物标志物以利用基于网络的方法与非小细胞肺癌中小细胞肺癌的鉴定

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Lung cancer consists of two main subtypes: small-cell lung cancer (SCLC) and non-small-cell lung cancer (NSCLC) that are classified according to their physiological phenotypes. In this study, we have developed a network-based approach to identify molecular biomarkers that can distinguish SCLC from NSCLC. By identifying positive and negative coexpression gene pairs in normal lung tissues, SCLC, or NSCLC samples and using functional association information from the STRING network, we first construct a lung cancer-specific gene association network. From the network, we obtain gene modules in which genes are highly functionally associated with each other and are either positively or negatively coexpressed in the three conditions. Then, we identify gene modules that not only are differentially expressed between cancer and normal samples, but also show distinctive expression patterns between SCLC and NSCLC. Finally, we select genes inside those modules with discriminating coexpression patterns between the two lung cancer subtypes and predict them as candidate biomarkers that are of diagnostic use.
机译:肺癌由两种主要亚型组成:小细胞肺癌(SCLC)和非小细胞肺癌(NSCLC)根据其生理表型分类。在这项研究中,我们开发了一种基于网络的方法来识别可以将SCLC与NSCLC区分的分子生物标志物。通过鉴定正常肺组织,SCLC或NSCLC样本中的阳性和阴性共施压基因对并使用弦网络功能关联信息,我们首先构建一种肺癌特异性基因关联网络。从网络中,我们获得基因模块,其中基因在三个条件下具有正面或负面地表达的基因。然后,我们鉴定基因模块,其不仅在癌症和正常样品之间差异表达,而且在SCLC和NSCLC之间表现出独特的表达模式。最后,我们选择在这些模块内的基因,具有鉴别两种肺癌亚型之间的共表达模式,并将其预测为具有诊断使用的候选生物标志物。

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