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A Pathway-Based Strategy to Identify Biomarkers for Lung Cancer Diagnosis and Prognosis

机译:一种基于路径的策略用于识别肺癌诊断和预后的生物标志物。

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摘要

Current research has identified several potential biomarkers for lung cancer diagnosis or prognosis. However, most of these biomarkers are derived from a relatively small number of samples using algorithms at the gene level. Hence, gene expression signatures discovered in these studies have little overlaps. In this study, we proposed a new strategy to identify biomarkers from multiple datasets at the pathway level. We integrated the genome-wide expression data of lung cancer tissues from 13 published studies and applied our strategy to identify lung cancer diagnostic and prognostic biomarkers. We identified a 32-gene signature that differentiates lung adenocarcinomas from other lung cancer subtypes. We also discovered a 43-gene signature that can predict the outcome of human lung cancers. We tested their performance in several independent cohorts, which confirmed their robust prognostic and diagnostic power. Furthermore, we showed that the proposed gene expression signatures were independent of several traditional clinical indicators in lung cancer management. Our results suggest that the pathway-based strategy is useful to identify transcriptomic biomarkers from large-scale gene expression datasets that were collected from multiple sources.
机译:目前的研究已经确定了几种潜在的生物标志物,可用于肺癌的诊断或预后。但是,大多数这些生物标记物是使用基因水平的算法从相对少量的样品中衍生的。因此,在这些研究中发现的基因表达签名几乎没有重叠。在这项研究中,我们提出了一种在途径水平上从多个数据集中识别生物标志物的新策略。我们整合了来自13个已发表研究的肺癌组织的全基因组表达数据,并应用了我们的策略来鉴定肺癌的诊断和预后生物标志物。我们确定了一个32基因的特征,可以将肺腺癌与其他肺癌亚型区分开。我们还发现了可以预测人类肺癌预后的43个基因签名。我们在几个独立的队列中测试了它们的性能,证实了它们强大的预后和诊断能力。此外,我们表明拟议的基因表达签名独立于肺癌管理中的几个传统临床指标。我们的结果表明,基于途径的策略可用于从多种来源收集的大规模基因表达数据集中识别转录组生物标志物。

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