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Combined clinical and genomic signatures for the prognosis of early stage non-small cell lung cancer based on gene copy number alterations

机译:基于基因拷贝数改变的早期临床和基因组学特征联合用于非小细胞肺癌的预后

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摘要

The development of a more refined prognostic methodology for early non-small cell lung cancer (NSCLC) is an unmet clinical need. An accurate prognostic tool might help to select patients at early stages for adjuvant therapies. A new integrated bioinformatics searching strategy, that combines gene copy number alterations and expression, together with clinical parameters was applied to derive two prognostic genomic signatures. The proposed methodology combines data from patients with and without clinical data with a priori information on the ability of a gene to be a prognostic marker. Two initial candidate sets of 513 and 150 genes for lung adenocarcinoma (ADC) and squamous cell carcinoma (SCC), respectively, were generated by identifying genes which have both: a) significant correlation between copy number and gene expression, and b) significant prognostic value at the gene expression level in external databases. From these candidates, two panels of 7 (ADC) and 5 (SCC) genes were further identified via semi-supervised learning. These panels, together with clinical data (stage, age and sex), were used to construct the ADC and SCC hazard scores combining clinical and genomic data. The signatures were validated in two independent datasets (n?=?73 for ADC, n?=?97 for SCC), confirming that the prognostic value of both clinical-genomic models is robust, statistically significant (P?=?0.008 for ADC and P?=?0.019 for SCC) and outperforms both the clinical models (P?=?0.060 for ADC and P?=?0.121 for SCC) and the genomic models applied separately (P?=?0.350 for ADC and P?=?0.269 for SCC). The present work provides a methodology to generate a robust signature using copy number data that can be potentially used to any cancer. Using it, we found new prognostic scores based on tumor DNA that, jointly with clinical information, are able to predict overall survival (OS) in patients with early-stage ADC and SCC.
机译:早期非小细胞肺癌(NSCLC)的更完善的预后方法的开发是尚未满足的临床需求。准确的预后工具可能有助于选择早期患者进行辅助治疗。结合基因拷贝数变化和表达以及临床参数的新的综合生物信息学搜索策略被应用于获得两个预后基因组特征。所提出的方法将来自有或没有临床数据的患者的数据与有关基因作为预后标记能力的先验信息相结合。通过鉴定具有以下两个基因的基因,分别产生了两个初始候选组,分别是肺腺癌(ADC)和鳞状细胞癌(SCC)的513个基因和150个基因:在外部数据库中基因表达水平的价值。从这些候选者中,通过半监督学习进一步确定了由7个(ADC)和5个(SCC)基因组成的两个小组。这些面板与临床数据(阶段,年龄和性别)一起,用于结合临床和基因组数据构建ADC和SCC危险评分。在两个独立的数据集中对签名进行了验证(ADC的n?=?73,SCC的n?=?97),从而证实了这两种临床基因组模型的预后价值是可靠的,具有统计学意义(ADC的P?=?0.008)。和P?=?0.019(对于SCC)和优于临床模型(对于ADC,P?=?0.060和对于SCC,P?=?0.121)和单独应用的基因组模型(对于ADC和P?=?0.350)都胜过SCC为0.269)。本工作提供了一种使用可能会用于任何癌症的拷贝数数据生成可靠签名的方法。使用它,我们发现了基于肿瘤DNA的新的预后评分,结合临床信息,它们能够预测早期ADC和SCC患者的总体生存期(OS)。

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