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基因表达谱预测 I 期非小细胞肺癌患者术后复发。

Gene-expression signature predicts postoperative recurrence in stage I non-small cell lung cancer patients.

机构信息

Department of Physiology and the Cancer Center, Medical College of Wisconsin, Milwaukee, Wisconsin, United States of America.

出版信息

PLoS One. 2012;7(1):e30880. doi: 10.1371/journal.pone.0030880. Epub 2012 Jan 23.

Abstract

About 30% stage I non-small cell lung cancer (NSCLC) patients undergoing resection will recur. Robust prognostic markers are required to better manage therapy options. The purpose of this study is to develop and validate a novel gene-expression signature that can predict tumor recurrence of stage I NSCLC patients. Cox proportional hazards regression analysis was performed to identify recurrence-related genes and a partial Cox regression model was used to generate a gene signature of recurrence in the training dataset -142 stage I lung adenocarcinomas without adjunctive therapy from the Director's Challenge Consortium. Four independent validation datasets, including GSE5843, GSE8894, and two other datasets provided by Mayo Clinic and Washington University, were used to assess the prediction accuracy by calculating the correlation between risk score estimated from gene expression and real recurrence-free survival time and AUC of time-dependent ROC analysis. Pathway-based survival analyses were also performed. 104 probesets correlated with recurrence in the training dataset. They are enriched in cell adhesion, apoptosis and regulation of cell proliferation. A 51-gene expression signature was identified to distinguish patients likely to develop tumor recurrence (Dxy = -0.83, P<1e-16) and this signature was validated in four independent datasets with AUC >85%. Multiple pathways including leukocyte transendothelial migration and cell adhesion were highly correlated with recurrence-free survival. The gene signature is highly predictive of recurrence in stage I NSCLC patients, which has important prognostic and therapeutic implications for the future management of these patients.

摘要

约 30%接受切除术的 I 期非小细胞肺癌 (NSCLC) 患者会复发。需要强有力的预后标志物来更好地管理治疗选择。本研究的目的是开发和验证一种新的基因表达谱,以预测 I 期 NSCLC 患者的肿瘤复发。使用 Cox 比例风险回归分析来识别与复发相关的基因,并在训练数据集(来自 Director's Challenge 联盟的 142 例未经辅助治疗的 I 期肺腺癌)中使用部分 Cox 回归模型生成复发基因谱。使用四个独立的验证数据集,包括 GSE5843、GSE8894 以及梅奥诊所和华盛顿大学提供的另外两个数据集,通过计算从基因表达估计的风险评分与真实无复发生存时间之间的相关性以及时间依赖性 ROC 分析的 AUC,来评估预测准确性。还进行了基于途径的生存分析。在训练数据集中,有 104 个探针与复发相关。它们富集在细胞黏附、细胞凋亡和细胞增殖调节中。确定了一个 51 个基因表达特征来区分可能发生肿瘤复发的患者(Dxy =-0.83,P<1e-16),并在四个独立数据集进行了验证,AUC>85%。包括白细胞跨内皮迁移和细胞黏附在内的多个途径与无复发生存高度相关。该基因谱高度预测 I 期 NSCLC 患者的复发,这对这些患者未来的管理具有重要的预后和治疗意义。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/7432/3264655/524d5a6a6f61/pone.0030880.g001.jpg

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