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用于筛选卵巢癌关键预后基因的生物信息学分析

Bioinformatics analysis to screen the key prognostic genes in ovarian cancer.

作者信息

Li Li, Cai Shengyun, Liu Shengnan, Feng Hao, Zhang Junjie

机构信息

The Department of Obstetrics and Gynecology, First Affiliated Hospital, Second Military Medical University, Changhai Road No 168, Shanghai, 200433, People's Republic of China.

出版信息

J Ovarian Res. 2017 Apr 13;10(1):27. doi: 10.1186/s13048-017-0323-6.

Abstract

BACKGROUND

Ovarian cancer (OC) is a gynecological oncology that has a poor prognosis and high mortality. This study is conducted to identify the key genes implicated in the prognosis of OC by bioinformatic analysis.

METHODS

Gene expression data (including 568 primary OC tissues, 17 recurrent OC tissues, and 8 adjacent normal tissues) and the relevant clinical information of OC patients were downloaded from The Cancer Genome Atlas database. After data preprocessing, cluster analysis was conducted using the ConsensusClusterPlus package in R. Using the limma package in R, differential analysis was performed to identify feature genes. Based on Kaplan-Meier (KM) survival analysis, prognostic seed genes were selected from the feature genes. After key prognostic genes were further screened by cluster analysis and KM survival analysis, they were performed functional enrichment analysis and multivariate survival analysis. Using the survival package in R, cox regression analysis was conducted for the microarray data of GSE17260 to validate the key prognostic genes.

RESULTS

A total of 3668 feature genes were obtained, among which 75 genes were identified as prognostic seed genes. Then, 25 key prognostic genes were screened, including AXL, FOS, KLF6, WDR77, DUSP1, GADD45B, and SLIT3. Especially, AXL and SLIT3 were enriched in ovulation cycle. Multivariate survival analysis showed that the key prognostic genes could effectively differentiate the samples and were significantly associated with prognosis. Additionally, GSE17260 confirmed that the key prognostic genes were associated with the prognosis of OC.

CONCLUSION

AXL, FOS, KLF6, WDR77, DUSP1, GADD45B, and SLIT3 might affect the prognosis of OC.

摘要

背景

卵巢癌(OC)是一种预后较差且死亡率较高的妇科肿瘤。本研究旨在通过生物信息学分析确定与OC预后相关的关键基因。

方法

从癌症基因组图谱数据库下载基因表达数据(包括568例原发性OC组织、17例复发性OC组织和8例相邻正常组织)以及OC患者的相关临床信息。数据预处理后,使用R语言中的ConsensusClusterPlus包进行聚类分析。使用R语言中的limma包进行差异分析以识别特征基因。基于Kaplan-Meier(KM)生存分析,从特征基因中选择预后种子基因。通过聚类分析和KM生存分析进一步筛选关键预后基因后,对其进行功能富集分析和多因素生存分析。使用R语言中的survival包对GSE17260的微阵列数据进行cox回归分析以验证关键预后基因。

结果

共获得3668个特征基因,其中75个基因被鉴定为预后种子基因。随后,筛选出25个关键预后基因,包括AXL、FOS、KLF6、WDR77、DUSP1、GADD45B和SLIT3。特别是,AXL和SLIT3在排卵周期中富集。多因素生存分析表明,关键预后基因可有效区分样本,且与预后显著相关。此外,GSE17260证实关键预后基因与OC的预后相关。

结论

AXL、FOS、KLF6、WDR77、DUSP1、GADD45B和SLIT3可能影响OC的预后。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/d6a5/5390356/214dc01ec584/13048_2017_323_Fig1_HTML.jpg

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