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通过加权基因共表达网络分析鉴定胰腺导管腺癌的候选 miRNA 生物标志物

Identification of candidate miRNA biomarkers for pancreatic ductal adenocarcinoma by weighted gene co-expression network analysis.

作者信息

Giulietti M, Occhipinti G, Principato G, Piva F

机构信息

Department of Specialistic Clinical and Odontostomatological Sciences, Polytechnic University of Marche, Via Brecce Bianche, 60131, Ancona, Italy.

出版信息

Cell Oncol (Dordr). 2017 Apr;40(2):181-192. doi: 10.1007/s13402-017-0315-y. Epub 2017 Feb 15.

Abstract

PURPOSE

Pancreatic ductal adenocarcinoma (PDAC) is a highly aggressive malignancy with a dismal prognosis which is, among others, due to a lack of suitable biomarkers and therapeutic targets. Previously, basic gene expression analysis methods have been used for their identification, but recently new algorithms have been developed allowing more comprehensive data analyses. Among them, weighted gene co-expression network analysis (WGCNA) has already been applied to several cancer types with promising results.

METHODS

We applied WGCNA to miRNA expression data from PDAC patients. Specifically, we processed microarray-based expression data of 2555 miRNAs in serum from 100 PDAC patients and 150 healthy subjects. We identified network modules of co-expressed miRNAs in the healthy subject dataset and verified their preservation in the PDAC dataset. In the non-preserved modules, we selected key miRNAs and carried out functional enrichment analyses of their experimentally known target genes. Finally, we tested their prognostic significance using overall survival analyses.

RESULTS

Through WGCNA we identified several miRNAs that discriminate healthy subjects from PDAC patients and that, therefore, may play critical roles in PDAC development. At a functional level, we found that they regulate p53, FoxO and ErbB associated cellular signalling pathways, as well as cell cycle progression and various genes known to be involved in PDAC development. Some miRNAs were also found to serve as novel prognostic biomarkers, whereas others have previously already been proposed as such, thereby validating the WGCNA approach. In addition, we found that these novel data may explain at least some of our previous PDAC gene expression analysis results.

CONCLUSIONS

We identified several miRNAs critical for PDAC development using WGCNA. These miRNAs may serve as biomarkers for PDAC diagnosis/prognosis and patient stratification, and as putative novel therapeutic targets.

摘要

目的

胰腺导管腺癌(PDAC)是一种侵袭性很强的恶性肿瘤,预后很差,原因之一是缺乏合适的生物标志物和治疗靶点。以前,基本的基因表达分析方法已被用于其鉴定,但最近已开发出新的算法,允许进行更全面的数据分析。其中,加权基因共表达网络分析(WGCNA)已应用于几种癌症类型,并取得了有希望的结果。

方法

我们将WGCNA应用于PDAC患者的miRNA表达数据。具体而言,我们处理了来自100例PDAC患者和150名健康受试者血清中2555种miRNA的基于微阵列的表达数据。我们在健康受试者数据集中鉴定了共表达miRNA的网络模块,并在PDAC数据集中验证了它们的保留情况。在未保留的模块中,我们选择了关键miRNA,并对其实验已知的靶基因进行了功能富集分析。最后,我们使用总生存分析测试了它们的预后意义。

结果

通过WGCNA,我们鉴定了几种可区分健康受试者和PDAC患者的miRNA,因此它们可能在PDAC发展中起关键作用。在功能水平上,我们发现它们调节与p53、FoxO和ErbB相关的细胞信号通路,以及细胞周期进程和各种已知参与PDAC发展的基因。还发现一些miRNA可作为新的预后生物标志物,而其他一些miRNA此前已被提出具有此作用,从而验证了WGCNA方法。此外,我们发现这些新数据至少可以解释我们之前一些PDAC基因表达分析的结果。

结论

我们使用WGCNA鉴定了几种对PDAC发展至关重要的miRNA。这些miRNA可作为PDAC诊断/预后和患者分层的生物标志物,以及作为假定的新治疗靶点。

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