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基因表达谱揭示了用于颅咽管瘤早期诊断和治疗的关键基因。

Gene expression profiles reveal key genes for early diagnosis and treatment of adamantinomatous craniopharyngioma.

机构信息

Department of Neurosurgery, Beijing Luhe Hospital, Capital Medical University, 101149, Beijing, China.

出版信息

Cancer Gene Ther. 2018 Oct;25(9-10):227-239. doi: 10.1038/s41417-018-0015-4. Epub 2018 Apr 23.

Abstract

Adamantinomatous craniopharyngioma (ACP) is an aggressive brain tumor that occurs predominantly in the pediatric population. Conventional diagnosis method and standard therapy cannot treat ACPs effectively. In this paper, we aimed to identify key genes for ACP early diagnosis and treatment. Datasets GSE94349 and GSE68015 were obtained from Gene Expression Omnibus database. Consensus clustering was applied to discover the gene clusters in the expression data of GSE94349 and functional enrichment analysis was performed on gene set in each cluster. The protein-protein interaction (PPI) network was built by the Search Tool for the Retrieval of Interacting Genes, and hubs were selected. Support vector machine (SVM) model was built based on the signature genes identified from enrichment analysis and PPI network. Dataset GSE94349 was used for training and testing, and GSE68015 was used for validation. Besides, RT-qPCR analysis was performed to analyze the expression of signature genes in ACP samples compared with normal controls. Seven gene clusters were discovered in the differentially expressed genes identified from GSE94349 dataset. Enrichment analysis of each cluster identified 25 pathways that highly associated with ACP. PPI network was built and 46 hubs were determined. Twenty-five pathway-related genes that overlapped with the hubs in PPI network were used as signatures to establish the SVM diagnosis model for ACP. The prediction accuracy of SVM model for training, testing, and validation data were 94, 85, and 74%, respectively. The expression of CDH1, CCL2, ITGA2, COL8A1, COL6A2, and COL6A3 were significantly upregulated in ACP tumor samples, while CAMK2A, RIMS1, NEFL, SYT1, and STX1A were significantly downregulated, which were consistent with the differentially expressed gene analysis. SVM model is a promising classification tool for screening and early diagnosis of ACP. The ACP-related pathways and signature genes will advance our knowledge of ACP pathogenesis and benefit the therapy improvement.

摘要

造釉细胞瘤型颅咽管瘤(ACP)是一种主要发生在儿童人群中的侵袭性脑肿瘤。传统的诊断方法和标准治疗不能有效地治疗 ACP。在本文中,我们旨在确定用于 ACP 早期诊断和治疗的关键基因。从基因表达综合数据库中获得数据集 GSE94349 和 GSE68015。应用共识聚类来发现 GSE94349 表达数据中的基因簇,并对每个簇中的基因集进行功能富集分析。通过搜索基因交互作用工具构建蛋白质-蛋白质相互作用(PPI)网络,并选择枢纽基因。基于富集分析和 PPI 网络中识别的特征基因构建支持向量机(SVM)模型。数据集 GSE94349 用于训练和测试,数据集 GSE68015 用于验证。此外,还进行了 RT-qPCR 分析,以比较 ACP 样本与正常对照之间特征基因的表达。从 GSE94349 数据集鉴定的差异表达基因中发现了 7 个基因簇。对每个簇的富集分析确定了与 ACP 高度相关的 25 条通路。构建了 PPI 网络并确定了 46 个枢纽基因。将与 PPI 网络中的枢纽基因重叠的 25 条通路相关基因用作特征,建立用于 ACP 的 SVM 诊断模型。SVM 模型对训练、测试和验证数据的预测准确率分别为 94%、85%和 74%。在 ACP 肿瘤样本中,CDH1、CCL2、ITGA2、COL8A1、COL6A2 和 COL6A3 的表达显著上调,而 CAMK2A、RIMS1、NEFL、SYT1 和 STX1A 的表达显著下调,与差异表达基因分析一致。SVM 模型是一种有前途的分类工具,可用于筛选和早期诊断 ACP。与 ACP 相关的通路和特征基因将增进我们对 ACP 发病机制的认识,并有助于改善治疗效果。

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