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计算机分析转移性乳腺癌差异表达基因集,鉴定潜在的预后生物标志物。

In silico analysis of differentially expressed genesets in metastatic breast cancer identifies potential prognostic biomarkers.

机构信息

Department of Life Sciences, Sogang University, 35 Baekbeom-ro, Mapo-gu, Seoul, 04107, Republic of Korea.

出版信息

World J Surg Oncol. 2021 Jun 25;19(1):188. doi: 10.1186/s12957-021-02301-7.

Abstract

BACKGROUND

Identification of specific biological functions, pathways, and appropriate prognostic biomarkers is essential to accurately predict the clinical outcomes of and apply efficient treatment for breast cancer patients.

METHODS

To search for metastatic breast cancer-specific biological functions, pathways, and novel biomarkers in breast cancer, gene expression datasets of metastatic breast cancer were obtained from Oncomine, an online data mining platform. Over- and under-expressed genesets were collected and the differentially expressed genes were screened from four datasets with large sample sizes (N > 200). They were analyzed for gene ontology (GO), KEGG pathway, protein-protein interaction, and hub gene analyses using online bioinformatic tools (Enrichr, STRING, and Cytoscape) to find enriched functions and pathways in metastatic breast cancer. To identify novel prognostic biomarkers in breast cancer, differentially expressed genes were screened from the entire twelve datasets with any sample sizes and tested for expression correlation and survival analyses using online tools such as KM plotter and bc-GenExMiner.

RESULTS

Compared to non-metastatic breast cancer, 193 and 144 genes were differentially over- and under-expressed in metastatic breast cancer, respectively, and they were significantly enriched in regulating cell death, epidermal growth factor receptor signaling, and membrane and cytoskeletal structures according to the GO analyses. In addition, genes involved in progesterone- and estrogen-related signalings were enriched according to KEGG pathway analyses. Hub genes were identified via protein-protein interaction network analysis. Moreover, four differentially over-expressed (CCNA2, CENPN, DEPDC1, and TTK) and three differentially under-expressed genes (ABAT, LRIG1, and PGR) were further identified as novel biomarker candidate genes from the entire twelve datasets. Over- and under-expressed biomarker candidate genes were positively and negatively correlated with the aggressive and metastatic nature of breast cancer and were associated with poor and good prognosis of breast cancer patients, respectively.

CONCLUSIONS

Transcriptome datasets of metastatic breast cancer obtained from Oncomine allow the identification of metastatic breast cancer-specific biological functions, pathways, and novel biomarkers to predict clinical outcomes of breast cancer patients. Further functional studies are needed to warrant validation of their roles as functional tumor-promoting or tumor-suppressing genes.

摘要

背景

识别特定的生物学功能、途径和合适的预后生物标志物对于准确预测乳腺癌患者的临床结局并应用有效的治疗方法至关重要。

方法

为了寻找乳腺癌转移特异性的生物学功能、途径和新型生物标志物,我们从在线数据挖掘平台 Oncomine 中获取了转移性乳腺癌的基因表达数据集。收集了过表达和低表达基因集,并从四个样本量较大的数据集(N>200)中筛选差异表达基因。使用在线生物信息学工具(Enrichr、STRING 和 Cytoscape)对这些基因进行基因本体(GO)、KEGG 通路、蛋白质-蛋白质相互作用和枢纽基因分析,以寻找转移性乳腺癌中富集的功能和通路。为了识别乳腺癌中的新型预后生物标志物,我们从任何样本量的全部 12 个数据集筛选差异表达基因,并使用在线工具(如 KM plotter 和 bc-GenExMiner)进行表达相关性和生存分析。

结果

与非转移性乳腺癌相比,转移性乳腺癌中分别有 193 个和 144 个基因过表达和低表达,根据 GO 分析,这些基因主要富集在调节细胞死亡、表皮生长因子受体信号和膜及细胞骨架结构。此外,KEGG 通路分析显示,与孕激素和雌激素相关信号相关的基因也被富集。通过蛋白质-蛋白质相互作用网络分析鉴定了枢纽基因。此外,我们还从全部 12 个数据集中进一步鉴定了四个过表达的差异基因(CCNA2、CENPN、DEPDC1 和 TTK)和三个低表达的差异基因(ABAT、LRIG1 和 PGR)作为新型生物标志物候选基因。过表达和低表达的生物标志物候选基因与乳腺癌的侵袭性和转移性特征呈正相关和负相关,与乳腺癌患者的不良和良好预后相关。

结论

从 Oncomine 获取的转移性乳腺癌转录组数据集可用于识别转移性乳腺癌特异性的生物学功能、途径和新型生物标志物,以预测乳腺癌患者的临床结局。需要进一步的功能研究来验证它们作为功能性肿瘤促进或肿瘤抑制基因的作用。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/5bbc/8235641/1fee80a690e5/12957_2021_2301_Fig1_HTML.jpg

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