Identification of genes and pathways related to breast cancer metastasis in an integrated cohort

Background Breast cancer is the most common malignant disease in women. Metastasis is the most common cause of death from this cancer. Screening genes related to breast cancer metastasis may help elucidate the mechanisms governing metastasis and identify molecular targets for antimetastatic therapy....

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Published inEuropean journal of clinical investigation Vol. 51; no. 7; pp. e13525 - n/a
Main Authors Wang, Lingchen, Mo, Changgan, Wang, Liqin, Cheng, Minzhang
Format Journal Article
LanguageEnglish
Published England Blackwell Publishing Ltd 01.07.2021
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Summary:Background Breast cancer is the most common malignant disease in women. Metastasis is the most common cause of death from this cancer. Screening genes related to breast cancer metastasis may help elucidate the mechanisms governing metastasis and identify molecular targets for antimetastatic therapy. The development of advanced algorithms enables us to perform cross‐study analysis to improve the robustness of the results. Materials and methods Ten data sets meeting our criteria for differential expression analyses were obtained from the Gene Expression Omnibus (GEO) database. Among these data sets, five based on the same platform were formed into a large cohort using the XPN algorithm. Differentially expressed genes (DEGs) associated with breast cancer metastasis were identified using the differential expression via distance synthesis (DEDS) algorithm. A cross‐platform method was employed to verify these DEGs in all ten selected data sets. The top 50 validated DEGs are represented with heat maps. Based on the validated DEGs, Gene Ontology (GO) functional and Kyoto Encyclopedia of Genes and Genomes (KEGG) pathway enrichment analyses were performed. Protein interaction (PPI) networks were constructed to further illustrate the direct and indirect associations among the DEGs. Survival analysis was performed to explore whether these genes can affect breast cancer patient prognosis. Results A total of 817 DEGs were identified using the DEDS algorithm. Of these DEGs, 450 genes were validated by the second algorithm. Enriched KEGG pathway terms demonstrated that these 450 DEGs may be involved in the cell cycle and oocyte meiosis in addition to their functions in ECM‐receptor interaction and protein digestion and absorption. PPI network analysis for the proteins encoded by the DEGs indicated that these genes may be primarily involved in the cell cycle and extracellular matrix. In particular, several genes played roles in multiple signalling pathways and were related to patient survival. These genes were also observed to be targetable in the CTD2 database. Conclusions Our study analysed multiple cross‐platform data sets using two different algorithms, helping elucidate the molecular mechanisms and identify several potential therapeutic targets of metastatic breast cancer. In addition, several genes exhibited promise for applications in targeted therapy against metastasis in future research.
Bibliography:Funding information
This study was funded in part by grants from the National Natural Science Foundation of China (31900559), the Natural Science Foundation of Jiangxi Province (20181BAB214009) and the Scientific Research and Training Program for Young Medical Teachers of Nanchang University (PY201921) to Minzhang Cheng, and the National Natural Science Foundation of China (81904087), the Open Foundation of Scientific Research of Zhejiang Chinese Medical University (ZYX2018009), the National Science Foundation of Jiangxi Province (20181BAB215036) and 2019 National Training Program for Innovative Talents of Traditional Chinese Medicine to Liqin Wang
Lingchen Wang and Changgan Mo contributed equally.
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content type line 23
ISSN:0014-2972
1365-2362
DOI:10.1111/eci.13525