Combination of meta-analysis and graph clustering to identify prognostic markers of ESCC

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Abstract

Esophageal squamous cell carcinoma (ESCC) is one of the most malignant gastrointestinal cancers and occurs at a high frequency rate in China and other Asian countries. Recently, several molecular markers were identified for predicting ESCC. Notwithstanding, additional prognostic markers, with a clear understanding of their underlying roles, are still required. Through bioinformatics, a graph-clustering method by DPClus was used to detect co-expressed modules. The aim was to identify a set of discriminating genes that could be used for predicting ESCC through graph-clustering and GO-term analysis. The results showed that CXCL12, CYP2C9, TGM3, MAL, S100A9, EMP-1 and SPRR3 were highly associated with ESCC development. In our study, all their predicted roles were in line with previous reports, whereby the assumption that a combination of meta-analysis, graph-clustering and GO-term analysis is effective for both identifying differentially expressed genes, and reflecting on their functions in ESCC. © 2012, Sociedade Brasileira de Genética.

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Gao, H., Wang, L., Cui, S., & Wang, M. (2012). Combination of meta-analysis and graph clustering to identify prognostic markers of ESCC. Genetics and Molecular Biology, 35(2), 530–537. https://doi.org/10.1590/S1415-47572012000300021

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