Multi-omics analysis to identify driving factors in colorectal cancer

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Abstract

Aim: We aim to identify driving genes of colorectal cancer (CRC) through multi-omics analysis. Materials & methods: We downloaded multi-omics data of CRC from The Cancer Genome Atlas dataset. Integrative analysis of single-nucleotide variants, copy number variations, DNA methylation and differentially expressed genes identified candidate genes that carry CRC risk. Kernal genes were extracted from the weighted gene co-expression network analysis. A competing endogenous RNA network composed of CRC-related genes was constructed. Biological roles of genes were further investigated in vitro. Results: We identified LRRC26 and REP15 as novel prognosis-related driving genes for CRC. LRRC26 hindered tumorigenesis of CRC in vitro. Conclusion: Our study identified novel driving genes and may provide new insights into the molecular mechanisms of CRC.

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Xu, X., Gong, C., Wang, Y., Hu, Y., Liu, H., & Fang, Z. (2020). Multi-omics analysis to identify driving factors in colorectal cancer. Epigenomics, 12(18), 1633–1650. https://doi.org/10.2217/epi-2020-0073

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