Frontiers in Cell and Developmental Biology (May 2021)

Identification of Key Genes With Differential Correlations in Lung Adenocarcinoma

  • You Zhou,
  • You Zhou,
  • You Zhou,
  • Bin Xu,
  • Bin Xu,
  • Bin Xu,
  • Yi Zhou,
  • Yi Zhou,
  • Yi Zhou,
  • Jian Liu,
  • Jian Liu,
  • Jian Liu,
  • Xiao Zheng,
  • Xiao Zheng,
  • Xiao Zheng,
  • Yingting Liu,
  • Yingting Liu,
  • Yingting Liu,
  • Haifeng Deng,
  • Haifeng Deng,
  • Haifeng Deng,
  • Ming Liu,
  • Ming Liu,
  • Ming Liu,
  • Xiubao Ren,
  • Jianchuan Xia,
  • Xiangyin Kong,
  • Tao Huang,
  • Jingting Jiang,
  • Jingting Jiang,
  • Jingting Jiang

DOI
https://doi.org/10.3389/fcell.2021.675438
Journal volume & issue
Vol. 9

Abstract

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BackgroundWith the advent of large-scale molecular profiling, an increasing number of oncogenic drivers contributing to precise medicine and reshaping classification of lung adenocarcinoma (LUAD) have been identified. However, only a minority of patients archived improved outcome under current standard therapies because of the dynamic mutational spectrum, which required expanding susceptible gene libraries. Accumulating evidence has witnessed that understanding gene regulatory networks as well as their changing processes was helpful in identifying core genes which acted as master regulators during carcinogenesis. The present study aimed at identifying key genes with differential correlations between normal and tumor status.MethodsWeighted gene co-expression network analysis (WGCNA) was employed to build a gene interaction network using the expression profile of LUAD from The Cancer Genome Atlas (TCGA). R package DiffCorr was implemented for the identification of differential correlations between tumor and adjacent normal tissues. STRING and Cytoscape were used for the construction and visualization of biological networks.ResultsA total of 176 modules were detected in the network, among which yellow and medium orchid modules showed the most significant associations with LUAD. Then genes in these two modules were further chosen to evaluate their differential correlations. Finally, dozens of novel genes with opposite correlations including ATP13A4-AS1, HIGD1B, DAP3, and ISG20L2 were identified. Further biological and survival analyses highlighted their potential values in the diagnosis and treatment of LUAD. Moreover, real-time qPCR confirmed the expression patterns of ATP13A4-AS1, HIGD1B, DAP3, and ISG20L2 in LUAD tissues and cell lines.ConclusionOur study provided new insights into the gene regulatory mechanisms during transition from normal to tumor, pioneering a network-based algorithm in the application of tumor etiology.

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