Frontiers in Aging Neuroscience (Jul 2022)

Application of weighted co-expression network analysis and machine learning to identify the pathological mechanism of Alzheimer's disease

  • Keping Chai,
  • Xiaolin Zhang,
  • Shufang Chen,
  • Huaqian Gu,
  • Huitao Tang,
  • Panlong Cao,
  • Gangqiang Wang,
  • Weiping Ye,
  • Feng Wan,
  • Jiawei Liang,
  • Daojiang Shen

DOI
https://doi.org/10.3389/fnagi.2022.837770
Journal volume & issue
Vol. 14

Abstract

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Aberrant deposits of neurofibrillary tangles (NFT), the main characteristic of Alzheimer's disease (AD), are highly related to cognitive impairment. However, the pathological mechanism of NFT formation is still unclear. This study explored differences in gene expression patterns in multiple brain regions [entorhinal, temporal, and frontal cortex (EC, TC, FC)] with distinct Braak stages (0- VI), and identified the hub genes via weighted gene co-expression network analysis (WGCNA) and machine learning. For WGCNA, consensus modules were detected and correlated with the single sample gene set enrichment analysis (ssGSEA) scores. Overlapping the differentially expressed genes (DEGs, Braak stages 0 vs. I-VI) with that in the interest module, metascape analysis, and Random Forest were conducted to explore the function of overlapping genes and obtain the most significant genes. We found that the three brain regions have high similarities in the gene expression pattern and that oxidative damage plays a vital role in NFT formation via machine learning. Through further filtering of genes from interested modules by Random Forest, we screened out key genes, such as LYN, LAPTM5, and IFI30. These key genes, including LYN, LAPTM5, and ARHGDIB, may play an important role in the development of AD through the inflammatory response pathway mediated by microglia.

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