Frontiers in Aging Neuroscience (Apr 2022)

Identification of Alzheimer’s Disease Molecular Subtypes Based on Parallel Large-Scale Sequencing

  • Meigang Ma,
  • Yuhan Liao,
  • Xiaohua Huang,
  • Chun Zou,
  • Liechun Chen,
  • Lucong Liang,
  • Youshi Meng,
  • Yuan Wu,
  • Donghua Zou

DOI
https://doi.org/10.3389/fnagi.2022.770136
Journal volume & issue
Vol. 14

Abstract

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The incidence of Alzheimer’s disease (AD) is constantly increasing as the older population grows, and no effective treatment is currently available. In this study, we focused on the identification of AD molecular subtypes to facilitate the development of effective drugs. AD sequencing data collected from the Gene Expression Omnibus (GEO) database were subjected to cluster sample analysis. Each sample module was then identified as a specific AD molecular subtype, and the biological processes and pathways were verified. The main long non-coding RNAs and transcription factors regulating each “typing pathway” and their potential mechanisms were determined using the RNAInter and TRRUST databases. Based on the marker genes of each “typing module,” a classifier was developed for molecular typing of AD. According to the pathways involved, five sample clustering modules were identified (mitogen-activated protein kinase, synaptic, autophagy, forkhead box class O, and cell senescence), which may be regulated through multiple pathways. The classifier showed good classification performance, which may be useful for developing novel AD drugs and predicting their indications.

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