Frontiers in Immunology (Apr 2025)

Identification of aging-related biomarkers for intervertebral disc degeneration in whole blood samples based on bioinformatics and machine learning

  • Zi-hang Li,
  • Shi-pian Li,
  • Shi-pian Li,
  • Ya-hao Li,
  • Yu-cheng Wang,
  • Zhen-yu Tang,
  • Kai-yang Xu,
  • Xiao-rong Li,
  • Zhen Tan,
  • Jiao-yi Pan,
  • Jin-tao Liu,
  • Hong Jiang,
  • Zhi-jia Ma,
  • Yu-xiang Dai,
  • Yu-xiang Dai,
  • Yu-xiang Dai,
  • Peng-fei Yu

DOI
https://doi.org/10.3389/fimmu.2025.1565945
Journal volume & issue
Vol. 16

Abstract

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IntroductionAging is characterized by gradual structural and functional changes in the body over time, with intervertebral disc degeneration (IVDD) representing a key manifestation of spinal aging and a major contributor to low back pain (LBP).MethodsThis study utilized bioinformatics and machine learning approaches to identify aging-related biomarkers associated with IVDD in whole blood samples. By analyzing GEO datasets alongside aging-related databases such as GeneCards, HAGR, and AgeAnno, we identified 15 aging-related differentially expressed genes (AIDEGs). Correlation and immune infiltration analyses were conducted on these AIDEGs, and diagnostic models were developed using WGCNA, logistic regression, random forest, support vector machine, k-nearest neighbors, and LASSO regression to identify key genes.ResultsAmong these, FCGR1A, CBS, and FASLG emerged as significant biomarkers with strong predictive capabilities for IVDD. Further exploration of biological pathways involving AIDEGs provided insights into their potential roles in IVDD pathogenesis. To further validate these findings, we collected human blood specimens and conducted in vitro experiments. ELISA assays confirmed that CBS and FASLG are crucial biomarkers of IVDD, with distinct expression patterns in patients with moderate versus severe degeneration.DiscussionThese results highlight the diagnostic potential of AIDEGs and provide a new perspective for early intervention and treatment strategies in IVDD.

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