Renal Failure (Dec 2024)

Identification of serum biomarkers for chronic kidney disease using serum metabolomics

  • Xi Gu,
  • Yindi Dong,
  • Xuemei Wang,
  • Zhigang Ren,
  • Guanhua Li,
  • Yaxin Hao,
  • Jian Wu,
  • Shiyuan Guo,
  • Yajuan Fan,
  • Hongyan Ren,
  • Chao Liu,
  • Suying Ding,
  • Weikang Li,
  • Ge Wu,
  • Zhangsuo Liu

DOI
https://doi.org/10.1080/0886022X.2024.2409346
Journal volume & issue
Vol. 46, no. 2

Abstract

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This study aimed to identify biomarkers for chronic kidney disease (CKD) by studying serum metabolomics. Serum samples were collected from 194 non-dialysis CKD patients and 317 healthy controls (HC). Using ultra-high-performance liquid chromatography-tandem mass spectrometry (UPLC-MS), untargeted metabolomics analysis was conducted. A random forest model was developed and validated in separate sets of HC and CKD patients. The serum metabolomic profiles of patients with chronic kidney disease (CKD) exhibited significant differences compared to healthy controls (HC). A total of 314 metabolites were identified as significantly different, with 179 being upregulated and 135 being downregulated in CKD patients. KEGG enrichment analysis revealed several key pathways, including arginine biosynthesis, phenylalanine metabolism, linoleic acid metabolism, and purine metabolism. The diagnostic efficacy of the classifier was high, with an area under the curve of 1 in the training and validation sets and 0.9435 in the cross-validation set. This study provides comprehensive insights into serum metabolism in non-dialysis CKD patients, highlighting the potential involvement of abnormal biological metabolism in CKD pathogenesis. Exploring metabolites may offer new possibilities for the management of CKD.

Keywords