Lipidomics reveals potential biomarkers and pathophysiological insights in the progression of diabetic kidney disease

Diabetic kidney disease (DKD) is the leading cause of end-stage renal disease, affecting over 30 % of diabetes mellitus (DM) patients. Early detection of DKD in DM patients can enable timely preventive therapies, and potentially delay disease progression. Since the kidney relies on fatty acid oxidat...

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Published inMetabolism open Vol. 25; p. 100354
Main Authors Guo, Xiaozhen, Zhang, Zixuan, Li, Cuina, Li, Xueling, Cao, Yutang, Wang, Yangyang, Li, Jiaqi, Wang, Yibin, Wang, Kanglong, Liu, Yameng, Xie, Cen, Zhong, Yifei
Format Journal Article
LanguageEnglish
Published England Elsevier Inc 01.03.2025
Elsevier
Subjects
FFA
PS
ALT
DM
AUC
DKD
SCr
ROC
PKC
CVD
Cer
MAG
RF
LPA
LPC
LPE
BUN
SM
AST
CE
OR
CI
DAG
TC
PA
PC
PE
PG
PI
TAG
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Summary:Diabetic kidney disease (DKD) is the leading cause of end-stage renal disease, affecting over 30 % of diabetes mellitus (DM) patients. Early detection of DKD in DM patients can enable timely preventive therapies, and potentially delay disease progression. Since the kidney relies on fatty acid oxidation for energy, dysregulated lipid metabolism has been implicated in proximal tubular cell damage and DKD pathogenesis. This study aimed to identify lipid alterations during DKD development and potential biomarkers differentiating DKD from DM. lipidomics analysis was performed on serum collected from 55 patients with DM, 21 with early DKD stage and 32 with advanced DKD, and 22 healthy subjects. Associations between lipids and DKD risk were evaluated by logistic regression. Lipid profiling revealed elevated levels of certain lysophosphatidylethanolamines (LPEs), phosphatidylethanolamines (PEs), ceramides (Cers), and diacylglycerols (DAGs) in the DM-DKD transition, while most LPEs, lysophosphatidylcholines (LPCs), along with several monoacylglycerol (MAG) and triacylglycerols (TAGs), increased further from DKD-E to DKD-A. Logistic regression indicated positive associations between LPCs, LPEs, PEs, and DAGs with DKD risk, with most LPEs correlating significantly with urinary albumin-to-creatinine ratio (UACR) and inversely with estimated glomerular filtration rate (eGFR). A machine-learning-derived biomarker panel, Lipid9, consisting of LPC(18:2), LPC(20:5), LPE (16:0), LPE (18:0), LPE (18:1), LPE (24:0), PE (34:1), PE (34:2), and PE (36:2), accurately distinguished DKD (AUC: 0.78, 95 % CI 0.68–0.86) from DM. Incorporating two clinical indexes, serum creatinine and blood urea nitrogen, the Lipid9-SCB model further improved DKD detection (AUC: 0.83, 95 % CI 0.75–0.90) from DM, and was notably more sensitive for identifying DKD-E (AUC: 0.79, 95 % CI 0.67–0.91). This study deciphers the lipid signature in DKD progression, and suggests the Lipid9-SCB panel as a promising tool for early DKD detection in DM patients.
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These authors contributed equally to this work.
ISSN:2589-9368
2589-9368
DOI:10.1016/j.metop.2025.100354