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Machine learning model based on routine blood and biochemical parameters for early diagnosis of diabetic kidney disease - PubMed

8 days ago
  • #diabetic kidney disease
  • #machine learning
  • #early diagnosis
  • Machine learning model developed for early diagnosis of diabetic kidney disease (DKD) using routine blood and biochemical parameters.
  • Study included 3,114 diabetic patients for development and 1,496 from NHANES for external validation.
  • Early DKD defined as UACR 30-300 mg/g with eGFR ≥60 ml/min/1.73m².
  • Logistic regression model performed best with AUC = 0.689, sensitivity=40.5%, specificity=81.3%.
  • Top predictors identified: triglyceride-glucose index (TyG), gender, creatinine, globulin, and age.
  • External validation confirmed key associations for HbA1c, globulin, TyG, and neutrophil-to-albumin ratio.
  • Model demonstrates potential as a cost-effective screening tool for early DKD diagnosis.