AI Article Synopsis

  • * In a study of 9,628 participants, the biomarker KIM-1 was found to significantly associate with coronary artery stenosis and coronary artery calcium score, even after controlling for common cardiovascular risk factors.
  • * KIM-1 indicates proximal tubular damage in kidneys and its association with atherosclerosis suggests potential early risk signals for cardiovascular issues in individuals who seem otherwise healthy, highlighting a need for more research on this biomarker.

Article Abstract

Several novel urinary kidney damage biomarkers predict the progression of kidney disease. However, the relations of these biomarkers to atherosclerosis, a major consequence of kidney disease, are less studied. Urinary levels of several biomarkers, including kidney injury molecule-1 (KIM-1), osteopontin, epidermal growth factor, and Dickkopf-3, were assessed in participants enrolled in the Swedish CArdioPulmonary BioImage Study. The study included 9,628 individuals with a mean age of 57.5 years, of which 52.4% were women. The presence of coronary artery stenosis and the coronary artery calcium score (CACS) were determined using coronary computed tomography angiography. To analyze the associations between coronary atherosclerosis and urinary biomarker levels, an ordered logistic regression model adusting for confounding factors was employed. KIM-1 was the only biomarker associated with both coronary stenosis and CACS after adjusting for established cardiovascular risk factors (odds ratio [95% confidence intervals], 1.23[1.05-1.44] and 1.25[1.07-1.47]). These results were consistent in sensitivity analyses of individuals without hypertension, diabetes, or known cardiovascular disease and with normal kidney function. Urinary KIM-1, a specific marker of proximal tubular damage, was robustly linked to coronary atherosclerosis even in apparently healthy individuals, which suggests that the detrimental interplay between the kidney and cardiovascular system begins before clinically overt kidney disease. Additional studies are warranted to evaluate the urinary KIM-1 to predict kidney and cardiovascular disease.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC11589585PMC
http://dx.doi.org/10.1038/s41598-024-80321-5DOI Listing

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