Serum and urine metabolomic biomarkers for predicting prognosis in patients with immunoglobulin A nephropathy
	    		
		   		
		   			
		   		
	    	
    	- Author:
	        		
		        		
		        		
			        		You Hyun JEON
			        		
			        		
			        		
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			        		Sujin LEE
			        		
			        		;
		        		
		        		
		        		
			        		Da Woon KIM
			        		
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			        		Suhkmann KIM
			        		
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			        		Sun Sik BAE
			        		
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			        		Miyeun HAN
			        		
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			        		Eun Young SEONG
			        		
			        		;
		        		
		        		
		        		
			        		Sang Heon SONG
			        		
			        		
		        		
		        		
		        		
			        		
			        		Author Information
			        		
 - Publication Type:Original Article
 - From:Kidney Research and Clinical Practice 2023;42(5):591-605
 - CountryRepublic of Korea
 - Language:English
 - Abstract: Immunoglobulin A nephropathy (IgAN) is the most prevalent form of glomerulonephritis worldwide. Prediction of disease progression in IgAN can help to provide individualized treatment based on accurate risk stratification. Methods: We performed proton nuclear magnetic resonance-based metabolomics analyses of serum and urine samples from healthy controls, non-progressor (NP), and progressor (P) groups to identify metabolic profiles of IgAN disease progression. Metabolites that were significantly different between the NP and P groups were selected for pathway analysis. Subsequently, we analyzed multivariate area under the receiver operating characteristic (ROC) curves to evaluate the predictive power of metabolites associated with IgAN progression. Results: We observed several distinct metabolic fingerprints of the P group involving the following metabolic pathways: glycolipid metabolism; valine, leucine, and isoleucine biosynthesis; aminoacyl-transfer RNA biosynthesis; glycine, serine, and threonine metabolism; and glyoxylate and dicarboxylate metabolism. In multivariate ROC analyses, the combinations of serum glycerol, threonine, and proteinuria (area under the curve [AUC], 0.923; 95% confidence interval [CI], 0.667–1.000) and of urinary leucine, valine, and proteinuria (AUC, 0.912; 95% CI, 0.667–1.000) showed the highest discriminatory ability to predict IgAN disease progression. Conclusion: This study identified serum and urine metabolites profiles that can aid in the identification of progressive IgAN and proposed perturbed metabolic pathways associated with the identified metabolites.
 
            