Metabolic Profiling Associates with Disease Severity in Non-Ischemic Dilated Cardiomyopathy.

Metabolic Profiling Associates with Disease Severity in Non-Ischemic Dilated Cardiomyopathy.

Verdonschot, Job A J;Wang, Ping;van Bilsen, Marc;Hazebroek, Mark R;Merken, Jort J;Vanhoutte, Els K;Henkens, Michiel T H M;van den Wijngaard, Arthur;Glatz, Jan F C;Krapels, Ingrid P C;Brunner, Han G;Heymans, Stephane R B;Bierau, Jörgen;
journal of cardiac failure 2019
266
verdonschot2019metabolicjournal

Abstract

Metabolomic profiling may have diagnostic and prognostic value in heart failure. This study investigated whether targeted blood and urine metabolomics reflects disease severity in non-ischemic dilated cardiomyopathy (DCM) patients and compared its incremental value on top of NT-proBNP.A total of 149 metabolites were measured in plasma and urine samples of 273 DCM patients with different stages of disease (DCM patients with LVRR (normal LVEF), n=70; asymptomatic DCM, n=72 and symptomatic DCM, n=131). Acylcarnitines, sialic acid, and glutamic acid are the most distinctive metabolites associated with disease severity, as repeatedly revealed by uni-biomarker linear regression, sPLSDA, Random Forest and conditional Random Forest analyses. However, the absolute difference of the metabolic profile among groups was marginal. A decision tree model based on the top metabolites did not surpass NT-proBNP in classifying stages. However, a combination of NT-proBNP and the top metabolites improved the decision tree to distinguish DCM patients with LVRR from symptomatic DCM (AUC 0.813±0.138 versus 0.739±0.114; p=0.02).Functional cardiac recovery is reflected in metabolomics. These alterations reveal potential alternative treatment targets in advanced symptomatic DCM. The metabolic profile can complement NT-proBNP in determining disease severity in non-ischemic DCM.

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