[HTML][HTML] An overview of renal metabolomics

S Kalim, EP Rhee - Kidney international, 2017 - Elsevier
S Kalim, EP Rhee
Kidney international, 2017Elsevier
The high-throughput, high-resolution phenotyping enabled by metabolomics has been
applied increasingly to a variety of questions in nephrology research. This article provides
an overview of current metabolomics methodologies and nomenclature, citing specific
considerations in sample preparation, metabolite measurement, and data analysis that
investigators should understand when examining the literature or designing a study.
Furthermore, we review several notable findings that have emerged in the literature that both …
The high-throughput, high-resolution phenotyping enabled by metabolomics has been applied increasingly to a variety of questions in nephrology research. This article provides an overview of current metabolomics methodologies and nomenclature, citing specific considerations in sample preparation, metabolite measurement, and data analysis that investigators should understand when examining the literature or designing a study. Furthermore, we review several notable findings that have emerged in the literature that both highlight some of the limitations of current profiling approaches, as well as outline specific strengths unique to metabolomics. More specifically, we review data on the following: (i) tryptophan metabolites and chronic kidney disease onset, illustrating the interpretation of metabolite data in the context of established biochemical pathways; (ii) trimethylamine-N-oxide and cardiovascular disease in chronic kidney disease, illustrating the integration of exogenous and endogenous inputs to the blood metabolome; and (iii) renal mitochondrial function in diabetic kidney disease and acute kidney injury, illustrating the potential for rapid translation of metabolite data for diagnostic or therapeutic aims. Finally, we review future directions, including the need to better characterize interperson and intraperson variation in the metabolome, pool existing data sets to identify the most robust signals, and capitalize on the discovery potential of emerging nontargeted methods.
Elsevier