Abstract

IntroductionMetabolomics offers considerable promise in early disease detection. We set out to test the hypothesis that routine newborn metabolic profiles at birth, obtained through screening for inborn errors of metabolism, would be associated with kidney disease and add incremental information to known clinical risk factors.MethodsWe conducted a population-level cohort study in Ontario, Canada, using metabolic profiles from 1,288,905 newborns from 2006 to 2015. The primary outcome was chronic kidney disease (CKD) or dialysis. Individual metabolites and their ratio combinations were examined by logistic regression after adjustment for established risk factors for kidney disease and incremental risk prediction measured.ResultsCKD occurred in 2086 (0.16%, median time 612 days) and dialysis in 641 (0.05%, median time 99 days) infants and children. Individual metabolites consisted of amino acids, acylcarnitines, markers of fatty acid oxidation, and others. Base models incorporating clinical risk factors only provided c-statistics of 0.61 for CKD and 0.70 for dialysis. The addition of identified metabolites to risk prediciton models resulted in significant incremental improvement in the performance of both models (CKD model: c-statistic 0.66 NRI 0.36 IDI 0.04, dialysis model: c-statistic 0.77 NRI 0.57 IDI 0.09). This was consistent after internal validation using bootstrapping and a sensitivity analysis excluding outcomes within the first 30 days.ConclusionRoutinely collected screening metabolites at birth are associated with CKD and the need for dialytic therapies in infants and children, and add incremental information to traditional clinical risk factors.

Highlights

  • Metabolomics offers considerable promise in early disease detection

  • The addition of identified metabolites to risk prediciton models resulted in significant incremental improvement in the performance of both models (CKD model: c-statistic 0.66 net reclassification index (NRI) 0.36 integrated discrimination improvement (IDI) 0.04, dialysis model: c-statistic 0.77 NRI 0.57 IDI 0.09)

  • Routinely collected screening metabolites at birth are associated with chronic kidney disease (CKD) and the need for dialytic therapies in infants and children, and add incremental information to traditional clinical risk factors

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Summary

Objectives

Our objective was to identify the highest number of individuals with subclinical or de novo kidney disease, without limiting our screening to previously described biochemical pathways

Methods
Results
Conclusion

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