Literature DB >> 26047788

Urine Metabolite Profiles Predictive of Human Kidney Allograft Status.

Karsten Suhre1, Joseph E Schwartz2, Vijay K Sharma3, Qiuying Chen4, John R Lee3, Thangamani Muthukumar3, Darshana M Dadhania3, Ruchuang Ding3, David N Ikle5, Nancy D Bridges6, Nikki M Williams6, Gabi Kastenmüller7, Edward D Karoly8, Robert P Mohney8, Michael Abecassis9, John Friedewald10, Stuart J Knechtle11, Yolanda T Becker11, Benjamin Samstein12, Abraham Shaked13, Steven S Gross4, Manikkam Suthanthiran14.   

Abstract

Noninvasive diagnosis and prognostication of acute cellular rejection in the kidney allograft may help realize the full benefits of kidney transplantation. To investigate whether urine metabolites predict kidney allograft status, we determined levels of 749 metabolites in 1516 urine samples from 241 kidney graft recipients enrolled in the prospective multicenter Clinical Trials in Organ Transplantation-04 study. A metabolite signature of the ratio of 3-sialyllactose to xanthosine in biopsy specimen-matched urine supernatants best discriminated acute cellular rejection biopsy specimens from specimens without rejection. For clinical application, we developed a high-throughput mass spectrometry-based assay that enabled absolute and rapid quantification of the 3-sialyllactose-to-xanthosine ratio in urine samples. A composite signature of ratios of 3-sialyllactose to xanthosine and quinolinate to X-16397 and our previously reported urinary cell mRNA signature of 18S ribosomal RNA, CD3ε mRNA, and interferon-inducible protein-10 mRNA outperformed the metabolite signatures and the mRNA signature. The area under the receiver operating characteristics curve for the composite metabolite-mRNA signature was 0.93, and the signature was diagnostic of acute cellular rejection with a specificity of 84% and a sensitivity of 90%. The composite signature, developed using solely biopsy specimen-matched urine samples, predicted future acute cellular rejection when applied to pristine samples taken days to weeks before biopsy. We conclude that metabolite profiling of urine offers a noninvasive means of diagnosing and prognosticating acute cellular rejection in the human kidney allograft, and that the combined metabolite and mRNA signature is diagnostic and prognostic of acute cellular rejection with very high accuracy.
Copyright © 2016 by the American Society of Nephrology.

Entities:  

Keywords:  acute rejection; kidney biopsy; renal transplantation; transplant outcomes

Mesh:

Year:  2015        PMID: 26047788      PMCID: PMC4731125          DOI: 10.1681/ASN.2015010107

Source DB:  PubMed          Journal:  J Am Soc Nephrol        ISSN: 1046-6673            Impact factor:   10.121


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