Urine Steroid Metabolomics as a Biomarker Tool for Detecting Malignancy in Adrenal Tumors

Wiebke Arlt(University of Birmingham), Michael Biehl(University of Groningen), Angela E. Taylor(University of Birmingham), Stefanie Hahner(University of Würzburg), Rossella Libé(Inserm), Beverly Hughes(University of Birmingham), Petra Schneider(University of Birmingham), David J. Smith(University of Birmingham), Han Stiekema(University of Groningen), Nils Krone(University of Birmingham), Emilio Porfiri(University of Birmingham), Giuseppe Opocher(University of Padua), Jérôme Bertherat(Inserm), Franco Mantero(University of Padua), Bruno Allolio(University of Würzburg), Massimo Terzolo(University of Turin), Peter Nightingale(National Health Service), Cedric Shackleton(University of Birmingham), Xavier Bertagna(Inserm), Martin Faßnacht(University of Würzburg), Paul M. Stewart(University of Birmingham)
The Journal of Clinical Endocrinology & Metabolism
September 15, 2011
Cited by 456Open Access
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Abstract

CONTEXT: Adrenal tumors have a prevalence of around 2% in the general population. Adrenocortical carcinoma (ACC) is rare but accounts for 2-11% of incidentally discovered adrenal masses. Differentiating ACC from adrenocortical adenoma (ACA) represents a diagnostic challenge in patients with adrenal incidentalomas, with tumor size, imaging, and even histology all providing unsatisfactory predictive values. OBJECTIVE: Here we developed a novel steroid metabolomic approach, mass spectrometry-based steroid profiling followed by machine learning analysis, and examined its diagnostic value for the detection of adrenal malignancy. DESIGN: Quantification of 32 distinct adrenal derived steroids was carried out by gas chromatography/mass spectrometry in 24-h urine samples from 102 ACA patients (age range 19-84 yr) and 45 ACC patients (20-80 yr). Underlying diagnosis was ascertained by histology and metastasis in ACC and by clinical follow-up [median duration 52 (range 26-201) months] without evidence of metastasis in ACA. Steroid excretion data were subjected to generalized matrix learning vector quantization (GMLVQ) to identify the most discriminative steroids. RESULTS: Steroid profiling revealed a pattern of predominantly immature, early-stage steroidogenesis in ACC. GMLVQ analysis identified a subset of nine steroids that performed best in differentiating ACA from ACC. Receiver-operating characteristics analysis of GMLVQ results demonstrated sensitivity = specificity = 90% (area under the curve = 0.97) employing all 32 steroids and sensitivity = specificity = 88% (area under the curve = 0.96) when using only the nine most differentiating markers. CONCLUSIONS: Urine steroid metabolomics is a novel, highly sensitive, and specific biomarker tool for discriminating benign from malignant adrenal tumors, with obvious promise for the diagnostic work-up of patients with adrenal incidentalomas.


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