Context: Urine steroid metabolomics, combining mass spectrometry-based steroid profiling and machine learning, has been described as a novel diagnostic tool for detection of adrenocortical carcinoma (ACC). Objective, Design, Setting: This proof-of-concept study evaluated the performance of urine steroid metabolomics as a tool for postoperative recurrence detection after microscopically complete (R0) resection of ACC. Patients and Methods: 135 patients from 14 clinical centers provided postoperative urine samples, which were analyzed by gas chromatography-mass spectrometry. We assessed the utility of these urine steroid profiles in detecting ACC recurrence, either when interpreted by expert clinicians or when analyzed by random forest, a machine learning-based classifier. Radiological recurrence detection served as the reference standard. Results: Imaging detected recurrent disease in 42 of 135 patients; 32 had provided pre-and post-recurrence urine samples. 39 patients remained disease-free for ≥3 years. The urine "steroid fingerprint" at recurrence resembled that observed before R0 resection in the majority of cases. Review of longitudinally collected urine steroid profiles by 3 blinded experts detected recurrence by the time of radiological diagnosis in 50% to 72% of cases, improving to 69% to 92%, if a preoperative urine steroid result was available. Recurrence detection by steroid profiling preceded detection by imaging by more than 2 months in 22% to 39% of patients. Specificities varied considerably, ranging from 61% to 97%. The computational classifier detected ACC recurrence with superior accuracy (sensitivity = specificity = 81%). Conclusion: Urine steroid metabolomics is a promising tool for postoperative recurrence detection in ACC; availability of a preoperative urine considerably improves the ability to detect ACC recurrence.

Urine Steroid Metabolomics as a Novel Tool for Detection of Recurrent Adrenocortical Carcinoma

Perotti P.;
2020-01-01

Abstract

Context: Urine steroid metabolomics, combining mass spectrometry-based steroid profiling and machine learning, has been described as a novel diagnostic tool for detection of adrenocortical carcinoma (ACC). Objective, Design, Setting: This proof-of-concept study evaluated the performance of urine steroid metabolomics as a tool for postoperative recurrence detection after microscopically complete (R0) resection of ACC. Patients and Methods: 135 patients from 14 clinical centers provided postoperative urine samples, which were analyzed by gas chromatography-mass spectrometry. We assessed the utility of these urine steroid profiles in detecting ACC recurrence, either when interpreted by expert clinicians or when analyzed by random forest, a machine learning-based classifier. Radiological recurrence detection served as the reference standard. Results: Imaging detected recurrent disease in 42 of 135 patients; 32 had provided pre-and post-recurrence urine samples. 39 patients remained disease-free for ≥3 years. The urine "steroid fingerprint" at recurrence resembled that observed before R0 resection in the majority of cases. Review of longitudinally collected urine steroid profiles by 3 blinded experts detected recurrence by the time of radiological diagnosis in 50% to 72% of cases, improving to 69% to 92%, if a preoperative urine steroid result was available. Recurrence detection by steroid profiling preceded detection by imaging by more than 2 months in 22% to 39% of patients. Specificities varied considerably, ranging from 61% to 97%. The computational classifier detected ACC recurrence with superior accuracy (sensitivity = specificity = 81%). Conclusion: Urine steroid metabolomics is a promising tool for postoperative recurrence detection in ACC; availability of a preoperative urine considerably improves the ability to detect ACC recurrence.
2020
105
3
e307
e318
ACC; adrenocortical carcinoma; machine learning; mass spectrometry; recurrence detection; steroid metabolomics; Adrenal Cortex; Adrenal Cortex Neoplasms; Adrenalectomy; Adrenocortical Carcinoma; Adult; Aged; Aged, 80 and over; Biomarkers, Tumor; Female; Follow-Up Studies; Gas Chromatography-Mass Spectrometry; Humans; Longitudinal Studies; Machine Learning; Male; Metabolomics; Middle Aged; Neoplasm Recurrence, Local; Postoperative Period; Proof of Concept Study; Retrospective Studies; Sensitivity and Specificity; Steroids; Tomography, X-Ray Computed; Young Adult
Chortis V.; Bancos I.; Nijman T.; Gilligan L.C.; Taylor A.E.; Ronchi C.L.; O'reilly M.W.; Schreiner J.; Asia M.; Riester A.; Perotti P.; Libe R.; Quin...espandi
File in questo prodotto:
File Dimensione Formato  
dgz141.pdf

Accesso aperto

Tipo di file: PDF EDITORIALE
Dimensione 3.41 MB
Formato Adobe PDF
3.41 MB Adobe PDF Visualizza/Apri

I documenti in IRIS sono protetti da copyright e tutti i diritti sono riservati, salvo diversa indicazione.

Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/2318/1795062
Citazioni
  • ???jsp.display-item.citation.pmc??? 22
  • Scopus 54
  • ???jsp.display-item.citation.isi??? 41
social impact