Metabolic Subtyping of Adrenal Tumors: Prospective Multi-Center Cohort Study in Koreaopen access
- Authors
- Ku, Eu Jeong; Lee, Chaelin; Shim, Jaeyoon; Lee, Sihoon; Kim, Kyoung-Ah; Kim, Sang Wan; Rhee, Yumie; Kim, Hyo-Jeong; Lim, Jung Soo; Chung, Choon Hee; Chun, Sung Wan; Yoo, Soon-Jib; Ryu, Ohk-Hyun; Cho, Ho Chan; Hong, A. Ram; Ahn, Chang Ho; Kim, Jung Hee; Choi, Man Ho
- Issue Date
- Oct-2021
- Publisher
- KOREAN ENDOCRINE SOC
- Keywords
- Steroid metabolism; Supervised machine learning; Adrenal neoplasm; Cushing syndrome; Primary hyperaldosteronism
- Citation
- ENDOCRINOLOGY AND METABOLISM, v.36, no.5, pp 1131 - 1141
- Pages
- 11
- Indexed
- SCIE
SCOPUS
KCI
- Journal Title
- ENDOCRINOLOGY AND METABOLISM
- Volume
- 36
- Number
- 5
- Start Page
- 1131
- End Page
- 1141
- URI
- https://scholarworks.dongguk.edu/handle/sw.dongguk/4404
- DOI
- 10.3803/EnM.2021.1149
- ISSN
- 2093-596X
2093-5978
- Abstract
- Background: Conventional diagnostic approaches for adrenal tumors require multi-step processes, including imaging studies and dynamic hormone tests. Therefore, this study aimed to discriminate adrenal tumors from a single blood sample based on the combination of liquid chromatography-mass spectrometry (LC-MS) and machine learning algorithms in serum profiling of adrenal steroids. Methods: The LC-MS-based steroid profiling was applied to serum samples obtained from patients with nonfunctioning adenoma (NFA. n=73). Cushing's syndrome (CS, n=30), and primary aldosteronism (PA, n=40) in a prospective multicenter study of adrenal disease. The decision tree (DT), random forest (RF), and extreme gradient boost (XGBoost) were performed to categorize the subtypes of adrenal tumors. Results: The CS group showed higher scrum levels of 11-deoxycortisol than the NFA group, and increased levels of tctrahydrocorti-sone (THE), 20 alpha-dihydrocortisol, and 60-hydroxycortisol were found in the PA group. However, the CS group showed lower levels of dehydroepiandrosterone (DHEA) and its sulfate derivative (DHEA-S) than both the NFA and PA groups. Patients with PA expressed higher serum 18-hydroxycortisol and DHEA but lower THE than NFA patients. The balanced accuracies of DT, RF, and XGBoost for classifying each type were 78%, 96%, and 97%, respectively. In receiver operating characteristics (ROC) analysis for CS, XGBoost, and RF showed a significantly greater diagnostic power than the DT However, in ROC analysis for PA, only RF exhibited better diagnostic performance than DT. Conclusion: The combination of LC-MS-based steroid profiling with machine learning algorithms could be a promising one-step diagnostic approach for the classification of adrenal tumor subtypes.
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