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Title:A novel serum-based steroid-protein panels for differentiating ovarian cancer from non-malignant adnexal masses
Authors:ID Gjorgoska, Marija (Author)
ID Pirš, Boštjan (Author)
ID Smrkolj, Špela (Author)
ID Lanišnik-Rižner, Tea (Author)
Files:.pdf PDF - Presentation file, download (1,60 MB)
MD5: 4CA7AFA2DDE81989A62B7BAEB93E2D9A
 
URL URL - Source URL, visit https://link.springer.com/article/10.1186/s12935-025-04047-8
 
Language:English
Typology:1.01 - Original Scientific Article
Organization:Logo UKC LJ - Ljubljana University Medical Centre
Abstract:Background: Ovarian cancer is the deadliest gynecological malignancy, largely due to the advanced stage at diagnosis in most patients. This study investigates whether systemic steroids can serve as biomarkers to distinguish malignant ovarian tumors from non-malignant adnexal masses. Methods: This prospective, single-center observational study included 99 women with adnexal masses who underwent surgery between December 2021 and February 2025. Preoperative serum levels of 17 steroid hormones, including androgens, 11-oxyandrogens, glucocorticoids, and mineralocorticoids, were quantified using liquid chromatography-tandem mass spectrometry (LC-MS/MS). Machine learning was employed to assess the diagnostic potential of these steroids in distinguishing ovarian cancer (n = 43) from non-malignant adnexal masses (n = 56). Results: Patients with ovarian cancer had lower levels of 11β-hydroxy-testosterone (11OHT), 11-keto-testosterone (11KT), and testosterone compared to controls. Using stepwise feature selection, we developed two diagnostic models incorporating three 11-oxyandrogens (11KT, 11OHT, and 11β-hydroxy-androstenedione), patient age, and either cancer antigen 125 (CA-125) or human epididymis protein 4 (HE4) for distinguishing malignant from non-malignant adnexal masses. The model including CA-125 achieved AUC of 0.907, 88.9% sensitivity and 82.0% specificity, while the model including HE4 achieved AUC of 0.911, 94.4% sensitivity and 77.3% specificity as evaluated by cross-validation. Both models significantly outperformed CA-125, HE4, and the Risk of Ovarian Malignancy Algorithm (ROMA) index alone. Conclusion: Patients with ovarian cancer exhibit distinct steroid profiles compared to those with non-malignant adnexal masses. If validated, the models could enhance diagnosis, reducing unnecessary surgeries for benign conditions while ensuring timely treatment for ovarian cancer, particularly when conventional biomarkers are inconclusive.
Keywords:adnexal masses, diagnostic models, machine learning, ovarian cancer, steroids
Publication status:Published
Publication version:Version of Record
Year of publishing:2025
Number of pages:str. 1-11
Numbering:Vol. 25, no. 1, [article no.] 410
PID:20.500.12556/DiRROS-28873 New window
UDC:618.1-006:577.2
ISSN on article:1475-2867
DOI:10.1186/s12935-025-04047-8 New window
COBISS.SI-ID:258923011 New window
Note:Nasl. z nasl. zaslona; Opis vira z dne 27. 11. 2025;
Publication date in DiRROS:10.04.2026
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Downloads:72
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Record is a part of a journal

Title:Cancer cell international
Shortened title:Cancer cell int.
Publisher:BioMed Central
ISSN:1475-2867
COBISS.SI-ID:2594836 New window

Document is financed by a project

Funder:ARIS - Slovenian Research and Innovation Agency
Project number:J3-2535-2020
Name:Vloga androgenov pri hormonsko odvisnih boleznih: pomen za diagnostiko in zdravljenje

Funder:ARIS - Slovenian Research and Innovation Agency
Project number:J3-60065-2025
Name:Vloga steroidnih hormonov pri kemorezistenci raka jajčnikov in endometrija: pomen za zdravljenje

Funder:ARIS - Slovenian Research and Innovation Agency
Project number:P3-0449-2024
Name:Translacijska molekularna endokrinologija za zdravje žensk

Licences

License:CC BY-NC-ND 4.0, Creative Commons Attribution-NonCommercial-NoDerivatives 4.0 International
Link:http://creativecommons.org/licenses/by-nc-nd/4.0/
Description:The most restrictive Creative Commons license. This only allows people to download and share the work for no commercial gain and for no other purposes.

Secondary language

Language:Slovenian
Keywords:adneksalne mase, diagnostični modeli, strojno učenje, rak ovarijev, steroidi


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