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Deep Learning-Based Diagnosis of Epithelial Ovarian Cancer from Whole-Slide Histopathology Images

Authors
 Chun, Jihyun  ;  Kang, Haeyoun  ;  Chung, Heewon  ;  Jang, Jae-Myung  ;  Seo, Jangwon  ;  Kim, Taegyu  ;  Lee, Woohyun  ;  Park, Cheolhong  ;  Hong, Mingi  ;  Kim, Han-Mac Brian  ;  Lee, Messi H. J.  ;  Jang, Kyongseok  ;  Jung, Chan Kwon  ;  Kim, Sang Wun  ;  Lee, Ahwon 
Citation
 DIAGNOSTICS, Vol.16(10), 2026-05 
Article Number
 1470 
Journal Title
DIAGNOSTICS
Issue Date
2026-05
Keywords
ovary ; deep learning ; digital pathology ; computer-assisted diagnosis ; computational pathology
Abstract
Background/Objectives: Ovarian epithelial cancers (EOCs) comprise heterogeneous subtypes with distinct clinical outcomes, making accurate histological subtyping essential for prognosis and treatment planning. Although deep learning using digitized hematoxylin and eosin (H&E) whole-slide images (WSIs) is now widely used, its application to ovarian cancer diagnosis remains limited. Methods: In this multicenter study, we analyzed 319 H&E-stained slides from 152 patients with surgically resected EOC. An attention-based multiple instance learning (MIL) framework built on a pathology-specific foundation model (UNI) was used. WSIs were divided into 512 & times; 512-pixel patches at 40 & times; magnification, and slide-level classification were generated through attention-based aggregation of patch-level feature, followed by patient-level prediction. External validation was performed specifically on the high-grade serous carcinoma (HGSC) cases from The Cancer Genome Atlas (TCGA) dataset. Results: The model achieved strong performance, with slide-level and patient-level accuracies of 0.918 and 0.900, respectively, on the test set. In five-fold cross-validation, the mean slide-level AUC was 0.990 (95% CI: 0.983-0.997), and the patient-level AUC was 0.993 (95% CI: 0.989-0.996), indicating consistent results. External validation on TCGA HGSC cases showed robust generalizability, with slide-level and patient-level accuracies of 0.794 and 0.898. F1-scores ranged from 0.832 to 1.000 at the slide-level and from 0.831 to 0.966 at the patient-level, with particularly strong performance for HGSC and clear-cell carcinoma. Conclusions: These findings demonstrate the feasibility of deep learning-based models for histological subtyping of EOC using H&E-stained WSIs. This approach may help pathologists achieve more accurate and consistent histological diagnoses of EOC.
Files in This Item:
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DOI
10.3390/diagnostics16101470
Appears in Collections:
1. College of Medicine (의과대학) > Dept. of Obstetrics and Gynecology (산부인과학교실) > 1. Journal Papers
Yonsei Authors
Kim, Sang Wun(김상운) ORCID logo https://orcid.org/0000-0002-8342-8701
URI
https://ir.ymlib.yonsei.ac.kr/handle/22282913/213036
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