Skip to main contentSkip to navigation
Ovarian Cancer Research Alliance
Research Exchange
Donate

Investigator

Huiling Xiang

State Key Laboratory Of Oncology In South China

HXHuiling Xiang
Papers(1)
Development and valid…
Collaborators(1)
Hao Chen
Institutions(2)
State Key Laboratory …The University of Tex…

Papers

Development and validation of an interpretable model integrating multimodal information for improving ovarian cancer diagnosis

AbstractOvarian cancer, a group of heterogeneous diseases, presents with extensive characteristics with the highest mortality among gynecological malignancies. Accurate and early diagnosis of ovarian cancer is of great significance. Here, we present OvcaFinder, an interpretable model constructed from ultrasound images-based deep learning (DL) predictions, Ovarian–Adnexal Reporting and Data System scores from radiologists, and routine clinical variables. OvcaFinder outperforms the clinical model and the DL model with area under the curves (AUCs) of 0.978, and 0.947 in the internal and external test datasets, respectively. OvcaFinder assistance led to improved AUCs of radiologists and inter-reader agreement. The average AUCs were improved from 0.927 to 0.977 and from 0.904 to 0.941, and the false positive rates were decreased by 13.4% and 8.3% in the internal and external test datasets, respectively. This highlights the potential of OvcaFinder to improve the diagnostic accuracy, and consistency of radiologists in identifying ovarian cancer.

3Works
1Papers
1Collaborators
Ovarian NeoplasmsBreast NeoplasmsCarcinoma, Ductal, Breast
Links & IDs
0000-0001-5734-4080
Ovarian Cancer Research Alliance

A global leader in the fight against gynecologic cancer

LIVING LAB
Join the Living LabOur TeamGovernance & EthicsSocial Media Toolkit
DISCOVERY LAB
Discovery LabHow It WorksUpcoming WebinarsContribute Data
ABOUT
About OCRAGet InvolvedMake a DonationContact Us

© 2025 Ovarian Cancer Research Alliance, Inc.

PrivacyTermsAccessibility