Artificial intelligence for ovarian cancer diagnosis via ultrasound: a systematic review and quantitative assessment of model performance
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Garcia Atutxa, Igor; Villanueva Flores, Francisca; Dudagotia Barrio, Ekaitz; Sanchez Villamil, Javier I.; Martínez Más, José; [et al.]Date
2025-11-05Discipline/s
Ingeniería, Industria y ConstrucciónMedicina
Subject/s
Meta-analysisArtificial Intelligence
Ultrasound
Ovarian cancer
Early detection
Deep learning
Systematic review
Abstract
Background: Early and accurate detection of ovarian cancer (OC) remains clinically challenging, prompting exploration of artificial intelligence (AI)-based ultrasound diagnostics. This systematic review and meta-analysis critically evaluate diagnostic accuracy, methodological rigor, and clinical applicability of AI models for ovarian mass classification using B-mode ultrasound.
Methods: A systematic literature search following PRISMA guidelines was conducted in PubMed, IEEE Xplore, and Scopus up to December 2024. Eligible studies included AI-based ovarian mass classification using B-mode ultrasound, reporting accuracy, sensitivity, specificity, and/or area under the ROC curve (AUC). Data extraction, quality assessment (PROBAST), and metaanalysis (random effects) were independently performed by two reviewers. Heterogeneity sources were explored.
Results: From 823 identified records, 44 studies met inclusion criteria, covering over 650,000 images. Pooled performance metrics indicated h...





