Artificial Intelligence in Ovarian Cancer Histopathology: A Systematic Review
Jack Breen, Katie Allen, Kieran Zucker, Pratik Adusumilli, Andy, Scarsbrook, Geoff Hall, Nicolas M. Orsi, Nishant Ravikumar

TL;DR
This systematic review evaluates the current state of AI models applied to ovarian cancer histopathology, highlighting significant biases, limited validation, and the need for better reporting to enable clinical translation.
Contribution
The paper provides a comprehensive assessment of existing AI models for ovarian cancer histopathology, identifying critical gaps in bias, validation, and reporting that hinder clinical application.
Findings
All models had high or unclear bias risk.
Limited validation with small sample sizes.
No models are ready for clinical use.
Abstract
Purpose - To characterise and assess the quality of published research evaluating artificial intelligence (AI) methods for ovarian cancer diagnosis or prognosis using histopathology data. Methods - A search of PubMed, Scopus, Web of Science, CENTRAL, and WHO-ICTRP was conducted up to 19/05/2023. The inclusion criteria required that research evaluated AI on histopathology images for diagnostic or prognostic inferences in ovarian cancer. The risk of bias was assessed using PROBAST. Information about each model of interest was tabulated and summary statistics were reported. PRISMA 2020 reporting guidelines were followed. Results - 1573 records were identified, of which 45 were eligible for inclusion. There were 80 models of interest, including 37 diagnostic models, 22 prognostic models, and 21 models with other diagnostically relevant outcomes. Models were developed using 1-1375 slides…
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Taxonomy
TopicsOvarian cancer diagnosis and treatment · Radiomics and Machine Learning in Medical Imaging · AI in cancer detection
MethodsNone
