AI-Driven Ultrasound Outperforms Expert Examiners in Ovarian Cancer Detection Across 20 Centers
In an international multicenter study spanning 20 centers and 3,652 patients, transformer-based deep learning models for ovarian cancer detection on ultrasound significantly outperformed both expert and non-expert examiners across all evaluated diagnostic metrics. In a simulated triage scenario, AI-driven support reduced expert referrals by 63% while improving diagnostic accuracy. The findings suggest AI could help address the critical shortage of expert ultrasound examiners and improve ovarian cancer diagnostic pathways.
The original study
International multicenter validation of AI-driven ultrasound detection of ovarian cancer.
- Authors
- Christiansen F, Konuk E, Ganeshan AR, Welch R, Palés Huix J, Czekierdowski A, et al.
- Journal
- Nature medicine
- Type
- Journal Article, Multicenter Study, Validation Study
- PMID
- 39747679
Original abstract
Ovarian lesions are common and often incidentally detected. A critical shortage of expert ultrasound examiners has raised concerns of unnecessary interventions and delayed cancer diagnoses. Deep learning has shown promising results in the detection of ovarian cancer in ultrasound images; however, external validation is lacking. In this international multicenter retrospective study, we developed and validated transformer-based neural network models using a comprehensive dataset of 17,119 ultrasound images from 3,652 patients across 20 centers in eight countries. Using a leave-one-center-out cross-validation scheme, for each center in turn, we trained a model using data from the remaining centers. The models demonstrated robust performance across centers, ultrasound systems, histological diagnoses and patient age groups, significantly outperforming both expert and non-expert examiners on all evaluated metrics, namely F1 score, sensitivity, specificity, accuracy, Cohen's kappa, Matthew's correlation coefficient, diagnostic odds ratio and Youden's J statistic. Furthermore, in a retrospective triage simulation, artificial intelligence (AI)-driven diagnostic support reduced referrals to experts by 63% while significantly surpassing the diagnostic performance of the current practice. These results show that transformer-based models exhibit strong generalization and above human expert-level diagnostic accuracy, with the potential to alleviate the shortage of expert ultrasound examiners and improve patient outcomes.