The Use of Machine Learning Models and Radiomics for Segmentation and Classification of Adnexal Masses on Ultrasound: A multi-cohort retrospective study
Abstract:BackgroundOvarian cancer remains the deadliest of all gynaecological cancers. Ultrasound-based models exist to support the classification of adnexal masses but are dependent on human assessment of features on ultrasound. Therefore, we aimed to develop an end-to-end machine learning (ML) model capable of automating the classification of adnexal masses.MethodsIn this retrospective study, transvaginal ultrasound scan images were extracted and segmented from Imperial College Healthcare, UK (ICH development dataset… Show more
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