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Augmenting endometriosis analysis from ultrasound data with deep learning

Authors :
Balica, Adrian
Dai, Jennifer
Piiwaa, Kayla
Qi, Xiao
Green, Ashlee N.
Phillips, Nancy
Egan, Susan
Hacihaliloglu, Ilker
Publication Year :
2023

Abstract

Endometriosis is a non-malignant disorder that affects 176 million women globally. Diagnostic delays result in severe dysmenorrhea, dyspareunia, chronic pelvic pain, and infertility. Therefore, there is a significant need to diagnose patients at an early stage. Our objective in this work is to investigate the potential of deep learning methods to classify endometriosis from ultrasound data. Retrospective data from 100 subjects were collected at the Rutgers Robert Wood Johnson University Hospital (New Brunswick, NJ, USA). Endometriosis was diagnosed via laparoscopy or laparotomy. We designed and trained five different deep learning methods (Xception, Inception-V4, ResNet50, DenseNet, and EfficientNetB2) for the classification of endometriosis from ultrasound data. Using 5-fold cross-validation study we achieved an average area under the receiver operator curve (AUC) of 0.85 and 0.90 respectively for the two evaluation studies.<br />Comment: Accepted to 2023 SPIE Medical Imaging Conference

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2302.09621
Document Type :
Working Paper