Author:
Oh Kangrok,Lee Si Eun,Kim Eun-Kyung
Abstract
AbstractMammography is currently the most commonly used modality for breast cancer screening. However, its sensitivity is relatively low in women with dense breasts. Dense breast tissues show a relatively high rate of interval cancers and are at high risk for developing breast cancer. As a supplemental screening tool, ultrasonography is a widely adopted imaging modality to standard mammography, especially for dense breasts. Lately, automated breast ultrasound imaging has gained attention due to its advantages over hand-held ultrasound imaging. However, automated breast ultrasound imaging requires considerable time and effort for reading because of the lengthy data. Hence, developing a computer-aided nodule detection system for automated breast ultrasound is invaluable and impactful practically. This study proposes a three-dimensional breast nodule detection system based on a simple two-dimensional deep-learning model exploiting automated breast ultrasound. Additionally, we provide several postprocessing steps to reduce false positives. In our experiments using the in-house automated breast ultrasound datasets, a sensitivity of $$93.65\%$$
93.65
%
with 8.6 false positives is achieved on unseen test data at best.
Funder
National Research Foundation of Korea (NRF) grant funded by the Korea government
Publisher
Springer Science and Business Media LLC
Cited by
1 articles.
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1. 3D breast ultrasound image classification using 2.5D deep learning;17th International Workshop on Breast Imaging (IWBI 2024);2024-05-29