Authors
Gustavo Carneiro, Jacinto Nascimento, Andrew P Bradley
Publication date
2017/9/12
Journal
IEEE transactions on medical imaging
Volume
36
Issue
11
Pages
2355-2365
Publisher
IEEE
Description
We describe an automated methodology for the analysis of unregistered cranio-caudal (CC) and medio-lateral oblique (MLO) mammography views in order to estimate the patient's risk of developing breast cancer. The main innovation behind this methodology lies in the use of deep learning models for the problem of jointly classifying unregistered mammogram views and respective segmentation maps of breast lesions (i.e., masses and micro-calcifications). This is a holistic methodology that can classify a whole mammographic exam, containing the CC and MLO views and the segmentation maps, as opposed to the classification of individual lesions, which is the dominant approach in the field. We also demonstrate that the proposed system is capable of using the segmentation maps generated by automated mass and micro-calcification detection systems, and still producing accurate results. The semi-automated …
Total citations
20182019202020212022202320248273841403516
Scholar articles
G Carneiro, J Nascimento, AP Bradley - IEEE transactions on medical imaging, 2017