Pre and post-hoc diagnosis and interpretation of malignancy from breast DCE-MRI.

Journal: Medical image analysis
Published Date:

Abstract

We propose a new method for breast cancer screening from DCE-MRI based on a post-hoc approach that is trained using weakly annotated data (i.e., labels are available only at the image level without any lesion delineation). Our proposed post-hoc method automatically diagnosis the whole volume and, for positive cases, it localizes the malignant lesions that led to such diagnosis. Conversely, traditional approaches follow a pre-hoc approach that initially localises suspicious areas that are subsequently classified to establish the breast malignancy - this approach is trained using strongly annotated data (i.e., it needs a delineation and classification of all lesions in an image). We also aim to establish the advantages and disadvantages of both approaches when applied to breast screening from DCE-MRI. Relying on experiments on a breast DCE-MRI dataset that contains scans of 117 patients, our results show that the post-hoc method is more accurate for diagnosing the whole volume per patient, achieving an AUC of 0.91, while the pre-hoc method achieves an AUC of 0.81. However, the performance for localising the malignant lesions remains challenging for the post-hoc method due to the weakly labelled dataset employed during training.

Authors

  • Gabriel Maicas
    Australian Institute for Machine Learning, The University of Adelaide, Australia. Electronic address: gabriel.maicas@adelaide.edu.au.
  • Andrew P Bradley
    ITEE, The University of Queensland, Australia.
  • Jacinto C Nascimento
    Instituto Superior Técnico, Lisbon, Portugal.
  • Ian Reid
    Australian Institute for Machine Learning, The University of Adelaide, Australia.
  • Gustavo Carneiro
    Australian Centre for Visual Technologies, The University of Adelaide, Australia. Electronic address: gustavo.carneiro@adelaide.edu.au.