‘Earlier than Early’ Detection of Breast Cancer in Israeli BRCA Mutation Carriers Applying AI-Based Analysis to Consecutive MRI Scans

Author:

Anaby Debbie12,Shavin David1,Zimmerman-Moreno Gali1,Nissan Noam12,Friedman Eitan23ORCID,Sklair-Levy Miri123

Affiliation:

1. Department of Diagnostic Imaging, Sheba Medical Center, Ramat Gan 52621, Israel

2. Sackler Faculty of Medicine, Tel-Aviv University, Tel-Aviv 6910201, Israel

3. Meirav High Risk Center, Sheba Medical Center, Ramat Gan 52621, Israel

Abstract

Female BRCA1/BRCA2 (=BRCA) pathogenic variants (PVs) carriers are at a substantially higher risk for developing breast cancer (BC) compared with the average risk population. Detection of BC at an early stage significantly improves prognosis. To facilitate early BC detection, a surveillance scheme is offered to BRCA PV carriers from age 25–30 years that includes annual MRI based breast imaging. Indeed, adherence to the recommended scheme has been shown to be associated with earlier disease stages at BC diagnosis, more in-situ pathology, smaller tumors, and less axillary involvement. While MRI is the most sensitive modality for BC detection in BRCA PV carriers, there are a significant number of overlooked or misinterpreted radiological lesions (mostly enhancing foci), leading to a delayed BC diagnosis at a more advanced stage. In this study we developed an artificial intelligence (AI)-network, aimed at a more accurate classification of enhancing foci, in MRIs of BRCA PV carriers, thus reducing false-negative interpretations. Retrospectively identified foci in prior MRIs that were either diagnosed as BC or benign/normal in a subsequent MRI were manually segmented and served as input for a convolutional network architecture. The model was successful in classification of 65% of the cancerous foci, most of them triple-negative BC. If validated, applying this scheme routinely may facilitate ‘earlier than early’ BC diagnosis in BRCA PV carriers.

Funder

Earlier.org—Friends For an Earlier Breast Cancer Test foundation

Dahlia Greidinger Anti-Cancer Fund

Publisher

MDPI AG

Subject

Cancer Research,Oncology

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