Grant Details
Grant Number: |
1R01CA286120-01A1 Interpret this number |
Primary Investigator: |
Gastounioti, Aimilia |
Organization: |
Washington University |
Project Title: |
Advancing Breast Cancer Risk Assessment for Black Women |
Fiscal Year: |
2024 |
Abstract
ABSTRACT
Effective treatment schemes have reduced breast cancer mortality, but precise identification of women at
increased risk of developing breast cancer, to personalize screening and preventive interventions, accordingly,
is a major outstanding challenge. This urgent clinical need is most prominent among Black women, in view of
their higher breast cancer mortality than White women. Studies have consistently shown the potential of artificial
intelligence in the form of deep learning (DL) to elucidate novel mammographic signatures highly predictive of
breast cancer. However, currently available DL models were developed in mostly White populations, and
therefore, may generalize poorly in Black populations that would benefit from risk-based tailored screening and
preventive strategies. Moreover, most related DL studies rely on digital mammography (DM) images, although
digital breast tomosynthesis (DBT) has rapidly replaced DM in the US. These studies also paid limited attention
to model interpretability, which is critical for clinical translation of DL models. We will leverage a unique multi-site
resource of screening data from Black women (4507 cases; 90,701 controls; with 5-year follow-up) and state-of-
the-art DL and medical imaging informatics tools, with the aim to enable accurate long-term (i.e., 5-year) breast
cancer risk assessment for Black women. We will accomplish this through developments of DL imaging
signatures of breast cancer risk with the new standard of breast cancer screening, DBT; thorough evaluations of
their clinical utility in a multi-site setting; and deployment/dissemination activities to enable further evaluations
and refinements based on feedback. We propose three aims. SA1 will develop a DBT-driven breast cancer risk
score via DL and its combination with the clinical Black Women’s Health Study (BWHS) risk model into a hybrid
breast cancer risk prediction tool. SA2 will perform independent clinical utility evaluations of our breast cancer
risk prediction tool. SA3 will focus on translational innovation, by developing the deployment framework and
disseminating our tools, knowledge, and resources to the community. Our study will be the first of its kind on
computational mammographic signatures of breast cancer risk among Black women. We anticipate that the
successful completion of our aims will provide a novel tool for accurate long-term breast cancer risk assessment
among Black women, extensive multi-site validation data and a complementary deployment/dissemination
framework to enable further evaluations in research settings. We expect that the groundbreaking outcomes of
this project will have a major impact on mitigating racial disparities in breast cancer through key advancements
in personalized risk assessment for Black women, which, in turn, will lay the foundation for equitable precision
breast cancer screening and prevention strategies.
Publications
None