The main goal of our project is to investigate the added value of multi-modality breast imaging in prognostic assessment for breast cancer. Accurate prognostic assessment is a key component of personalized treatment. Breast cancer prognosis has historically been determined based on tumor histopathology (i.e., size, grade, stage, etc) and immunohistochemistry (i.e., estrogen, progesterone, human epidermal growth factor receptors). Recently, molecular assays have also become available (i.e., OncotypeDX, MammaPrint, etc) that measure tumor gene expression as related to prognosis. Although a lot of progress has been made, there is still a need for substantial improvements in identifying women who are at risk for morbidity due to overly or insufficiently aggressive therapy. Currently, histopathology and the molecular characteristics of tumors are mainly analyzed based on selective tissue sampling. As it is increasingly recognized that intra-tumoral heterogeneity plays an important role in tumor progression and resistance to treatment, selective tissue sampling may be inadequate for fully capturing such heterogeneity, potentially resulting in incomplete information for guiding treatment. Imaging is increasingly used in routine care for screening, diagnosis, and treatment of breast cancer, with different modalities offering complementary information. This ability, coupled by a potential for high-resolution 3D visualization, has provided a new means for capturing vital aspects of tumor heterogeneity in-vivo, and therefore potentially complementary prognostic information. The overarching goal of our study is to address this fundamental question: Can tumor imaging phenotypes provide additional information to established histopathologic and emerging molecular markers for predicting breast cancer recurrence? We propose four aims:
AIM1) Develop a multi-modality imaging phenotype vector that captures structural (e.g., shape, morphology, texture) and functional heterogeneity (e.g., contrast uptake) of primary tumors.
AIM2) Determine the prognostic value of the imaging features in predicting breast cancer recurrence; predictive value of features will also be explored.
AIM3) Develop an augmented recurrence risk assessment model that incorporates tumor imaging features with standard tumor histopathology and emerging molecular markers, and AIM4) Perform independent validation of our model with prospectively collected data. In our study, we will investigate the prognostic value of multi-modality imaging for women diagnosed with primary invasive breast cancer. We will utilize a cohort of women with imaging and tumor tissue biomarker data from an NIH trial completed at our institution, from which 10-year follow-up from initial diagnosis and treatment is currently available. Ultimately, by integrating imaging with tumor histopathology and molecular markers in an augmented recurrence risk assessment tool we will be able to help better guide treatment decisions for women diagnosed with breast cancer. Also, considering that multi-modality imaging is increasingly used as part of routine clinical care, our study could provide new imaging biomarkers to improve treatment decisions, at a minimal additional cost.

Public Health Relevance

It is currently estimated that up to 30% of women diagnosed with breast cancer are over- or under- treated, sustaining substantial morbidities from unnecessary side-effects or treatment failures. We propose to analyze imaging features of phenotypic tumor heterogeneity that will provide information to complement histopathologic and molecular markers, enhancing our prognostic ability for breast cancer. Ultimately, integrating imaging with novel molecular tumor markers could enable more informed, precision-medicine, treatment decisions to reduce unnecessary side-effects while improving long-term outcomes for women diagnosed with breast cancer.

Agency
National Institute of Health (NIH)
Institute
National Cancer Institute (NCI)
Type
Research Project (R01)
Project #
1R01CA223816-01A1
Application #
9531518
Study Section
Special Emphasis Panel (ZRG1)
Program Officer
Baker, Houston
Project Start
2018-07-03
Project End
2023-05-31
Budget Start
2018-07-03
Budget End
2019-05-31
Support Year
1
Fiscal Year
2018
Total Cost
Indirect Cost
Name
University of Pennsylvania
Department
Radiation-Diagnostic/Oncology
Type
Schools of Medicine
DUNS #
042250712
City
Philadelphia
State
PA
Country
United States
Zip Code
19104