Patients diagnosed with invasive breast cancer or ductal carcinoma in situ are increasingly choosing to undergo contralateral prophylactic mastectomy (CPM) to reduce their risk of contralateral breast cancer (CBC). This is a particularly disturbing trend as a large number of these CPMs are believed to be medically unnecessary. This is because the risk of CBC has dropped markedly for most patients in the last two decades due to availability of effective adjuvant therapies. Despite this fact, patients diagnosed with first primary breast cancer tend to substantially overestimate their CBC risk. At the same time, they underestimate the complications, risks, and negative effects associated with CPM. These incorrect perceptions partly explain the rising CPM rates in the U.S. Moreover, there is little evidence that CPM helps in prolonging survival. Thus, the benefits of CPM need to be weighed properly with its drawbacks. Given the invasive and irreversible nature of CPM, it behooves us to provide sound and effective education to breast cancer patients, who are going through an emotionally challenging period. Physicians do try to educate their patients; however, they lack tools that can help them in this endeavor. In particular, they need a CBC risk prediction model that can provide individualized risk estimates for sporadic (non-genetic) breast cancer patients. This project aims to fill this need by developing such a model, validating it, and implementing it in a freely available software package for immediate clinical use. To build the model, we will use data from Surveillance, Epidemiology, and End Results (SEER) Program and meta-analysis of risk estimates from literature. The proposed model will be in the style of the Gail model - a popular tool for counseling women on the risk of developing breast cancer - but one that is exclusively designed for counseling women with unilateral breast cancer on the risk of developing CBC. After building the model, we will validate it on prospectively collected data on breast cancer patients from four institutions - University of Texas at Southwestern Medical Center, Parkland Memorial Hospital in Dallas, M D Anderson Cancer Center, and Dartmouth Medical School. Once the model is validated, we will create a user-friendly package in statistical software R for implementing the model. Then we will integrate the package into CancerGene, a widely used and freely available clinical software for counseling patients on the risk of breast cancer. CancerGene is licensed to more than 4000 sites worldwide and therefore will be a perfect gateway to make the new model available to a large number of practitioners. We believe our proposed model will greatly facilitate patients' education and will help stem the increasing trend of medically unnecessary CPMs.

Public Health Relevance

Physicians lack effective tools for educating patients diagnosed with breast cancer about their future risk of cancer in the other healthy (contralateral) breast. We propose to build a risk prediction model that will provide individualized and quantitative risk estimates of contralateral breast cancer. Such a model will greatly facilitate patients' education so that they can take informed decisions about managing their contralateral breasts.

Agency
National Institute of Health (NIH)
Institute
National Cancer Institute (NCI)
Type
Exploratory/Developmental Grants (R21)
Project #
5R21CA186086-02
Application #
8917147
Study Section
Special Emphasis Panel (ZCA1)
Program Officer
Scott, Susan M
Project Start
2014-09-01
Project End
2017-08-31
Budget Start
2015-09-01
Budget End
2017-08-31
Support Year
2
Fiscal Year
2015
Total Cost
Indirect Cost
Name
University of Texas-Dallas
Department
Biostatistics & Other Math Sci
Type
Schools of Arts and Sciences
DUNS #
800188161
City
Richardson
State
TX
Country
United States
Zip Code
75080
Chowdhury, Marzana; Euhus, David; Arun, Banu et al. (2018) Validation of a personalized risk prediction model for contralateral breast cancer. Breast Cancer Res Treat 170:415-423
Chowdhury, Marzana; Euhus, David; O'Donnell, Maureen et al. (2018) Dose-dependent effect of mammographic breast density on the risk of contralateral breast cancer. Breast Cancer Res Treat 170:143-148
Chowdhury, Marzana; Euhus, David; Onega, Tracy et al. (2017) A model for individualized risk prediction of contralateral breast cancer. Breast Cancer Res Treat 161:153-160