The CISNET Breast Working Group (BWG) proposes innovative modeling research focused on challenges in early detection and clinical management that are expected to re-define breast cancer control best practices.
The specific aims of this research are to: 1) evaluate the population impact of using polygenic risk to inform screening strategies; 2) assess use of emerging new imaging technologies for population screening; 3) evaluate use of active surveillance for the clinical management of screen-detected DCIS; 4) evaluate the impact of new molecular pathway- and genomic-targeted treatment paradigms in the adjuvant and recurrence settings; and 5) synthesize the methods to quantify the relative contributions of these new paradigms for screening and clinical management on US mortality trends for the general population and risk-stratified subpopulations.
These aims encompass four RFA priority areas, and we have set aside funds to address three additional emerging areas (international cancer control planning, cancer disparities, and cancer-specific priority areas [e.g, trials of local recurrence]). Based on unique features, the investigators will work in teams of 3-4 models to address these aims so that the topics can be evaluated efficiently within the project period. This scope of work would not be feasible without the availability of six distinctive BWG models. The BWG models include: Dana Farber (D), Erasmus (E), Georgetown-Einstein (GE), MD Anderson (M), Stanford (S) and Wisconsin-Harvard (W). These modeling teams have been continuously funded for the past 14 years. Their collaboration has been very productive, including publication of 162 research papers, and conduct of modeling to inform public health policy decisions. For this proposal, the BWG will partner with: the Breast Cancer Surveillance Consortium (BCSC); the American College of Radiology Imaging Network (ACRIN); the Genetic Associations and Mechanisms in Oncology (GAME-ON) researchers; the Canadian Partnership Against Cancer; the Evaluation of Genomic Applications in Practice and Prevention (EGAPP); the Athena DCIS registry; the Population-based Research Optimizing Screening though Personalized Regimens (PROSPR) program; the Cancer Research Network (CRN); and international groups. An experienced Coordinating Center provides the infrastructure to support the project goals. This exceedingly strong collaborative environment provides for unprecedented synergy and leveraging of resources to address new research questions that would not be possible outside of this setting. We will deploy novel statistical approaches to jointly estimate DCIS natural history parameters and calculate progression-free survival and survival post-progression. A unique component includes providing model results for use in an extant DCIS clinical management decision aid. Finally, we include formal training opportunities. Overall, this research will advance modeling research and continue to guide breast cancer control policy.

Public Health Relevance

Best practices for breast cancer control are being re-defined by rapidly evolving knowledge about common genetic risks, advances in early detection imaging techniques, evaluation of active surveillance of DCIS, and the dramatic evolution of targeted therapies for recurrent disease. However, some of these advances are diffusing into community practice ahead of evidence about their effects on population mortality. To inform policy and clinical decisions, we will use six breast cancer simulation models as a virtual laboratory to evaluate projected population mortality outcomes, harms, and costs of dissemination of these evolving cancer control paradigms.

Agency
National Institute of Health (NIH)
Institute
National Cancer Institute (NCI)
Type
Research Project--Cooperative Agreements (U01)
Project #
5U01CA199218-05
Application #
9772842
Study Section
Special Emphasis Panel (ZCA1)
Program Officer
Scott, Susan M
Project Start
2015-09-01
Project End
2020-08-31
Budget Start
2019-09-01
Budget End
2020-08-31
Support Year
5
Fiscal Year
2019
Total Cost
Indirect Cost
Name
Georgetown University
Department
Internal Medicine/Medicine
Type
Schools of Medicine
DUNS #
049515844
City
Washington
State
DC
Country
United States
Zip Code
20057
Munoz, Diego F; Xu, Cong; Plevritis, Sylvia K (2018) A Molecular Subtype-Specific Stochastic Simulation Model of US Breast Cancer Incidence, Survival, and Mortality Trends from 1975 to 2010. Med Decis Making 38:89S-98S
Schechter, Clyde B; Near, Aimee M; Jayasekera, Jinani et al. (2018) Structure, Function, and Applications of the Georgetown-Einstein (GE) Breast Cancer Simulation Model. Med Decis Making 38:66S-77S
Lee, Sandra J; Li, Xiaoxue; Huang, Hui et al. (2018) The Dana-Farber CISNET Model for Breast Cancer Screening Strategies: An Update. Med Decis Making 38:44S-53S
van Ravesteyn, Nicolien T; van den Broek, Jeroen J; Li, Xiaoxue et al. (2018) Modeling Ductal Carcinoma In Situ (DCIS): An Overview of CISNET Model Approaches. Med Decis Making 38:126S-139S
Rutter, Carolyn M; Kim, Jane J; Meester, Reinier G S et al. (2018) Effect of Time to Diagnostic Testing for Breast, Cervical, and Colorectal Cancer Screening Abnormalities on Screening Efficacy: A Modeling Study. Cancer Epidemiol Biomarkers Prev 27:158-164
Munoz, Diego F; Plevritis, Sylvia K (2018) Estimating Breast Cancer Survival by Molecular Subtype in the Absence of Screening and Adjuvant Treatment. Med Decis Making 38:32S-43S
van den Broek, Jeroen J; van Ravesteyn, Nicolien T; Mandelblatt, Jeanne S et al. (2018) Comparing CISNET Breast Cancer Incidence and Mortality Predictions to Observed Clinical Trial Results of Mammography Screening from Ages 40 to 49. Med Decis Making 38:140S-150S
Plevritis, Sylvia K; Munoz, Diego; Kurian, Allison W et al. (2018) Association of Screening and Treatment With Breast Cancer Mortality by Molecular Subtype in US Women, 2000-2012. JAMA 319:154-164
Trentham-Dietz, Amy; Ergun, Mehmet Ali; Alagoz, Oguzhan et al. (2018) Comparative effectiveness of incorporating a hypothetical DCIS prognostic marker into breast cancer screening. Breast Cancer Res Treat 168:229-239
Jayasekera, Jinani; Li, Yisheng; Schechter, Clyde B et al. (2018) Simulation Modeling of Cancer Clinical Trials: Application to Omitting Radiotherapy in Low-risk Breast Cancer. J Natl Cancer Inst 110:1360-1369

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