Personalized cancer care is complex in this unprecedented era of discovery and big data. The large and evolving knowledge base requires clinicians and policymakers to synthesize diverse data to design new trials, inform clinical guidelines, practice, and policy. The Institute of Medicine and others have recommended the use of simulation modeling in these situations to synthesize evidence and support clinical care. Simulation modeling involves the use of mathematical models to combine various sources of evidence to assess how interventions could alter the progression of a disease and affect outcomes. My overarching goal is to use this K99/R00 award to gain the necessary skills and experience to become an independent researcher and leader in the use of simulation modeling in oncology. This revised application includes training in modeling methods needed to fill gaps in my knowledge and use that training to build a new simulation model to address gene expression profile (GEP)-guided care for the nearly 180,000 US women annually diagnosed with early-stage breast cancer. The training aims are:
Aim K1. Apply training in data discovery and synthesis to develop input parameters to model the effects of chemo- endocrine (vs. endocrine) therapy on cancer outcomes such as recurrence, mortality, and chemotherapy- related toxicity based on patient (e.g., age, race, comorbidity) and tumor (e.g., tumor size, grade) characteristics, and GEP test results;
Aim K2. Apply training in simulation modeling to build a model combining input parameters from aim K1 to project cancer outcomes;
and Aim K3. Apply training in uncertainty quantification to estimate the variability associated with modeled outcomes to place results in context for clinicians and guideline developers.
The research aims are:
Aim R1. Perform model validation to demonstrate the model's ability to reproduce predictions using an independent data source that was not used in aim K1; make necessary revisions to the model;
Aim R2. Use the validated model to provide a summary of the balance of benefits and harms of chemotherapy in exemplar groups of women to support the development of clinical guidelines;
and Aim R3. Create an interactive web-interface to provide model results on the effects of chemo-endocrine (vs. endocrine) therapy on cancer outcomes based on individual characteristics. I am uniquely qualified for this award given my strong track record of pilot funding, 21 high impact publications, a solid quantitative research foundation, commitment to a research career, and preliminary modeling research with my multidisciplinary mentoring team. The exceptional institutional resources coupled with the Cancer Intervention and Surveillance Modeling Network (CISNET) provide the ideal setting for this application. The integrated research and training will leave me poised to become an independent researcher using simulation modeling to assist in the translation of rapidly evolving knowledge into oncology care.

Public Health Relevance

Title: A Simulation Model-based Framework to Support Oncology Guidelines and Practice Project Narrative: The overarching goal of this K99/R00 application is to obtain the training and experience necessary to become an independent investigator in simulation modeling research. Simulation modeling is an established discipline widely used in clinical decision making, development of clinical guidelines, trial design, and health policy. In this study, I will use the K99 training to develop a simulation model to address knowledge gaps in the use of genomic-guided treatment in women with early-stage breast cancer and gain experience to apply simulation modeling in the future to evolving issues in oncology.

Agency
National Institute of Health (NIH)
Institute
National Cancer Institute (NCI)
Type
Career Transition Award (K99)
Project #
1K99CA241397-01A1
Application #
9977402
Study Section
Subcommittee I - Transistion to Independence (NCI)
Program Officer
Radaev, Sergey
Project Start
2020-04-01
Project End
2022-03-31
Budget Start
2020-04-01
Budget End
2021-03-31
Support Year
1
Fiscal Year
2020
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