The overarching theme of this project is to develop novel statistical approaches for designing and analyzing biomarker discovery and validation studies. We consider here prospective studies in clinical settings where risk markers are used for disease surveillance and prognosis. Motivated by our collaborative research in the cancer biomarker ?eld, we plan to address several new challenges in prospective marker evaluation. For many cancers, disease outcomes may be heterogeneous due to the multi-focal nature of the disease. The speci?c prediction of the risk of developing aggressive cancer as opposed to indolent cancer is of great clinical interest, yet it is analytically challenging.
In Aim 1 we plan to develop statistical tools for risk strati?cation and individualized treatment rules in a population with a mixture of indolent and aggressive cancers.
Aim 2 will address complications in disease outcome ascertainment. Ef?cient and unbiased estimation procedures will be developed to quantify the prognostic and predictive accuracy of biomarkers. These methods will be developed in the presence of interval censored data and surveillance-triggered outcome ascertainment and imperfect or surrogate outcome measurements. Finally, we will derive novel criteria for model selection with longitudinal data and develop novel approaches for deriving and validating dynamic surveillance regimens for disease monitoring. The proposed methods will be tested in a wide range of practice settings in cancer biomarker studies, including stratifying breast cancer survivors in risk of second primary breast cancer; developing and evaluating optimal biopsy interval regimen in the active surveillance of prostate cancer; accommodating surveillance-triggered outcome ascertainment schemes; and making treatment decisions among patients who are at high risk for liver cancer, or colorectal cancer recurrence.

Public Health Relevance

Our research program aims to equip biomarker and medical researchers with statistical tools that can enhance the power and rigor of scientific effort aiming to translate knowledge gained from laboratory studies into medical practice. In this cycle, we will address the challenges in outcome ascertainment from prospective cohort studies and propose methods for deriving and validating dynamic surveillance regimens for disease monitoring with multiple biomarkers. The applicability of the proposed methods will be tested in a wide range of practice settings in cancer biomarker studies and integrating our research into clinical settings will help improve survival outcomes and reduce the burden of diseases.

Agency
National Institute of Health (NIH)
Institute
National Cancer Institute (NCI)
Type
Research Project (R01)
Project #
5R01CA236558-10
Application #
9979822
Study Section
Clinical Oncology Study Section (CONC)
Program Officer
Abrams, Natalie
Project Start
2009-09-04
Project End
2024-06-30
Budget Start
2020-07-01
Budget End
2021-06-30
Support Year
10
Fiscal Year
2020
Total Cost
Indirect Cost
Name
Fred Hutchinson Cancer Research Center
Department
Type
DUNS #
078200995
City
Seattle
State
WA
Country
United States
Zip Code
98109