skip navigation
National Cancer Institute   U.S. National Institutes of Healthwww.cancer.gov
Rapid Response Surveillance Studies
Contact Us
   
 Home
   
 Methodologic Issues
   
 Cancer Treatment & Outcomes
   
 Monitoring Screening Practices
   
 Health Behaviors & Risk Factors
   
 Linking Databases
   
 Technical Aspects of Registry Operations
   
 Publications
   

Methodological Issues - Statistics

The NCI monitors a vast array of cancer statistics to assess progress toward the goal of eliminating suffering and death due to cancer. The most frequently reported data are descriptive statistics on cancer incidence, survival, and mortality. However, many other statistical methodologies can be applied to cancer data. NCI's goal is to develop and improve statistical methods that will aid in the study of cancer and its causes and control.

RRSS investigators are conducting studies to:

  • use statistical methods to assess the cost effectiveness of ovarian screening;
  • link multiple databases to determine the completeness of coverage ;
  • explore methods to estimate hazard rates using data on survival of women with breast cancer;
  • use spatial analysis to identify and characterize areas with high rates of late-stage breast and colorectal cancer;
  • develop microsimulation models and a stochastic simulation model of screening for prostate cancer.

Registries Funded to Conduct these Studies

Iowa
New Mexico
Seattle (Puget Sound)
Utah

Key Findings

Investigators proposed a method that applies a microsimulator designed to investigate the effect of prostate specific antigen (PSA) screening on prostate cancer.

Using statistical methodology, investigators determined that, given our knowledge of lead time, the decline in prostate cancer mortality could not be entirely explained by PSA testing.

Using a decision analysis model, investigators determined that using a lower bound of 4.0 ng/ml was a more efficient way to identify men with cancer than the age-specific PSA values.

Future Use

The Cancer Intervention and Surveillance Modeling Network (CISNET) (UO1 (Cooperative Agreement)) grew out of initial work in this area. NCI will continue to develop new and innovative statistical methods for use in all areas of the analyses of cancer data. Two RO1s and two R29 awards were funded based on initial work funded in this area.

Publications

Privacy Policy Accessibility Contact Us
National Cancer Institute    Department of Health and Human Services     National Institutes of Health    USA.gov