Predicting geographical variations in behavioural risk factors: an analysis of physical and mental healthy days

Study objectives: To determine the validity of physical and mental unhealthy days as summary measures for county health status and to forward a method for examining county level health trends using a single year of data from the Behavioral Risk Factor Surveillance System (BRFSS). Design: The study analysed geographical variation in physical and mental unhealthy days at the state and county level using the 2000 BRFSS. Whereas state level analyses used individual level data, this research conducted multilevel regression analysis using county level data as independent variables and individual level reports of physical and mental unhealthy days as dependent variables. Setting: Population based samples of non-institutionalised civilian adult residents from each of the 50 states and the District of Columbia in the United States. Main results: Socioeconomic variables predicted similar mean numbers of physical and mental unhealthy days at both the state and county level, validating the county level analyses. County level disability rates were strongly associated with county mean unhealthy days. Using the regression method we forward, it is possible to analyse county level trends using a single year of BRFSS data. Conclusions: Physical and mental unhealthy days may be used as valid summary measures of county health status. Regression models may be used to assist local decision makers in assessing the needs of their communities and may be used to improve health resource allocation within states.

[1]  Linda Williams Pickle,et al.  Within-state geographic patterns of health insurance coverage and health risk factors in the United States. , 2002, American journal of preventive medicine.

[2]  D. Johnson,et al.  Community indicators of health-related quality of life--United States, 1993-1997. , 2000, MMWR. Morbidity and mortality weekly report.

[3]  Judith D. Singer,et al.  Using SAS PROC MIXED to Fit Multilevel Models, Hierarchical Models, and Individual Growth Models , 1998 .

[4]  J. Simonoff Smoothing Methods in Statistics , 1998 .

[5]  State differences in reported healthy days among adults--United States, 1993-1996. , 1998, MMWR. Morbidity and mortality weekly report.

[6]  I Kim,et al.  Priority data needs: sources of national, state, and local-level data and data collection systems. , 1997, Healthy People 2000 statistical notes.

[7]  P. Scherr,et al.  Measuring health-related quality of life for public health surveillance. , 1994, Public health reports.

[8]  Quality of life as a new public health measure--Behavioral Risk Factor Surveillance System, 1993. , 1994, MMWR. Morbidity and mortality weekly report.

[9]  C. Sherbourne,et al.  The MOS 36-Item Short-Form Health Survey (SF-36) , 1992 .

[10]  A. Stewart,et al.  The functioning and well-being of depressed patients. Results from the Medical Outcomes Study. , 1989, JAMA.

[11]  P L Remington,et al.  Design, characteristics, and usefulness of state-based behavioral risk factor surveillance: 1981-87. , 1988, Public health reports.

[12]  E. Ericksen A Regression Method for Estimating Population Changes of Local Areas , 1974 .