283774
Community conditions contributing to high life expectancy: An analysis of outliers
Tuesday, November 5, 2013
: 3:14 PM - 3:32 PM
Chungfeng Ren, MPH
,
Department of Biostatistics, Virginia Commonwealth University, Richmond, VA
Robert Johnson, PhD
,
VCU Center on Human Needs, Virginia Commonwealth University School of Medicine, Richmond, VA
Matt Beyers, MA, MSCRP
,
Alameda County Public Health Department, Oakland, CA
Steven A. Cohen, DrPH, MPH
,
Department of Epidemiology and Community Health, Virginia Commonwealth University School of Medicine, Richmond, VA
Amber Haley, MPH
,
VCU Center on Human Needs, Virginia Commonwealth University School of Medicine, Richmond, VA
Laura R. Young, MPH
,
VCU Center on Human Needs, Virginia Commonwealth University School of Medicine, Richmond, VA
Steven Woolf, MD
,
VCU Center on Human Needs, Virginia Commonwealth University School of Medicine, Richmond, VA
Life expectancy (LE) varies substantially across U.S. communities and even neighborhoods. Place-based characteristics play an important role, but few studies have used a fine geographic scale to identify local assets that might enhance health outcomes. We are studying census tracts in California in an attempt to identify local assets that might explain “outliers”: census tracts with unexpectedly high or low LE given their level of poverty. To plot census tract LE against poverty, we abstracted all 1999-2001 death records from California vital statistics and geocoded each record to the census tract of the decedent's last residence. Records were aggregated by age group and census tract and combined with 2000 US Census population data to create abridged life tables and calculate census-tract LE. LE values were regressed against census tract-level poverty, education, age, gender, marital status, race, and Hispanic origin. We used weighted linear regression, with reciprocal variance of the LE as regression weights. The results showed a monotonic negative association: LE decreased as the population with incomes below 100% (Federal poverty threshold) or 200% of the poverty threshold increased, and this association held even after adjusting for confounders. We will present scatter plots to show how we identified outliers (census tracts with large residuals that depart from the regression equation) and eliminated outliers suspected to be erroneous. Census tracts thought to be true outliers will now undergo quantitative spatial and non-spatial analysis and qualitative inquiry (key informant interviews) to identify positive assets that might explain their more favorable outcomes.
Learning Areas:
Epidemiology
Public health or related research
Learning Objectives:
Assess the associations between life expectancy and poverty on a fine geographic scale- the census tract.
Demonstrate the use of combined quantitative and qualitative analyses on the study of small-area life expectancy.
Describe disparities in life expectancy by using statistical methods and GIS methods.
Identify socioeconomic and demographic factors that potentially account for outlier communities with unexpected life expectancy.
Presenting author's disclosure statement:Qualified on the content I am responsible for because: I have been a graduate assistant funded by multiple grants focusing on the epidemiology of mortality rate and social determinants, diabetes prevalence and diabetes cost, childhood obesity prevention, and life expectancy promotion. My scientific interests and experience have been development of strategies for identifying communities with unexpected life expectancies at a fine scale.
Any relevant financial relationships? No
I agree to comply with the American Public Health Association Conflict of Interest and Commercial Support Guidelines,
and to disclose to the participants any off-label or experimental uses of a commercial product or service discussed
in my presentation.