Developing meaningful cohorts for human exposure models
- 1 January 2004
- journal article
- Published by Springer Nature in Journal of Exposure Science & Environmental Epidemiology
- Vol. 14 (1) , 23-43
- https://doi.org/10.1038/sj.jea.7500293
Abstract
This paper summarizes numerous statistical analyses focused on the US Environmental Protection Agency's Consolidated Human Activity Database (CHAD), used by many exposure modelers as the basis for data on what people do and where they spend their time. In doing so, modelers tend to divide the total population being analyzed into "cohorts", to reduce extraneous interindividual variability by focusing on people with common characteristics. Age and gender are typically used as the primary cohort-defining attributes, but more complex exposure models also use weather, day-of-the-week, and employment attributes for this purpose. We analyzed all of these attributes and others to determine if statistically significant differences exist among them to warrant their being used to define distinct cohort groups. We focused our attention mostly on the relationship between cohort attributes and the time spent outdoors, indoors, and in motor vehicles. Our results indicate that besides age and gender, other important attributes for defining cohorts are the physical activity level of individuals, weather factors such as daily maximum temperature in combination with months of the year, and combined weekday/weekend with employment status. Less important are precipitation and ethnic data. While statistically significant, the collective set of attributes does not explain a large amount of variance in outdoor, indoor, or in-vehicle locational decisions. Based on other research, parameters such as lifestyle and life stages that are absent from CHAD might have reduced the amount of unexplained variance. At this time, we recommend that exposure modelers use age and gender as "first-order" attributes to define cohorts followed by physical activity level, daily maximum temperature or other suitable weather parameters, and day type possibly beyond a simple weekday/weekend classification.Keywords
This publication has 13 references indexed in Scilit:
- Using human activity data in exposure models: Analysis of discriminating factorsJournal of Exposure Science & Environmental Epidemiology, 2003
- A population exposure model for particulate matter: case study results for PM2.5 in Philadelphia, PAJournal of Exposure Science & Environmental Epidemiology, 2001
- The National Human Activity Pattern Survey (NHAPS): a resource for assessing exposure to environmental pollutantsJournal of Exposure Science & Environmental Epidemiology, 2001
- Changes in common activities of 3rd through 10th graders: the CHIC StudyMedicine & Science in Sports & Exercise, 2000
- Genetic determinants of sports participation and daily physical activityInternational Journal of Obesity, 1999
- Ethnic, socioeconomic, and sex differences in physical activity among adolescentsJournal of Clinical Epidemiology, 1996
- Observations on Physical Activity in Physical Locations: Ager Gender, Ethnicity, and Month EffectsResearch Quarterly for Exercise and Sport, 1993
- Using longitudinal data to understand children's activity patterns in an exposure context: Data from the Kanawha county health studyEnvironment International, 1992
- Cardiopulmonary Fitness, Physical Activity Patterns, and Selected Coronary Risk Factor Variables in 11- to 16-Year-OldsPediatric Exercise Science, 1991
- Peak Oxygen Uptake and Physical Activity in 11- to 16-Year-OldsPediatric Exercise Science, 1990