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1.
J Aging Res ; 2011: 896109, 2011.
Article in English | MEDLINE | ID: mdl-21961066

ABSTRACT

We examined long-term patterns of stressful life events (SLE) and their impact on mortality contrasting two theoretical models: allostatic load (linear relationship) and hormesis (inverted U relationship) in 1443 NAS men (aged 41-87 in 1985; M = 60.30, SD = 7.3) with at least two reports of SLEs over 18 years (total observations = 7,634). Using a zero-inflated Poisson growth mixture model, we identified four patterns of SLE trajectories, three showing linear decreases over time with low, medium, and high intercepts, respectively, and one an inverted U, peaking at age 70. Repeating the analysis omitting two health-related SLEs yielded only the first three linear patterns. Compared to the low-stress group, both the moderate and the high-stress groups showed excess mortality, controlling for demographics and health behavior habits, HRs = 1.42 and 1.37, ps <.01 and <.05. The relationship between stress trajectories and mortality was complex and not easily explained by either theoretical model.

2.
Environ Sci Technol ; 45(18): 7754-60, 2011 Sep 15.
Article in English | MEDLINE | ID: mdl-21797252

ABSTRACT

Recently, concerns have centered on how to expand knowledge on the limited science related to the cumulative impact of multiple air pollution exposures and the potential vulnerability of poor communities to their toxic effects. The highly intercorrelated nature of exposures makes application of standard regression-based methods to these questions problematic due to well-known issues related to multicollinearity. Our paper addresses these problems by using, as its basic unit of inference, a profile consisting of a pattern of exposure values. These profiles are grouped into clusters and associated with a deprivation outcome. Specifically, we examine how profiles of NO(2)-, PM(2.5)-, and diesel- (road and off-road) based exposures are associated with the number of individuals living under poverty in census tracts (CT's) in Los Angeles County. Results indicate that higher levels of pollutants are generally associated with higher poverty counts, though the association is complex and nonlinear. Our approach is set in the Bayesian framework, and as such the entire model can be fit as a unit using modern Bayesian multilevel modeling techniques via the freely available WinBUGS software package, (1) though we have used custom-written C++ code (validated with WinBUGS) to improve computational speed. The modeling approach proposed thus goes beyond single-pollutant models in that it allows us to determine the association between entire multipollutant profiles of exposures with poverty levels in small geographic areas in Los Angeles County.


Subject(s)
Air Pollutants/analysis , Environmental Exposure/analysis , Models, Theoretical , Poverty , Vulnerable Populations , Bayes Theorem , California , Humans , Nitrogen Dioxide/analysis , Particulate Matter/analysis , Vehicle Emissions/analysis
3.
Biostatistics ; 9(4): 686-99, 2008 Oct.
Article in English | MEDLINE | ID: mdl-18349036

ABSTRACT

Flexible multilevel models are proposed to allow for cluster-specific smooth estimation of growth curves in a mixed-effects modeling format that includes subject-specific random effects on the growth parameters. Attention is then focused on models that examine between-cluster comparisons of the effects of an ecologic covariate of interest (e.g. air pollution) on nonlinear functionals of growth curves (e.g. maximum rate of growth). A Gibbs sampling approach is used to get posterior mean estimates of nonlinear functionals along with their uncertainty estimates. A second-stage ecologic random-effects model is used to examine the association between a covariate of interest (e.g. air pollution) and the nonlinear functionals. A unified estimation procedure is presented along with its computational and theoretical details. The models are motivated by, and illustrated with, lung function and air pollution data from the Southern California Children's Health Study.


Subject(s)
Environmental Exposure/statistics & numerical data , Environmental Health/statistics & numerical data , Lung Diseases/physiopathology , Models, Statistical , Adolescent , Adolescent Development/physiology , Air Pollutants/analysis , Air Pollution/adverse effects , Air Pollution/analysis , Algorithms , Bayes Theorem , Body Height/physiology , California , Child , Child Development/physiology , Environmental Exposure/adverse effects , Environmental Health/methods , Epidemiologic Methods , Female , Forced Expiratory Volume/physiology , Humans , Linear Models , Longitudinal Studies , Lung Diseases/epidemiology , Lung Diseases/etiology , Male , Ozone/analysis , Respiratory Function Tests , Soot/analysis
4.
Environ Health Perspect ; 115(8): 1147-53, 2007 Aug.
Article in English | MEDLINE | ID: mdl-17687440

ABSTRACT

BACKGROUND: Although numerous epidemiologic studies now use models of intraurban exposure, there has been little systematic evaluation of the performance of different models. OBJECTIVES: In this present article we proposed a modeling framework for assessing exposure model performance and the role of spatial autocorrelation in the estimation of health effects. METHODS: We obtained data from an exposure measurement substudy of subjects from the Southern California Children's Health Study. We examined how the addition of spatial correlations to a previously described unified exposure and health outcome modeling framework affects estimates of exposure-response relationships using the substudy data. The methods proposed build upon the previous work, which developed measurement-error techniques to estimate long-term nitrogen dioxide exposure and its effect on lung function in children. In this present article, we further develop these methods by introducing between- and within-community spatial autocorrelation error terms to evaluate effects of air pollution on forced vital capacity. The analytical methods developed are set in a Bayesian framework where multistage models are fitted jointly, properly incorporating parameter estimation uncertainty at all levels of the modeling process. RESULTS: Results suggest that the inclusion of residual spatial error terms improves the prediction of adverse health effects. These findings also demonstrate how residual spatial error may be used as a diagnostic for comparing exposure model performance.


Subject(s)
Air Pollutants/analysis , Air Pollution/analysis , Environmental Monitoring/statistics & numerical data , Models, Biological , Nitrogen Dioxide/analysis , Adolescent , Air Pollutants/toxicity , Air Pollution/adverse effects , Bayes Theorem , California/epidemiology , Child , Epidemiological Monitoring , Humans , Lung Diseases/epidemiology , Lung Diseases/etiology , Nitrogen Dioxide/toxicity , Uncertainty , Vehicle Emissions/toxicity , Vital Capacity/drug effects
5.
Am J Epidemiol ; 164(1): 69-76, 2006 Jul 01.
Article in English | MEDLINE | ID: mdl-16624966

ABSTRACT

The authors propose a new statistical procedure that utilizes measurement error models to estimate missing exposure data in health effects assessment. The method detailed in this paper follows a Bayesian framework that allows estimation of various parameters of the model in the presence of missing covariates in an informative way. The authors apply this methodology to study the effect of household-level long-term air pollution exposures on lung function for subjects from the Southern California Children's Health Study pilot project, conducted in the year 2000. Specifically, they propose techniques to examine the long-term effects of nitrogen dioxide (NO2) exposure on children's lung function for persons living in 11 southern California communities. The effect of nitrogen dioxide exposure on various measures of lung function was examined, but, similar to many air pollution studies, no completely accurate measure of household-level long-term nitrogen dioxide exposure was available. Rather, community-level nitrogen dioxide was measured continuously over many years, but household-level nitrogen dioxide exposure was measured only during two 2-week periods, one period in the summer and one period in the winter. From these incomplete measures, long-term nitrogen dioxide exposure and its effect on health must be inferred. Results show that the method improves estimates when compared with standard frequentist approaches.


Subject(s)
Air Pollutants/adverse effects , Air Pollution/adverse effects , Bayes Theorem , Models, Statistical , Nitrogen Dioxide/toxicity , Respiratory Tract Diseases/epidemiology , Air Pollutants/analysis , Air Pollution/analysis , Bias , California/epidemiology , Child , Data Collection , Environmental Monitoring/methods , Epidemiological Monitoring , Forced Expiratory Volume , Humans , Regression, Psychology , Respiratory Function Tests , Respiratory Tract Diseases/etiology , Risk Assessment , Risk Factors , Vital Capacity
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