E Andres Houseman1, M Abbas Virji2. 1. Oregon State University, College of Public Health and Human Sciences, 101 Milam Hall, 2520 SW Campus Way, Corvallis, OR 97331, USA. 2. National Institute for Occupational Safety and Health, Respiratory Health Division, 1095 Willowdale Rd, Morgantown, WV 26505, USA.
Abstract
OBJECTIVE: Direct reading instruments are valuable tools for measuring exposure as they provide real-time measurements for rapid decision making. However, their use is limited to general survey applications in part due to issues related to their performance. Moreover, statistical analysis of real-time data is complicated by autocorrelation among successive measurements, non-stationary time series, and the presence of left-censoring due to limit-of-detection (LOD). A Bayesian framework is proposed that accounts for non-stationary autocorrelation and LOD issues in exposure time-series data in order to model workplace factors that affect exposure and estimate summary statistics for tasks or other covariates of interest. METHOD: A spline-based approach is used to model non-stationary autocorrelation with relatively few assumptions about autocorrelation structure. Left-censoring is addressed by integrating over the left tail of the distribution. The model is fit using Markov-Chain Monte Carlo within a Bayesian paradigm. The method can flexibly account for hierarchical relationships, random effects and fixed effects of covariates. The method is implemented using the rjags package in R, and is illustrated by applying it to real-time exposure data. Estimates for task means and covariates from the Bayesian model are compared to those from conventional frequentist models including linear regression, mixed-effects, and time-series models with different autocorrelation structures. Simulations studies are also conducted to evaluate method performance. RESULTS: Simulation studies with percent of measurements below the LOD ranging from 0 to 50% showed lowest root mean squared errors for task means and the least biased standard deviations from the Bayesian model compared to the frequentist models across all levels of LOD. In the application, task means from the Bayesian model were similar to means from the frequentist models, while the standard deviations were different. Parameter estimates for covariates were significant in some frequentist models, but in the Bayesian model their credible intervals contained zero; such discrepancies were observed in multiple datasets. Variance components from the Bayesian model reflected substantial autocorrelation, consistent with the frequentist models, except for the auto-regressive moving average model. Plots of means from the Bayesian model showed good fit to the observed data. CONCLUSION: The proposed Bayesian model provides an approach for modeling non-stationary autocorrelation in a hierarchical modeling framework to estimate task means, standard deviations, quantiles, and parameter estimates for covariates that are less biased and have better performance characteristics than some of the contemporary methods. Published by Oxford University Press on behalf of the British Occupational Hygiene Society 2017.
OBJECTIVE: Direct reading instruments are valuable tools for measuring exposure as they provide real-time measurements for rapid decision making. However, their use is limited to general survey applications in part due to issues related to their performance. Moreover, statistical analysis of real-time data is complicated by autocorrelation among successive measurements, non-stationary time series, and the presence of left-censoring due to limit-of-detection (LOD). A Bayesian framework is proposed that accounts for non-stationary autocorrelation and LOD issues in exposure time-series data in order to model workplace factors that affect exposure and estimate summary statistics for tasks or other covariates of interest. METHOD: A spline-based approach is used to model non-stationary autocorrelation with relatively few assumptions about autocorrelation structure. Left-censoring is addressed by integrating over the left tail of the distribution. The model is fit using Markov-Chain Monte Carlo within a Bayesian paradigm. The method can flexibly account for hierarchical relationships, random effects and fixed effects of covariates. The method is implemented using the rjags package in R, and is illustrated by applying it to real-time exposure data. Estimates for task means and covariates from the Bayesian model are compared to those from conventional frequentist models including linear regression, mixed-effects, and time-series models with different autocorrelation structures. Simulations studies are also conducted to evaluate method performance. RESULTS: Simulation studies with percent of measurements below the LOD ranging from 0 to 50% showed lowest root mean squared errors for task means and the least biased standard deviations from the Bayesian model compared to the frequentist models across all levels of LOD. In the application, task means from the Bayesian model were similar to means from the frequentist models, while the standard deviations were different. Parameter estimates for covariates were significant in some frequentist models, but in the Bayesian model their credible intervals contained zero; such discrepancies were observed in multiple datasets. Variance components from the Bayesian model reflected substantial autocorrelation, consistent with the frequentist models, except for the auto-regressive moving average model. Plots of means from the Bayesian model showed good fit to the observed data. CONCLUSION: The proposed Bayesian model provides an approach for modeling non-stationary autocorrelation in a hierarchical modeling framework to estimate task means, standard deviations, quantiles, and parameter estimates for covariates that are less biased and have better performance characteristics than some of the contemporary methods. Published by Oxford University Press on behalf of the British Occupational Hygiene Society 2017.
Entities:
Keywords:
Bayesian; autocorrelation; limit of detection; non-stationary time series; spline model
Authors: Robin E Dodson; E Andres Houseman; Jonathan I Levy; John D Spengler; James P Shine; Deborah H Bennett Journal: Environ Sci Technol Date: 2007-12-15 Impact factor: 9.028
Authors: Ryan F LeBouf; M Abbas Virji; Rena Saito; Paul K Henneberger; Nancy Simcox; Aleksandr B Stefaniak Journal: Occup Environ Med Date: 2014-07-10 Impact factor: 4.402
Authors: Thomas Aj Kuhlbusch; Christof Asbach; Heinz Fissan; Daniel Göhler; Michael Stintz Journal: Part Fibre Toxicol Date: 2011-07-27 Impact factor: 9.400
Authors: Feng-Chiao Su; Melissa C Friesen; Aleksandr B Stefaniak; Paul K Henneberger; Ryan F LeBouf; Marcia L Stanton; Xiaoming Liang; Michael Humann; M Abbas Virji Journal: Ann Work Expo Health Date: 2018-08-13 Impact factor: 2.179
Authors: M Abbas Virji; Xiaoming Liang; Feng-Chiao Su; Ryan F LeBouf; Aleksandr B Stefaniak; Marcia L Stanton; Paul K Henneberger; E Andres Houseman Journal: Ann Work Expo Health Date: 2019-08-07 Impact factor: 2.179