Title of article :
Methodological issues of using observational human
data in lung dosimetry models for particulates
Author/Authors :
Eileen D. Kuempela، نويسنده , , Chi-Lang Tranb، نويسنده , , A. John Bailer a، نويسنده , , c، نويسنده , ,
Randall J. Smitha، نويسنده , , David A. Dankovica، نويسنده , , Leslie T. Staynera، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2001
Abstract :
Introduction: The use of human data to calibrate and validate a physiologically based pharmacokinetic ŽPBPK.
model has the clear advantage of pertaining to the species of interest, namely humans. A challenge in using these
data is their often sparse, heterogeneous nature, which may require special methods. Approaches for evaluating
sources of variability and uncertainty in a human lung dosimetry model are described in this study. Methods: A
multivariate optimization procedure was used to fit a dosimetry model to data of 131 U.S. coal miners. These data
include workplace exposures and end-of-life particle burdens in the lungs and hilar lymph nodes. Uncertainty in
model structure was investigated by fitting various model forms for particle clearance and sequestration of particles
in the lung interstitium. A sensitivity analysis was performed to determine which model parameters had the most
influence on model output. Distributions of clearance parameters were estimated by fitting the model to each
individual’s data, and this information was used to predict inter-individual differences in lung particle burdens at
given exposures. The influence of smoking history, race and pulmonary fibrosis on the individual’s estimated
clearance parameters was also evaluated. Results: The model structure that provided the best fit to these coal miner
data includes a first-order interstitialization process and no dose-dependent decline in alveolar clearance. The
parameter that had the largest influence on model output is fractional deposition. Race and fibrosis severity category
were statistically significant predictors of individual’s estimated alveolar clearance rate coefficients ŽP 0.03 and P 0.01 0.06, respectively., but smoking history Žever, never. was not ŽP 0.4.. Adjustments for these group
differences provided some improvement in the dosimetry model fit Žup to 25% reduction in the mean squared error.,
although unexplained inter-individual differences made up the largest source of variability. Lung burdens were
inversely associated with the miners’ estimated clearance parameters, e.g. individuals with slower estimated clearance
had higher observed lung burdens. Conclusions: The methods described in this study were used to examine issues of
uncertainty in the model structure and variability of the miners’ estimated clearance parameters. Estimated
individual clearance had a large influence on predicted lung burden, which would also affect disease risk. These
findings are useful for risk assessment, by providing estimates of the distribution of lung burdens expected under
given exposure conditions.
Keywords :
Lung dosimetry modeling , risk assessment , Particles
Journal title :
Science of the Total Environment
Journal title :
Science of the Total Environment