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Simultaneous modeling of detection rate and exposure concentration using semi-continuous models to identify exposure determinants when left-censored data may be a true zero

BACKGROUND: Most methods for treating left-censored data assume the analyte is present but not quantified. Biased estimates may result if the analyte is absent such that the unobserved data represents a mixed exposure distribution with an unknown proportion clustered at zero. OBJECTIVE: We used semi...

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Autores principales: Friesen, Melissa C., Choo-Wosoba, Hyoyoung, Sarazin, Philippe, Hwang, Jooyeon, Dopart, Pamela, Russ, Daniel E., Deziel, Nicole C., Lavoué, Jérôme, Albert, Paul S., Zhu, Bin
Formato: Online Artículo Texto
Lenguaje:English
Publicado: 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8595485/
https://www.ncbi.nlm.nih.gov/pubmed/34006962
http://dx.doi.org/10.1038/s41370-021-00331-7
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author Friesen, Melissa C.
Choo-Wosoba, Hyoyoung
Sarazin, Philippe
Hwang, Jooyeon
Dopart, Pamela
Russ, Daniel E.
Deziel, Nicole C.
Lavoué, Jérôme
Albert, Paul S.
Zhu, Bin
author_facet Friesen, Melissa C.
Choo-Wosoba, Hyoyoung
Sarazin, Philippe
Hwang, Jooyeon
Dopart, Pamela
Russ, Daniel E.
Deziel, Nicole C.
Lavoué, Jérôme
Albert, Paul S.
Zhu, Bin
author_sort Friesen, Melissa C.
collection PubMed
description BACKGROUND: Most methods for treating left-censored data assume the analyte is present but not quantified. Biased estimates may result if the analyte is absent such that the unobserved data represents a mixed exposure distribution with an unknown proportion clustered at zero. OBJECTIVE: We used semi-continuous models to identify time and industry trends in 52,457 OSHA inspection lead sample results. METHOD: The first component of the semi-continuous model predicted the probability of detecting concentrations ≥0.007 mg/m(3) (highest estimated detection limit, 62% of measurements). The second component predicted the median concentration of measurements ≥0.007 mg/m(3). Both components included a random-effect for industry and fixed-effects for year, industry group, analytical method, and other variables. We used the two components together to predict median industry- and time-specific lead concentrations. RESULTS: The probabilities of detectable concentrations and the median detected concentrations decreased with year; both were also lower for measurements analyzed for multiple (vs. one) metals and for those analyzed by inductively-coupled plasma (vs. atomic absorption spectroscopy). The covariance was 0.30 (standard error=0.06), confirming the two components were correlated. SIGNIFICANCE: We identified determinants of exposure in data with over 60% left-censored, while accounting for correlated relationships and without assuming a distribution for the censored data.
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spelling pubmed-85954852021-11-18 Simultaneous modeling of detection rate and exposure concentration using semi-continuous models to identify exposure determinants when left-censored data may be a true zero Friesen, Melissa C. Choo-Wosoba, Hyoyoung Sarazin, Philippe Hwang, Jooyeon Dopart, Pamela Russ, Daniel E. Deziel, Nicole C. Lavoué, Jérôme Albert, Paul S. Zhu, Bin J Expo Sci Environ Epidemiol Article BACKGROUND: Most methods for treating left-censored data assume the analyte is present but not quantified. Biased estimates may result if the analyte is absent such that the unobserved data represents a mixed exposure distribution with an unknown proportion clustered at zero. OBJECTIVE: We used semi-continuous models to identify time and industry trends in 52,457 OSHA inspection lead sample results. METHOD: The first component of the semi-continuous model predicted the probability of detecting concentrations ≥0.007 mg/m(3) (highest estimated detection limit, 62% of measurements). The second component predicted the median concentration of measurements ≥0.007 mg/m(3). Both components included a random-effect for industry and fixed-effects for year, industry group, analytical method, and other variables. We used the two components together to predict median industry- and time-specific lead concentrations. RESULTS: The probabilities of detectable concentrations and the median detected concentrations decreased with year; both were also lower for measurements analyzed for multiple (vs. one) metals and for those analyzed by inductively-coupled plasma (vs. atomic absorption spectroscopy). The covariance was 0.30 (standard error=0.06), confirming the two components were correlated. SIGNIFICANCE: We identified determinants of exposure in data with over 60% left-censored, while accounting for correlated relationships and without assuming a distribution for the censored data. 2021-05-18 2021-11 /pmc/articles/PMC8595485/ /pubmed/34006962 http://dx.doi.org/10.1038/s41370-021-00331-7 Text en http://www.nature.com/authors/editorial_policies/license.html#termsUsers may view, print, copy, and download text and data-mine the content in such documents, for the purposes of academic research, subject always to the full Conditions of use:http://www.nature.com/authors/editorial_policies/license.html#terms
spellingShingle Article
Friesen, Melissa C.
Choo-Wosoba, Hyoyoung
Sarazin, Philippe
Hwang, Jooyeon
Dopart, Pamela
Russ, Daniel E.
Deziel, Nicole C.
Lavoué, Jérôme
Albert, Paul S.
Zhu, Bin
Simultaneous modeling of detection rate and exposure concentration using semi-continuous models to identify exposure determinants when left-censored data may be a true zero
title Simultaneous modeling of detection rate and exposure concentration using semi-continuous models to identify exposure determinants when left-censored data may be a true zero
title_full Simultaneous modeling of detection rate and exposure concentration using semi-continuous models to identify exposure determinants when left-censored data may be a true zero
title_fullStr Simultaneous modeling of detection rate and exposure concentration using semi-continuous models to identify exposure determinants when left-censored data may be a true zero
title_full_unstemmed Simultaneous modeling of detection rate and exposure concentration using semi-continuous models to identify exposure determinants when left-censored data may be a true zero
title_short Simultaneous modeling of detection rate and exposure concentration using semi-continuous models to identify exposure determinants when left-censored data may be a true zero
title_sort simultaneous modeling of detection rate and exposure concentration using semi-continuous models to identify exposure determinants when left-censored data may be a true zero
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8595485/
https://www.ncbi.nlm.nih.gov/pubmed/34006962
http://dx.doi.org/10.1038/s41370-021-00331-7
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