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Structural equation modeling in environmental risk assessment.

Environmental epidemiology requires effective models that take individual observations of environmental factors and connect them into meaningful patterns. Single-factor relationships have given way to multivariable analyses; simple additive models have been augmented by multiplicative (logistic) mod...

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Detalles Bibliográficos
Autores principales: Buncher, C R, Succop, P A, Dietrich, K N
Formato: Texto
Lenguaje:English
Publicado: 1991
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC1519490/
https://www.ncbi.nlm.nih.gov/pubmed/2050063
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author Buncher, C R
Succop, P A
Dietrich, K N
author_facet Buncher, C R
Succop, P A
Dietrich, K N
author_sort Buncher, C R
collection PubMed
description Environmental epidemiology requires effective models that take individual observations of environmental factors and connect them into meaningful patterns. Single-factor relationships have given way to multivariable analyses; simple additive models have been augmented by multiplicative (logistic) models. Each of these steps has produced greater enlightenment and understanding. Models that allow for factors causing outputs that can affect later outputs with putative causation working at several different time points (e.g., linkage) are not commonly used in the environmental literature. Structural equation models are a class of covariance structure models that have been used extensively in economics/business and social science but are still little used in the realm of biostatistics. Path analysis in genetic studies is one simplified form of this class of models. We have been using these models in a study of the health and development of infants who have been exposed to lead in utero and in the postnatal home environment. These models require as input the directionality of the relationship and then produce fitted models for multiple inputs causing each factor and the opportunity to have outputs serve as input variables into the next phase of the simultaneously fitted model. Some examples of these models from our research are presented to increase familiarity with this class of models. Use of these models can provide insight into the effect of changing an environmental factor when assessing risk. The usual cautions concerning believing a model, believing causation has been proven, and the assumptions that are required for each model are operative.
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spelling pubmed-15194902006-07-26 Structural equation modeling in environmental risk assessment. Buncher, C R Succop, P A Dietrich, K N Environ Health Perspect Research Article Environmental epidemiology requires effective models that take individual observations of environmental factors and connect them into meaningful patterns. Single-factor relationships have given way to multivariable analyses; simple additive models have been augmented by multiplicative (logistic) models. Each of these steps has produced greater enlightenment and understanding. Models that allow for factors causing outputs that can affect later outputs with putative causation working at several different time points (e.g., linkage) are not commonly used in the environmental literature. Structural equation models are a class of covariance structure models that have been used extensively in economics/business and social science but are still little used in the realm of biostatistics. Path analysis in genetic studies is one simplified form of this class of models. We have been using these models in a study of the health and development of infants who have been exposed to lead in utero and in the postnatal home environment. These models require as input the directionality of the relationship and then produce fitted models for multiple inputs causing each factor and the opportunity to have outputs serve as input variables into the next phase of the simultaneously fitted model. Some examples of these models from our research are presented to increase familiarity with this class of models. Use of these models can provide insight into the effect of changing an environmental factor when assessing risk. The usual cautions concerning believing a model, believing causation has been proven, and the assumptions that are required for each model are operative. 1991-01 /pmc/articles/PMC1519490/ /pubmed/2050063 Text en
spellingShingle Research Article
Buncher, C R
Succop, P A
Dietrich, K N
Structural equation modeling in environmental risk assessment.
title Structural equation modeling in environmental risk assessment.
title_full Structural equation modeling in environmental risk assessment.
title_fullStr Structural equation modeling in environmental risk assessment.
title_full_unstemmed Structural equation modeling in environmental risk assessment.
title_short Structural equation modeling in environmental risk assessment.
title_sort structural equation modeling in environmental risk assessment.
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC1519490/
https://www.ncbi.nlm.nih.gov/pubmed/2050063
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