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Application of reliability models to studies of biomarker validation.

We present a model of biomarker validation developed in our laboratory, the results of the validation study, and the impact of the estimation of the variance components on the design of future molecular epidemiologic studies. Four different biomarkers of exposure are illustrated: DNA-protein cross-l...

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Detalles Bibliográficos
Autores principales: Taioli, E, Kinney, P, Zhitkovich, A, Fulton, H, Voitkun, V, Cosma, G, Frenkel, K, Toniolo, P, Garte, S, Costa, M
Formato: Texto
Lenguaje:English
Publicado: 1994
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC1567110/
https://www.ncbi.nlm.nih.gov/pubmed/8033872
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author Taioli, E
Kinney, P
Zhitkovich, A
Fulton, H
Voitkun, V
Cosma, G
Frenkel, K
Toniolo, P
Garte, S
Costa, M
author_facet Taioli, E
Kinney, P
Zhitkovich, A
Fulton, H
Voitkun, V
Cosma, G
Frenkel, K
Toniolo, P
Garte, S
Costa, M
author_sort Taioli, E
collection PubMed
description We present a model of biomarker validation developed in our laboratory, the results of the validation study, and the impact of the estimation of the variance components on the design of future molecular epidemiologic studies. Four different biomarkers of exposure are illustrated: DNA-protein cross-link (DNA-PC), DNA-amino acid cross link (DNA-AA), metallothionein gene expression (MT), and autoantibodies to oxidized DNA bases (DNAox). The general scheme for the validation experiments involves n subjects measured on k occasions, with j replicate samples analyzed on each occasion. Multiple subjects, occasions, and replicates provide information on intersubject, intrasubject, and analytical measurement variability, respectively. The analysis of variance showed a significant effect of batch variability for DNA-PC and MT gene expression, whereas DNAox showed a significant between-subject variability. Among the amino acids tested, cysteine and methionine showed a significant contribution of both batch and between-subject variability, threonine showed between-subject variability only, and tyrosine showed between-batch and between-subject variability. The total variance estimated through the experiment was used to calculate the minimum sample size required for a future epidemiologic study including the same biomarkers used for the reliability study. Such validation studies can detect the various components of variability of a biomarker and indicate needed improvements of the assay, along with possible use in field studies.
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spelling pubmed-15671102006-09-19 Application of reliability models to studies of biomarker validation. Taioli, E Kinney, P Zhitkovich, A Fulton, H Voitkun, V Cosma, G Frenkel, K Toniolo, P Garte, S Costa, M Environ Health Perspect Research Article We present a model of biomarker validation developed in our laboratory, the results of the validation study, and the impact of the estimation of the variance components on the design of future molecular epidemiologic studies. Four different biomarkers of exposure are illustrated: DNA-protein cross-link (DNA-PC), DNA-amino acid cross link (DNA-AA), metallothionein gene expression (MT), and autoantibodies to oxidized DNA bases (DNAox). The general scheme for the validation experiments involves n subjects measured on k occasions, with j replicate samples analyzed on each occasion. Multiple subjects, occasions, and replicates provide information on intersubject, intrasubject, and analytical measurement variability, respectively. The analysis of variance showed a significant effect of batch variability for DNA-PC and MT gene expression, whereas DNAox showed a significant between-subject variability. Among the amino acids tested, cysteine and methionine showed a significant contribution of both batch and between-subject variability, threonine showed between-subject variability only, and tyrosine showed between-batch and between-subject variability. The total variance estimated through the experiment was used to calculate the minimum sample size required for a future epidemiologic study including the same biomarkers used for the reliability study. Such validation studies can detect the various components of variability of a biomarker and indicate needed improvements of the assay, along with possible use in field studies. 1994-03 /pmc/articles/PMC1567110/ /pubmed/8033872 Text en
spellingShingle Research Article
Taioli, E
Kinney, P
Zhitkovich, A
Fulton, H
Voitkun, V
Cosma, G
Frenkel, K
Toniolo, P
Garte, S
Costa, M
Application of reliability models to studies of biomarker validation.
title Application of reliability models to studies of biomarker validation.
title_full Application of reliability models to studies of biomarker validation.
title_fullStr Application of reliability models to studies of biomarker validation.
title_full_unstemmed Application of reliability models to studies of biomarker validation.
title_short Application of reliability models to studies of biomarker validation.
title_sort application of reliability models to studies of biomarker validation.
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC1567110/
https://www.ncbi.nlm.nih.gov/pubmed/8033872
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