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Identification of Factors Contributing to Variability in a Blood-Based Gene Expression Test

BACKGROUND: Corus CAD is a clinically validated test based on age, sex, and expression levels of 23 genes in whole blood that provides a score (1–40 points) proportional to the likelihood of obstructive coronary disease. Clinical laboratory process variability was examined using whole blood controls...

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Autores principales: Elashoff, Michael R., Nuttall, Rachel, Beineke, Philip, Doctolero, Michael H., Dickson, Mark, Johnson, Andrea M., Daniels, Susan E., Rosenberg, Steven, Wingrove, James A.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Public Library of Science 2012
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3388994/
https://www.ncbi.nlm.nih.gov/pubmed/22802952
http://dx.doi.org/10.1371/journal.pone.0040068
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author Elashoff, Michael R.
Nuttall, Rachel
Beineke, Philip
Doctolero, Michael H.
Dickson, Mark
Johnson, Andrea M.
Daniels, Susan E.
Rosenberg, Steven
Wingrove, James A.
author_facet Elashoff, Michael R.
Nuttall, Rachel
Beineke, Philip
Doctolero, Michael H.
Dickson, Mark
Johnson, Andrea M.
Daniels, Susan E.
Rosenberg, Steven
Wingrove, James A.
author_sort Elashoff, Michael R.
collection PubMed
description BACKGROUND: Corus CAD is a clinically validated test based on age, sex, and expression levels of 23 genes in whole blood that provides a score (1–40 points) proportional to the likelihood of obstructive coronary disease. Clinical laboratory process variability was examined using whole blood controls across a 24 month period: Intra-batch variability was assessed using sample replicates; inter-batch variability examined as a function of laboratory personnel, equipment, and reagent lots. METHODS/RESULTS: To assess intra-batch variability, five batches of 132 whole blood controls were processed; inter-batch variability was estimated using 895 whole blood control samples. ANOVA was used to examine inter-batch variability at 4 process steps: RNA extraction, cDNA synthesis, cDNA addition to assay plates, and qRT-PCR. Operator, machine, and reagent lots were assessed as variables for all stages if possible, for a total of 11 variables. Intra- and inter-batch variations were estimated to be 0.092 and 0.059 Cp units respectively (SD); total laboratory variation was estimated to be 0.11 Cp units (SD). In a regression model including all 11 laboratory variables, assay plate lot and cDNA kit lot contributed the most to variability (p = 0.045; 0.009 respectively). Overall, reagent lots for RNA extraction, cDNA synthesis, and qRT-PCR contributed the most to inter-batch variance (52.3%), followed by operators and machines (18.9% and 9.2% respectively), leaving 19.6% of the variance unexplained. CONCLUSION: Intra-batch variability inherent to the PCR process contributed the most to the overall variability in the study while reagent lot showed the largest contribution to inter-batch variability.
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spelling pubmed-33889942012-07-16 Identification of Factors Contributing to Variability in a Blood-Based Gene Expression Test Elashoff, Michael R. Nuttall, Rachel Beineke, Philip Doctolero, Michael H. Dickson, Mark Johnson, Andrea M. Daniels, Susan E. Rosenberg, Steven Wingrove, James A. PLoS One Research Article BACKGROUND: Corus CAD is a clinically validated test based on age, sex, and expression levels of 23 genes in whole blood that provides a score (1–40 points) proportional to the likelihood of obstructive coronary disease. Clinical laboratory process variability was examined using whole blood controls across a 24 month period: Intra-batch variability was assessed using sample replicates; inter-batch variability examined as a function of laboratory personnel, equipment, and reagent lots. METHODS/RESULTS: To assess intra-batch variability, five batches of 132 whole blood controls were processed; inter-batch variability was estimated using 895 whole blood control samples. ANOVA was used to examine inter-batch variability at 4 process steps: RNA extraction, cDNA synthesis, cDNA addition to assay plates, and qRT-PCR. Operator, machine, and reagent lots were assessed as variables for all stages if possible, for a total of 11 variables. Intra- and inter-batch variations were estimated to be 0.092 and 0.059 Cp units respectively (SD); total laboratory variation was estimated to be 0.11 Cp units (SD). In a regression model including all 11 laboratory variables, assay plate lot and cDNA kit lot contributed the most to variability (p = 0.045; 0.009 respectively). Overall, reagent lots for RNA extraction, cDNA synthesis, and qRT-PCR contributed the most to inter-batch variance (52.3%), followed by operators and machines (18.9% and 9.2% respectively), leaving 19.6% of the variance unexplained. CONCLUSION: Intra-batch variability inherent to the PCR process contributed the most to the overall variability in the study while reagent lot showed the largest contribution to inter-batch variability. Public Library of Science 2012-07-03 /pmc/articles/PMC3388994/ /pubmed/22802952 http://dx.doi.org/10.1371/journal.pone.0040068 Text en Elashoff et al. http://creativecommons.org/licenses/by/4.0/ This is an open-access article distributed under the terms of the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are properly credited.
spellingShingle Research Article
Elashoff, Michael R.
Nuttall, Rachel
Beineke, Philip
Doctolero, Michael H.
Dickson, Mark
Johnson, Andrea M.
Daniels, Susan E.
Rosenberg, Steven
Wingrove, James A.
Identification of Factors Contributing to Variability in a Blood-Based Gene Expression Test
title Identification of Factors Contributing to Variability in a Blood-Based Gene Expression Test
title_full Identification of Factors Contributing to Variability in a Blood-Based Gene Expression Test
title_fullStr Identification of Factors Contributing to Variability in a Blood-Based Gene Expression Test
title_full_unstemmed Identification of Factors Contributing to Variability in a Blood-Based Gene Expression Test
title_short Identification of Factors Contributing to Variability in a Blood-Based Gene Expression Test
title_sort identification of factors contributing to variability in a blood-based gene expression test
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3388994/
https://www.ncbi.nlm.nih.gov/pubmed/22802952
http://dx.doi.org/10.1371/journal.pone.0040068
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