» Articles » PMID: 18298858

A Bayesian Method for Calculating Real-time Quantitative PCR Calibration Curves Using Absolute Plasmid DNA Standards

Overview
Publisher Biomed Central
Specialty Biology
Date 2008 Feb 27
PMID 18298858
Citations 38
Authors
Affiliations
Soon will be listed here.
Abstract

Background: In real-time quantitative PCR studies using absolute plasmid DNA standards, a calibration curve is developed to estimate an unknown DNA concentration. However, potential differences in the amplification performance of plasmid DNA compared to genomic DNA standards are often ignored in calibration calculations and in some cases impossible to characterize. A flexible statistical method that can account for uncertainty between plasmid and genomic DNA targets, replicate testing, and experiment-to-experiment variability is needed to estimate calibration curve parameters such as intercept and slope. Here we report the use of a Bayesian approach to generate calibration curves for the enumeration of target DNA from genomic DNA samples using absolute plasmid DNA standards.

Results: Instead of the two traditional methods (classical and inverse), a Monte Carlo Markov Chain (MCMC) estimation was used to generate single, master, and modified calibration curves. The mean and the percentiles of the posterior distribution were used as point and interval estimates of unknown parameters such as intercepts, slopes and DNA concentrations. The software WinBUGS was used to perform all simulations and to generate the posterior distributions of all the unknown parameters of interest.

Conclusion: The Bayesian approach defined in this study allowed for the estimation of DNA concentrations from environmental samples using absolute standard curves generated by real-time qPCR. The approach accounted for uncertainty from multiple sources such as experiment-to-experiment variation, variability between replicate measurements, as well as uncertainty introduced when employing calibration curves generated from absolute plasmid DNA standards.

Citing Articles

Harmonized Datasets of microbiological parameters from a French national-scale soil monitoring survey.

Cottin A, Dequiedt S, Djemiel C, Prevost-Boure N, Tripied J, Lelievre M Sci Data. 2025; 12(1):34.

PMID: 39779689 PMC: 11711283. DOI: 10.1038/s41597-024-04318-5.


Host traits rather than migration and molting strategies explain feather bacterial load in Palearctic passerines.

Javurkova V, Brlik V, Heneberg P, Pozgayova M, Prochazka P, Dietz M iScience. 2024; 27(11):111079.

PMID: 39473972 PMC: 11513523. DOI: 10.1016/j.isci.2024.111079.


Quantitative fecal pollution assessment with bacterial, viral, and molecular methods in small stream tributaries.

McMinn B, Korajkic A, Kelleher J, Diedrich A, Pemberton A, Willis J Sci Total Environ. 2024; 951:175740.

PMID: 39181252 PMC: 11462285. DOI: 10.1016/j.scitotenv.2024.175740.


spp. infections in wild snakes and a qPCR assay for detection of the fungus.

Lorch J, Winzeler M, Lankton J, Raverty S, Snyman H, Schwantje H Front Microbiol. 2023; 14:1302586.

PMID: 38125577 PMC: 10730940. DOI: 10.3389/fmicb.2023.1302586.


Biogeographical patterns of the soil fungal:bacterial ratio across France.

Djemiel C, Dequiedt S, Bailly A, Tripied J, Lelievre M, Horrigue W mSphere. 2023; 8(5):e0036523.

PMID: 37754664 PMC: 10597451. DOI: 10.1128/msphere.00365-23.


References
1.
Higuchi R, Krummel B, Saiki R . A general method of in vitro preparation and specific mutagenesis of DNA fragments: study of protein and DNA interactions. Nucleic Acids Res. 1988; 16(15):7351-67. PMC: 338413. DOI: 10.1093/nar/16.15.7351. View

2.
Conlon E, Song J, Liu A . Bayesian meta-analysis models for microarray data: a comparative study. BMC Bioinformatics. 2007; 8:80. PMC: 1851021. DOI: 10.1186/1471-2105-8-80. View

3.
Staley J, Konopka A . Measurement of in situ activities of nonphotosynthetic microorganisms in aquatic and terrestrial habitats. Annu Rev Microbiol. 1985; 39:321-46. DOI: 10.1146/annurev.mi.39.100185.001541. View

4.
Lalam N . Statistical inference for quantitative polymerase chain reaction using a hidden markov model: a Bayesian approach. Stat Appl Genet Mol Biol. 2007; 6:Article10. DOI: 10.2202/1544-6115.1253. View

5.
Frigessi A, van de Wiel M, Holden M, Svendsrud D, Glad I, Lyng H . Genome-wide estimation of transcript concentrations from spotted cDNA microarray data. Nucleic Acids Res. 2005; 33(17):e143. PMC: 1243803. DOI: 10.1093/nar/gni141. View