Sigmoidal curve-fitting redefines quantitative real-time PCR with the prospective of developing automated high-throughput applications
Author(s) -
Robert G. Rutledge
Publication year - 2004
Publication title -
nucleic acids research
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 9.008
H-Index - 537
eISSN - 1362-4954
pISSN - 0305-1048
DOI - 10.1093/nar/gnh177
Subject(s) - sigmoid function , reliability (semiconductor) , biology , throughput , standard curve , biological system , automation , curve fitting , function (biology) , melting curve analysis , parametric statistics , calibration curve , calibration , quantitative analysis (chemistry) , reliability engineering , computer science , real time polymerase chain reaction , computational biology , statistics , machine learning , genetics , chromatography , detection limit , mathematics , engineering , telecommunications , power (physics) , biochemistry , quantum mechanics , artificial neural network , wireless , mechanical engineering , physics , gene , chemistry
Quantitative real-time PCR has revolutionized many aspects of genetic research, biomedical diagnostics and pathogen detection. Nevertheless, the full potential of this technology has yet to be realized, primarily due to the limitations of the threshold-based methodologies that are currently used for quantitative analysis. Prone to errors caused by variations in reaction preparation and amplification conditions, these approaches necessitate construction of standard curves for each target sequence, significantly limiting the development of high-throughput applications that demand substantive levels of reliability and automation. In this study, an alternative approach based upon fitting of fluorescence data to a four-parametric sigmoid function is shown to dramatically increase both the utility and reliability of quantitative real-time PCR. By mathematically modeling individual amplification reactions, quantification can be achieved without the use of standard curves and without prior knowledge of amplification efficiency. Combined with provision of quantitative scale via optical calibration, sigmoidal curve-fitting could confer the capability for fully automated quantification of nucleic acids with unparalleled accuracy and reliability
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