Literature DB >> 12194914

Flow cytometric quantification of competitive reverse transcription-PCR products.

Niels Wedemeyer1, Thomas Pötter, Steffi Wetzlich, Wolfgang Göhde.   

Abstract

BACKGROUND: Competitive PCR of reverse transcribed mRNA sequences is used to quantify transcripts, but the usual approaches are labor-intensive and time-consuming. We describe the non-gel-based quantification of competitive reverse transcription (RT)-PCR products with use of microparticles and flow cytometry.
METHODS: PCR products of a target sequence and an internal control sequence (competitor) were labeled during PCR using digoxigenin (DIG)- and dinitrophenol (DNP)-labeled primer, respectively, allowing specific binding to microparticles coated with the corresponding antibody. Both amplification products were biotinylated to enable fluorescence labeling with streptavidin-R-phycoerythrin. The mean fluorescence intensity of each microparticle population, corresponding to the amount of bound PCR product, was measured in a flow cytometer. We constructed microparticles coated with antibodies against DIG and DNP to specifically capture PCR products derived from target and competitor sequences, respectively.
RESULTS: As required for a reliable competitive PCR assay, nearly identical kinetics were found for the amplification of target and competitor sequences when using only one competitive primer. The method was applied to examine interleukin-8 expression in human lymphocytes after x-irradiation. One hour after irradiation, the concentration of transcripts decreased by half.
CONCLUSIONS: The flow cytometric assay for the quantification of competitive RT-PCR products avoids additional hybridization steps and antibody labeling. The use of paramagnetic microparticles would also enable the complete automation of this method.

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Year:  2002        PMID: 12194914

Source DB:  PubMed          Journal:  Clin Chem        ISSN: 0009-9147            Impact factor:   8.327


  1 in total

1.  Multiplexed genetic analysis using an expanded genetic alphabet.

Authors:  Scott C Johnson; David J Marshall; Gerda Harms; Christie M Miller; Christopher B Sherrill; Edward L Beaty; Scott A Lederer; Eric B Roesch; Gary Madsen; Gary L Hoffman; Ronald H Laessig; Greg J Kopish; Mei Wang Baker; Steven A Benner; Philip M Farrell; James R Prudent
Journal:  Clin Chem       Date:  2004-08-19       Impact factor: 8.327

  1 in total

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