Virtual quantification of influenza A virus load by real-time RT-PCR

Abstract Background The pan-influenza A real-time RT-PCR detection assay developed by the Centers for Disease Control and Prevention (CDC) during the 2009 pandemic is widely utilized. A quantitative version of the assay may be useful to monitor influenza A infection and response to treatment. Object...

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Veröffentlicht in:Journal of clinical virology 2013-01, Vol.56 (1), p.65-68
Hauptverfasser: Piralla, Antonio, Daleno, Cristina, Pariani, Elena, Conaldi, Piergiulio, Esposito, Susanna, Zanetti, Alessandro, Baldanti, Fausto
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Sprache:eng
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Zusammenfassung:Abstract Background The pan-influenza A real-time RT-PCR detection assay developed by the Centers for Disease Control and Prevention (CDC) during the 2009 pandemic is widely utilized. A quantitative version of the assay may be useful to monitor influenza A infection and response to treatment. Objectives To prove in principle the possibility that a virtual quantification tool (VQT) would allow conversion of CDC real-time RT-PCR cycle threshold (Ct) values in virus RNA copy number. Study design A plasmid carrying the CDC real-time RT-PCR target region of the influenza A Matrix (M) gene was generated. In a multicenter study, a set of 5 ten-fold dilutions (equivalent to 1 × 102 to 1 × 106 copies/reaction) were prepared and distributed to the 4 participating virology laboratories and then amplified to generate a virtual quantification standard curve. Clinical samples ( n = 120) were quantified in parallel by interpolation with locally generated standard curves and using the VQT. Results A total of 40 standard curves were obtained by the participating centers (ten from each center). The intra- and inter-laboratory variability showed a coefficient of variation (CV) ≤5%. Influenza A virus quantification in 120 respiratory samples showed a significant correlation between interpolation with locally generated standard curves and the VQT ( R2 = 0.9655). Bland Altman analysis showed that the majority (no. 111, 92.5%) of clinical samples had
ISSN:1386-6532
1873-5967
DOI:10.1016/j.jcv.2012.09.011