| Literature DB >> 29391006 |
Russell D Wolfinger1, Sudheer Beedanagari2,3, Eric Boitier4, Tao Chen5, Philippe Couttet6, Heidrun Ellinger-Ziegelbauer7, Gregory Guillemain6, Claire Mariet4, Peter Mouritzen8, Raegan O'Lone9, P Scott Pine10, Tatiana Sharapova11, Jian Yan5, Peter S Yuen12, Karol L Thompson13.
Abstract
BACKGROUND: Circulating microRNAs are undergoing exploratory use as safety biomarkers in drug development. Reverse transcription quantitative polymerase chain reaction (RT-qPCR) is one common approach used to quantitate levels of microRNAs in samples that includes the use of a standard curve of calibrators fit to a regression model. Guidelines are needed for setting assay quantitation thresholds that are appropriate for this method and to biomarker pre-validation.Entities:
Keywords: Absolute quantitation; Lower limit of quantitation; Quantitative PCR; microRNA
Mesh:
Substances:
Year: 2018 PMID: 29391006 PMCID: PMC5796571 DOI: 10.1186/s12896-018-0415-4
Source DB: PubMed Journal: BMC Biotechnol ISSN: 1472-6750 Impact factor: 2.563
Fig. 1Examples of graphs aiding LLOQ determinations based on logistic modeling. a 3-parameter logistic model fit of calibration curve data. b Inverse predictions with 95% confidence intervals for sample data
Fig. 2Decision tree workflow for LLOQ determinations based on logistic modeling
Fig. 3Decision tree workflow for LLOQ determinations based on baseline noise
Fig. 4Examples of LLOQ determinations made using the baseline noise decision tree. The data is from the 3 replicates of miR-1 calibration curves run at one site on different days that covers the 3 options in the workflow. (a + b) Example of data that meets option 1: the NTC has a Cq value from which 3.32 is subtracted to derive a NTC + 10. The calibrator dilution with a Cq nearest the NTC + 10 is the LLOQ. (c + d) Example of data that meets option 2: the Cq for the lowest calibration curve point is undetermined. The lowest calibrator concentration is multiplied by 10 and the nearest calibrator concentration is the LLOQ. (e + f) Example of data using option 3. The concentration of the next unmeasured serial dilution point is calculated and multiplied by 10. The nearest measured calibrator concentration is the LLOQ. Black circles: calibration curve points. Red circles: NTC values. Red triangle: NTC + 10
Fig. 5LLOQ determinations from two workflows for a multi-site set of miR-1 calibration curves. The lowest calibrator concentration in each standard curve (5.7 amol/L, 16.9 amol/L, or 50.8 amol/L) is indicated by the dashed line. LLOQs were calculated by the baseline noise workflow (O) or the logistic model workflow using the relative error option (+) or the standard error option (X). The calibration curve code conveys the presence of differences in site, assay multiplicity, and round among the dataset
Fig. 6Inverse predictions from 5 sites for miR-208a-3p levels with 95% confidence intervals in biofluids from pooled control (open circles) and 24 h isoproterenol (closed circles) treatment groups. In (a), no LLOQ threshold was applied. In (b), LLOQ thresholds were applied based on logistic model standard error and on baseline noise in (c). In total, 50/104 measurements were above the LLOQ for the baseline noise model and 52/104 for both of the logistic models. The methods agree on the common 50 and the two logistic methods are in exact agreement.