Auto-regressive modeling and diagnostics for qPCR amplification

Author:

Hsu Benjamin,Sherina Valeriia,McCall Matthew N.ORCID

Abstract

AbstractCurrent methods used to analyze real-time quantitative polymerase chain reaction (qPCR) data exhibit systematic deviations from the assumed model over the progression of the reaction. Slight variations in the amount of the initial target molecule or in early amplifications are likely responsible for these deviations. Commonly-used 4- and 5-parameter sigmoidal models appear to be particularly susceptible to this issue, often displaying patterns of autocorrelation in the residuals. The presence of this phenomenon, even for technical replicates, suggests that these parametric models may be misspecified. Specifically, they do not account for the sequential dependent nature of qPCR fluorescence measurements. We demonstrate that a Smooth Transition Autoregressive (STAR) model addresses this limitation by explicitly modeling the dependence between cycles and the gradual transition between amplification regimes. In summary, application of a STAR model to qPCR amplification data improves model fit and reduces autocorrelation in the residuals.

Publisher

Cold Spring Harbor Laboratory

Reference14 articles.

1. Validation of kinetics similarity in qPCR;Nucleic acids research,2011

2. The MIQE Guidelines: Minimum Information for Publication of Quantitative Real-Time PCR Experiments

3. Spatial autocorrelation approaches to testing residuals from least squares regression;PloS one,2016

4. Inference for quantitation parameters in polymerase chain reactions via branching processes with random effects;Journal of the American Statistical Association,2011

5. Enhanced analysis of real-time PCR data by using a variable efficiency model: FPK-PCR;Nucleic acids research,2011

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