Affine analysis for quantitative PCR measurements.
Paul N PatroneErica L RomsosMegan H ClevelandPeter M ValloneAnthony J KearsleyPublished in: Analytical and bioanalytical chemistry (2020)
Motivated by the current COVID-19 health crisis, we consider data analysis for quantitative polymerase chain-reaction (qPCR) measurements. We derive a theoretical result specifying the conditions under which all qPCR amplification curves (including their plateau phases) are identical up to an affine transformation, i.e. a multiplicative factor and horizontal shift. We use this result to develop a data analysis procedure for determining when an amplification curve exhibits characteristics of a true signal. The main idea behind this approach is to invoke a criterion based on constrained optimization that assesses when a measurement signal can be mapped to a master reference curve. We demonstrate that this approach: (i) can decrease the fluorescence detection threshold by up to a decade; and (ii) simultaneously improve confidence in interpretations of late-cycle amplification curves. Moreover, we demonstrate that the master curve is transferable reference data that can harmonize analyses between different labs and across several years. Application to reverse-transcriptase qPCR measurements of a SARS-CoV-2 RNA construct points to the usefulness of this approach for improving confidence and reducing limits of detection in diagnostic testing of emerging diseases. Graphical Abstract Left: a collection of qPCR amplification curves. Right: Example of data collapse after affine transformation.
Keyphrases
- data analysis
- nucleic acid
- sars cov
- label free
- public health
- real time pcr
- healthcare
- coronavirus disease
- high resolution
- loop mediated isothermal amplification
- respiratory syndrome coronavirus
- mental health
- minimally invasive
- big data
- health information
- risk assessment
- machine learning
- health promotion
- climate change