Literature DB >> 32946688

Amplification Curve Analysis: Data-Driven Multiplexing Using Real-Time Digital PCR.

Ahmad Moniri1, Luca Miglietta1, Kenny Malpartida-Cardenas1, Ivana Pennisi1,2, Miguel Cacho-Soblechero1, Nicolas Moser1, Alison Holmes3, Pantelis Georgiou1, Jesus Rodriguez-Manzano1,3.   

Abstract

Information about the kinetics of PCR reactions is encoded in the amplification curve. However, in digital PCR (dPCR), this information is typically neglected by collapsing each amplification curve into a binary output (positive/negative). Here, we demonstrate that the large volume of raw data obtained from real-time dPCR instruments can be exploited to perform data-driven multiplexing in a single fluorescent channel using machine learning methods, by virtue of the information in the amplification curve. This new approach, referred to as amplification curve analysis (ACA), was shown using an intercalating dye (EvaGreen), reducing the cost and complexity of the assay and enabling the use of melting curve analysis for validation. As a case study, we multiplexed 3 carbapenem-resistant genes to show the impact of this approach on global challenges such as antimicrobial resistance. In the presence of single targets, we report a classification accuracy of 99.1% (N = 16188), which represents a 19.7% increase compared to multiplexing based on the final fluorescent intensity. Considering all combinations of amplification events (including coamplifications), the accuracy was shown to be 92.9% (N = 10383). To support the analysis, we derived a formula to estimate the occurrence of coamplification in dPCR based on multivariate Poisson statistics and suggest reducing the digital occupancy in the case of multiple targets in the same digital panel. The ACA approach takes a step toward maximizing the capabilities of existing real-time dPCR instruments and chemistries, by extracting more information from data to enable data-driven multiplexing with high accuracy. Furthermore, we expect that combining this method with existing probe-based assays will increase multiplexing capabilities significantly. We envision that once emerging point-of-care technologies can reliably capture real-time data from isothermal chemistries, the ACA method will facilitate the implementation of dPCR outside of the lab.

Entities:  

Year:  2020        PMID: 32946688     DOI: 10.1021/acs.analchem.0c02253

Source DB:  PubMed          Journal:  Anal Chem        ISSN: 0003-2700            Impact factor:   6.986


  3 in total

1.  Adaptive Filtering Framework to Remove Nonspecific and Low-Efficiency Reactions in Multiplex Digital PCR Based on Sigmoidal Trends.

Authors:  Luca Miglietta; Ke Xu; Priya Chhaya; Louis Kreitmann; Kerri Hill-Cawthorne; Frances Bolt; Alison Holmes; Pantelis Georgiou; Jesus Rodriguez-Manzano
Journal:  Anal Chem       Date:  2022-10-03       Impact factor: 8.008

2.  Coupling Machine Learning and High Throughput Multiplex Digital PCR Enables Accurate Detection of Carbapenem-Resistant Genes in Clinical Isolates.

Authors:  Luca Miglietta; Ahmad Moniri; Ivana Pennisi; Kenny Malpartida-Cardenas; Hala Abbas; Kerri Hill-Cawthorne; Frances Bolt; Elita Jauneikaite; Frances Davies; Alison Holmes; Pantelis Georgiou; Jesus Rodriguez-Manzano
Journal:  Front Mol Biosci       Date:  2021-11-23

Review 3.  Transcriptomics for child and adolescent tuberculosis.

Authors:  Myrsini Kaforou; Claire Broderick; Ortensia Vito; Michael Levin; Thomas J Scriba; James A Seddon
Journal:  Immunol Rev       Date:  2022-07-12       Impact factor: 10.983

  3 in total

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