Abstract

Rapid and accurate identification of patients colonised with carbapenemase-producing organisms (CPOs) is essential to adopt prompt prevention measures to reduce the risk of transmission. Recent studies have demonstrated the ability to combine machine learning (ML) algorithms with real-time digital PCR (dPCR) instruments to increase classification accuracy of multiplex PCR assays when using synthetic DNA templates. We sought to determine if this novel methodology could be applied to improve identification of the five major carbapenem-resistant genes in clinical CPO-isolates, which would represent a leap forward in the use of PCR-based data-driven diagnostics for clinical applications. We collected 253 clinical isolates (including 221 CPO-positive samples) and developed a novel 5-plex PCR assay for detection of blaIMP, blaKPC, blaNDM, blaOXA-48, and blaVIM. Combining the recently reported ML method “Amplification and Melting Curve Analysis” (AMCA) with the abovementioned multiplex assay, we assessed the performance of the AMCA methodology in detecting these genes. The improved classification accuracy of AMCA relies on the usage of real-time data from a single-fluorescent channel and benefits from the kinetic/thermodynamic information encoded in the thousands of amplification events produced by high throughput real-time dPCR. The 5-plex showed a lower limit of detection of 10 DNA copies per reaction for each primer set and no cross-reactivity with other carbapenemase genes. The AMCA classifier demonstrated excellent predictive performance with 99.6% (CI 97.8–99.9%) accuracy (only one misclassified sample out of the 253, with a total of 160,041 positive amplification events), which represents a 7.9% increase (p-value <0.05) compared to conventional melting curve analysis. This work demonstrates the use of the AMCA method to increase the throughput and performance of state-of-the-art molecular diagnostic platforms, without hardware modifications and additional costs, thus potentially providing substantial clinical utility on screening patients for CPO carriage.

Highlights

  • This paper demonstrates that machine learning (ML) approaches coupled with high throughput real-time digital PCR can be used to increase detection accuracy of multiplex PCR assays when screening clinical isolates for the presence of carbapenemase-producing organisms (CPOs)

  • For the first time, the analytical performance of AMCA method compared to Xpert CarbaR Cepheid and Resist-3 O.K.N assays when tested on clinical isolates for detection of the most common types of serinebeta-lactamases and metallo-betalactamases (Maurer et al, 2015; Lim et al, 2018)

  • 3.1.3 Experimental Results in Real-Time digital PCR (dPCR) The 5-plex PCR assay was further validated in the dPCR platform with synthetic DNA templates at concentrations ranging from 101 to 105 DNA copies per panel, which were chosen such that we observe amplification events in bothsingle and bulk regions to capture kinetic information in both domains

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Summary

INTRODUCTION

This paper demonstrates that machine learning (ML) approaches coupled with high throughput real-time digital PCR (dPCR) can be used to increase detection accuracy of multiplex PCR assays when screening clinical isolates for the presence of carbapenemase-producing organisms (CPOs). Our group has demonstrated that the large volume of data obtained from real-time digital PCR (dPCR) instruments can be exploited to perform datadriven multiplexing in a single fluorescent channel, reporting a 99.33 ± 0.13% classification accuracy when using synthetic DNA in a 9-plex format (Moniri et al, 2020a). This result represented an increase of 10% over using melting curve analysis, indicative of the potential benefits of this methodology for diagnostic and screening applications. The following NCBI accession numbers are used as reference for the gBlock synthesis: NG_049172 (blaIMP), NC_016846 (blaKPC), NC_023908 (blaNDM), NG_049762 (blaOXA-48) and NG_050336 (blaVIM)

Clinical Isolates—Bacterial Strains and Culture Condition
Primer Design
Multiplex Real-Time Digital PCR
Limit of Detection for the 5-Plex PCR Assay
Quantification of Clinical Isolates
Machine Learning-Based Methods
Statistical Analysis
In-Silico Analysis
Experimental Results in qPCR
Experimental Results in Real-Time dPCR
Clinical Isolates
The AMCA Model
DISCUSSION
DATA AVAILABILITY STATEMENT
Full Text
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