RT-PCR accuracy improvement for SARS-CoV-2 detection using deep neural networks
Creators
- 1. Akdeniz Univ, Dumlipinar Bulvari, TR-07030 Antalya, Turkiye
Description
Analysis of fluorescence-based Real-Time Polymerize Chain Reaction (RT-PCR) amplification data is increasingly used to detect multiple pathogens and variants of those rapidly and simultaneously through gene expression. If the gene of interest for the pathogen exists in the sample, then the PCR amplification data forms a type of logistic curve (sigmoid) with an exponential phase. If the pathogen does not exist in the sample, then the amplification signal produces just a noise. The traditional approach for RT-PCR data analysis focuses on the value of the point where the cutoff-threshold (CT) line crosses the exponential phase of the curve if it exists. Focusing on the determination of the CT value too often causes mislabeling of pathogens as either false positives or false negatives. Therefore, this research demonstrates the possibility of improving the accuracy of RT-PCR pathogen identification performance.
Files
bib-26d75e02-4538-404a-bcc9-d2b9951cfab9.txt
Files
(172 Bytes)
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