Sensitivity assessment of droplet digital PCR for SARS-CoV-2 detection

Luca Falzone(Istituto Nazionale Tumori IRCCS "Fondazione G. Pascale"), Nicolò Musso(University of Catania), Giuseppe Gattuso(University of Catania), Dafne Bongiorno(University of Catania), Concetta Palermo(Azienda Ospedaliero-Universitaria Policlinico - Vittorio Emanuele), Guido Scalia(University of Catania), Massimo Libra(University of Catania), Stefania Stefani(University of Catania)
International Journal of Molecular Medicine
July 13, 2020
Cited by 226Open Access
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Abstract

Reverse transcription‑quantitative polymerase chain reaction (RT‑qPCR) is the gold standard method for the diagnosis of COVID‑19 infection. Due to pre‑analytical and technical limitations, samples with low viral load are often misdiagnosed as false‑negative samples. Therefore, it is important to evaluate other strategies able to overcome the limits of RT‑qPCR. Blinded swab samples from two individuals diagnosed positive and negative for COVID‑19 were analyzed by droplet digital PCR (ddPCR) and RT‑qPCR in order to assess the sensitivity of both methods. Intercalation chemistries and a World Health Organization (WHO)/Center for Disease Control and Prevention (CDC)‑approved probe for the SARS‑CoV‑2 N gene were used. SYBR‑Green RT‑qPCR is not able to diagnose as positive samples with low viral load, while, TaqMan Probe RT‑qPCR gave positive signals at very late Ct values. On the contrary, ddPCR showed higher sensitivity rate compared to RT‑qPCR and both EvaGreen and probe ddPCR were able to recognize the sample with low viral load as positive even at 10‑fold diluted concentration. In conclusion, ddPCR shows higher sensitivity and specificity compared to RT‑qPCR for the diagnosis of COVID‑19 infection in false‑negative samples with low viral load. Therefore, ddPCR is strongly recommended in clinical practice for the diagnosis of COVID‑19 and the follow‑up of positive patients until complete remission.


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