Multiplex Fragment Analysis for Flexible Detection of All SARS-CoV-2 Variants of Concern

多重片段分析可灵活检测所有值得关注的 SARS-CoV-2 变体

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作者:Andrew E Clark, Zhaohui Wang, Emily Ostman, Hui Zheng, Huiyu Yao, Brandi Cantarel, Mohammed Kanchwala, Chao Xing, Li Chen, Pei Irwin, Yan Xu, Dwight Oliver, Francesca M Lee, Jeffrey R Gagan, Laura Filkins, Alagarraju Muthukumar, Jason Y Park, Ravi Sarode, Jeffrey A SoRelle

Background

Severe acute respiratory syndrome coronavirus 2 (SARS-CoV-2) variants continue to emerge, and effective tracking requires rapid return of

Conclusions

Multiplex fragment analysis is adaptable and rapid and has similar accuracy to WGS to classify SARS-CoV-2 variants.

Methods

A multiplex fragment analysis approach (CoVarScan) was validated using PCR targeting variants by size and fluorescent color. Eight SARS-CoV-2 mutational hot spots in variants of concern (VOCs) were targeted. Three primer pairs (recurrently deleted region [RDR] 1, RDR2, and RDR3-4) flank RDRs in the S-gene. Three allele-specific primers target recurrent spike receptor binding domain mutants. Lastly, 2 primer pairs target recurrent deletions or insertions in ORF1A and ORF8. Fragments were resolved and analyzed by capillary electrophoresis (ABI 3730XL), and mutational signatures were compared to WGS

Results

We validated CoVarScan using 3544 clinical respiratory specimens. The assay exhibited 96% sensitivity and 99% specificity compared to WGS. The limit of detection for the core targets (RDR1, RDR2, and ORF1A) was 5 copies/reaction. Variants were identified in 95% of samples with cycle threshold (CT) <30 and 75% of samples with a CT 34 to 35. Assay design was frozen April 2021, but all subsequent VOCs have been detected including Delta (n = 2820), Mu, (n = 6), Lambda (n = 6), and Omicron (n = 309). Genotyping results are available in as little as 4 h. Conclusions: Multiplex fragment analysis is adaptable and rapid and has similar accuracy to WGS to classify SARS-CoV-2 variants.

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