TaqMan Real-time RT-PCR Assay for Detecting and Differentiating Japanese Encephalitis Virus.

Nan Shao(National Institute for Viral Disease Control and Prevention), Fan Li(National Institute for Viral Disease Control and Prevention), Kai Nie(National Institute for Viral Disease Control and Prevention), Shi Hong Fu(National Institute for Viral Disease Control and Prevention), Wei Jia Zhang(National Institute for Viral Disease Control and Prevention), Ying He(National Institute for Viral Disease Control and Prevention), Wen Lei(National Institute for Viral Disease Control and Prevention), Qian Ying Wang(National Institute for Viral Disease Control and Prevention), Liang Guo(National Institute for Viral Disease Control and Prevention), Yu Cao(National Institute for Viral Disease Control and Prevention), Huanyu Wang(National Institute for Viral Disease Control and Prevention)
PubMed
March 1, 2018
Cited by 50

Abstract

OBJECTIVE: To detect Japanese encephalitis virus (JEV) rapidly and distinguish its genotypes, a TaqMan-based reverse transcriptase quantitative polymerase chain reaction (RT-PCR) detection system was developed. METHODS: By aligning the full-length sequences of JEV (G1-G5), six sets of highly specific TaqMan real-time RT-PCR primers and probes were designed based on the highly conserved NS1, NS2, and M genes of JEV, which included one set for non-specific JEV detection and five sets for the detection of specific JEV genotypes. Twenty batches of mosquito samples were used to evaluate our quantitative PCR assay. RESULTS: With the specific assay, no other flavivirus were detected. The lower limits of detection of the system were 1 pfu/mL for JEV titers and 100 RNA copies/µL. The coefficients of variation of this real-time RT-PCR were all < 2.8%. The amplification efficiency of this method was between 90% and 103%. CONCLUSION: A TaqMan real-time RT-PCR detection system was successfully established to detect and differentiate all five JEV genotypes.


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