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논문 기본 정보

자료유형
학술저널
저자정보
Yubao Zhang (Chinese Academy of Sciences) Yajun Wang (Chinese Academy of Sciences) Zhongkui Xie (Chinese Academy of Sciences) Ruoyu Wang (Chinese Academy of Sciences) Zhihong Guo (Chinese Academy of Sciences) Yuhui He (Chinese Academy of Sciences)
저널정보
한국식물병리학회 The Plant Pathology Journal The Plant Pathology Journal 제36권 제2호
발행연도
2020.4
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170 - 178 (9page)

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The Lily mottle virus (LMoV) impedes the growth and quality of lily crops in Lanzhou, China. Recently Arabis mosaic virus (ArMV) has been detected in LMoVinfected plants in this region, causing plant stunting as well as severe foliar symptoms, and likely posing a threat to lily production. Consequently, there is a need to develop simple, sensitive, and reliable detection methods for these two viruses to prevent them from spreading. Reverse transcription (RT) loop-mediated isothermal amplification (LAMP) assays have been developed to detect LMoV and ArMV using two primer pairs that match six conserved sequences of LMoV and ArMV coat proteins, respectively. RT-LAMP assay results were visually assessed in reaction tubes using green fluorescence and gel electrophoresis. Our assays successfully detected both LMoV and ArMV in lily plants without the occurrence of viral cross-reactivity from other lily viruses. Optimal conditions for LAMP reactions were 65°C and 60°C for 60 min for LMoV and ArMV, respectively. Detection sensitivity for both RT-LAMP assays was a hundredfold greater than that of our comparative RT-polymerase chain reaction assays. We have also found this relatively rapid, target specific and sensitive method can also be used for samples collected in the field and may be especially useful in regions with limited or no laboratory facilities.

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