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Identification of Suitable Reference Genes for Quantitative Reverse Transcription PCR in Luffa (luffa Cylindrica).

Physiology and Molecular Biology of Plants(2022)

Guangdong Academy of Agricultural Sciences

Cited 4|Views20
Abstract
Reverse transcription real-time quantitative PCR is widely used to quantify gene expression. Reference genes are usually used as internal controls to measure the target gene expression level. To date, there is no consensus on the use of systematically validated reference genes in different tissues of Luffa. This study evaluated the expression stability of 11 candidate reference genes in different tissues using five algorithms (BestKeeper, comparative delta-Ct method, GeNorm, NormFinder, and RefFinder). Protein phosphatase 2A was the most stable gene, while alpha Tubulin was the least stable. The relative expression of ethylene-related genes in different tissues was also analyzed to reveal their role in sex determination. This study provides the basis for using suitable reference genes to evaluate targeted gene expression.
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Key words
Luffa,Sponge gourd,RT-qPCR,Reference genes,PP2A,Sex determination
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