非编码RNA在植物中的研究进展
Guangdong Agricultural Sciences(2019)
Abstract
蛋白质是生命活动的承担者、体现者,因此,人们一度认为只有编码蛋白质的RNA才具有重要功能.然而随着近年来高通量测序的发展和生物信息学水平的提高,非编码RNA(non-coding,ncRNAs)被大量发现.植物非编码RNA是一类在转录组中不编码蛋白的RNA,对植物生命活动起着重要的调控作用.总结了植物ncRNAs的分类和生物学功能并对其中几种主要ncRNAs如microRNAs(small non-coding RNAs,miRNAs)、lncRNAs(long non-coding RNAs)、circRNAs(circular RNAs)的产生机理、分子机制及应激反应相关功能等方面进行阐述,为后续植物ncRNAs的研究提供一些有价值的理论依据和参考信息.
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