Rice Reference Genes (RRG): redefining reference genes in rice by mining RNA-seq datasets.

IF 3.9 2区 生物学 Q2 CELL BIOLOGY Plant and Cell Physiology Pub Date : 2024-11-23 DOI:10.1093/pcp/pcae138
Xin Liu, Siyuan Tang, Yingbo Gao, Xiaoxiang Zhang, Guichun Dong, Juan Zhou, Yong Zhou, Zefeng Yang, Jianye Huang, Youli Yao
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Abstract

Reverse transcription quantitative real-time PCR (RT-qPCR) is esteemed for its precision and reliability, positioning it as the standard for evaluating gene expression. Selecting suitable reference genes is crucial for acquiring accurate data on target gene expression. However, identifying appropriate reference genes for specific rice tissues or growth conditions has been a challenge. To overcome this, we introduce the Rice Reference Genes (RRG) tool, which assists researchers in selecting reference genes for diverse experimental conditions in rice. This tool utilizes of 4,404 rice-derived RNA-seq datasets, categorized by five tissue types - leaf, root, seedling, panicle, and seed - and seven stress conditions (cold, disease, drought, heat, hormone, metal, and salt), along with corresponding control groups (mock). In this research, we employed the RRG web-based tool to identify candidate reference genes in rice leaves, roots, and seedlings exposed to salt and drought stress. These candidates were rigorously tested against conventionally established reference genes, confirming their accuracy and reliability. The RRG tool is designed to be user-friendly, allowing even those with limited experience to efficiently select optimal reference genes in rice with ease.

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水稻参考基因(RRG):通过挖掘 RNA-seq 数据集重新定义水稻参考基因。
反转录定量实时 PCR(RT-qPCR)因其精确性和可靠性而备受推崇,被定位为评估基因表达的标准。选择合适的参考基因对获取目标基因表达的准确数据至关重要。然而,为特定水稻组织或生长条件确定合适的参考基因一直是一项挑战。为了克服这一难题,我们推出了水稻参考基因(RRG)工具,帮助研究人员为水稻的不同实验条件选择参考基因。该工具利用 4,404 个水稻衍生 RNA-seq 数据集,按照叶、根、幼苗、圆锥花序和种子五种组织类型和七种胁迫条件(冷、病、旱、热、激素、金属和盐)以及相应的对照组(模拟组)进行分类。在这项研究中,我们使用了基于网络的 RRG 工具来识别水稻叶片、根茎和秧苗在盐胁迫和干旱胁迫下的候选参考基因。这些候选参考基因与传统的参考基因进行了严格的测试,证实了它们的准确性和可靠性。RRG 工具设计为用户友好型,即使经验有限的人也能轻松高效地选择水稻中的最佳参考基因。
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来源期刊
Plant and Cell Physiology
Plant and Cell Physiology 生物-细胞生物学
CiteScore
8.40
自引率
4.10%
发文量
166
审稿时长
1.7 months
期刊介绍: Plant & Cell Physiology (PCP) was established in 1959 and is the official journal of the Japanese Society of Plant Physiologists (JSPP). The title reflects the journal''s original interest and scope to encompass research not just at the whole-organism level but also at the cellular and subcellular levels. Amongst the broad range of topics covered by this international journal, readers will find the very best original research on plant physiology, biochemistry, cell biology, molecular genetics, epigenetics, biotechnology, bioinformatics and –omics; as well as how plants respond to and interact with their environment (abiotic and biotic factors), and the biology of photosynthetic microorganisms.
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