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Identification of Key Genes for the Ultrahigh Yield of Rice Using Dynamic Cross-tissue Network Analysis

机译:使用动态交叉组织网络分析鉴定水稻超高产量的关键基因

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摘要

Significantly increasing crop yield is a major and worldwide challenge for food supply and security. It is well-known that rice cultivated at Taoyuan in Yunnan of China can produce the highest yield worldwide. Yet, the gene regulatory mechanism underpinning this ultrahigh yield has been a mystery. Here, we systematically collected the transcriptome data for seven key tissues at different developmental stages using rice cultivated both at Taoyuan as the case group and at another regular rice planting place Jinghong as the control group. We identified the top 24 candidate high-yield genes with their network modules from these well-designed datasets by developing a novel computational systems biology method, i.e., dynamic cross-tissue (DCT) network analysis. We used one of the candidate genes, OsSPL4, whose function was previously unknown, for gene editing experimental validation of the high yield, and confirmed that OsSPL4 significantly affects panicle branching and increases the rice yield. This study, which included extensive field phenotyping, cross-tissue systems biology analyses, and functional validation, uncovered the key genes and gene regulatory networks underpinning the ultrahigh yield of rice. The DCT method could be applied to other plant or animal systems if different phenotypes under various environments with the common genome sequences of the examined sample. DCT can be downloaded from https://github.com/ztpub/DCT.
机译:显着提高作物产量是粮食供应和安全的主要和全球挑战。众所周知,中国云南桃园栽培的水稻可以在全球范围内产生最高产量。然而,基因监管机制下巩固这种超高产量是一个谜。在这里,我们系统地将七个关键组织的转录组数据在不同的发育阶段,在桃园栽培的不同发育阶段作为案例组,另一个常规水稻种植景洪作为对照组。通过开发新颖的计算系统生物学方法,即动态交叉组织(DCT)网络分析,我们通过这些良好设计的数据集识别了与这些良好设计的数据集的候选高产基因。我们使用其中一种候选基因,其功能先前未知的OSSPL4,用于基因编辑高产的实验验证,并证实OSSPL4显着影响穗分枝并增加水稻产量。该研究包括广泛的田间表型,交叉组织系统生物学分析和功能验证,未覆盖基因和基因监管网络,支撑米的超高产量。如果在各种环境下具有常见的基因组序列的不同的基因组序列,则可以将DCT方法应用于其他植物或动物系统。 DCT可以从https://github.com/ztpub/dct下载。

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