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基于图像的高通量表型获取与表征剖析玉米苗期叶鞘的遗传结构

Dissecting the Genetic Structure of Maize Leaf Sheaths at Seedling Stage by Image-Based High-Throughput Phenotypic Acquisition and Characterization.

作者信息

Wang Jinglu, Wang Chuanyu, Lu Xianju, Zhang Ying, Zhao Yanxin, Wen Weiliang, Song Wei, Guo Xinyu

机构信息

Beijing Key Lab of Digital Plant, Information Technology Research Center, Beijing Academy of Agriculture and Forestry Sciences, Beijing, China.

National Engineering Research Center for Information Technology in Agriculture, Beijing Academy of Agriculture and Forestry Sciences, Beijing, China.

出版信息

Front Plant Sci. 2022 Jun 28;13:826875. doi: 10.3389/fpls.2022.826875. eCollection 2022.

Abstract

The rapid development of high-throughput phenotypic detection techniques makes it possible to obtain a large number of crop phenotypic information quickly, efficiently, and accurately. Among them, image-based phenotypic acquisition method has been widely used in crop phenotypic identification and characteristic research due to its characteristics of automation, non-invasive, non-destructive and high throughput. In this study, we proposed a method to define and analyze the traits related to leaf sheaths including morphology-related, color-related and biomass-related traits at V6 stage. Next, we analyzed the phenotypic variation of leaf sheaths of 418 maize inbred lines based on 87 leaf sheath-related phenotypic traits. In order to further analyze the mechanism of leaf sheath phenotype formation, 25 key traits (2 biomass-related, 19 morphology-related and 4 color-related traits) with heritability greater than 0.3 were analyzed by genome-wide association studies (GWAS). And 1816 candidate genes of 17 whole plant leaf sheath traits and 1,297 candidate genes of 8 sixth leaf sheath traits were obtained, respectively. Among them, 46 genes with clear functional descriptions were annotated by single nucleotide polymorphism (SNPs) that both Top1 and multi-method validated. Functional enrichment analysis results showed that candidate genes of leaf sheath traits were enriched into multiple pathways related to cellular component assembly and organization, cell proliferation and epidermal cell differentiation, and response to hunger, nutrition and extracellular stimulation. The results presented here are helpful to further understand phenotypic traits of maize leaf sheath and provide a reference for revealing the genetic mechanism of maize leaf sheath phenotype formation.

摘要

高通量表型检测技术的快速发展使得快速、高效且准确地获取大量作物表型信息成为可能。其中,基于图像的表型获取方法因其具有自动化、非侵入性、非破坏性和高通量的特点,已在作物表型鉴定和特性研究中得到广泛应用。在本研究中,我们提出了一种方法来定义和分析与叶鞘相关的性状,包括V6阶段与形态、颜色和生物量相关的性状。接下来,我们基于87个与叶鞘相关的表型性状分析了418个玉米自交系叶鞘的表型变异。为了进一步分析叶鞘表型形成的机制,通过全基因组关联研究(GWAS)对遗传力大于0.3的25个关键性状(2个与生物量相关、19个与形态相关和4个与颜色相关的性状)进行了分析。分别获得了17个全株叶鞘性状的1816个候选基因和8个第六叶鞘性状的1297个候选基因。其中,46个具有明确功能描述的基因通过单核苷酸多态性(SNP)进行了注释,这些SNP均经过Top1和多种方法验证。功能富集分析结果表明,叶鞘性状的候选基因富集到多个与细胞组分组装和组织、细胞增殖和表皮细胞分化以及对饥饿、营养和细胞外刺激反应相关的途径。本文的研究结果有助于进一步了解玉米叶鞘的表型性状,并为揭示玉米叶鞘表型形成的遗传机制提供参考。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/5f79/9274118/9715408cfe57/fpls-13-826875-g001.jpg

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