SoyOD:用于挖掘基因和生物研究的大豆多组学综合数据库。

Jie Li, Qingyang Ni, Guangqi He, Jiale Huang, Haoyu Chao, Sida Li, Ming Chen, Guoyu Hu, James Whelan, Huixia Shou
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引用次数: 0

摘要

大豆是全球重要的粮食、饲料、油料和固氮作物。目前已开展了多种多组学研究,产生了从基因型到表型的数据集。为了将这些数据有效地用于基础研究和应用研究,一个具有广泛数据覆盖面和全面数据分析工具的大豆多组学数据库应运而生。大豆组学数据库(Soybean Omics Database,SoyOD)整合了重要的新数据集和现有的公共数据集,形成了最全面的大豆多组学信息集合。与现有的大豆数据库相比,SoyOD 收录了来自 984 个种质的深度测序的大量新数据、162 个来自不同发育阶段种子的新转录组数据集、53 个表型数据集和 2500 多张表型图像。此外,SoyOD 还整合了现有的数据资源,包括 59 个组装基因组、来自 3904 个大豆品种的遗传变异数据、225 组表型数据以及涵盖 507 种不同组织和处理条件的 1097 个转录组序列。此外,SoyOD 还可用于挖掘重要农艺性状的候选基因,如有关植株高度的案例研究所示。此外,强大的分析和易用的工具包使用户能够轻松访问可用的多组学数据集,并快速搜索特定种质的基因型和表型数据。SoyOD 的新颖性、全面性和用户友好性使其成为大豆分子育种和生物学研究的宝贵资源。SoyOD 可通过 https://bis.zju.edu.cn/soyod 公开访问。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
SoyOD: An Integrated Soybean Multi-omics Database for Mining Genes and Biological Research.

Soybean is a globally important crop for food, feed, oil, and nitrogen fixation. A variety of multi-omics studies has been carried out, generating datasets ranging from genotype to phenotype. In order to efficiently utilize these data for basic and applied research, a soybean multi-omics database with extensive data coverage and comprehensive data analysis tools was established. The Soybean Omics Database (SoyOD) integrates important new datasets with existing public datasets to form the most comprehensive collection of soybean multi-omics information. Compared to existing soybean databases, SoyOD incorporates an extensive collection of novel data derived from the deep-sequencing of 984 germplasms, 162 novel transcriptome datasets from seeds at different developmental stages, 53 phenotypic datasets, and more than 2500 phenotypic images. In addition, SoyOD integrates existing data resources, including 59 assembled genomes, genetic variation data from 3904 soybean accessions, 225 sets of phenotypic data, and 1097 transcriptomic sequences covering 507 different tissues and treatment conditions. Moreover, SoyOD can be used to mine candidate genes for important agronomic traits, as shown in a case study on plant height. Additionally, powerful analytical and easy-to-use toolkits enable users to easily access the available multi-omics datasets, and to rapidly search genotypic and phenotypic data in a particular germplasm. The novelty, comprehensiveness, and user-friendly features of SoyOD make it a valuable resource for soybean molecular breeding and biological research. SoyOD is publicly accessible at https://bis.zju.edu.cn/soyod.

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