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CottonMD: a multi-omics database for cotton biological study

Zhiquan Yang, Jing Wang, Yiming Huang, Shengbo Wang, Lulu Wei, Dongxu Liu, Yonglin Weng, Jinhai Xiang, Qiang Zhu, Zhaoen Yang, Xinhui Nie, Yu Yu, Zuoren Yang, Qingyong Yang

2022Nucleic Acids Research96 citationsDOIOpen Access PDF

Abstract

Cotton is an important economic crop, and many loci for important traits have been identified, but it remains challenging and time-consuming to identify candidate or causal genes/variants and clarify their roles in phenotype formation and regulation. Here, we first collected and integrated the multi-omics datasets including 25 genomes, transcriptomes in 76 tissue samples, epigenome data of five species and metabolome data of 768 metabolites from four tissues, and genetic variation, trait and transcriptome datasets from 4180 cotton accessions. Then, a cotton multi-omics database (CottonMD, http://yanglab.hzau.edu.cn/CottonMD/) was constructed. In CottonMD, multiple statistical methods were applied to identify the associations between variations and phenotypes, and many easy-to-use analysis tools were provided to help researchers quickly acquire the related omics information and perform multi-omics data analysis. Two case studies demonstrated the power of CottonMD for identifying and analyzing the candidate genes, as well as the great potential of integrating multi-omics data for cotton genetic breeding and functional genomics research.

Topics & Concepts

OmicsBiologyMetabolomeEpigenomeGenomicsTranscriptomeComputational biologyFunctional genomicsGenomeTraitHeritabilityQuantitative trait locusMetabolomicsBioinformaticsGeneticsGeneDNA methylationComputer scienceGene expressionProgramming languageResearch in Cotton CultivationGenetic Mapping and Diversity in Plants and AnimalsRNA Research and Splicing