Genome-wide identification and expression of GRAS gene family members in cassava

生物 基因 基因复制 基因家族 遗传学 亚科 基因组 非生物胁迫 系统发育树 功能分歧 基因表达 转录因子 节段重复 基因表达谱
作者
Zhongying Shan,Xinglu Luo,Meiyan Wu,Limei Wei,Zhupeng Fan,Yanmei Zhu
出处
期刊:BMC Plant Biology [BioMed Central]
卷期号:20 (1) 被引量:46
标识
DOI:10.1186/s12870-020-2242-8
摘要

Abstract Background Cassava is highly tolerant to stressful conditions, especially drought stress conditions; however, the mechanisms underlying this tolerance are poorly understood. The GRAS gene family is a large family of transcription factors that are involved in regulating the growth, development, and stress responses of plants. Currently, GRAS transcription factors have not been systematically studied in cassava, which is the sixth most important crop in the world. Results Seventy-seven MeGRAS genes were identified from the cassava genome database. Phylogenetic analysis revealed that the MeGRAS proteins could be divided into 14 subfamilies. The gene structure and motif compositions of the proteins were considerably conserved within the same subfamily. Duplication events, particularly segmental duplication, were identified as the main driving force for GRAS gene expansion in cassava. Global expression analysis revealed that MeGRAS genes exhibited similar or distinct expression profiles within different tissues among different varieties. Moreover, qRT-PCR analysis revealed the expression patterns of MeGRAS genes in response to abiotic stress (drought, salt, cold, and H 2 O 2 ), and the results suggest that these genes may have multiple functions. Conclusion This study is the first to provide comprehensive information on GRAS gene family members in cassava. The data will increase our understanding of both the molecular basis and the effects of GRAS genes. In addition, the results will contribute further to identifying the responses to various environmental conditions and provide insights into the potential functions of GRAS genes.
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