生长素
生物
抑制因子
染色质
基因
遗传学
转录因子
基因表达调控
细胞生物学
转录调控
抄写(语言学)
突变体
拟南芥
语言学
哲学
作者
Jekaterina Truskina,Jingyi Han,Elina Chrysanthou,Carlos S. Galván-Ampudia,Stéphanie Lainé,Géraldine Brunoud,Julien Macé,Simon Bellows,Jonathan Legrand,Anne Maarit Bågman,Margot E. Smit,Ondřej Smetana,Arnaud Stigliani,Silvana Porco,Malcolm Bennett,Ari Pekka Mähönen,François Parcy,Etienne Farcot,François Roudier,Siobhán M. Brady,Anthony Bishopp,Teva Vernoux
出处
期刊:Nature
[Nature Portfolio]
日期:2020-11-18
卷期号:589 (7840): 116-119
被引量:50
标识
DOI:10.1038/s41586-020-2940-2
摘要
The regulation of signalling capacity, combined with the spatiotemporal distribution of developmental signals themselves, is pivotal in setting developmental responses in both plants and animals1. The hormone auxin is a key signal for plant growth and development that acts through the AUXIN RESPONSE FACTOR (ARF) transcription factors2-4. A subset of these, the conserved class A ARFs5, are transcriptional activators of auxin-responsive target genes that are essential for regulating auxin signalling throughout the plant lifecycle2,3. Although class A ARFs have tissue-specific expression patterns, how their expression is regulated is unknown. Here we show, by investigating chromatin modifications and accessibility, that loci encoding these proteins are constitutively open for transcription. Through yeast one-hybrid screening, we identify the transcriptional regulators of the genes encoding class A ARFs from Arabidopsis thaliana and demonstrate that each gene is controlled by specific sets of transcriptional regulators. Transient transformation assays and expression analyses in mutants reveal that, in planta, the majority of these regulators repress the transcription of genes encoding class A ARFs. These observations support a scenario in which the default configuration of open chromatin enables a network of transcriptional repressors to regulate expression levels of class A ARF proteins and modulate auxin signalling output throughout development.
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