植物转录激活域的鉴定。

IF 50.5 1区 综合性期刊 Q1 MULTIDISCIPLINARY SCIENCES Nature Pub Date : 2024-07-17 DOI:10.1038/s41586-024-07707-3
Nicholas Morffy, Lisa Van den Broeck, Caelan Miller, Ryan J. Emenecker, John A. Bryant Jr., Tyler M. Lee, Katelyn Sageman-Furnas, Edward G. Wilkinson, Sunita Pathak, Sanjana R. Kotha, Angelica Lam, Saloni Mahatma, Vikram Pande, Aman Waoo, R. Clay Wright, Alex S. Holehouse, Max V. Staller, Rosangela Sozzani, Lucia C. Strader
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摘要

拟南芥中的基因表达受 1900 多种转录因子(TFs)的调控,这些转录因子因存在保存完好的 DNA 结合域而在全基因组范围内被识别出来。激活因子 TFs 含有激活结构域(ADs),可招募辅助激活剂复合物;然而,对于几乎所有拟南芥 TFs,我们都缺乏有关其 ADs 的存在、位置和转录强度的知识1。为了填补这一空白,我们在这里使用酵母文库方法在整个蛋白质组范围内实验性地鉴定拟南芥的ADs,结果发现一半以上的拟南芥TFs都含有AD。我们注释了 1,553 个 ADs,据我们所知,其中绝大多数都是以前未知的。利用生成的数据集,我们开发了一个神经网络来准确预测 ADs,并识别招募辅激活剂复合物所必需的序列特征。我们发现了导致激活活动的六种不同的序列特征组合,为研究 ADs 的亚功能化提供了一个框架。此外,我们还在古老的 AUXIN RESPONSE FACTOR 家族 TFs 中发现了 ADs,揭示了 AD 定位在不同支系中是保守的。我们的发现为理解转录激活提供了一个深层次的资源,为研究内在紊乱区域的功能提供了一个框架,并为 ADs 提供了一个预测模型。
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Identification of plant transcriptional activation domains
Gene expression in Arabidopsis is regulated by more than 1,900 transcription factors (TFs), which have been identified genome-wide by the presence of well-conserved DNA-binding domains. Activator TFs contain activation domains (ADs) that recruit coactivator complexes; however, for nearly all Arabidopsis TFs, we lack knowledge about the presence, location and transcriptional strength of their ADs1. To address this gap, here we use a yeast library approach to experimentally identify Arabidopsis ADs on a proteome-wide scale, and find that more than half of the Arabidopsis TFs contain an AD. We annotate 1,553 ADs, the vast majority of which are, to our knowledge, previously unknown. Using the dataset generated, we develop a neural network to accurately predict ADs and to identify sequence features that are necessary to recruit coactivator complexes. We uncover six distinct combinations of sequence features that result in activation activity, providing a framework to interrogate the subfunctionalization of ADs. Furthermore, we identify ADs in the ancient AUXIN RESPONSE FACTOR family of TFs, revealing that AD positioning is conserved in distinct clades. Our findings provide a deep resource for understanding transcriptional activation, a framework for examining function in intrinsically disordered regions and a predictive model of ADs. A high-throughput yeast-based assay is used to identify more than 1,500 activation domains (ADs) in Arabidopsis transcription factors, and a deep learning approach applied to this dataset can predict AD activity on the basis of sequence features.
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来源期刊
Nature
Nature 综合性期刊-综合性期刊
CiteScore
90.00
自引率
1.20%
发文量
3652
审稿时长
3 months
期刊介绍: Nature is a prestigious international journal that publishes peer-reviewed research in various scientific and technological fields. The selection of articles is based on criteria such as originality, importance, interdisciplinary relevance, timeliness, accessibility, elegance, and surprising conclusions. In addition to showcasing significant scientific advances, Nature delivers rapid, authoritative, insightful news, and interpretation of current and upcoming trends impacting science, scientists, and the broader public. The journal serves a dual purpose: firstly, to promptly share noteworthy scientific advances and foster discussions among scientists, and secondly, to ensure the swift dissemination of scientific results globally, emphasizing their significance for knowledge, culture, and daily life.
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