transcriptional regulatory network (TRN)

  • 文章类型: Journal Article
    被子植物树通常会在重力刺激下发育张力木材(TW)。TW包含丰富的凝胶状(G-)纤维,具有主要由结晶纤维素组成的厚G-层。对控制TW纤维中G层形成的关键因素的理解仍然难以捉摸。这项研究阐明了毛果杨COBRA家族蛋白的作用,PtrCOB3,在TW纤维的G层形成。PtrCOB3表达上调,其启动子活性在TW形成过程中增强。与野生型树的比较分析表明,ptrcob3突变体,由Cas9/gRNA基因编辑介导,无法在TW纤维内产生G层,并且显示出严重受损的茎提升。荧光免疫标记数据显示ptrcob3TW纤维的三级细胞壁(TCW)中结晶纤维素的缺乏。PtrCOB3在G层形成中的作用取决于其天然启动子,pCOB11::PtrCOB3、pCOB3::PtrCOB3和pCOB3::PtrCOB11转基因品系在ptrcob3背景下的比较表型评估证明了这一点。PtrCOB3在其天然启动子控制下的过表达加速了TW纤维内G层的形成。我们进一步鉴定了与PtrCOB3启动子结合并正向调节其转录水平的三种转录因子。除了主要的TCW合成基因,这些发现使得能够构建用于TW纤维G层形成的两层转录调控网络。总的来说,这项研究揭示了对TW形成的机械洞察,通过特定的COB蛋白执行纤维素的沉积,因此,在TW纤维内形成G层。
    Angiosperm trees usually develop tension wood (TW) in response to gravitational stimulation. TW comprises abundant gelatinous (G-) fibers with thick G-layers primarily composed of crystalline cellulose. Understanding the pivotal factors governing G-layer formation in TW fiber remains elusive. This study elucidates the role of a Populus trichocarpa COBRA family protein, PtrCOB3, in the G-layer formation of TW fibers. PtrCOB3 expression was upregulated, and its promoter activity was enhanced during TW formation. Comparative analysis with wild-type trees revealed that ptrcob3 mutants, mediated by Cas9/gRNA gene editing, were incapable of producing G-layers within TW fibers and showed severely impaired stem lift. Fluorescence immunolabeling data revealed a dearth of crystalline cellulose in the tertiary cell wall (TCW) of ptrcob3 TW fibers. The role of PtrCOB3 in G-layer formation is contingent upon its native promoter, as evidenced by the comparative phenotypic assessments of pCOB11::PtrCOB3, pCOB3::PtrCOB3, and pCOB3::PtrCOB11 transgenic lines in the ptrcob3 background. Overexpression of PtrCOB3 under the control of its native promoter expedited G-layer formation within TW fibers. We further identified 3 transcription factors that bind to the PtrCOB3 promoter and positively regulate its transcriptional levels. Alongside the primary TCW synthesis genes, these findings enable the construction of a 2-layer transcriptional regulatory network for the G-layer formation of TW fibers. Overall, this study uncovers mechanistic insight into TW formation, whereby a specific COB protein executes the deposition of cellulose, and consequently, G-layer formation within TW fibers.
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  • 文章类型: Journal Article
    微生物组显示出与健康和疾病中每个人群的饮食和生活方式的相关性,通过先天和适应性免疫受体在细胞水平上与宿主通信的能力,因此在调节与癌症的建立和进展相关的炎症过程中起着重要作用。口腔是人体与环境之间最重要的交互窗口之一,允许大量微生物进入胃肠道和肺部。在这次审查中,通过它们在口腔-肠-肺轴中的协同相互作用和双向串扰以及与宿主细胞的通信,分析了微生物组网络对癌症等全身性疾病建立的贡献。此外,还通过最先进的测序技术分析了每个群体的特征微生物群在口腔-肠-肺轴的多组学分子元形成中的影响,它允许对微生物群环境信号通过癌症相关细胞流动所涉及的分子过程及其与转录因子网络建立的关系进行全球研究,该转录因子网络负责控制与肿瘤发生有关的调节过程。
    The microbiome has shown a correlation with the diet and lifestyle of each population in health and disease, the ability to communicate at the cellular level with the host through innate and adaptative immune receptors, and therefore an important role in modulating inflammatory process related to the establishment and progression of cancer. The oral cavity is one of the most important interaction windows between the human body and the environment, allowing the entry of an important number of microorganisms and their passage across the gastrointestinal tract and lungs. In this review, the contribution of the microbiome network to the establishment of systemic diseases like cancer is analyzed through their synergistic interactions and bidirectional crosstalk in the oral-gut-lung axis as well as its communication with the host cells. Moreover, the impact of the characteristic microbiota of each population in the formation of the multiomics molecular metafirm of the oral-gut-lung axis is also analyzed through state-of-the-art sequencing techniques, which allow a global study of the molecular processes involved of the flow of the microbiota environmental signals through cancer-related cells and its relationship with the establishment of the transcription factor network responsible for the control of regulatory processes involved with tumorigenesis.
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  • 文章类型: Meta-Analysis
    目的:急性肾损伤(AKI)占严重COVID-19病例的29%,并增加这些患者的死亡率。病毒感染通过改变正常转录组的表达谱参与疾病的发病机制。本研究试图确定LncRNA-miRNA-基因和TF-基因网络是所有COVID-19患者肾组织中的基因表达调控网络。
    方法:在此分析中,考虑了来自GEO存储库的四个肾脏库。进行预处理,将R中的Deseq2软件用于数据归一化和log2转换的目的。此外,标准化前和标准化后,使用R中的ggplot2软件开发PCA和箱线图用于质量控制。使用DEseq2软件在R中比较了COVID-19患者和对照组肾脏样本的表达谱。DEGs的考虑显著性阈值为AdjP值<0.05和|logFC|>2。然后,预测lncRNA-miRNA-基因网络中的分子相互作用,不同的数据库,包括DeepBasev3.0、miRNATissueAtlas2、DIANA-LncBasev3和miRWalk,被使用。此外,通过使用ChEA数据库,获得TF-基因水平的相互作用。最后,使用Stringdb和Cytoscapev8绘制获得的网络。
    结果:COVID-19患者验尸后肾组织样本与健康肾组织样本的比较结果显示,超过2000个基因的表达发生了显着变化。此外,基于从该荟萃分析获得的DEGs对miRNA-基因相互作用网络的预测显示,11种miRNA靶向获得的DEGs.有趣的是,在肾脏组织中,这11种miRNA与LINC01874、LINC01788和LINC01320相互作用,对该组织具有高度特异性。此外,EGR1、SMAD4、STAT3和CHD14个转录因子被确定为调节DEGs的关键转录因子。一起来看,目前的研究表明,COVID-19患者的肾脏中有几个基因失调。
    结论:这项研究表明lncRNA-miRNA-基因网络和关键TFs是实验和临床前研究的新诊断和治疗靶标。
    Acute kidney injury (AKI) accounts for up to 29% of severe COVID-19 cases and increases mortality among these patients. Viral infections participate in the pathogenesis of diseases by changing the expression profile of normal transcriptome. This study attempts to identify LncRNA-miRNA-gene and TF-gene networks as gene expression regulating networks in the kidney tissues of COVID-19 patients.
    In this analysis, four kidney libraries from the GEO repository were considered. To conduct the preprocessing, Deseq2 software in R was used for the purpose of data normalization and log2 transformation. In addition, pre- and post-normalization, PCA and box plots were developed using ggplot2 software in R for quality control. The expression profiles of the kidney samples of COVID-19 patients and control individuals were compared using DEseq2 software in R. The considered significance thresholds for DEGs were Adj P value < 0.05 and |logFC| >2. Then, to predict molecular interactions in lncRNA-miRNA-gene networks, different databases, including DeepBase v3.0, miRNATissueAtlas2, DIANA-LncBase v3, and miRWalk, were used. Furthermore, by employing ChEA databases, interactions at the TF-Gene level were obtained. Finally, the obtained networks were plotted using Stringdb and Cytoscape v8.
    Results obtained from the comparison of the post-mortem kidney tissue samples of the COVID-19 patients with the healthy kidney tissue samples showed significant changes in the expression of more than 2000 genes. In addition, predictions regarding the miRNA-gene interaction network based on DEGs obtained from this meta-analysis showed that 11 miRNAs targeted the obtained DEGs. Interestingly, in the kidney tissue, these 11 miRNAs interacted with LINC01874, LINC01788, and LINC01320, which have high specificity for this tissue. Moreover, four transcription factors of EGR1, SMAD4, STAT3, and CHD1 were identified as key transcription factors regulating DEGs. Taken together, the current study showed several dysregulated genes in the kidney of patients affected with COVID-19.
    This study suggests lncRNA-miRNA-gene networks and key TFs as new diagnostic and therapeutic targets for experimental and preclinical studies.
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  • 文章类型: Journal Article
    细胞对环境约束的动态反应由转录调控网络(TRN)协调,调节基因表达。这个网络控制着最基本的细胞反应,包括新陈代谢,运动性,和应激反应。这里,我们应用独立成分分析,一种无监督的机器学习方法,到95个高质量的沙丁砜RNA-seq数据集,并提取45个独立调节的基因集,或iModulons。一起,这些iModulons包含755个基因(占基因组中鉴定的基因的32%),并解释了超过70%的表达能力。我们展示了五个模块代表已知转录调节因子的作用,并假设大多数其余模块代表未表征的调节器的影响。对这些基因集的进一步分析结果是:(1)预测由五个未表征基因组成的DNA输出系统,(2)LysM规则子的扩展,(3)尚未发现的全球规则的证据。我们的方法允许机械师,系统级阐明极端微生物对生物扰动的响应,这可以为基因-调节因子相互作用的研究提供信息,并促进在酸根茎中发现调节因子。我们还提供了第一个全球TRN。总的来说,这些结果为在古细菌中发现调控网络提供了路线图。
    Dynamic cellular responses to environmental constraints are coordinated by the transcriptional regulatory network (TRN), which modulates gene expression. This network controls most fundamental cellular responses, including metabolism, motility, and stress responses. Here, we apply independent component analysis, an unsupervised machine learning approach, to 95 high-quality Sulfolobus acidocaldarius RNA-seq datasets and extract 45 independently modulated gene sets, or iModulons. Together, these iModulons contain 755 genes (32% of the genes identified on the genome) and explain over 70% of the variance in the expression compendium. We show that five modules represent the effects of known transcriptional regulators, and hypothesize that most of the remaining modules represent the effects of uncharacterized regulators. Further analysis of these gene sets results in: (1) the prediction of a DNA export system composed of five uncharacterized genes, (2) expansion of the LysM regulon, and (3) evidence for an as-yet-undiscovered global regulon. Our approach allows for a mechanistic, systems-level elucidation of an extremophile\'s responses to biological perturbations, which could inform research on gene-regulator interactions and facilitate regulator discovery in S. acidocaldarius. We also provide the first global TRN for S. acidocaldarius. Collectively, these results provide a roadmap toward regulatory network discovery in archaea.
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  • 文章类型: Journal Article
    Cancer is among the diseases causing death, in which, cells uncontrollably grow and reproduce beyond the cell regulatory mechanism. In this disease, some genes are initiators of abnormalities and then transmit them to other genes through protein interactions. Accordingly, these genes are known as cancer driver genes (CDGs). In this regard, several methods have been previously developed for identifying cancer driver genes. Most of these methods are computational-based, which use the concept of mutation to predict CDGs. In this research, a method has been proposed for identifying CDGs in the transcription regulatory network using the concept of influence diffusion and by modifying the Hyperlink-Induced Topic Search algorithm based on the diffusion concept. Due to the type of these networks and the processes of abnormality progression in cells and the formation of cancerous tumors, high-influence genes can be the most likely considered as the driver genes. Therefore, we can use the influence diffusion concept as an acceptable theory to identify these genes. Recently, a method has been proposed to detect CDGs with the concept of the influence maximization. One of the challenges in these types of networks is finding the power of regulatory interaction between genes. Moreover, we have proposed a novel method to calculate the weight of regulatory interactions, based on the concept of diffusion. The performance of the proposed method was compared with other seventeen computational and network tools. Correspondingly, three cancer types were used as benchmarks as follows: breast invasive carcinoma (BRCA), Colon adenocarcinoma (COAD), and lung squamous cell carcinoma (LUSC). In addition, to determine the accuracy of the detected drivers using each method, CGC (Cancer Gene Census) and Mut-driver gene lists were utilized as gold standard. The results show that GenHITS performs better compared to the most of the other computational and network methods. Besides, it is also able to identify genes that have been identified by none of the other methods yet.
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