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特征基因
  • 文章类型: Journal Article
    为了找到在高温下提高水稻产量的新方法,必须更好地理解耐热性的分子成分。选择性剪接(AS)是影响植物对胁迫的耐受性的主要转录后机制,包括热应力(HS)。AS在很大程度上受到剪接因子(SF)的调节,最近的研究表明它们参与温度反应。然而,对HS应答中SF和AS转录物之间的拼接网络知之甚少。为了扩大这方面的知识,我们基于公开的RNA-seq数据集构建了一个共表达网络,该网络探索了水稻在一段时间内的基础耐热性。我们的分析表明,HS依赖性控制编码SF的特定转录本的丰度可能解释了广泛的,协调,复杂,以及植物对极端温度的固有反应过程中关键基因的微妙AS调节。这些关键基因的变化可能会影响植物生物学的许多方面,从细胞器功能到细胞死亡,为未来基础耐热性的功能研究提供相关的监管候选人。
    To identify novel solutions to improve rice yield under rising temperatures, molecular components of thermotolerance must be better understood. Alternative splicing (AS) is a major post-transcriptional mechanism impacting plant tolerance against stresses, including heat stress (HS). AS is largely regulated by splicing factors (SFs) and recent studies have shown their involvement in temperature response. However, little is known about the splicing networks between SFs and AS transcripts in the HS response. To expand this knowledge, we constructed a co-expression network based on a publicly available RNA-seq dataset that explored rice basal thermotolerance over a time-course. Our analyses suggest that the HS-dependent control of the abundance of specific transcripts coding for SFs might explain the widespread, coordinated, complex, and delicate AS regulation of critical genes during a plant\'s inherent response to extreme temperatures. AS changes in these critical genes might affect many aspects of plant biology, from organellar functions to cell death, providing relevant regulatory candidates for future functional studies of basal thermotolerance.
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  • 文章类型: Journal Article
    急性髓性白血病(AML)是一种治疗方法有限的髓系细胞癌。我们之前将离体药物敏感性与基因组,转录组,以及大量AML患者的临床注释,这促进了功能基因组相关性的发现。这里,我们提供了一个数据集,该数据集与我们的初始报告相协调,得到了805例患者(942份样本)的累积队列.我们显示出很强的跨队列一致性,并确定了药物反应的特征。Further,去卷积转录组数据表明,药物敏感性广泛受AML细胞分化状态的控制,有时有条件地影响其他相关的反应。最后,临床结果的建模揭示了一个单一的基因,PEAR1,是患者生存的最强预测因子之一,尤其是年轻患者。总的来说,这份报告扩展了大量的功能基因组资源,为机械探索和药物开发提供了途径,并揭示了预测AML结果的工具。
    Acute myeloid leukemia (AML) is a cancer of myeloid-lineage cells with limited therapeutic options. We previously combined ex vivo drug sensitivity with genomic, transcriptomic, and clinical annotations for a large cohort of AML patients, which facilitated discovery of functional genomic correlates. Here, we present a dataset that has been harmonized with our initial report to yield a cumulative cohort of 805 patients (942 specimens). We show strong cross-cohort concordance and identify features of drug response. Further, deconvoluting transcriptomic data shows that drug sensitivity is governed broadly by AML cell differentiation state, sometimes conditionally affecting other correlates of response. Finally, modeling of clinical outcome reveals a single gene, PEAR1, to be among the strongest predictors of patient survival, especially for young patients. Collectively, this report expands a large functional genomic resource, offers avenues for mechanistic exploration and drug development, and reveals tools for predicting outcome in AML.
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  • 文章类型: Journal Article
    基因共表达分析是一种数据分析技术,可帮助识别在几种不同条件下具有相似表达模式的基因群。通过这些技术,不同的群体已经能够将推定的代谢途径和功能分配给未被研究的基因,并为不同的代谢物鉴定新的代谢调节网络。一些小组甚至使用网络比较研究来了解这些网络从绿藻到陆地植物的演变。在这一章中,我们将介绍理解网络拓扑和基因模块识别所需的基本定义。此外,我们为读者提供了WGCNA包中实现的标准分析流程,该流程将原始fastq文件作为输入,并从每个模块获得共表达的基因簇和代表性基因表达模式,用于下游应用。
    Gene co-expression analysis is a data analysis technique that helps identify groups of genes with similar expression patterns across several different conditions. By means of these techniques, different groups have been able to assign putative metabolic pathways and functions to understudied genes and to identify novel metabolic regulation networks for different metabolites. Some groups have even used network comparative studies to understand the evolution of these networks from green algae to land plants. In this chapter, we will go over the basic definitions required to understand network topology and gene module identification. Additionally, we offer the reader a walk-through a standard analysis pipeline as implemented in the package WGCNA that takes as input raw fastq files and obtains co-expressed gene clusters and representative gene expression patterns from each module for downstream applications.
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  • 文章类型: Journal Article
    Lung cancer is a prime cause of worldwide cancer deaths, with non-small cell lung cancer (NSCLC) as a frequent subtype. Surgical resection, chemotherapy are the currently used treatment methods. Delayed detection, poor prognosis, tumor heterogeneity, and chemoresistance make them relatively ineffective. Genomic medicine is a budding aspect of cancer therapeutics, where miRNAs are impressively involved. miRNAs are short ncRNAs that bind to 3\'UTR of target mRNA, causing its degradation or translational repression to regulate gene expression. This study aims to identify important miRNA-mRNA-TF interactions in NSCLC using bioinformatics analysis. GEO datasets containing mRNA expression data of NSCLC were used to determine differentially expressed genes (DEGs), and identification of hub genes-BIRC5, CCNB1, KIF11, KIF20A, and KIF4A (all functionally enriched in cell cycle). The FFL network involved, comprised of miR-20b-5p, CCNB1, HMGA2, and E2F7. KM survival analysis determines that these components may be effective prognostic biomarkers and would be a new contemplation in NSCLC therapeutics as they target cell cycle and immunosurveillance mechanisms via HMGA2 and E2F7. They provide survival advantage and evasion of host immune response (via downregulation of cytokines-IL6, IL1R1 and upregulation of chemokines-CXCL13, CXCL14) to NSCLC. The study has provided innovative targets, but further validation is needed to confirm the proposed mechanism.
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  • 文章类型: Journal Article
    已经在外周血样品中测量了全基因组转录作为与重度抑郁症相关的炎症的候选生物标志物。
    我们搜索了所有关于重度抑郁症的病例对照研究,这些研究报告了对全血或外周血单核细胞的微阵列或RNA测序测量。重新分析了原始数据集,当公开访问时,评估病例对照差异,并通过技术统一的方法评估差异表达基因列表的功能作用。
    我们发现了10项符合条件的研究(N=1754例抑郁症和N=1145例健康对照)。52个基因被认为是有意义的2个主要研究(已发表的重叠列表)。在8个可访问数据集的分析统一后(n=1706例,n=1098控件),在2个或更多个全血或外周血单核细胞的研究中,272个基因被巧合地列为前3%最差异表达的基因,具有一致的作用方向(协调重叠列表)。通过对4项全血样本研究的标准化平均差异进行荟萃分析(n=1567例,n=954个控件),发现343个基因的错误发现率<5%(标准化平均差异荟萃分析列表)。这三个列表明显交叉。在重度抑郁症中异常表达的基因富含先天免疫相关功能,编码非随机蛋白质-蛋白质相互作用网络,并在专门用于先天免疫和中性粒细胞功能的规范转录组模块中共表达。
    对现有病例对照数据的定量审查为对先天免疫应答的调节和实施重要的基因网络的异常表达提供了有力的证据。似乎有必要进一步开发炎症抑郁症的白细胞转录生物标志物。
    Whole-genome transcription has been measured in peripheral blood samples as a candidate biomarker of inflammation associated with major depressive disorder.
    We searched for all case-control studies on major depressive disorder that reported microarray or RNA sequencing measurements on whole blood or peripheral blood mononuclear cells. Primary datasets were reanalyzed, when openly accessible, to estimate case-control differences and to evaluate the functional roles of differentially expressed gene lists by technically harmonized methods.
    We found 10 eligible studies (N = 1754 depressed cases and N = 1145 healthy controls). Fifty-two genes were called significant by 2 of the primary studies (published overlap list). After harmonization of analysis across 8 accessible datasets (n = 1706 cases, n = 1098 controls), 272 genes were coincidentally listed in the top 3% most differentially expressed genes in 2 or more studies of whole blood or peripheral blood mononuclear cells with concordant direction of effect (harmonized overlap list). By meta-analysis of standardized mean difference across 4 studies of whole-blood samples (n = 1567 cases, n = 954 controls), 343 genes were found with false discovery rate <5% (standardized mean difference meta-analysis list). These 3 lists intersected significantly. Genes abnormally expressed in major depressive disorder were enriched for innate immune-related functions, coded for nonrandom protein-protein interaction networks, and coexpressed in the normative transcriptome module specialized for innate immune and neutrophil functions.
    Quantitative review of existing case-control data provided robust evidence for abnormal expression of gene networks important for the regulation and implementation of innate immune response. Further development of white blood cell transcriptional biomarkers for inflamed depression seems warranted.
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  • 文章类型: Journal Article
    口腔粘膜下纤维化(OSF)的分子机制尚未完全阐明。因此需要鉴定可靠的标记基因以筛选具有高OSF风险的患者并提供口腔癌监测。本研究产生了基于网络特征和主成分分析的过滤准则,并确定了与OSF预后有关的基因。使用荟萃分析分析了两个基因表达数据集,结果揭示了1,176个具有生物学意义的基因。随后构建共表达网络并检测加权基因模块。本研究的途径和功能富集分析允许鉴定模块1和2及其各自的基因,SPARC(骨粘连蛋白),cwcv和kazal样结构域蛋白聚糖1(SPOCK1)和Kruppel样因子6(KLF6),参与了OSF的发生。结果表明,在OSF进展过程中,这两个基因在上皮向间充质转化中都具有重要作用。本研究中鉴定的基因需要在临床环境中进一步探索和验证,以确定它们在OSF中的作用。
    The molecular mechanism of oral submucous fibrosis (OSF) is yet to be fully elucidated. The identification of reliable signature genes to screen patients with a high risk of OSF and to provide oral cancer surveillance is therefore required. The present study produced a filtering criterion based on network characteristics and principal component analysis, and identified the genes that were involved in OSF prognosis. Two gene expression datasets were analyzed using meta-analysis, the results of which revealed 1,176 biologically significant genes. A co-expression network was subsequently constructed and weighted gene modules were detected. The pathway and functional enrichment analyses of the present study allowed for the identification of modules 1 and 2, and their respective genes, SPARC (osteonectin), cwcv and kazal like domain proteoglycan 1 (SPOCK1) and kruppel like factor 6 (KLF6), which were involved in the occurrence of OSF. The results revealed that both genes had a prominent role in epithelial to mesenchymal transition during OSF progression. The genes identified in the present study require further exploration and validation within clinical settings to determine their roles in OSF.
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  • 文章类型: Journal Article
    OBJECTIVE: Super-enhancer (SE)-associated oncogenes extensively potentiate the uncontrolled proliferation capacity of cancer cells. In this study, we aimed to identify the SE-associated hub genes associated with the clinical characteristics of chronic myeloid leukemia (CML).
    METHODS: Eigengenes from CML clinical modules were determined using weighted gene co-expression network analysis (WGCNA). Overlapping genes between eigengenes and SE-associated genes were used to construct protein-protein interaction (PPI) networks and annotate for pathway enrichment analysis. Expression patterns of the top-ranked SE-associated hub genes were further determined in CML patients and healthy controls via real-time PCR. After treatment of K562 cells with the BRD4 inhibitor, JQ1, for 24 hrs, mRNA and protein levels of SE-associated hub genes were evaluated using real-time PCR and Western blotting, respectively. H3K27ac, H3K4me1 and BRD4 ChIP-seq signal peaks were used to predict and identify SEs visualized by the Integrative Genomics Viewer.
    RESULTS: The yellow module was significantly related to the status and pathological phase of CML. SE-associated hub candidate genes were mainly enriched in the cell cycle pathway. Based on the PPI networks of hub genes and the top rank of degree, five SE-associated genes were identified: specifically, BUB1, CENPO, KIF2C, ORC1, and RRM2. Elevated expression of these five genes was not only related to CML status and phase but also positively regulated by SE and suppressed by the BRD4 inhibitor, JQ1, in K562 cells. Strong signal peaks of H3K27ac, H3K4me1 and BRD4 ChIP-seq of the five genes were additionally observed close to the predicted SE regions.
    CONCLUSIONS: This is the first study to characterize SE-associated genes linked to clinical characteristics of CML via weighted gene co-expression network analysis. Our results support a novel mechanism involving aberrant expression of hub SE-associated genes in CML patients and K562 cells, and these genes will be potential new therapeutic targets for human leukemia.
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  • 文章类型: Journal Article
    生物学依赖于中心论点,即生物体中的基因编码分子机制,该机制与来自环境的刺激和原材料相结合,以创建代表基因组编程的最终表型表达。虽然概念简单,真核生物中基因型与表型的联系依赖于数千个基因与环境之间的相互作用,其复杂性水平可能不可知.现代生物学已经转向在系统生物学中使用网络,试图简化这种复杂性,以解码生物体的基因组是如何工作的。以前,生物网络是组织的基本方式,简化,并分析数据。然而,最近的进步使网络能够超越描述,成为自己的表型或假设。这篇综述讨论了这些努力,比如绘制跨生物尺度的反应,包括蜂窝实体之间的关系,以及直接使用网络作为特征或假设。
    Biology relies on the central thesis that the genes in an organism encode molecular mechanisms that combine with stimuli and raw materials from the environment to create a final phenotypic expression representative of the genomic programming. While conceptually simple, the genotype-to-phenotype linkage in a eukaryotic organism relies on the interactions of thousands of genes and an environment with a potentially unknowable level of complexity. Modern biology has moved to the use of networks in systems biology to try to simplify this complexity to decode how an organism\'s genome works. Previously, biological networks were basic ways to organize, simplify, and analyze data. However, recent advances are allowing networks to move beyond description and become phenotypes or hypotheses in their own right. This review discusses these efforts, like mapping responses across biological scales, including relationships among cellular entities, and the direct use of networks as traits or hypotheses.
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  • 文章类型: Journal Article
    Hepatocellular carcinoma (HCC) remains a deadly cancer, underscoring the need for relevant preclinical models. Male C3HeB/FeJ mice model spontaneous HCC with some hepatocarcinogenesis susceptibility loci corresponding to syntenic regions of human chromosomes altered in HCC. We tested other properties of C3HeB/FeJ tumors for similarity to human HCC. C3HeB/FeJ tumors were grossly visible at 4 months of age, with prevalence and size increasing until about 11 months of age. Histologic features shared with human HCC include hepatosteatosis, tumor progression from dysplasia to poorly differentiated, vascular invasion, and trabecular, oncocytic, vacuolar, and clear cell variants. More tumor cells displayed cytoplasmic APE1 staining versus normal liver. Ultrasound effectively detected and monitored tumors, with 85.7% sensitivity. Over 5000 genes were differentially expressed based on the GSE62232 and GSE63898 human HCC datasets. Of these, 158 and 198 genes, respectively, were also differentially expressed in C3HeB/FeJ. Common cancer pathways, cell cycle, p53 signaling and other molecular aspects, were shared between human and mouse differentially expressed genes. We established eigengenes that distinguish HCC from normal liver in the C3HeB/FeJ model and a subset of human HCC. These features extend the relevance and improve the utility of the C3HeB/FeJ line for HCC studies.
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