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首页> 外文期刊>Thyroid: official journal of the American Thyroid Association >No Dataset Left Behind: Mechanistic Insights into Thyroid Receptor Signaling Through Transcriptomic Consensome Meta-Analysis
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No Dataset Left Behind: Mechanistic Insights into Thyroid Receptor Signaling Through Transcriptomic Consensome Meta-Analysis

机译:没有数据集留下:通过转录组共加荟萃分析将机械洞察到甲状腺受体信号传导

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Background: Discovery-scale omics datasets relevant to thyroid receptors (TRs) and their physiological and synthetic bioactive small-molecule ligands allow for genome-wide interrogation of TR-regulated genes. These datasets have considerable collective value as a reference resource to allow researchers to routinely generate hypotheses addressing the mechanisms underlying the cell biology and physiology of TR signaling in normal and disease states. Methods: Here, we searched the Gene Expression Omnibus database to identify a population of publicly archived transcriptomic datasets involving genetic or pharmacological manipulation of either TR isoform in a mouse tissue or cell line. After initial quality control, samples were organized into contrasts (experiments), and transcript differential expression values and associated measures of significance were generated and committed to a consensome (for consensus omics) meta-analysis pipeline. To gain insight into tissue-selective functions of TRs, we generated liver- and central nervous system (CNS)-specific consensomes and identified evidence for genes that were selectively responsive to TR signaling in each organ. Results: The TR transcriptomic consensome ranks genes based on the frequency of their significant differential expression over the entire group of experiments. The TR consensome assigns elevated rankings both to known TR-regulated genes and to genes previously uncharacterized as TR-regulated, which shed mechanistic light on known cellular and physiological roles of TR signaling in different organs. We identify evidence for unreported genomic targets of TR signaling for which it exhibits strikingly distinct regulatory preferences in the liver and CNS. Moreover, the intersection of the TR consensome with consensomes for other cellular receptors sheds light on transcripts potentially mediating crosstalk between TRs and these other signaling paradigms. Conclusions: The mouse TR datasets and consensomes are freely available in the Signaling Pathways Project website for hypothesis generation, data validation, and modeling of novel mechanisms of TR regulation of gene expression. Our results demonstrate the insights into the mechanistic basis of thyroid hormone action that can arise from an ongoing commitment on the part of the research community to the deposition of discovery-scale datasets.
机译:背景:与甲状腺受体(TRS)相关的发现规模的OMIC数据集及其生理和合成生物活性小分子配体允许基因组的Tr调节基因的询问。这些数据集具有相当大的集体价值作为参考资源,以允许研究人员经常生成假设,用于解决正常和疾病状态的TR信号传导的细胞生物学和生理学机制。方法:这里,我们搜索了基因表达综合数据库,以识别涉及在小鼠组织或细胞系中的TR同种型的遗传或药理操作的公开存档的转录组数据集。在初始质量控制后,将样品组织成对比(实验),并产生转录差异表达值和相关的显着性衡量标准,并致力于同心(共识)Meta分析管道。为了深入了解TRS的组织选择性功能,我们产生肝脏和中枢神经系统(CNS)特异性凝固酶,并确定了对每个器官中TR信号感染的基因的基因的证据。结果:TR转基因组共加基因在整个实验组中的显着差异表达的频率基础上等级基因。 TR同步为已知的Tr调节基因和以前无表达为TR调节的基因分配升高的排名,其在不同器官中的TR信号传导的已知细胞和生理作用的机械光线。我们识别出对TR信号传导的未报告基因组靶标的证据表现出肝脏和CNS中呈现出惊显不同的调节偏好。此外,TR同步与其他细胞受体的凝固素的交叉点均对潜在地介导TRS和这些其他信号范例之间的串扰的转录物上的荧光。结论:小鼠TR数据集和共同组在信号传导途径项目网站上自由地提供假设生成,数据验证和基因表达的TR调节新机制的建模。我们的结果展示了对甲状腺激素行为的机械基础的见解,这些基础可以从研究界的持续承诺来归因于发现尺度数据集的沉积。

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