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首页> 外文期刊>NPJ systems biology and applications. >Cross-species gene expression analysis identifies a novel set of genes implicated in human insulin sensitivity
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Cross-species gene expression analysis identifies a novel set of genes implicated in human insulin sensitivity

机译:跨物种基因表达分析确定了一组与人类胰岛素敏感性有关的新基因

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Objective: Insulin resistance (IR) is one of the earliest predictors of type 2 diabetes. However, diagnosis of IR is limited. High fat fed mouse models provide key insights into IR. We hypothesized that early features of IR are associated with persistent changes in gene expression (GE) and endeavored to (a) develop novel methods for improving signal:noise in analysis of human GE using mouse models; (b) identify a GE motif that accurately diagnoses IR in humans; and (c) identify novel biology associated with IR in humans. Methods: We integrated human muscle GE data with longitudinal mouse GE data and developed an unbiased three-level cross-species analysis platform (single gene, gene set, and networks) to generate a gene expression motif (GEM) indicative of IR. A logistic regression classification model validated GEM in three independent human data sets ( n =115). Results: This GEM of 93 genes substantially improved diagnosis of IR compared with routine clinical measures across multiple independent data sets. Individuals misclassified by GEM possessed other metabolic features raising the possibility that they represent a separate metabolic subclass. The GEM was enriched in pathways previously implicated in insulin action and revealed novel associations between β-catenin and Jak1 and IR. Functional analyses using small molecule inhibitors showed an important role for these proteins in insulin action. Conclusions: This study shows that systems approaches for identifying molecular signatures provides a powerful way to stratify individuals into discrete metabolic groups. Moreover, we speculate that the β-catenin pathway may represent a novel biomarker for IR in humans that warrant future investigation.
机译:目的:胰岛素抵抗(IR)是2型糖尿病的最早预测指标之一。但是,IR的诊断是有限的。高脂肪喂养的小鼠模型提供了有关IR的关键见解。我们假设IR的早期特征与基因表达(GE)的持续变化有关,并致力于(a)开发改进信号的新方法:使用小鼠模型对人GE进行分析; (b)确定可正确诊断人类IR的GE基序; (c)鉴定与人体IR相关的新型生物学。方法:我们将人类肌肉GE数据与纵向小鼠GE数据进行整合,并开发了一个无偏的三级跨物种分析平台(单个基因,基因集和网络)以生成指示IR的基因表达基序(GEM)。逻辑回归分类模型在三个独立的人类数据集中验证了GEM(n = 115)。结果:与跨多个独立数据集的常规临床测量相比,这种93个基因的GEM大大改善了IR的诊断。被GEM分类错误的个体具有其他代谢特征,这增加了他们代表一个单独的代谢亚类的可能性。 GEM丰富了以前与胰岛素作用有关的途径,并揭示了β-catenin与Jak1和IR之间的新型关联。使用小分子抑制剂的功能分析显示了这些蛋白质在胰岛素作用中的重要作用。结论:这项研究表明,用于识别分子特征的系统方法为将个体分层为离散的代谢组提供了一种有力的方法。此外,我们推测,β-catenin途径可能代表了人类IR的新型生物标记,值得进一步研究。

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