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Direction pathway analysis of large-scale proteomics data reveals novel features of the insulin action pathway

机译:大规模蛋白质组学数据的方向途径分析揭示了胰岛素作用途径的新特征

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Motivation: With the advancement of high-throughput techniques, large-scale profiling of biological systems with multiple experimental perturbations is becoming more prevalent. Pathway analysis incorporates prior biological knowledge to analyze genes/proteins in groups in a biological context. However, the hypotheses under investigation are often confined to a 1D space (i.e. up, down, either or mixed regulation). Here, we develop direction pathway analysis (DPA), which can be applied to test hypothesis in a high-dimensional space for identifying pathways that display distinct responses acrossmultiple perturbations. Results: Our DPA approach allows for the identification of pathways that display distinct responses across multiple perturbations. To demonstrate the utility and effectiveness, we evaluated DPA under various simulated scenarios and applied it to study insulin action in adipocytes. A major action of insulin in adipocytes is to regulate the movement of proteins from the interior to the cell surface membrane. Quantitative mass spectrometry-based proteomics was used to study this process on a large-scale. The combined dataset comprises four separate treatments. By applying DPA, we identified that several insulin responsive pathways in the plasma membrane trafficking are only partially dependent on the insulin-regulated kinase Akt. We subsequently validated our findings through targeted analysis of key proteins from these pathways using immunoblotting and live cell microscopy. Our results demonstrate that DPA can be applied to dissect pathway networks testing diverse hypotheses and integrating multiple experimental perturbations.
机译:动机:随着高通量技术的发展,具有多个实验扰动的生物系统的大规模分析正变得越来越普遍。途径分析结合了先前的生物学知识,可以在生物学背景下分析成组的基因/蛋白质。但是,所研究的假设通常局限于一维空间(即上,下,或混合调节)。在这里,我们开发了方向路径分析(DPA),该方法可用于测试高维空间中的假设,以识别在多个扰动中显示不同响应的路径。结果:我们的DPA方法允许识别在多个扰动中显示不同响应的途径。为了证明其实用性和有效性,我们在各种模拟情况下评估了DPA,并将其用于研究脂肪细胞中的胰岛素作用。胰岛素在脂肪细胞中的主要作用是调节蛋白质从内部到细胞表面膜的运动。基于定量质谱的蛋白质组学被用于大规模研究该过程。合并的数据集包含四个单独的处理。通过应用DPA,我们发现质膜运输中的几种胰岛素反应途径仅部分依赖于胰岛素调节的激酶Akt。我们随后通过使用免疫印迹和活细胞显微镜对这些途径中的关键蛋白质进行了靶向分析,验证了我们的发现。我们的结果表明,DPA可以应用于解剖通路网络,以测试各种假设并整合多个实验扰动。

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