1 Department of Information Engineering, University of Padua, Padua, Italy.
2 Department of Chemical Engineering, Bogazici University, Istanbul, Turkey.
OMICS. 2019 May;23(5):274-284. doi: 10.1089/omi.2019.0021. Epub 2019 Apr 13.
Target of rapamycin (TOR) is a major signaling pathway and regulator of cell growth. TOR serves as a hub of many signaling routes, and is implicated in the pathophysiology of numerous human diseases, including cancer, diabetes, and neurodegeneration. Therefore, elucidation of unknown components of TOR signaling that could serve as potential biomarkers and drug targets has a great clinical importance. In this study, our aim is to integrate transcriptomics, interactomics, and regulomics data in using a network-based multiomics approach to enlighten previously unidentified, potential components of TOR signaling. We constructed the TOR-signaling protein interaction network, which was used as a template to search for TOR-mediated rapamycin and caffeine signaling paths. We scored the paths passing from at least one component of TOR Complex 1 or 2 (TORC1/TORC2) using the co-expression levels of the genes in the transcriptome data of the cells grown in the presence of rapamycin or caffeine. The resultant network revealed seven hitherto unannotated proteins, namely, Atg14p, Rim20p, Ret2p, Spt21p, Ylr257wp, Ymr295cp, and Ygr017wp, as potential components of TOR-mediated rapamycin and caffeine signaling in yeast. Among these proteins, we suggest further deciphering of the role of Ylr257wp will be particularly informative in the future because it was the only protein whose removal from the constructed network hindered the signal transduction to the TORC1 effector kinase Npr1p. In conclusion, this study underlines the value of network-based multiomics integrative data analysis in discovering previously unidentified components of the signaling networks by revealing potential components of TOR signaling for future experimental validation.
雷帕霉素靶蛋白(TOR)是细胞生长的主要信号通路和调节因子。TOR 作为许多信号通路的枢纽,与许多人类疾病的病理生理学有关,包括癌症、糖尿病和神经退行性疾病。因此,阐明 TOR 信号的未知成分,这些成分可能作为潜在的生物标志物和药物靶点,具有重要的临床意义。在这项研究中,我们的目的是使用基于网络的多组学方法整合转录组学、互作组学和调控组学数据,以阐明 TOR 信号的先前未识别的潜在成分。我们构建了 TOR 信号蛋白相互作用网络,该网络被用作模板,以搜索雷帕霉素和咖啡因介导的 TOR 信号通路。我们使用在雷帕霉素或咖啡因存在下生长的细胞的转录组数据中的基因的共表达水平,对至少一个 TOR 复合物 1 或 2(TORC1/TORC2)的成分通过的路径进行评分。所得网络揭示了七个迄今未注释的蛋白质,即 Atg14p、Rim20p、Ret2p、Spt21p、Ylr257wp、Ymr295cp 和 Ygr017wp,作为酵母中 TOR 介导的雷帕霉素和咖啡因信号的潜在成分。在这些蛋白质中,我们建议进一步阐明 Ylr257wp 的作用将是特别有意义的,因为它是唯一的蛋白质,从构建的网络中去除它会阻碍信号转导到 TORC1 效应激酶 Npr1p。总之,这项研究强调了基于网络的多组学整合数据分析在发现信号网络中以前未识别的成分方面的价值,通过揭示 TOR 信号的潜在成分,为未来的实验验证提供了依据。