Deshmukh Atul S, Cox Juergen, Jensen Lars Juhl, Meissner Felix, Mann Matthias
Department of Proteomics and Signal Transduction, Max-Planck-Institute of Biochemistry , Am Klopferspitz 18, D-82152 Martinsried, Germany.
The Novo Nordisk Foundation Center for Protein Research, Faculty of Health and Medical Sciences, University of Copenhagen , Blegdamsvej 3B, Building 6.1, DK-2200 Copenhagen, Denmark.
J Proteome Res. 2015 Nov 6;14(11):4885-95. doi: 10.1021/acs.jproteome.5b00720. Epub 2015 Oct 28.
Skeletal muscle has emerged as an important secretory organ that produces so-called myokines, regulating energy metabolism via autocrine, paracrine, and endocrine actions; however, the nature and extent of the muscle secretome has not been fully elucidated. Mass spectrometry (MS)-based proteomics, in principle, allows an unbiased and comprehensive analysis of cellular secretomes; however, the distinction of bona fide secreted proteins from proteins released upon lysis of a small fraction of dying cells remains challenging. Here we applied highly sensitive MS and streamlined bioinformatics to analyze the secretome of lipid-induced insulin-resistant skeletal muscle cells. Our workflow identified 1073 putative secreted proteins including 32 growth factors, 25 cytokines, and 29 metalloproteinases. In addition to previously reported proteins, we report hundreds of novel ones. Intriguingly, ∼40% of the secreted proteins were regulated under insulin-resistant conditions, including a protein family with signal peptide and EGF-like domain structure that had not yet been associated with insulin resistance. Finally, we report that secretion of IGF and IGF-binding proteins was down-regulated under insulin-resistant conditions. Our study demonstrates an efficient combined experimental and bioinformatics workflow to identify putative secreted proteins from insulin-resistant skeletal muscle cells, which could easily be adapted to other cellular models.
骨骼肌已成为一个重要的分泌器官,可产生所谓的肌动蛋白,通过自分泌、旁分泌和内分泌作用调节能量代谢;然而,肌肉分泌组的性质和范围尚未完全阐明。基于质谱(MS)的蛋白质组学原则上允许对细胞分泌组进行无偏且全面的分析;然而,将真正分泌的蛋白质与一小部分垂死细胞裂解时释放的蛋白质区分开来仍然具有挑战性。在这里,我们应用高灵敏度质谱和简化的生物信息学来分析脂质诱导的胰岛素抵抗骨骼肌细胞的分泌组。我们的工作流程鉴定出1073种假定的分泌蛋白,包括32种生长因子、25种细胞因子和29种金属蛋白酶。除了先前报道的蛋白质外,我们还报道了数百种新的蛋白质。有趣的是,约40%的分泌蛋白在胰岛素抵抗条件下受到调节,包括一个具有信号肽和EGF样结构域结构的蛋白质家族,该家族尚未与胰岛素抵抗相关联。最后,我们报道胰岛素抵抗条件下IGF和IGF结合蛋白的分泌下调。我们的研究展示了一种高效的实验与生物信息学相结合的工作流程,用于从胰岛素抵抗的骨骼肌细胞中鉴定假定的分泌蛋白,该流程可轻松应用于其他细胞模型。