首页> 外文期刊>Journal of proteome research >Depletion of High-Molecular-Mass Proteins for the Identification of Small Proteins and Short Open Reading Frame Encoded Peptides in Cellular Proteomes
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Depletion of High-Molecular-Mass Proteins for the Identification of Small Proteins and Short Open Reading Frame Encoded Peptides in Cellular Proteomes

机译:用于鉴定小蛋白质和短开读框的细胞蛋白质组中的高分子群质量蛋白的耗尽

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摘要

The identification of small proteins and peptides (below ca. 100-150 amino acids) in complex biological samples is hampered by the dominance of higher-molecular-weight proteins. On the contrary, the increasing knowledge about alternative or short open reading frames creates a need for methods that allow the existence of the corresponding gene products to be proven in proteomics experiments. We present an acetonitrile-based precipitation methodology that depletes the majority of proteins above ca. 15 kDa. Parameters such as depletion mixture composition, pH, and temperature were optimized using a model protein mixture, and the method was evaluated in comparison with the established differential solubility method. The approach was applied to the analysis of the low-molecular-weight proteome of the archaea Methanosarcina mazei by means of LC-MS. The data clearly show a beneficial effect from a reduction of complexity, especially in terms of the quality of MS/MS-based identification of small proteins. This fast, detergent-free method allowed for, with minimal sample manipulation, the successful identification of several not yet identified short open reading frame encoded peptides in M. mazei.
机译:通过高分子重量蛋白质的优势,在复杂的生物样品中鉴定在复杂的生物样品中的小蛋白质和肽(下降100-150氨基酸)被妨碍。相反,越来越多的关于替代或短开放阅读帧的知识产生了允许在蛋白质组学实验中证明存在相应基因产物的方法的需求。我们提出了一种乙腈的沉淀方法,其消除了大多数蛋白质的蛋白质。 15 kda。使用模型蛋白质混合物优化诸如耗尽混合物组合物,pH和温度的参数,与所建立的差异溶解度法相比,评价该方法。通过LC-MS将该方法应用于古代甲基喹啉麦克氏菌的低分子量蛋白质组。数据清楚地表明了减少复杂性的有益效果,尤其是在基于MS / MS的小蛋白质的鉴定的质量方面。这种快速的洗涤剂可用方法允许具有最小的样品操作,成功识别几种尚未确定的M. mazei中的缺点肽。

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