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Sweet google O’ mine—The importance of online search engines for MS-facilitated, database-independent identification of peptide-encoded book prefaces

机译:谷歌,我的天哪!在线搜索引擎对于MS辅助的,与数据库无关的肽编码书序识别的重要性

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In the recent year, we felt like we were not truly showing our full potential in our PhD projects, and so we were very happy and excited when YPIC announced the ultimate proteomics challenge. This gave us the opportunity of showing off and procrastinating at the same time:) The challenge was to identify the amino acid sequence of 19 synthetic peptides made up from an English text and then find the book that it came from. For this task we chose to run on an Orbitrap Fusion? Lumos? Tribrid? Mass Spectrometer with two different sensitive MS2 resolutions, each with both HCD and CID fragmentation consecutively. This strategy was chosen because we speculated that multiple MS2 scans at high quality would be beneficial over lower resolution, speed and quantity in the relatively sparse sample. The resulting chromatogram did not reveal 19 sharp distinct peaks and it was not clear to us where to start a manual spectra interpretation. We instead used the de novo option in the MaxQuant software and the resulting output gave us two phrases with words that were specific enough to be searched in the magic Google search engine. Google gave us the name of a very famous physicist, namely Sir Joseph John Thomson, and a reference to his book “Rays of positive electricity” from 1913. We then converted the paragraph we believed to be the right one into a FASTA format and used it with MaxQuant to do a database search. This resulted in 16 perfectly FASTA search-identified peptide sequences, one with a missing PTM and one found as a truncated version. The remaining one was identified within the MaxQuant de novo sequencing results. We thus show in this study that our workflow combining de novo spectra analysis algorithms with an online search engine is ideally suited for all applications where users want to decipher peptide-encoded prefaces of 20th century science books.
机译:在最近的一年中,我们觉得我们并没有在博士项目中真正发​​挥出全部潜力,因此当YPIC宣布最终的蛋白质组学挑战时,我们感到非常高兴和兴奋。这为我们提供了同时炫耀和拖延的机会:)挑战在于识别由英文文本组成的19种合成肽的氨基酸序列,然后找到其来源。对于此任务,我们选择在Orbitrap Fusion上运行?露莫斯?三网呢?质谱仪具有两种不同的敏感MS2分辨率,每种均具有连续的HCD和CID碎片。选择该策略是因为我们推测,相对稀疏的样本,高质量的多个MS2扫描将比较低的分辨率,速度和数量更有利。所得色谱图未显示19个尖锐的明显峰,我们也不知道从何处开始进行手动光谱解释。取而代之的是,我们在MaxQuant软件中使用了de novo选项,结果输出为我们提供了两个词组,这些词的词义足以在神奇的Google搜索引擎中进行搜索。 Google为我们提供了一位非常著名的物理学家的名字,即约瑟夫·约翰·汤姆森爵士,并引用了他于1913年出版的《正电之光》一书。然后,我们将我们认为是正确的那一段转换为FASTA格式,并使用了用MaxQuant进行数据库搜索。这样就得到了16条完全由FASTA搜索识别的肽序列,其中1条缺少PTM,另1条为截短形式。剩下的一个在MaxQuant de novo测序结果中鉴定。因此,我们在这项研究中表明,将从头光谱分析算法与在线搜索引擎相结合的工作流程非常适合用户想要解密20世纪科学书籍的肽编码前言的所有应用。

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