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Cleaning up the masses: Exclusion lists to reduce contamination with HPLC-MS/MS

机译:清理群众:排除清单以减少HPLC-MS / MS的污染

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Mass spectrometry, in the past five years, has increased in speed, accuracy and use. With the ability of the mass spectrometers to identify increasing numbers of proteins the identification of undesirable peptides (those not from the protein sample) has also increased. Most undesirable contaminants originate in the laboratory and come from either the user (e.g. keratin from hair and skin), or from reagents (e.g. trypsin), that are required to prepare samples for analysis. We found that a significant amount of MS instrument time was spent sequencing peptides from abundant contaminant proteins. While completely eliminating non-specific protein contamination is not feasible, it is possible to reduce the sequencing of these contaminants. For example, exclusion lists can provide a list of masses that can be used to instruct the mass spectrometer to 'ignore' the undesired contaminant peptides in the list. We empirically generated be-spoke exclusion lists for several model organisms (Homo sapiens, Caenorhabditis elegans, Saccharomyces cereuisiae and Xenopus laeuis), utilising information from over 500 mass spectrometry runs and cumulative analysis of these data. Here we show that by employing these empirically generated lists, it was possible to reduce the time spent analysing contaminating peptides in a given sample thereby facilitating more efficient data acquisition and analysis. Biological significance Given the current efficacy of the Mass Spectrometry instrumentation, the utilisation of data from -500 mass spec runs to generate be-spoke exclusion lists and optimise data acquisition is the significance of this manuscript.
机译:在过去的五年中,质谱技术已经在速度,准确性和使用方面得到了提高。借助质谱仪识别越来越多的蛋白质的能力,不需要的肽(不是来自蛋白质样品的那些)的识别也得到了提高。大多数不良污染物来自实验室,或者来自用户(例如来自头发和皮肤的角蛋白),也来自于制备分析样品所需的试剂(例如胰蛋白酶)。我们发现大量的MS仪器时间花费在从丰富的污染蛋白上对肽进行测序。虽然完全消除非特异性蛋白质污染是不可行的,但可以减少这些污染物的测序。例如,排除列表可以提供质量列表,可用于指示质谱仪“忽略”列表中不需要的污染物肽。我们利用来自500多次质谱分析的信息并对这些数据进行了累积分析,根据经验生成了几种模型生物(智人,秀丽隐杆线虫,酿酒酵母和非洲爪蟾)的定制排除列表。在这里,我们表明通过使用这些凭经验生成的列表,可以减少花在分析给定样品中的污染肽上的时间,从而促进更有效的数据采集和分析。生物学意义鉴于质谱仪的当前功效,利用-500质谱仪中的数据运行以生成定制排除列表并优化数据采集是该手稿的重要意义。

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