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More Is Not Always Better: Evaluation of 1D and 2D-LC-MS/MS Methods for Metaproteomics

机译:更多并不一定总是更好:评估元蛋白质组学的1D和2D-LC-MS / MS方法

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摘要

Metaproteomics, the study of protein expression in microbial communities, is a versatile tool for environmental microbiology. Achieving sufficiently high metaproteome coverage to obtain a comprehensive picture of the activities and interactions in microbial communities is one of the current challenges in metaproteomics. An essential step to maximize the number of identified proteins is peptide separation via liquid chromatography (LC) prior to mass spectrometry (MS). Thorough optimization and comparison of LC methods for metaproteomics are, however, currently lacking. Here, we present an extensive development and test of different 1D and 2D-LC approaches for metaproteomic peptide separations. We used fully characterized mock community samples to evaluate metaproteomic approaches with very long analytical columns (50 and 75 cm) and long gradients (up to 12 h). We assessed a total of over 20 different 1D and 2D-LC approaches in terms of number of protein groups and unique peptides identified, peptide spectrum matches (PSMs) generated, the ability to detect proteins of low-abundance species, the effect of technical replicate runs on protein identifications and method reproducibility. We show here that, while 1D-LC approaches are faster and easier to set up and lead to more identifications per minute of runtime, 2D-LC approaches allow for a higher overall number of identifications with up to >10,000 protein groups identified. We also compared the 1D and 2D-LC approaches to a standard GeLC workflow, in which proteins are pre-fractionated via gel electrophoresis. This method yielded results comparable to the 2D-LC approaches, however with the drawback of a much increased sample preparation time. Based on our results, we provide recommendations on how to choose the best LC approach for metaproteomics experiments, depending on the study aims.
机译:元蛋白质组学是研究微生物群落中蛋白质表达的方法,是一种用于环境微生物学的多功能工具。实现足够高的元蛋白质组覆盖率以全面了解微生物群落的活动和相互作用是元蛋白质组学当前的挑战之一。最大化已鉴定蛋白质数量的重要步骤是在质谱分析(MS)之前通过液相色谱(LC)进行肽分离。但是,目前尚缺乏针对元蛋白质组学的LC方法的全面优化和比较。在这里,我们提出了广泛的开发和测试,用于蛋白质组学肽分离的不同1D和2D-LC方法。我们使用特征充分的模拟社区样本来评估具有超长分析柱(50和75 cm)和长梯度(长达12小时)的元蛋白质组学方法。我们根据鉴定的蛋白质组数量和独特的肽,生成的肽谱匹配(PSM),检测低丰度物种的蛋白质的能力,技术复制的效果,评估了总共20多种不同的1D和2D-LC方法依靠蛋白质鉴定和方法重现性。我们在这里显示,虽然一维液相色谱方法更快,更容易设置,并且每分钟运行时间可产生更多的识别,但二维液相色谱方法可实现更高的识别总数,最多可识别> 10,000个蛋白质组。我们还将1D和2D-LC方法与标准GeLC工作流程进行了比较,在该方法中,蛋白质通过凝胶电泳进行了预分离。该方法产生的结果与2D-LC方法相当,但是存在样品制备时间大大增加的缺点。根据我们的研究结果,我们根据研究目的为如何为元蛋白质组学实验选择最佳LC方法提供了建议。

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