Department of Biomedical Informatics, Vanderbilt University , Nashville, Tennessee 37203, United States.
Department of Pathology, University of Michigan , Ann Arbor, Michigan 48109, United States.
Anal Chem. 2016 Jun 7;88(11):5733-41. doi: 10.1021/acs.analchem.6b00021. Epub 2016 May 24.
Lipid identification from data produced with high-throughput technologies is essential to the elucidation of the roles played by lipids in cellular function and disease. Software tools for identifying lipids from tandem mass (MS/MS) spectra have been developed, but they are often costly or lack the sophistication of their proteomics counterparts. We have developed Greazy, an open source tool for the automated identification of phospholipids from MS/MS spectra, that utilizes methods similar to those developed for proteomics. From user-supplied parameters, Greazy builds a phospholipid search space and associated theoretical MS/MS spectra. Experimental spectra are scored against search space lipids with similar precursor masses using a peak score based on the hypergeometric distribution and an intensity score utilizing the percentage of total ion intensity residing in matching peaks. The LipidLama component filters the results via mixture modeling and density estimation. We assess Greazy's performance against the NIST 2014 metabolomics library, observing high accuracy in a search of multiple lipid classes. We compare Greazy/LipidLama against the commercial lipid identification software LipidSearch and show that the two platforms differ considerably in the sets of identified spectra while showing good agreement on those spectra identified by both. Lastly, we demonstrate the utility of Greazy/LipidLama with different instruments. We searched data from replicates of alveolar type 2 epithelial cells obtained with an Orbitrap and from human serum replicates generated on a quadrupole-time-of-flight (Q-TOF). These findings substantiate the application of proteomics derived methods to the identification of lipids. The software is available from the ProteoWizard repository: http://tiny.cc/bumbershoot-vc12-bin64 .
从高通量技术产生的数据中鉴定脂质对于阐明脂质在细胞功能和疾病中的作用至关重要。已经开发出用于从串联质谱(MS/MS)谱中鉴定脂质的软件工具,但它们通常成本高昂或缺乏与其蛋白质组学对应物的复杂性。我们开发了 Greazy,这是一种用于从 MS/MS 谱中自动鉴定磷脂的开源工具,它利用类似于蛋白质组学开发的方法。从用户提供的参数中,Greazy 构建了一个磷脂搜索空间和相关的理论 MS/MS 谱。实验谱与具有相似前体质量的搜索空间脂质进行评分,使用基于超几何分布的峰得分和利用匹配峰中总离子强度百分比的强度得分。LipidLama 组件通过混合建模和密度估计对结果进行过滤。我们评估了 Greazy 在 NIST 2014 代谢组学库中的性能,观察到在搜索多个脂质类别的准确性很高。我们将 Greazy/LipidLama 与商业脂质鉴定软件 LipidSearch 进行比较,并表明这两个平台在鉴定的谱集上差异很大,而在两个平台都鉴定的谱集上则具有很好的一致性。最后,我们用不同的仪器演示了 Greazy/LipidLama 的实用性。我们搜索了使用轨道阱获得的肺泡 2 型上皮细胞重复样本的数据,以及使用四极杆飞行时间(Q-TOF)生成的人类血清重复样本的数据。这些发现证实了蛋白质组学衍生方法在脂质鉴定中的应用。该软件可从 ProteoWizard 存储库获得:http://tiny.cc/bumbershoot-vc12-bin64。