Department of Chemistry, North Carolina State University, Raleigh, NC, USA.
Department of Genome Sciences, University of Washington, Seattle, WA, USA.
Nat Protoc. 2022 Nov;17(11):2415-2430. doi: 10.1038/s41596-022-00714-6. Epub 2022 Jul 13.
Lipidomics studies suffer from analytical and annotation challenges because of the great structural similarity of many of the lipid species. To improve lipid characterization and annotation capabilities beyond those afforded by traditional mass spectrometry (MS)-based methods, multidimensional separation methods such as those integrating liquid chromatography, ion mobility spectrometry, collision-induced dissociation and MS (LC-IMS-CID-MS) may be used. Although LC-IMS-CID-MS and other multidimensional methods offer valuable hydrophobicity, structural and mass information, the files are also complex and difficult to assess. Thus, the development of software tools to rapidly process and facilitate confident lipid annotations is essential. In this Protocol Extension, we use the freely available, vendor-neutral and open-source software Skyline to process and annotate multidimensional lipidomic data. Although Skyline ( https://skyline.ms/skyline.url ) was established for targeted processing of LC-MS-based proteomics data, it has since been extended such that it can be used to analyze small-molecule data as well as data containing the IMS dimension. This protocol uses Skyline's recently expanded capabilities, including small-molecule spectral libraries, indexed retention time and ion mobility filtering, and provides a step-by-step description for importing data, predicting retention times, validating lipid annotations, exporting results and editing our manually validated 500+ lipid library. Although the time required to complete the steps outlined here varies on the basis of multiple factors such as dataset size and familiarity with Skyline, this protocol takes ~5.5 h to complete when annotations are rigorously verified for maximum confidence.
脂质组学研究由于许多脂质种类的结构相似性而存在分析和注释挑战。为了提高脂质特征描述和注释能力,超越传统基于质谱(MS)的方法所能提供的能力,可以使用多维分离方法,例如整合液相色谱、离子淌度谱、碰撞诱导解离和 MS(LC-IMS-CID-MS)的方法。尽管 LC-IMS-CID-MS 和其他多维方法提供了有价值的疏水性、结构和质量信息,但文件也很复杂且难以评估。因此,开发用于快速处理和促进有信心的脂质注释的软件工具是必不可少的。在本协议扩展中,我们使用免费提供的、供应商中立的开源软件 Skyline 来处理和注释多维脂质组学数据。尽管 Skyline(https://skyline.ms/skyline.url)是为基于 LC-MS 的蛋白质组学数据的靶向处理而建立的,但此后已扩展,以便可以用于分析小分子数据以及包含 IMS 维度的数据。该协议使用了 Skyline 最近扩展的功能,包括小分子光谱库、索引保留时间和离子淌度过滤,并提供了导入数据、预测保留时间、验证脂质注释、导出结果和编辑我们手动验证的 500+脂质库的逐步说明。虽然完成此处概述的步骤所需的时间因数据集大小和对 Skyline 的熟悉程度等多个因素而异,但当为最大置信度严格验证注释时,该协议大约需要 5.5 小时才能完成。