Toward Automated Identification of Glycan Branching Patterns Using Multistage Mass Spectrometry with Intelligent Precursor Selection.
Shiwei SunChuncui HuangYaojun WangYaming LiuJingwei ZhangJinyu ZhouFeng GaoFei YangRunsheng ChenBarbara MulloyWengang ChaiYan LiDongbo BuPublished in: Analytical chemistry (2018)
Glycans play important roles in a variety of biological processes. Their activities are closely related to the fine details of their structures. Unlike the simple linear chains of proteins, branching is a unique feature of glycan structures, making their identification extremely challenging. Multistage mass spectrometry (MS n) has become the primary method for glycan structural identification. The major difficulty for MS n is the selection of fragment ions as precursors for the next stage of scanning. Widely used strategies are either manual selection by experienced experts, which requires considerable expertise and time, or simply selecting the most intense peaks by which the product-ion spectrum generated may not be structurally informative and therefore fail to make the assignment. We here report a glycan "intelligent precursor selection" strategy (GIPS) to guide MS n experiments. Our approach consists of two key elements, an empirical model to calculate candidate glycan's probability and a statistical model to calculate fragment ion's distinguishing power in order to select the structurally most informative peak as the precursor for next-stage scanning. Using 15 glycan standards, including three pairs with isomeric sequences and eight variously fucosylated oligosaccharides on linear or branched hexasaccharide backbones isolated from a human milk oligosaccharide fraction by HPLC, we demonstrate its successful application to branching pattern analysis with improved efficiency and sensitivity and also the potential for automated operation.
Keyphrases
- mass spectrometry
- high resolution
- cell surface
- liquid chromatography
- ms ms
- human milk
- high performance liquid chromatography
- machine learning
- multiple sclerosis
- capillary electrophoresis
- deep learning
- gas chromatography
- low birth weight
- air pollution
- bioinformatics analysis
- simultaneous determination
- electron microscopy
- climate change
- tandem mass spectrometry
- neural network
- quantum dots
- preterm infants
- data analysis