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Review
Recent Advances in the Mass Spectrometry Methods for Glycomics and Cancer Muchena J. Kailemia, Gege Xu, Maurice Y. Wong, Qiongyu Li, Elisha Goonatilleke, Frank Leon, and Carlito B. Lebrilla Anal. Chem., Just Accepted Manuscript • DOI: 10.1021/acs.analchem.7b04202 • Publication Date (Web): 19 Oct 2017 Downloaded from http://pubs.acs.org on October 20, 2017
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Analytical Chemistry
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Recent Advances in the Mass Spectrometry Methods for
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Glycomics and Cancer
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Muchena J. Kailemia1,4, Gege Xu1,4, Maurice Wong1, Qiongyu Li1, Elisha Goonatilleke1, Frank
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Leon1, and Carlito B. Lebrilla1,2,3
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1
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United States
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2
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USA
Department of Chemistry, University of California, Davis, One Shields Avenue, Davis, CA 95616,
Department of Biochemistry and Molecular Medicine, University of California, Davis, CA 95616,
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Foods for Health Institute, University of California, Davis, CA 95616, USA
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4
These authors contributed equally to this work
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To whom correspondence should be addressed.
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Carlito B. Lebrilla
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University of California, Davis
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Department of Chemistry
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One Shields Avenue
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Davis, CA, 95616, USA
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E-mail:
[email protected] 20
Invited Submission to Analytical Chemistry
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1. Introduction
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The review focuses on recent aspects (last three years) of glycosylation analyses that
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provide relevant information about cancer. It includes recent development in glycan and
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protein enrichment methods for discovery of cancer markers. It will however focus on the
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recent technological developments in mass spectrometry (MS), bioinformatics and separation
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methods as they apply toward identifying cancer markers. More specifically, it will cover
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advances in matrix-assisted laser desorption/ionization (MALDI), electrospray ionization (ESI),
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capillary electrophoresis (CE), and liquid chromatography (LC) coupled to mass spectrometry.
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The discussions will include glycans, recently identified as potential markers for cancer that
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have been discovered using the highlighted technologies. We will also discuss emerging
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glycoproteomic techniques and site-specific methods, and how these methods are being
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utilized for cancer biomarker discovery. The large amount of data and the complexity of
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glycoproteomic analysis have been the impetus for developing bioinformatic methods for
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assigning glycosylation sites and characterizing the potentially very large site- or
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microheterogeneity.
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This review will cover the most recent advancements in biomarker discovery of N- and
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O-glycosylation of proteins as well as the glycolipids. This group collectively constitutes
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glycosylation on the cell membrane or the glycocalyx. The review will also highlight methods
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that are highly reproducible, with low coefficient of variation (CV), and scalable for large sample
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sets. The reader is also referred to other notable earlier reviews on glycomic biomarkers for
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cancer. Mereiter et al. describe the recent glycomic effort in gastrointestinal cancer.1 A review
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focused on N-glycomic analysis of colorectal cancer has been published by Sethi and Fanayan.2
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N-Glycan, O-glycan, and glycolipid characteristics of colorectal cancer were reviewed by Holst et
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al.3 Muchena et al. have provided a more general review of glycan biomarkers covering up to
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the current review period.4
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The field of glycoscience also covers a broad area of structures and may include highly
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anionic (glycosaminoglycans) and monosaccharide (e.g. O-GlcNAc) modifications that require
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their specific and unique sets of analytical tools. The latter topics are not covered in this review.
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1.1 Background of Glycosylation and Cancer
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There is nearly 50 years of research illustrating that changes in glycosylation accompany
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cancer.5 Glycosylation is a dynamic process intimately involved in key processes in cells,
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including cell-cell and cell-extracellular communication as well as cell-cell adhesion, and cellular
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metabolism. Glycans expressed in several types of glycoconjugates are known to change during
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cancer genesis and progression.6 These changes increase the structural heterogeneity and alter
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the functions of cells.7 Glycosylation has been found to enable tumor-induced
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immunomodulation and metastasis.8-10 The cell-surface structures allow the immune cells to
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differentiate self/normal cells from non-self/abnormal cells.11 For example, terminal residues
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on N-glycans, such as sialic acids, are involved in immunity and cell-cell communication.12
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Changes in glycosylation of adhesion proteins can largely influence their binding properties,
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leading to altered cell-cell or cell-matrix contacts.13 Other types of glycans are also involved in
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cancer. Gangliosides and sphingolipids are involved in transmembrane communication vital in
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tumor cell growth and invasion.14 Glycosaminoglycans are involved in tumor cell migration15
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and motility.16-18
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The search for effective markers is aided by the understanding of how glycans are
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synthesized. The glycan biosynthetic process is a non-template process involving multiple
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enzymes, some performing competing activities. It is estimated that more than 300 metabolic
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enzymes, composed of glycosyltransferases and glycosidases, are involved in the biosynthesis
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and processing of glycans.19,20 The best-known series of pathways belongs to the production of
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N-glycans (Figure 1). They illustrate the large degree of structural heterogeneity in
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glycosylation. N-Glycans are produced in a step-wise process beginning with the production of
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high mannose structures on a lipid, which are transferred to the nascent polypeptide chain to
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guide protein folding. Once folded, the glycans are then trimmed back and extended to form
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complex and hybrid structures. The folded protein can be secreted with glycans that range from
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early in the process to yield high mannose structures to later in the process corresponding to
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complex or hybrid structures. The number of structures for one glycosylation site can vary by a
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large degree, from a handful for transferrin21 to over 70 structures for IgG, the most abundant
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serum glycoprotein.22,23
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The glycan types and the extent of glycosylation differ between cells from the same
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tissue and between organs. Glycosylation may further depend on the physiological and/or
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pathological condition of the body.24,25 The aberrant changes of glycosylation may be due to
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over-expression, under-expression, or the localization of relevant glycosyltransferases,
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abnormal glycosidase activity, and the tertiary conformation of the protein or the peptide
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affecting the accessibility of the glycosylation site. Not surprisingly, most of the FDA approved
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markers for diseases are glycosylated proteins. Furthermore, antibody based therapies have
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strong glycomic component for treatment of cancers such as breast, lung, gastrointestinal
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system, and melanoma and lymphomas.26 While glycan-focused therapeutics has not been
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extensively pursued, the discovery of robust and verifiable markers could lead to more
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glycosylation-based cancer therapies.
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1.2 Glycomic and glycoproteomic methods for cancer
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Rapid and reproducible glycomic analyses have been made possible by new
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technologies in separation, ionization, and mass analyzers. For glycosylation, two main
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strategies are commonly used (Figure 2). The glycans can be released from a protein mixture,
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globally from a fluid, or from a specific protein. N-Glycans are released from enriched or non-
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enriched biological samples like serum/plasma, urine, or saliva using PNGase F. O-Glycans are
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typically released chemically as there is no equivalent to PNGase F. Chemical approaches can
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also be used to globally release different types of glycans. For example, Song et. al. recently
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developed a method to simultaneously release free reducing N- and O-glycans from
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glycoproteins, and glycan nitriles from glycosphingolipids using household bleach.27 (Figure 3)
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The free glycans are generally analyzed using either MALDI-MS or LC-MS. Alternatively,
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glycoproteins can be analyzed as glycopeptides through protease digestion of the protein,
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thereby keeping a segment of the peptide backbone intact.
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The first global glycomic analysis of serum was reported over 10 years ago for ovarian
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cancer.28 This glycomic profiling method involved MALDI-MS. There are intrinsic properties of
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glycans that need to be addressed in the global glycan analysis. The diversity of glycan species
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and similarities in structures pose unique challenges to mass spectrometry. The similarities in
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structures make it difficult to distinguish isomers, while the presence of both neutral residues
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such as galactose, mannose, fucose, N-acetylglucosamine, and N-acetylgalactosamine and
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anionic residues such as sialic acids and sulfated monosaccharides create ionization biases.
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Anionic oligosaccharides tend to give better signals in the negative mode due to deprotonation,
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while neutral oligosaccharides tend to be cationized with sodium in the positive mode. MALDI
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has two major limitations toward oligosaccharide analysis: it yields no isomer separation, and
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the energetic conditions of MALDI may cause the loss of labile groups such as sialic acids and
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fucoses. These issues have been largely resolved by stabilizing the glycans using derivatization29
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or by decreasing the energy of the MALDI process with post-ionization cooling.30
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Electrospray ionization (ESI or more specifically nanoESI) coupled with liquid
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chromatography overcomes many of the limitations in MALDI profiling. With ESI, singly and
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multiply protonated species are produced, in contrast to MALDI which produces sodium-
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coordinated species. Nanospray increases the sensitivity over MALDI and produces cooler ions,
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minimizing in-source fragmentation. When coupled with liquid chromatography (or nanoLC) it
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extends the number of identified glycans significantly. To further elucidate the exact glycan
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structures,
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permethylation followed by acid hydrolysis and acetylation33,34 need to be used in combination
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with mass spectrometry techniques.
however,
other
approaches
such
as
exoglycosidase
digestion31,32
and
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The next development of glycomic analysis will lie in the elucidation of glycopeptides
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and glycoproteins. In glycoproteomics, issues in proteomics are compounded with the
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difficulties in glycomics, and both will have to be addressed simultaneously. This approach
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requires new methods that can overcome the challenges associated with their specific analysis,
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including incomplete glycosite/glycopeptide identification, site occupancy, difficulties in
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elucidating all the structural details of glycan and its respective polypeptide, and limited glycan
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data interpretation algorithm/software. Despite these challenges, the results obtained from
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these analyses add in-depth knowledge regarding the identities of the glycans at their site of
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attachment within the proteins. This provides the glycan and the protein information that are
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essential in understanding the cancer biology. These types of analyses may provide more
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specific cancer markers and aid in the efforts to identify drug targets.
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2. Methods for profiling glycans and glycoprotein cancer markers
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Mass spectrometry has generally been at the core of the large glycomic effort. MS is
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ideal because of its sensitivity, and large peak capacity. It is also open to broad non-targeted
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and targeted approaches. However, the improvements in mass analyzers have not significantly
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advanced glycomic methods. There are several types of analyzers, but they all appear to be
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equally effective for glycomic analysis. Conversely, ionization and separation methods have
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significantly advanced glycomic and glycoproteomic analysis. The large number of structures in
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the glycome, as well as the large number of glycopeptides, require effective separation
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methods that increase the peak capacity and the information content of the analysis. The
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coupling of separation methods to mass spectrometry yielded an effective glycomic and
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glycoproteomic tool, which has also increased the information content even further.
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2.1. Matrix-assisted laser desorption/ionization (MALDI – MS)
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Several studies have already illustrated the use of MALDI as a tool to monitor alterations
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in glycosylation in cancer and diseases in various tissues including blood, serum, and muscle.4 In
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addition to discovering biomarkers for clinical diagnosis of cancer, characterization of protein
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glycosylation by MALDI-MS further helped elucidate the heterogeneity present in complicated
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biological samples.4,35 MALDI-MS was the first method employed for global glycan profiling of
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serum. It is used primarily for N-glycans, and remains the most common method for glycomic
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profiling.36
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MALDI-MS provides primarily a compositional profile yielding the combination of hexose
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(Hex, typically D-mannose and D-galactose), deoxyhexose (typically L-fucose, or Fuc), N-
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acetylhexosamine (HexNAc, typically N-acetyl-D-glucosamine and N-acetyl-D-galactosamine)
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and sialic acid (typically N-acetylneuraminic acid, or NeuAc).37 Because the biology of glycan
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formation is relatively well known, the glycan composition can be used to deduce the glycan
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type. For disease biomarker discovery, general changes in glycan types such as high mannose,
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complex, hybrid, bisecting GlcNAc, sialylation, and fucosylation are of direct biological
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significance.38 Coarse alterations in glycosylation have been shown to influence various cellular
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processes in many different cancers.39
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MALDI imparts higher energy during ionization causing instability for analyte ions
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sometimes inducing unwanted fragmentation. This may further result in limited representation
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of anionic and sialylated glycan species.40 Permethylation is one of the most commonly used
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derivatization method for stabilizing glycans during ionization. Automated methods are
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emerging to make this process more suitable for glycan analysis. Shubhakar et al. developed a
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high-throughput format to monitor glycosylation in biologics, however the same method can be
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applied to cancer tissues.41 Derivatization of sialic acid to yield linkage information has been
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used by Holst et al. to examine formalin-fixed tissue for MALDI imaging.42 Specific stabilization
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and characterization of sialylated glycans was achieved with linkage-specific sialic acid
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derivatization employing ethyl esterification and dimethylamidation for differential analysis of
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α(2,3)- and α(2,6)-linked sialic acids in plasma and cancer tissues.42,43
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A more recent innovation in MALDI-MS is the application of MALDI imaging on cellular
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glycosylation. Advancements in the characterization of N-linked glycans in cancer tissues using
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MALDI imaging was discussed in a recent review by Drake et al.44 Glycan profiles using tissue-
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based analysis have been used to determine expression in different cancers. Human formalin-
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fixed paraffin-embedded (FFPE) tissues have been used to characterize the spatial profile and
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localization of released N-glycans using MALDI-Imaging Mass Spectrometry (MALDI-IMS).45,46
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FFPE tissues collected from human hepatocellular carcinomas, prostate, and pancreas have
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been found to have distinct glycan profiles when compared to adjacent non-tumor tissue
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slices.45,47 For validation of alterations in glycan expression, tissue microarrays incorporating
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multiple FFPE tumor and normal tissue cores have been used in combination with MALDI-IMS.45
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(Figure 4) A tetraantennary N-glycan Hex7HexNAc6 was found to be elevated, while a high
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mannose N-glycan Hex8HexNAc2 was decreased in hepatocellular carcinoma tissues. A similar
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approach using MALDI with ion mobility MS found high-mannose N-glycans expressed in FFPE
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ovarian cancer tissues.48 A new method for MALDI imaging combining IR MALDI with ESI (IR
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MALDESI) has been used by Nazari and Muddiman to image cancerous chicken ovarian tissues,
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although glycans were not directly examined.49
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2.2. Capillary Electrophoresis - MS
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Capillary electrophoresis has long been used for separating oligonucleotides generally
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based on size with samples containing DNA.50 Minor modifications to instruments for genome
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sequencing have adapted these instruments to profiling oligosaccharides using photometric
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detectors.51 The high separation efficiency and resolution of CE opens the possibility of high
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throughput if the method can be robustly coupled to MS.
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The coupling of CE to MS is difficult and complicated by several issues including the
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presence of buffers in CE that are not compatible with MS, and the low flow rates of CE. CE-MS
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for glycomic analysis has been previously reviewed by Mechref.52 CE performs generally better
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with anionic oligosaccharides. Sun et al. have shown that the coupling of CE to MS using an
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electrokinetic sheath pump offers better modes of analyses for heparin oligosaccharides and
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low molecular weight heparin.53 To couple the microfluidic CE device with MS, Kathri et al
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developed a removable microfluidic chip integrating the separation capillary and a nanoESI
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source as interface to analyze monosaccharides, glycans and glycopeptides.54 This method has
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been applied to standard glycoproteins, and the applicability and durability of the method for
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more complicated biological samples remain to be shown.
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Capillary microchip electrophoresis was used along with MALDI-TOF-MS to profile serum
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glycans from patients with colorectal cancer.55 CE compliments the rapid compositional
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capabilities of MALDI-MS. The microchip electrophoresis can separate structural isomers, which
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could be more specific toward individual diseases. This study identified tri- and tetra-antennary
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fucosylated glycans that were significantly elevated in cancer samples when compared to the
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controls. 55
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2.3. Liquid chromatography - MS
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Liquid chromatography remains the ideal couple for mass spectrometry (LC-MS) in
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glycomic and glycoproteomic analysis. Liquid chromatography alone (with chromophoric
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labeling) has been used extensively to profile N-glycans for disease biomarkers and will not be
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discussed further here given the limited scope of this review.56 The coupling of LC with tandem
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MS (LC-MSn) allows confirmation of the monosaccharide composition and further yields
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structural information of both native and derivatized glycans.40 LC-MS further increases the
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depth of oligosaccharide profiling and is currently the most robust and reliable method for
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isomer separation and MS detection.57
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There are several methods for separating oligosaccharides by LC depending on the types
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of stationary and mobile phases. Although C18 remains the most commonly used stationary
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phase for organic compounds, the hydrophilic nature of oligosaccharides prevents their
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retention on C18 column. Derivatization (typically permethylation) is required for retaining
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glycans on C18, however the separation of permethylated isomeric species is generally poor.58
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A recent review by Vreeker and Wuhrer on the reverse phase chromatographic separation of
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oligosaccharides covers this topic.58
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Hydrophilic interaction liquid chromatography, or HILIC, have been used to separate
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both native and labeled glycans. Ahn et al. employed 1.7-μm amide sorbent as the stationary
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phase for enhanced separation of 2-aminobenzamide labeled glycans including high mannose
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and multiply sialylated species.59 They have developed HILIC separation into a robust and
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repeatable platform for biomarker discovery with fluorescence detection. Although MS is not
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typically involved in these studies, the method is notable in the ability to perform rapid
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throughput analysis for large sample sizes.60-62 Native oligosaccharides can also be efficiently
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separated by HILIC. The hydrophilic nature of oligosaccharides dictate their elution properties
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allowing HILIC columns to separate certain oligosaccharide isomers.63
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An alternative to HILIC for separating native oligosaccharides, is the porous graphitized
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carbon (PGC) stationary phase. Profiling of native oligosaccharides by LC-MS typically employs
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PGC as stationary phase. Shown in Figure 5 is an LC-MS profile of N-glycans released from cell
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membrane proteins combined from three cell lines.25 The profile shows more than 800
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compounds over approximately four orders of magnitude in dynamic range.
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Isomeric separation of native (unlabeled, underivatized) compounds with PGC is often
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so effective that separation of anomers (at the reducing carbon) occurs and produces a splitting
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of the peaks. The splitting occurs greatest for smaller compounds and eventually vanishes for
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large multiantennary N-glycan structures. To address this issue, the glycans are often reduced
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to the alditol form. With the separation of the compounds, the retention time and accurate
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mass are unique for each structure and can be used to identify the compounds. In this way,
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glycans can be ordered according to their abundances based on peak areas (or volumes). PGC
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stationary phase in LC-MS was used by Sethi et al. to determine the reduced N-glycans on cell
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membrane from cell lines of colorectal cancer.64 In the study, increase of high mannose glycans
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and α(2,6)-sialylation was observed for the cancer. Song et al has used this method to
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determine the relative abundances of N-glycans released from serum (Figure 6) as well as
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biological variations between individuals.32
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2.4. Quantitation of glycans for biomarkers
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The ability to quantitate is key to the development of effective disease markers.
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Methods to quantitate glycans continue to be developed, however quantitation of glycans is
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generally easier than proteins but more difficult than metabolites. The major issue with
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quantitation of glycans is the lack of chemically pure and readily available standards.
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There are several levels of quantitation that all have their utility in biomarker discovery.
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Relative quantitation is the simplest therefore the most commonly used. It essentially takes the
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absolute ion abundances and normalizes it to the total abundances. The most desirable method
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is for absolute quantitation where the absolute concentration is determined. This method has
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only been performed on oligosaccharides found in human milk.65 An attempt to obtain absolute
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quantitation of N-glycans has been performed by combining glycan types.66
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Absent absolute quantitation methods, the measurement of absolute fold changes is
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the most accurate and convenient approach used in both MALDI-MS and LC-MS for biomarker
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discovery. Both methods can be used to measure fold changes of individual components with
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high repeatability.67,68 The limitations stem from the assumption that the same compound
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ionizes with the same efficiency in different samples, however this efficiency can vary
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depending on the ionization method. In MALDI where the glycans are all analyzed
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simultaneously, the presence of each glycan can affect the ionization of others. In LC-MS, ion
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suppression is greatly minimized as the compounds are separated, however it is not completely
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eliminated. Relative abundances are also distorted by the variation in ionization, although this
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has been shown to be minimal in the same group of glycans.69
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An alternative approach to ion abundances has been to use isotopic labeling through
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derivatization. A recent review by Etxebarria and Reichardt70 on glycan quantitation addresses
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many of the issues in detail. Oligosaccharides in one sample is permethylated with 12CH3 while
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the other sample is derivatized with
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robust, but it has limitations. Permethylation is never complete, and even 99% conversion can
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still produce partially methylated species that can severely decrease the dynamic range of the
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method. It also limits the comparison to two samples, unless a standard is added to each
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sample. It further adds another chemical reaction to a sample, which should be limited in
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biomarker discovery.
13
CH3 (see for example71). The approach is simple and
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There are other issues that can complicate quantitation, but important in large sample
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set analysis. One is the enzyme PNGase F may have different reactivities depending on the
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supplier and the batch. In large sample sets, the same PNGase F batch has to be used to limit
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this variability. Similarly, other factors need to be concerned to maintain homogeneity. The
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other reagents and for native oligosaccharides, the solid phase extraction media such as porous
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graphitized carbon all need to come from the same manufacturing batch. These issues can
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affect quantitation in more profound ways than the quantitative method employed.
299 300
3. Sample preparation and methods to partition the glycoproteome
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Sample preparation is an important consideration in marker discovery. The quality of
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the clinical sample and the precision of the work-up enhances the sensitivity and reproducibility
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of the overall method. Prolonged sample manipulation can alter the glycoform by the chemical
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release of labile groups such as sialic acids. Therefore, it is desirable to minimize sample
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preparation in steps and in time. Label-free in-situ analysis of N-glycans from hepatocellular
306
carcinoma tissues was conducted using MALDI-IMS.47 N-glycans such as Hex8HexNAc2 and
307
Hex7HexNAc6 were found to be differentially expressed in tumor and matched normal tissue
308
samples. However, loss of sialic acid was observed when the results of native glycans were
309
compared with the ethyl esterified glycans from the same samples.
310
A method that requires minimal sample preparation for targeted analysis is multiple
311
reaction monitoring (MRM). Through the selection of targeted proteins, it is a method for
312
partitioning the glycoproteome by focusing on relatively abundant species. The method is
313
rapidly developing for label-free analysis with quantitation of glycans, peptides, and
314
glycopeptides. It has already been applied to rapid-throughput analysis of serum glycopeptides
315
from several cancers.22,72-74
316
Nevertheless, enrichment methods are often required in cancer studies for extracting
317
interesting glycoproteins or for untargeted biomarker discovery. Methods to enrich specific
318
glycoproteins commonly involve the use of antibodies. Mass spectrometry readily couples with
319
this method providing higher sensitivity for protein-specific glycosylation. Borchers and co-
320
workers have recently reviewed the use of immunoaffinity in combination with mass
321
spectrometry for quantitating proteins in biological fluids.75 A study by Gbormittah et al. using
322
HPLC columns packed with anti-clusterin ligand immobilized agarose media for clusterin
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enrichment showed site-specific and glycan-specific changes in clear cell renal cell carcinoma.76
324
Immunoaffinity capture was performed on plasma samples from pre- and post-nephrectomy
325
patients. The enriched clusterin was treated with trypsin to analyze the glycopeptides.
326
Increased levels of biantennary, disialylated N-glycans with and without core fucose were
327
observed in post-nephrectomy patients. The results were further confirmed using lectin
328
blotting. Takahashi et al. isolated haptoglobin from the sera of a small number of cancer
329
patients individually with esophageal, gastric, colon, gallbladder, pancreatic, and prostate
330
cancer to determine the site-specific glycosylation associated with the cancer. In all cancers,
331
monofucosylated N-glycans were increased significantly in all glycosylation sites.77
332
Immunoaffinity is also commonly used to purify proteins for intact protein analysis. Transferrin
333
purified from plasma using anti-transferrin beads was employed to examine congenital
334
disorders of glycosylation.78 Though not specifically cancer, the method shows the utility of
335
native MS method to observe changes in protein glycosylation for diseases. Kim et al.
336
performed intact haptoglobin analysis to monitor N-glycan alteration in gastric cancer patients
337
and identified multiple markers with high diagnostic efficacy.79
338
Immunoaffinity enrichment is indeed an attractive method as it is highly specific for
339
targeted enrichment and readily scalable and automated for reproducible rapid throughput
340
analysis. It has been adapted to MALDI, MRM and other MS-based methods.80-81
341
A complimentary enrichment method employs lectins. Antibody enrichment typically
342
targets protein, while lectins enrich through affinity for specific glycan structure. Lectins are
343
non-antibody glycan binding proteins derived typically from microbes or plants. They generally
344
have weaker affinity with only moderate specificity. They are used alone or with other lectins to
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capture groups of proteins with corresponding glycan motifs. Lectin microarrays and lectin
346
magnetic bead arrays have also been used in combination with glycan release or glycopeptide
347
production coupled with mass spectrometry.
348
A single lectin enrichment approach was applied to protease digest of serum to examine
349
glycopeptides in pancreatic cancer. Maackia amerensis lectin II (MAL II) and Sambucus nigra
350
lectin (SNA) were used to enrich for sialylated N-glycopeptides obtained from proteins of
351
pancreatic cancer patients. Subsequent UPLC-MS analysis revealed 38 and 13 significantly
352
changed glycopeptides from acute pancreatis and pancreatic cancer, respectively.82 There are
353
limitations to this approach as it covers a subset of the glycome. Changes in non-sialylated
354
glycopeptides of some proteins such as IgG have been shown to accompany cancers,72 which
355
could be missed by this method.
356
Multi-lectin affinity chromatography (M-LAC) can be used to partition the
357
glycoproteome while enriching for several glycan motifs simultaneously. Combined with
358
depletion of abundant proteins, this method has been employed to simultaneously examine the
359
depleted proteome, enriched glycoproteome, and N-glycome.83-84 A similar approach was
360
employed for clear cell renal cell carcinoma, where a number of highly sialylated glycans, high
361
mannose glycans, and low-level proteins were upregulated in the M-LAC fractions of plasma
362
from cancer patients.85 Tandem affinity enrichment was used by Zhou et al. to identify
363
glycoproteins through the MS/MS of glycopeptides.86 In the differences between prostate
364
cancer cell types, they find increased fucosylated glycopeptides in the aggressive cell.
365
Lectin arrays have been previously used as a high-throughput stand-alone method for
366
observing, albeit indirectly, changes in glycosylation in cancer.87 Coupled with mass
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spectrometry via in-situ proteolysis, it provides more specific determination of proteins.88
368
Lectin magnetic beads present an alternative form of the spatial arrays. Beads with lectins were
369
used to pull out specific glycoproteins that can be probed using standard proteomic and
370
glycoproteomic approaches.89 Glycoproteome of tissues from patients with colon cancer has
371
been examined with this method.90 The method was also used to obtain markers in esaphagel
372
adenocarcinoma patients.91 Using a semi-automated pipeline employing 20 unique lectins, Shah
373
et al. obtained 246 lectin-protein candidates, with 45 showing significant differences between
374
the groups. A panel consisting of eight glycoforms produced an area under receiver operating
375
characteristic curve (AUROC) of 0.9425 corresponding to 95% specificity and 80% sensitivity.
376
The compliment method to lectins are glycan arrays.92 While these methods have not
377
yet been used for cancer biomarkers, they may have future applications in detecting aberrant
378
glycosylation in cancer.91
379 380
4. Glycoproteomic analysis for cancer
381
Glycoproteomic analysis of cancer combines both the glycan changes associated with
382
cancer and the protein expression yielding potentially higher disease specificity. Glycoprotein
383
cancer biomarkers are not new, with nearly all protein markers for cancer including CA-125 for
384
ovarian, PSA for prostate, and HER2 for breast being just the most notable examples. While
385
some of these markers are widely used, they may also be associated with inflammation and do
386
not provide the necessary specificity for the cancer. However, glycosylation on proteins such as
387
CA-12593 and PSA94 exhibit glycan differentiation in a cancer-specific manner for the respective
388
diseases.
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389
Glycoproteomic analysis of cancer is challenging in much of the same way as biomarker
390
studies using only proteomic methods, but compounded further by the added complexity
391
associated with glycosylation. The complexity of protein glycosylation due to the varying
392
number of sites and the glycan heterogeneity associated with each site complicate the
393
analytical determination but provide opportunity for observing small and unique biological
394
changes. There are at least two potential methods for incorporating comprehensive glycan and
395
protein information simultaneously into cancer biomarkers. A non-targeted approach employs
396
proteomic methods adapted for glycosylation. Glycoproteomic methods generally provide
397
broad coverage of the different sites but limited depth in the structural heterogeneity of the
398
glycan. A more targeted approach involves a smaller number of proteins with more extensive
399
site-specific glycan heterogeneity. Characterizing the protein and glycan heterogeneity
400
simultaneously creates a considerable challenge that is slowly being addressed, however there
401
have been notable advancements.
402 403
4.1. Non-targeted glycoproteomic method
404
Non-targeted glycoproteomic approach to cancer is relatively new but is recently
405
enabled by the availability of bioinformatic tools that directly address glycosylation (See below).
406
Biomarker discovery is limited to mainly cancer cell lines and small number of tissues. Shah et al
407
compared two prostate cancer cells, an androgen-dependent strain LNCaP and an androgen-
408
independent strain PC3.95 To quantitate the glycopeptides, isobaric tags for relative and
409
absolute quantitation (iTRAQ) was used in conjunction with 2D-LC-MS to discover glycopeptides
410
that differed for the two cell lines. Increased fucosylation was reported for PC3 relative to
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LNCaP. A subsequent cell line study comparing two ovarian cancer cell lines that are sensitive
412
and resistant to doxorubicin treatment, OVCAR8 and NCI/ADR-RES, respectively yielded several
413
N-glycosites that differed between the two cell lines.96 Glycosite occupancy was used to
414
determine changes in glycosylation between three benign lesions and three ovarian cancer
415
tissues97 and identified several glycoproteins that differed at specific glycosylation sites. The
416
glycoproteomic analysis of urine was performed to detect aggressive prostate cancer.98 Unique
417
glycosite containing peptides were found to correlate with Gleason scores of the cancer.
418 419
4.2. Targeted glycoproteomic method
420
Targeted glycoproteomic approaches typically involve the isolation of a single protein or
421
a small group of proteins. These studies are more prevalent because they can be applied to
422
large sample sets more readily. They typically involve a pre-enrichment step using either
423
antibody or lectin affinity methods such as those described above.
424
An alternative approach is to monitor several proteins simultaneously without prior
425
enrichment using multiple reaction monitoring (MRM) methods. MRM can target the
426
glycopeptides of specific proteins after digestion of complicated protein mixtures such as
427
serum. The ease of use and the high repeatability will increase the utility of this method in the
428
future.
429
The key to effective MRM is knowing the glycosite and the glycans associated with it, or
430
the resulting heterogeneous group of glycopeptides for the protein or group of proteins. A
431
procedure for extensive glycosite mapping of serum proteins has been reported by Hong et al.99
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432
Glycopeptide MRM requires knowing the fragmentation behavior of glycopeptides.
433
Glycopeptide fragmentation is complicated by the variation in the fragmentation aptitude of
434
the glycan and the peptide backbone. Studies have shown that fragmentation of the
435
glycopeptide under standard CID conditions (1-100 eV) generally produce glycan fragments as
436
the major products.100 The most common fragments with high intensities during CID of multiply
437
charged glycopeptides correspond to the glycan oxonium ions such as m/z 204.1 (HexNAc) and
438
366.1 (Hex1HexNAc1)99 (Figure 7). These fragments are present in nearly all glycopeptide CID
439
spectra regardless of glycan type. To obtain greater specificity, a key feature of glycopeptides in
440
reversed phase liquid chromatography is employed. The glycan part interacts poorly with the
441
C18 stationary phase so that the hydrophobicity of the peptide backbone is the determining
442
factor of the glycopeptide retention time. Shown in Figure 8 are the peptides and glycopeptides
443
for IgG, IgA, and IgM from serum.99 Note that all glycoforms of a specific peptide elute at nearly
444
the same retention times. This behavior means all the glycoforms of the glycopeptide can be
445
searched at a specific retention time range using dynamic MRM (dMRM). This method
446
increases the specificity of the glycopeptide assignments while significantly increasing the peak
447
capacity of the method.
448
Glycan abundances can be measured by directly monitoring the glycopeptides.
449
However, the glycopeptide abundance alone provides no indication of whether the protein
450
concentration or the abundance of a specific glycan at the site is changed. To elucidate the two
451
possibilities, Hong et al. normalized the glycopeptide abundances to the protein abundances,
452
thereby alleviating the lack of glycopeptide standards and removing the variation due to
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changes in protein expression.99 This method effectively decouples glycan changes from
454
variation of protein abundances.
455
Protein glycosylation not only occurs with glycan site heterogeneity but with the
456
degree of site occupancy. LC-MS based techniques have also improved methodologies for
457
quantification of site occupancy, where both labeling and label-free methods can be used.101
458
MRM is also used for absolute quantification of site occupancy. In this method, the
459
glycopeptide is deglycosylated with PNGase F converting the asparagine to aspartic acid. The
460
intensities of standard peptides containing asparagine or aspartic acid are used for absolute
461
quantification, while it needs to be kept in mind that aspartic acid can occur naturally in
462
potential glycosylation sites.23
463 464
5. Bioinformatics in glycomic and glycoproteomic analysis
465
Glycans are synthesized through non-template bioprocesses making the structures of
466
glycans and glycan-modified proteins both highly heterogeneous and diverse. Analyzing both
467
glycans and proteins in biological samples with mass spectrometry generates even more data
468
than standard proteomic methods. The combination of annotating glycan structures and
469
assigning glycosylation sites on proteins is significantly more challenging than the analysis of
470
unmodified peptides or peptides with only site-specific modifications such as oxidation and
471
phosphorylation.
472
There have been significant attempts to develop software that can identify the proteins
473
as well as the site heterogeneity and site occupancy. Bioinformatics software including a
474
commercial product Byonic102, and those developed in various laboratories including
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475
GlycoPeptide Finder (GP Finder)103, pGlyco104,105, and Integrated GlycoProteomeAnalyzer (I-
476
GPA)106 automate the annotation of glycopeptide structures from tandem MS data. Because
477
glycosylation is known to be differentially expressed between normal and cancer disease cells,
478
the proper software can provide comprehensive site-specific information for cancer biomarker
479
studies.107 Glycan annotation tools have also been developed for assigning oligosaccharide
480
structures from tandem MS data. They include GlycoMaid for automatic annotation of N-
481
glycans,108 a de novo sequencing software for N- and O-glycans by Kumozaki et al.,109 and GAG-
482
ID for glycosaminoglycans.110 These tools when automated and included in the workflow
483
increase the sample flow and make it possible to study large sample sizes.
484
Glycan databases are needed to work with informatic software to assign glycan
485
structures and site-specific heterogeneity. Databases for glycomic and glycoproteomic searches
486
have become more available. For glycoproteomic analyses, databases such as Unipep and
487
dbOGAP provide glycosylation sites with corresponding glycans.111 Available glycan databases
488
include Carbohydrate Structure Database,112 UniCorn,113 and GlyTouCan.114 Most glycan
489
databases however contain mainly putative glycan structures.
490 491
6. Glycosphingolipids as cancer markers
492
Glycosphingolipids (GSLs) are a class of glycolipid where the glycan moiety is bonded to
493
a ceramide, a lipid composed of a sphingoid base and a fatty acid. GSLs are found in the cell
494
membrane of all animals, and their compositions are known to be tissue- and species-specific.
495
Aberrant glycosylation in these lipid-bound oligosaccharides has long been recognized as a
496
hallmark of cancer. GSLs have shown changes in their composition in human and animal
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tumors. These changes arise from dysregulation of their synthetic and catabolic pathways,
498
which are mediated by glycosyltransferases and glycosidases. They can exhibit either
499
incomplete synthesis, which may lead to precursor accumulation, or neosynthesis of GSLs that
500
are not expressed in healthy cells.115 The altered glycosphingolipidome can affect cellular
501
processes such as signaling, growth, adhesion, and differentiation, among others.116 For a more
502
comprehensive and recent perspective on the roles of glycosylation in cancer, the reader is
503
referred to the review by Pinho and Reis.117 Figure 9 shows the schematic representations of
504
root structures of GSLs found in mammalian systems, and the structures of some important
505
GSLs that will be mentioned in the following paragraphs.
506
GSL glycan epitopes already have clinical applications. A widely used marker is the sialyl-
507
Lewis A antigen (also known as CA 19-9), which is present in O-glycans and glycolipds in the sera
508
of gastrointestinal cancer patients.118 However, this field will benefit from further studies using
509
the sensitivity of mass spectrometry-based methods. Candidates for biomarker studies include
510
the GSL globotriaosylceramide (Gb3Cer), which has been correlated with increased cell
511
invasiveness in colorectal cancer.119 Small cell lung cancer also showed increased levels of
512
disialylated gangliosides GD2 and GD1b, and tri-sialylated GT1b.120 Breast cancer cells were
513
found to have increased levels of gangliosides overall. They also expressed GSLs not usually
514
found in healthy tissue, such as O-acetyl-GD3 and O-acetyl-GT3, as well as N-glycolyl-GM3,
515
which is rarely found in human tissue.121 Increased levels of GM3 and GD3 were also found in
516
brain tumors.122,123
517
Tumor onset and progression are also influenced by aberrant expression of gangliosides.
518
Breast cancer stem cells have been found to express stage-specific embryonic antigen-3 (SSEA-
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519
3, also known as Gb5Cer), as well as two other closely related globo-series epitopes, SSEA-4 and
520
globo-H.124 In melanoma, increased levels of disialylated gangliosides, GD3 and GD2, enhance
521
the malignancy of cancer cells.125
522
The varied roles that GSLs play are reflected in the structural diversity of both their
523
glycan headgroups and their ceramide tails. Of the glycan headgroups alone, about 450
524
different structures are possible based on what is currently known about GSL biosynthesis, and
525
about half of these have already been reported.126 These numbers are compounded further by
526
dozens of possible ceramide structures which can vary by lipid chain length, degree of
527
unsaturation, and number of hydroxyl groups, leading to tens of thousands of possible GSL
528
structures. As such, analysis and profiling of GSLs will often require multiple approaches for
529
more complete structural elucidation and quantitation. Early methods employed thin layer
530
chromatography (TLC) to separate the GSLs, followed by an immunoassay with lectins and
531
antibodies that bind to specific glycan epitopes for detection and quantitation.127 However, this
532
method is limited to identification of glycan structures for which there are known lectins.
533
Limited sensitivity and specificity of immunoassay techniques can also lead to difficulty in
534
detecting low-level compounds. Furthermore, the signal can be affected by accessibility of the
535
glycan epitope to the antibody.
536
Mass spectrometry-based methods provide comprehensive detection of GSLs and
537
significantly increased sensitivity, both of which are advantageous for discovering new
538
biomarkers. Tandem MS methods can further provide structural information, such as the
539
sequence and connectivity of the glycan and lipid characteristics of the ceramide. However, MS-
540
based analysis can be complicated by the presence of isomeric and isobaric GSLs, and tandem
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541
MS data cannot reveal the monosaccharide epimer nor the type of linkages between them.
542
Furthermore, one must be aware of possible glycan rearrangements when interpreting tandem
543
MS data.128 Complete structural analysis of intact GSLs would require complementary methods
544
such as enzymatic degradation.129 Often, prior studies on similar samples and knowledge on
545
GSL biosynthetic pathways can supplement MS results and allow researchers to make
546
reasonable inferences about GSL structures. Broader trends, such as changes in the level of
547
certain GSLs or the degree of fucosylation and sialylation, can also be effectively monitored
548
with MS-based methods without the need for more laborious structural elucidation.
549
GSLs are usually isolated from biological samples through Folch extraction.130 Efforts to
550
avoid chloroform during the lipid extraction process have led to the development of less
551
hazardous solvent systems such as the BuMe method.131 The extracted GSLs can then be
552
subjected to further preparation steps depending on the information desired. When data on
553
both the glycan and the lipid are required, intact GSLs can be analyzed through a variety of
554
methods; the most common ones include reversed phase HPLC-ESI-MS and MALDI-MS. One
555
quick and convenient method is to use TLC in conjunction with MALDI-MS.132 This has the
556
advantage of requiring less sample preparation and cleanup, yet still having the high sensitivity
557
of MALDI-MS. More recently, MALDI coupled with Orbitrap MS has opened new possibilities in
558
localized profiling and imaging of normal and tumor tissues. With this method, Jirasko et al.
559
have reported on novel sulfo-GSL structures in human renal cell cancer.133 In a study performed
560
by Zamfir et al, a microfluidic device coupled to an ESI-Orbitrap MS was used to profile
561
gangliosides in human astrocytoma from a single male patient.134 GSL structures were
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562
determined through multistage CID fragmentation; 37, 40, and 56 gangliosides were found in
563
the astrocytes, its surrounding tissue, and normal brain tissue respectively.
564
An approach to studying the glycan heterogeneity is to cleave off the glycan from the
565
ceramide with endoglycoceramidases (EGCase). This allows improved chromatographic
566
separation of the glycans on a HILIC or PGC column with deeper structural analysis, albeit at the
567
expense of information about the lipid. Holst et al. used this approach to analyze the GSL-
568
derived glycans from colorectal cancer tissues of 13 patients, and reported on correlations
569
between tumor progression and increased fucosylation, decreased sulfation and acetylation,
570
and reduced expression of globo-GSLs and disialylated gangliosides.135 Albrecht et al. have
571
recently outlined a method that uses the novel EGCase I from Rhodococcus triatomea.136 This
572
broad-specificity EGCase can effectively cleave most GSLs, including globo-series GSLs and
573
galactosylceramides that other known EGCases are unable to digest.
574
Researchers have been probing protein-carbohydrate interactions for biomarker
575
discovery with novel MS methods. Complexes formed with gangliosides and the B subunit of
576
cholera toxin (CTB) were studied with nano-ESI multistage MS by Capitan et al., and their
577
specific noncovalent interactions were revealed by multistage CID and ETD fragmentation.137
578
An intriguing new technique for analyzing protein-GSL interactions is catch-and-release
579
electrospray ionization-mass spectrometry (CaR-ESI-MS). The method was developed by Li et al.
580
and involves the assembly of picodiscs of proteins, lipids, and GSLs in vitro. It further allows
581
GSLs to be solubilized effectively in an aqueous environment.138 Proteins can then be
582
introduced, and those that interact with the GSLs are captured by the picodiscs. The picodisc-
583
bound protein complexes are then analyzed with a quadrupole-ion mobility separation-time-of-
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584
flight (Q-IMS-TOF) MS equipped with ESI. Mild CID conditions in the quadrupole can cause the
585
detachment of the protein-GSL complex.
586
Advances in gene editing such as CRISPR-Cas9 have also provided new avenues for
587
investigating the role of specific glycosyltransferases and glycosidases in tumor progression. A
588
recent study by Alam et al. explored the effect of knocking out a key glycosyltransferase in the
589
biosynthesis of lacto- and neolacto- series GSLs in several ovarian cancer cell lines, and found
590
that it affected not only the biosynthesis of GSLs but also the α(2-6) sialylation on N-
591
glycoproteins.139
592
An interesting avenue to explore is the role of exosomes in cancer progression.
593
Exosomes are small vesicles released by cells to their extracellular milieu.140 Their composition
594
is dependent on the cell type from which they are released, and they can contain proteins and
595
other biomolecules, including GSLs. Exosomes can be released by most tissues, but some
596
tumors are known to release more exosomes and may exhibit changes in their composition,
597
and these changes can have immunomodulatory effects that prevent the destruction of the
598
tumors by the immune system.141 In a study by Llorente and Sandvig, lipid structures in
599
exosomes released by PC-3 prostate cancer cells were analyzed by hybrid triple quadrupole-
600
linear ion trap MS.142 Exosomes were found to be enriched in certain classes of lipids, including
601
GSLs, compared to their parent cells. Exosomal proteins and peptides have already been viewed
602
as potential biomarkers for cancer and other diseases; more studies are currently underway to
603
explore how exosomal lipid analysis can assist in forming a more conclusive set of data for
604
detecting diseases.143
605
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Analytical Chemistry
7. Emerging glycan markers
607
The methods and techniques for glycomic and glycoproteomic analyses of complicated
608
biological samples continue to be improved, however the performance in at least glycomic
609
profiling appears robust and sufficient for performing large samples sets. High-throughput
610
methods for released N- or O-glycan analysis employing MALDI-MS or LC-MS techniques in
611
combination with derivatization and enrichment protocols have been developed and applied to
612
different types of biological samples. With the robustness of these methods, glycan markers
613
have been discovered in various types of cancers, such as high mannose in breast cancer,144
614
truncated serum glycoforms in multiple cancer types.145
615
There are some general trends emerging from the current set of studies. Table 1 is a
616
summary of cancer biomarker discovery studies involving glycans and glycoproteins in the
617
review period. Increased levels of fucosylation, especially core fucosylation, appear to correlate
618
with many types of cancers including esophageal, gastric, colon, gallbladder, pancreatic, liver,
619
ovarian and breast cancer. Similar observations were reported for multi-fucosylated N-glycans
620
with antenna fucosylation. Another type of glycan biomarker for cancer is the truncated N-
621
glycans. Increased levels of truncated non-galactosylated N-glycans existing mainly on IgG in
622
serum have been reported for lung, gastric, and ovarian cancer. Truncated bisecting glycans in
623
tissues were also elevated for ovarian cancer along with amplified expression of the
624
glycosyltransferase GnT-III for bisecting GlcNAc.
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Other possible glycan markers include high-mannose, hybrid-type N-glycans, sialylated
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N- or O-glycans, and O-glycans with different core structures. High-mannose and hybrid-type N-
627
glycans are less-processed compared to complex-type. Although high mannose glycans have
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long been recognized as potential markers for cancer, upregulation appears to be dependent
629
on the cancer type. In recent studies, high mannose has been shown to significantly increase in
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colorectal cancer tissues and clear cell renal cell carcinoma plasma, while decrease in ovarian
631
cancer serum in several independent studies. Alteration of sialylation is less consistent among
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studies because it is often structure- and protein-specific. For example, a study by Kaprio et al.
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showed that the total abundance of sialylated N-glycans was increased from rectal adenoma to
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carcinoma.146 But detailed glycan profiling showed that the increase was only significant for six
635
glycans, while certain sialylated glycans were actually decreased. O-Glycan cancer markers are
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less studied compared to N-glycans. In a gastric cancer study, He et al. showed that the
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expression levels of several extended core2 O-glycans including Hex5HexNAc3 and Hex3HexNAc3
638
were significantly increased in the patients.147
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For identifying protein specific glycan markers, the most widely used strategy is to
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isolate glycoprotein of interest using antibody and analyze the purified protein using glycomic
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or glycoproteomic approaches. This strategy has recently been applied to identify protein
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specific markers for several cancers, such as α(1-3) fucosylated glycans on alpha-1-acid
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glycoprotein in pancreatic cancer,148 monofucosylated N-glycans at all sites and difucosylated
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N-glycans at sites N184, N207 and N241 of haptoglobin in five types of operable
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gastroenterological cancer.149 Although immunoaffinity enrichment can efficiently isolate
646
specific glycoproteins, the limited number of available antibodies has generally restricted the
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types of proteins that can be targeted. For more global analysis of protein specific markers,
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glycoproteomic approaches are needed. A common approach involving quantitative analysis of
649
deglycosylated glycopeptides enriched by lectins have been used to study aberrant changes of
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core-fucosylation in hepatocellular carcinoma150 and pancreatic cancer.151 Upregulation of core-
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fucosylated glycopeptides from certain glycoproteins were observed, such as fibronectin for
652
hepatocellular carcinoma and macrophage mannose receptor 1 for pancreatic cancer.
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Site-specific glycan marker discovery for cancer is more challenging due to the lack of
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high-throughput sample preparation methods and data processing software for simultaneous
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identification and quantitation of intact glycopeptides in complicated biological samples. MRM
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has been regarded as the gold standard methodology for this purpose and applied to the
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quantitation of immunoglobulin glycopeptides in cancer with high speed, sensitivity and
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repeatability. Decrease in galactosylation on several subclasses of IgG, and biantennary glycans
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with bisecting GlcNAc on site N205 of IgA2, as well as increase in biantennary mono- or
660
disialylated glycans on site N209 of IgM have been identified and validated for ovarian cancer.
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Untargeted approaches have also been used for glycopeptide biomarker studies, but either
662
with very small number of samples or concentrating only on a few proteins. A study by Tanabe
663
et al. profiled lectin-enriched fucosylated glycoproteins in hepatocellular carcinoma serum.152
664
They analyzed the data using an in-house software and found elevated levels of alpha-1-acid
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glycoprotein with multifucosylated tetraantennary N-glycans in patients.
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Methods for the analysis of intact glycoproteins are also emerging for discovery of
667
specific cancer biomarkers involving proteins with aberrant glycosylation. A recent example is a
668
gastric cancer study on intact haptoglobin, where novel glycosylated intensity and frequency
669
markers
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Hex22HexNAc18Fuc2NeuAc10 exhibited AUC of 0.93.
were
discovered.79
The
best
predictive
marker
corresponding
to
671
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8. Future outlook
673
Glycan biomarkers are emerging and will soon fulfill the initial promise for sensitive and
674
specific diagnosis of cancer. The consistency of distinct compounds and classes of compounds
675
between separate and independent studies point to the robustness of the methods, even when
676
different methods are used. Research in this area will continue to grow toward higher
677
throughput glycomic profiles that can be obtained consistently with high reproducibility. Future
678
studies should further focus on large clinical studies to obtain precise markers with high
679
accuracy. The glycomic studies using known chemical structures could further identify the
680
enzymes that alter glycosylation providing potential targets for therapeutic intervention.
681
Glycoproteins and site-specific glycan markers will continue to develop. Glycoproteomic
682
analysis will improve in accuracy as the software tools are further developed for simultaneous
683
quantitation of protein and site-specific glycosylation. Further refinements in this area will
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include the utility of data independent acquisition (DIA) of glycopeptides, which is now just
685
being explored to analyze glycoproteins.153,154 Included in this effort will be the area of native
686
glycoprotein analysis.
687
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Biographies
689
Muchena J. Kailemia completed his bachelor of science in education (B.Sc.Ed) degree at
690
Maseno University, Kenya. After receiving his M.S. degree in analytical chemistry from East
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Tennessee State University in 2009, he entered the graduate program in Chemistry at the
692
University of Georgia, where he completed his Ph.D. research in the laboratory of Dr. Jonathan
693
Amster. His research focuses on developing mass spectrometry methods for the
694
characterization of glycosaminoglycans and glycoproteins.
695
Gege Xu studied chemistry at Peking University in China, where she received her B.S. degree in
696
2013. She is currently completing her Ph.D research at the University of California, Davis under
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the supervision of Dr. Carlito B. Lebrilla. Her studies focus on developing qualitative and
698
quantitative methods for the analysis of dietary saccharides, and cell surface glycans and
699
glycoproteins using LC-MS/MS.
700
Maurice Y. Wong obtained his B.S. degree in Chemistry and Materials Science and Engineering
701
from Ateneo de Manila University, Philippines. He worked for the National Reference
702
Laboratory of the Department of Health in the Philippines before entering the graduate
703
program of the University of California, Davis. He is currently performing his Ph.D. research
704
under the supervision of Dr. Carlito B. Lebrilla, with a focus on glycan analysis using mass
705
spectrometry.
706
Qiongyu Li graduated from Hong Kong Polytechnic University in 2014 with a B.S. in chemical
707
technology. Currently, she is a Ph.D. candidate at the University of California, Davis, where her
708
research focuses on the analysis of glycoproteins for biomarker discovery and the method
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709
development of click chemistry involved mass spectrometry for studying the role of membrane
710
glycosylation in cell-cell interaction.
711
Elisha Goonatilleke received her B.S. in 2013 and continued with her Ph.D. at the University of
712
California, Davis. Currently, she is a graduate student in the group of Dr. Carlito B. Lebrilla. Her
713
field of study is in analytical chemistry with an emphasis on mass spectrometry. She focuses on
714
the identification, characterization, and quantification of glycoproteins and oligosaccharides in
715
human milk.
716
Frank Leon was born in San Clemente, California. He received his B.S. in molecular and cellular
717
biology from the University of California, Santa Cruz in 2014. After graduating, he worked for
718
biotech industry and clinical diagnostic companies in the San Francisco bay area, and southern
719
California. He entered the Biochemistry, Molecular, Cellular and Developmental Biology
720
graduate program at the University of California, Davis in 2016. His research interests include
721
surveying the biological roles of glycosylation in disease and cancer.
722
Carlito B. Lebrilla completed his B.S. from University of California, Irvine, and his Ph.D. from
723
University of California, Berkeley. He was a NATO-NSF and an Alexander von Humboldt
724
postdoctoral fellow with Prof. Helmut Schwarz at the Technical University in Berlin. He was also
725
a UC President’s postdoctoral fellow at the University of California, Irvine. He has been on the
726
faculty at UC Davis since 1987 and is currently a Distinguished Professor in the Chemistry
727
Department and in Biochemistry and Molecular Medicine. He is on the editorial board of
728
several mass spectrometry journals. His research focus is on bioanalytical chemistry with
729
emphasis on oligosaccharides and glycoconjugates.
730
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ACKNOWLEDGMENTS
732 733
Funding provided by the National Institutes of Health (grant R01GM049077) is gratefully acknowledged.
734 735
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Table 1. Summary of recent glycan biomarker studies for cancer Cancer
Specimen
No. of * samples
Enrichment method
Analytical method
Kidney
Plasma
20/20 pooled
G, P, GP
12P depletion, M-LAC
LC-MS
85
Ovarian
Serum
100/147
G
PGC SPE
LC-MS
155
Pancreatic
Serum
16/10
GP (sialylated)
Albumin depletion, LAC
LC-MS
82
Liver
Plasma
40/41
P
N/A
LC-MRM
156
↓ Vitronectin and AGP
Pancreatic
Serum
30/37 pooled
De-GP
14P depletion LAC
LC-MS
157
(fucosylated)
• 19 proteins differentially expressed in cancer.
Liver
Tissue
16/16
G
N/A
MALDIIMS
Ovarian
Tissue
3/3
Lectin
LC-MS
145
Pancreatic
Serum
4/6
Immunoaffinity
LC-MS
158
Liver
Tissue
3
G
N/A
MALDIIMS
Liver
Serum
26/26
De-GP
Lectin
LC-MS
150
Ovarian
Plasma
82/82
G
PGC SPE
LC-MS
159
Colorectal
Tissue
5/18
G
C18, PGC SPE
MALDIMS
Pancreatic
Serum
13/20
Immunoaffinity
LC-MS
160
Pancreatic
Serum
13/13
De-GP
Lectin
LC-MS
151
Colon
Tissue
2
G
N/A
MALDIIMS
Ovarian
Cell
1
P
Biotin affinity
LC-MS
Colorectal
Serum
20/42
G
N/A
MALDIMS
G, de-GP
Immunoaffinity Sepharose 4B
Gastric Colon Prostate etc.
Serum
5/5-26
Targets
**
G and P (bisecting)
G (human AGP)
G, P (sialyl-LeX)
(haptoglobin)
LC-MS
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45
47
146
42
161
55
149
Outcome ↑ Highly sialylated and high mannose glycans ↓ High mannose, hybrid, galactosylated biantennary glycans ↑ Fucosylation of fetuin A, AGP, and transferrin ↓ Sialylation
↑Tetra-antennary ↓ Man8 ↑ GnT-III and truncated bisecting glycans ↑ Fucosylated glycans ↑ Core-fucosylation, Hex7HexNAc6 ↑ Core-fucosylation of fibronectin • Seven N-glycans correlated with ovarian cancer stage ↑ Monoantennary, sialylated&fucosylated and small high-mannose N-glycan ↑ Sialyl-Lewis X epitopes on ceruloplasmin • Eight core-fucosylated peptides exhibited significant difference ↑ High mannose in various tumor regions, sialylated glycans in different regions • 589 differentially expressed glycoproteins upon GALNT3 knockdown ↑ Fucosylated tri- and tetraantennary glycans ↑ Monofucosylated Nglycans at all sites and difucosylated at sites N184, N207 and N241
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1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20 21 22 23 24 25 26 27 28 29 30 31 32 33 34 35 36 37 38 39 40 41 42 43 44 45 46 47 48 49 50 51 52 53 54 55 56 57 58 59 60
Prostate
Urine, serum
Urine: 40 Serum: 48/119 pooled
Liver
Serum
27/42
Ovarian
Ascites fluid
5
Breast
Serum
43/91
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Hydrazide beads, HPLC fractionation
LC-MS
98
LAC
LC-MS
152
G, P, GP
PGC SPE, lectins affinity
LC-MS
162
G
PGC SPE
LC-MS
163
De-GP
GP (fucosylated)
↑ Aggressive prostate cancer associated glycoproteins in patients’ urine than serum samples ↑ Multifucosylated tetraantennary glycans on AGP • Large, highly fucosylated and sialylated complex and hybrid glycans, and unusual glycopeptides identified ↑ Difucosylated N-glycans ↑ Biantennary mono- or disialylated glycans on IgM site N209 ↓ Galactosylation on IgG, and biantennary glycans with bisecting GlcNAc on IgA2 site N205
Ovarian
Serum
84/84
GP (Igs)
N/A
LC-MRM
72
Gastric
Serum
144/157
O-glycome
PGC SPE
LC-MS
147
↑ Large Core2 O-glycans
Pancreatic
Serum
6/19
G, protein (AGP)
Immunoaffinity
LC-MS CZE-UV
148
↑ α(1-3) fucosylation of AGP
Liver, colorectal
Serum
10/10
Gastric
Serum
44/44
GP
Protein (haptoglobin)
Albumin depletion
LC-MS MRM
Immunoaffinity
LC-MS
MALDIMS
164
79
Gastric
Serum
40/163
G
Sepharose beads
Liver
Saliva
50/60
G
Sepharose 4B
MALDIMS
Prostate
Tissue
8/8
P (sialylated)
Biotin affinity
LC-MS
167
Liver
Serum
40/40 pooled
LC-MS
168
Ovarian
Serum, ascetic fluid
20/18
De-GP (β1,6-GlcNAc)
G
LAC
C18, PGC SPE
MALDIMS
165
166
169
↑ Fucosylated N- and disialylated O-glycopeptides of hemopexin in HCC patients previously diagnosed with HCV • N-glycan variation of serum haptoglobin associated with patients with gastric cancer ↑ Hybrid and tri-, tetraantennnary glycans; ↓ Monoantennary, bisecting type and core fucose ↑ Fucosylated ↓ Sialylated • Detection of 21 unique proteins in cancer tissues • Altered N-glycosite occupancy for 11 proteins with β(1,6) GlcNAc branching N-glycans ↑ Branching, sialylation and antennary fucosylation ↓ High mannose, bisecting GlcNAc in ascetic fluid than serum
1043 1044
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FIGURE CAPTIONS Figure 1. Representation of the glycosylation pathway of proteins. The pathway illustrates the complexity and heterogeneity of structures. The proteins may exit the pathway with various levels of glycosylation. Figure 2. Workflow scheme of glycan analysis in protein: Released glycan analysis by LC-MS and glycopeptide analysis by LC-MS/MS Figure 3. Strategies for glycan release from glycoproteins and glycosphingolipids: oxidative release of natural glycans (ORNG) vs. traditional glycomics methods. Reprinted by permission from Macmillan Publishers Ltd: Nature Methods, Song, X.; Ju, H.; Lasanajak, Y.; Kudelka, M. R.; Smith, D. F.; Cummings, R. D., Nat. Meth. 2016, 13 (6), 528-534 (ref #27). Copyright 2016. Figure 4. MALDI-MS imaging of glycans on a liver tissue microarray with tumor (T) and normal (N) tissue cores from 16 hepatocellular carcinoma patients. The map corresponds to putative glycan structures (inset). Reprinted from Powers, T.; Holst, S.; Wuhrer, M.; Mehta, A.; Drake, R. Biomolecules 2015, 5 (4), 2554 (ref 42). Under Creative Commons license (CC BY 4.0) (http://creativecommons.org/licenses/by/4.0/). Figure 5. N-Glycan profile with LC-MS from a sample containing cell membranes combined from three cell lines including Caco-2, HT-29, HCC1954. Over 800 compounds are observed in a single the LC-MS run. Figure 6. N-Glycan profile of serum glycans with LC- QTOF MS. Peaks are numbered according to their abundances and correspond to individual annotated structures. Reprinted from Song, T.; Aldredge, D.; Lebrilla, C. B. Anal. Chem. 2015, 87, 7754-7762 (ref 32). Copyright 2015 American Chemical Society. Figure 7. Tandem MS of glycopeptides: (a) neutral glycopeptides, (b) sialylated glycopeptides, and (c) high mannose glycopeptides. Reprinted from Hong, Q.; Ruhaak, L. R.; Stroble, C.; Parker, E.; Huang, J.; Maverakis, E.; Lebrilla, C. B. J Proteome Res. 2015, 14 (12), 5179-92 (ref 99). Copyright 2015 American Chemical Society. Figure 8. MRM of peptides and glycopeptides of immunoglobulins in serum. The spectra were extracted from a single LC-MS run with a total time of 10 minutes. Reprinted from Hong, Q.; Ruhaak, L. R.; Stroble, C.; Parker, E.; Huang, J.; Maverakis, E.; Lebrilla, C. B. J Proteome Res. 2015, 14 (12), 5179-92 (ref 99). Copyright 2015 American Chemical Society. Figure 9. Schematic representation of glycosphingolipid (GSL) root structures found in mammalian systems, and structures of some GSLs of interest discussed in the text.
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