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High-Throughput Analysis and Automation for Glycomics Studies

This review covers advances in analytical technologies for high-throughput (HTP) glycomics. Our focus is on structural studies of glycoprotein glycosylation to support biopharmaceutical realization and the discovery of glycan biomarkers for human disease. For biopharmaceuticals, there is increasing...

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Detalles Bibliográficos
Autores principales: Shubhakar, Archana, Reiding, Karli R., Gardner, Richard A., Spencer, Daniel I. R., Fernandes, Daryl L., Wuhrer, Manfred
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Springer Berlin Heidelberg 2014
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4363487/
https://www.ncbi.nlm.nih.gov/pubmed/25814696
http://dx.doi.org/10.1007/s10337-014-2803-9
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author Shubhakar, Archana
Reiding, Karli R.
Gardner, Richard A.
Spencer, Daniel I. R.
Fernandes, Daryl L.
Wuhrer, Manfred
author_facet Shubhakar, Archana
Reiding, Karli R.
Gardner, Richard A.
Spencer, Daniel I. R.
Fernandes, Daryl L.
Wuhrer, Manfred
author_sort Shubhakar, Archana
collection PubMed
description This review covers advances in analytical technologies for high-throughput (HTP) glycomics. Our focus is on structural studies of glycoprotein glycosylation to support biopharmaceutical realization and the discovery of glycan biomarkers for human disease. For biopharmaceuticals, there is increasing use of glycomics in Quality by Design studies to help optimize glycan profiles of drugs with a view to improving their clinical performance. Glycomics is also used in comparability studies to ensure consistency of glycosylation both throughout product development and between biosimilars and innovator drugs. In clinical studies there is as well an expanding interest in the use of glycomics—for example in Genome Wide Association Studies—to follow changes in glycosylation patterns of biological tissues and fluids with the progress of certain diseases. These include cancers, neurodegenerative disorders and inflammatory conditions. Despite rising activity in this field, there are significant challenges in performing large scale glycomics studies. The requirement is accurate identification and quantitation of individual glycan structures. However, glycoconjugate samples are often very complex and heterogeneous and contain many diverse branched glycan structures. In this article we cover HTP sample preparation and derivatization methods, sample purification, robotization, optimized glycan profiling by UHPLC, MS and multiplexed CE, as well as hyphenated techniques and automated data analysis tools. Throughout, we summarize the advantages and challenges with each of these technologies. The issues considered include reliability of the methods for glycan identification and quantitation, sample throughput, labor intensity, and affordability for large sample numbers.
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spelling pubmed-43634872015-03-24 High-Throughput Analysis and Automation for Glycomics Studies Shubhakar, Archana Reiding, Karli R. Gardner, Richard A. Spencer, Daniel I. R. Fernandes, Daryl L. Wuhrer, Manfred Chromatographia Review This review covers advances in analytical technologies for high-throughput (HTP) glycomics. Our focus is on structural studies of glycoprotein glycosylation to support biopharmaceutical realization and the discovery of glycan biomarkers for human disease. For biopharmaceuticals, there is increasing use of glycomics in Quality by Design studies to help optimize glycan profiles of drugs with a view to improving their clinical performance. Glycomics is also used in comparability studies to ensure consistency of glycosylation both throughout product development and between biosimilars and innovator drugs. In clinical studies there is as well an expanding interest in the use of glycomics—for example in Genome Wide Association Studies—to follow changes in glycosylation patterns of biological tissues and fluids with the progress of certain diseases. These include cancers, neurodegenerative disorders and inflammatory conditions. Despite rising activity in this field, there are significant challenges in performing large scale glycomics studies. The requirement is accurate identification and quantitation of individual glycan structures. However, glycoconjugate samples are often very complex and heterogeneous and contain many diverse branched glycan structures. In this article we cover HTP sample preparation and derivatization methods, sample purification, robotization, optimized glycan profiling by UHPLC, MS and multiplexed CE, as well as hyphenated techniques and automated data analysis tools. Throughout, we summarize the advantages and challenges with each of these technologies. The issues considered include reliability of the methods for glycan identification and quantitation, sample throughput, labor intensity, and affordability for large sample numbers. Springer Berlin Heidelberg 2014-11-16 2015 /pmc/articles/PMC4363487/ /pubmed/25814696 http://dx.doi.org/10.1007/s10337-014-2803-9 Text en © Springer-Verlag Berlin Heidelberg 2014
spellingShingle Review
Shubhakar, Archana
Reiding, Karli R.
Gardner, Richard A.
Spencer, Daniel I. R.
Fernandes, Daryl L.
Wuhrer, Manfred
High-Throughput Analysis and Automation for Glycomics Studies
title High-Throughput Analysis and Automation for Glycomics Studies
title_full High-Throughput Analysis and Automation for Glycomics Studies
title_fullStr High-Throughput Analysis and Automation for Glycomics Studies
title_full_unstemmed High-Throughput Analysis and Automation for Glycomics Studies
title_short High-Throughput Analysis and Automation for Glycomics Studies
title_sort high-throughput analysis and automation for glycomics studies
topic Review
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4363487/
https://www.ncbi.nlm.nih.gov/pubmed/25814696
http://dx.doi.org/10.1007/s10337-014-2803-9
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