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Size-Exclusion Chromatography as a Technique for the Investigation of Novel Extracellular Vesicles in Cancer.


ABSTRACT: Cancer cells release extracellular vesicles, which are a rich target for biomarker discovery and provide a promising mechanism for liquid biopsy. Size-exclusion chromatography (SEC) is an increasingly popular technique, which has been rediscovered for the purposes of extracellular vesicle (EV) isolation and purification from diverse biofluids. A systematic review was undertaken to identify all papers that described size exclusion as their primary EV isolation method in cancer research. In all, 37 papers were identified and discussed, which showcases the breadth of applications in which EVs can be utilised, from proteomics, to RNA, and through to functionality. A range of different methods are highlighted, with Sepharose-based techniques predominating. EVs isolated using SEC are able to identify cancer cells, highlight active pathways in tumourigenesis, clinically distinguish cohorts, and remain functionally active for further experiments.

SUBMITTER: Liu DSK 

PROVIDER: S-EPMC7693800 | biostudies-literature | 2020 Oct

REPOSITORIES: biostudies-literature

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Size-Exclusion Chromatography as a Technique for the Investigation of Novel Extracellular Vesicles in Cancer.

Liu Daniel S K DSK   Upton Flora M FM   Rees Eleanor E   Limb Christopher C   Jiao Long R LR   Krell Jonathan J   Frampton Adam E AE  

Cancers 20201027 11


Cancer cells release extracellular vesicles, which are a rich target for biomarker discovery and provide a promising mechanism for liquid biopsy. Size-exclusion chromatography (SEC) is an increasingly popular technique, which has been rediscovered for the purposes of extracellular vesicle (EV) isolation and purification from diverse biofluids. A systematic review was undertaken to identify all papers that described size exclusion as their primary EV isolation method in cancer research. In all, 3  ...[more]

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2020-05-14 | GSE150460 | GEO