Highly Efficient Exosome Isolation and Protein Analysis by Integrated Nanomaterial-based Platform.

ANALYTICAL CHEMISTRY(2018)

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摘要
Exosomes play important roles in mediating intercellular communication and regulating a variety of biological processes, but clear understanding of their functions and biogenesis has not been achieved, due to the high technical difficulties involved in analysis of small vesicular structures that contain a high proportion of membrane structures. Herein, we designed a novel approach to integrate two nanomaterials carrying varied surface properties, the hydrophilic, macroporous graphene foam (GF) and the amphiphilic periodic mesoporous organosilica (PMO), for efficient exosome isolation from human serum and effective protein profiling. The high specific surface area of GF, after modification with the antibody against the exosomal protein marker, CD63, allowed highly specific isolation of exosomes from complex biological samples with high recovery. Since the organic solvent, methanol, turned out to be the most effective lysis solution for releasing the exosomal proteins, the amphiphilic PMO was employed to rapidly recover the exosomal proteins, including the highly hydrophobic membrane proteins. The fine pores of PMO also acted as the nanoreactors to accelerate protein digestion that produced peptides subject to liquid chromatography-tandem mass spectrometry (LC-MS/MS) analysis. A total of 334 proteins with 111 membrane proteins [31% of these contained >2 transmembrane domains (TMD)] were identified using the integrated GF/PMO platform. In contrast, with the commercial exosome isolation kit and the in-solution protein digestion method, only 151 proteins were found, with 28 being membrane proteins (only one contained three TMDs). Our results support that the integrated GF/PMO platform is of great value to facilitate the comprehensive characterization of exosomal proteins for better understanding of their functions and for identification of more exosome-based disease markers.
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