Label-free identification of exosomes using raman spectroscopy and machine learning

Date

2023-01-15

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Source Title

Small

Print ISSN

1613-6810

Electronic ISSN

1613-6829

Publisher

Wiley-VCH Verlag GmbH & Co. KGaA

Volume

19

Issue

9

Pages

2205519-1 - 2205519-12

Language

en

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Abstract

Exosomes, nano-sized extracellular vesicles (EVs) secreted from cells, carry various cargo molecules reflecting their cells of origin. As EV content, structure, and size are highly heterogeneous, their classification via cargo molecules by determining their origin is challenging. Here, a method is presented combining surface-enhanced Raman spectroscopy (SERS) with machine learning algorithms to employ the classification of EVs derived from five different cell lines to reveal their cellular origins. Using an artificial neural network algorithm, it is shown that the label-free Raman spectroscopy method's prediction ratio correlates with the ratio of HT-1080 exosomes in the mixture. This machine learning-assisted SERS method enables a new direction through label-free investigation of EV preparations by differentiating cancer cell-derived exosomes from those of healthy. This approach will potentially open up new avenues of research for early detection and monitoring of various diseases, including cancer.

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