Live-cell profiling of membrane sialic acids by fluorescence imaging combined with SERS labelling

Detecting cell-surface sialic acids (SAs) is essential for cancer research, as accumulating evidence indicates that SA overexpression is closely related to unusual biopathways, such as tumorigenesis. However, it remains challenging to detect and classify membrane SAs. Here, a highly efficient and co...

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Veröffentlicht in:Sensors and actuators. B, Chemical Chemical, 2022-01, Vol.351, p.130877, Article 130877
Hauptverfasser: Lv, Jian, Chang, Shuai, Wang, Xiaoyuan, Zhou, Zerui, Chen, Binbin, Qian, Ruocan, Li, Dawei
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container_title Sensors and actuators. B, Chemical
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Chang, Shuai
Wang, Xiaoyuan
Zhou, Zerui
Chen, Binbin
Qian, Ruocan
Li, Dawei
description Detecting cell-surface sialic acids (SAs) is essential for cancer research, as accumulating evidence indicates that SA overexpression is closely related to unusual biopathways, such as tumorigenesis. However, it remains challenging to detect and classify membrane SAs. Here, a highly efficient and convenient two-step tagging strategy is described for live-cell profiling of membrane sialic acids with fluorescence imaging and SERS labelling. The fluorescence of SA-linked dyes indicates the SA distribution, whereas the Raman signals recognize the SA-linked proteins marked by aptamer modified SERS probes. Using the tumor markers MUC-1 and TNC as the model proteins, SAs can be partitioned into distinct space domains via Flu/SERS information on living cell membrane. Importantly, we find that SAs are highly expressed near MUC-1 and TNC on the surface of cancer cells, with subtle differences existing among various carcinoma cell lines, enabling classification of various types of cells. Together, our strategy provides a robust and versatile platform for highly detailed analysis of cell surface saccharide profiles and that it has great potential for optical biosensing and molecular diagnosis. •A two-step tagging strategy based on fluorescence/SERS was developed for space partitioning of cell surface SAs.•Spatial relationship between MUC-1 and TNC on the cell membrane was studied according to Flu/SERS synthetic information.•This method could be used as a classifier in distinguishing various cells based on the unique SA subgroup characteristics.
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subjects Cancer
Carbohydrates
Cell membranes
Fluorescence
Fluorescence imaging
Labeling
Medical imaging
Proteins
SERS labelling
Sialic acid
title Live-cell profiling of membrane sialic acids by fluorescence imaging combined with SERS labelling
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