Shining a light on fluorescent EV dyes: Evaluating efficacy, specificity and suitability by nano‐flow cytometry

荧光 流式细胞术 纳米- 纳米技术 化学 荧光标记 生物物理学 生物系统 材料科学 分子生物学 生物 光学 物理 复合材料
作者
Joseph Brealey,Rebecca Lees,Robert Tempest,Alice Law,Sonia Guarnerio,Rawan Maani,Soozana Puvanenthiran,Nicholas Peake,Ryan Pink,Ben Peacock
出处
期刊:Journal of extracellular biology [Wiley]
卷期号:3 (10): e70006-e70006 被引量:13
标识
DOI:10.1002/jex2.70006
摘要

Abstract Extracellular vesicles (EVs) are mediators of intercellular communication, recently recognised for their clinical applications. Accurate characterisation and quantification of EVs are critical for understanding of their function and clinical relevance. Many platforms utilise fluorescence for EV characterisation, frequently labelling surface proteins to identify EVs. The heterogeneity of EVs and the lack of a universal protein marker encourages the use of generic EV labelling methods, including membrane labelling. Using nano‐flow cytometry, we evaluated six membrane dyes, including MemGlow and CellMask. Evaluation criteria included EV labelling efficacy, non‐specific labelling of very low‐density lipoproteins (VLDLs), brightness and dye aggregation. Significant variation was observed in dye performance, with certain dyes showing poor EV labelling efficacy or high affinity to VLDLs. Importantly, several promising candidates were identified for further investigation. Overall, this study highlights the importance of selecting appropriate membrane dyes for EV staining tailored to the aims of the study and the EV origin. MemGlow and CellMask proved favourable, allowing bright, sensitive staining of EV membranes with minimal aggregation. However, MemGlow showed an affinity to VLDLs, and CellMask requires additional sample handling for optimal labelling. These results contribute to deepening our understanding of EV membrane dyes, allowing for better dye selection and EV identification in future studies.
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