Quantum Dot-Based Immunolabelling of Extracellular Vesicles and Detection Using Fluorescence-Based Nanoparticle Tracking Analysis

Eunyong Ha, Yewon Han, Minseop Kim, Zayakhuu Gerelkhuu, Sook Jin Kwon, Tae Hyun Yoon
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Abstract

Extracellular vesicles (EVs) contain a variety of biomolecules, including DNA, RNA, lipids and proteins. They can interact with target cells to perform various functions, offering potential for therapeutic applications like drug delivery and diagnosis. The growing interest in EVs drives the need for robust methods for EV characterisation. One of the prevalent EV characterisation methods is scatter-based nanoparticle tracking analysis (Sc-NTA). This method measures the size and concentration of particles by tracking the scattered light from individual particles. However, Sc-NTA has limitations in selectivity, as it detects all scattered light and fails to distinguish EVs from other nanoparticles, such as protein aggregates. To overcome this limitation, fluorescence-based NTA (Fl-NTA) is being utilised, where fluorescence tagging is used to selectively detect EVs. In previous studies, lipophilic dyes were employed for membrane labelling, but this resulted in false-positive signals due to the staining of even non-vesicular extracellular particles (NVEPs). Immunolabelling methods using antibodies that specifically bind to EV-specific protein were also introduced; yet challenges with sensitivity and photostability of the organic dyes remained. To address the challenges, we conjugated quantum dots (QDs) to antibodies that specifically bind to EV-specific markers, CD9, CD63 and then immunolabelled the EVs. Labelling conditions were optimised to develop a robust protocol for QD-based immunolabelling. Detection sensitivity was evaluated by comparing QD-based immunolabelling with Alexa dye-based methods. Furthermore, size distribution analysis demonstrated the ability of QDs to detect smaller EV populations. Finally, subpopulations of EVs from various cell lines were profiled. This approach enhances the accurate characterisation of EVs, providing a reliable and reproducible method for EV quality control and improved insights into their heterogeneity.

Abstract Image

基于量子点的细胞外囊泡免疫标记和荧光纳米颗粒跟踪分析检测
细胞外囊泡(EVs)含有多种生物分子,包括DNA、RNA、脂质和蛋白质。它们可以与靶细胞相互作用,执行各种功能,为药物输送和诊断等治疗应用提供了潜力。对电动汽车日益增长的兴趣推动了对电动汽车表征的强大方法的需求。目前流行的EV表征方法之一是基于散射的纳米颗粒跟踪分析(Sc-NTA)。该方法通过跟踪单个粒子的散射光来测量粒子的大小和浓度。然而,Sc-NTA在选择性上有局限性,因为它可以检测到所有散射光,并且无法将ev与其他纳米颗粒(如蛋白质聚集体)区分开来。为了克服这一限制,正在使用基于荧光的NTA (Fl-NTA),其中荧光标记用于选择性检测ev。在以前的研究中,亲脂性染料被用于膜标记,但这导致假阳性信号,因为即使是非囊泡细胞外颗粒(NVEPs)也被染色。还介绍了利用特异性结合ev特异性蛋白的抗体进行免疫标记的方法;然而,有机染料在灵敏度和光稳定性方面仍然存在挑战。为了解决这些挑战,我们将量子点(QDs)与特异性结合ev特异性标记CD9, CD63的抗体结合,然后对ev进行免疫标记。优化了标记条件,以开发基于量子点的免疫标记的稳健方案。通过比较基于量子点的免疫标记与基于Alexa染料的方法来评估检测灵敏度。此外,大小分布分析表明,量子点能够检测到较小的EV种群。最后,分析了来自不同细胞系的ev亚群。该方法提高了电动汽车的准确表征,为电动汽车的质量控制提供了可靠和可重复的方法,并提高了对其异质性的认识。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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