Kazemzadeh Mohammadrahim, Martinez-Calderon Miguel, Otupiri Robert, Artuyants Anastasiia, Lowe Moi M, Ning Xia, Reategui Eduardo, Schultz Zachary D, Xu Weiliang, Blenkiron Cherie, Chamley Lawrence W, Broderick Neil G R, Hisey Colin L
bioRxiv. 2023 Mar 24:2023.03.20.533481. doi: 10.1101/2023.03.20.533481.
Extracellular vesicles (EVs) have emerged as promising diagnostic and therapeutic candidates in many biomedical applications. However, EV research continues to rely heavily on in vitro cell cultures for EV production, where the exogenous EVs present in fetal bovine (FBS) or other required serum supplementation can be difficult to remove entirely. Despite this and other potential applications involving EV mixtures, there are currently no rapid, robust, inexpensive, and label-free methods for determining the relative concentrations of different EV subpopulations within a sample. In this study, we demonstrate that surface-enhanced Raman spectroscopy (SERS) can biochemically fingerprint fetal bovine serum-derived and bioreactor-produced EVs, and after applying a novel manifold learning technique to the acquired spectra, enables the quantitative detection of the relative amounts of different EV populations within an unknown sample. We first developed this method using known ratios of Rhodamine B to Rhodamine 6G, then using known ratios of FBS EVs to breast cancer EVs from a bioreactor culture. In addition to quantifying EV mixtures, the proposed deep learning architecture provides some knowledge discovery capabilities which we demonstrate by applying it to dynamic Raman spectra of a chemical milling process. This label-free characterization and analytical approach should translate well to other EV SERS applications, such as monitoring the integrity of semipermeable membranes within EV bioreactors, ensuring the quality or potency of diagnostic or therapeutic EVs, determining relative amounts of EVs produced in complex co-culture systems, as well as many Raman spectroscopy applications.
细胞外囊泡(EVs)已成为许多生物医学应用中颇具前景的诊断和治疗候选物。然而,EV研究在很大程度上仍依赖体外细胞培养来生产EV,而胎牛血清(FBS)或其他所需血清补充剂中存在的外源性EV可能难以完全去除。尽管存在这一问题以及其他涉及EV混合物的潜在应用,但目前尚无快速、可靠、廉价且无标记的方法来确定样品中不同EV亚群的相对浓度。在本研究中,我们证明表面增强拉曼光谱(SERS)可以对胎牛血清来源和生物反应器产生的EV进行生化指纹识别,并且在对采集的光谱应用一种新颖的流形学习技术后,能够定量检测未知样品中不同EV群体的相对含量。我们首先使用罗丹明B与罗丹明6G的已知比例开发了此方法,然后使用来自生物反应器培养物的FBS EV与乳腺癌EV的已知比例。除了对EV混合物进行定量外,所提出的深度学习架构还提供了一些知识发现能力,我们通过将其应用于化学铣削过程的动态拉曼光谱来证明这一点。这种无标记的表征和分析方法应该能够很好地转化为其他EV SERS应用,例如监测EV生物反应器内半透膜的完整性、确保诊断或治疗性EV的质量或效力、确定复杂共培养系统中产生的EV的相对含量,以及许多拉曼光谱应用。