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Surface-enhanced Raman spectroscopy of cell lysates mixed with silver nanoparticles for tumor classification

机译:与银纳米颗粒混合的细胞裂解物的表面增强拉曼光谱用于肿瘤分类

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摘要

The throughput of spontaneous Raman spectroscopy for cell identification applications is limited to the range of one cell per second because of the relatively low sensitivity. Surface-enhanced Raman scattering (SERS) is a widespread way to amplify the intensity of Raman signals by several orders of magnitude and, consequently, to improve the sensitivity and throughput. SERS protocols using immuno-functionalized nanoparticles turned out to be challenging for cell identification because they require complex preparation procedures. Here, a new SERS strategy is presented for cell classification using non-functionalized silver nanoparticles and potassium chloride to induce aggregation. To demonstrate the principle, cell lysates were prepared by ultrasonication that disrupts the cell membrane and enables interaction of released cellular biomolecules to nanoparticles. This approach was applied to distinguish four cell lines – Capan-1, HepG2, Sk-Hep1 and MCF-7 – using SERS at 785 nm excitation. Six independent batches were prepared per cell line to check the reproducibility. Principal component analysis was applied for data reduction and assessment of spectral variations that were assigned to proteins, nucleotides and carbohydrates. Four principal components were selected as input for classification models based on support vector machines. Leave-three-batches-out cross validation recognized four cell lines with sensitivities, specificities and accuracies above 96%. We conclude that this reproducible and specific SERS approach offers prospects for cell identification using easily preparable silver nanoparticles.
机译:由于相对较低的灵敏度,用于细胞鉴定应用的自发拉曼光谱的通量被限制在每秒一个细胞的范围内。表面增强拉曼散射(SERS)是一种广泛的方式,可以将拉曼信号的强度放大几个数量级,从而提高灵敏度和通量。使用免疫功能化的纳米颗粒的SERS方案对于细胞鉴定极具挑战,因为它们需要复杂的制备程序。在这里,提出了一种新的SERS策略,用于使用非功能化的银纳米颗粒和氯化钾诱导细胞聚集的细胞分类。为了证明该原理,通过超声处理来制备细胞裂解物,该破坏细胞膜并破坏释放的细胞生物分子与纳米颗粒的相互作用。该方法用于在785 nm激发下使用SERS区分四种细胞系-Capan-1,HepG2,Sk-Hep1和MCF-7。每个细胞系准备六个独立的批次,以检查可重复性。主成分分析用于减少数据和评估分配给蛋白质,核苷酸和碳水化合物的光谱变化。选择了四个主要成分作为基于支持向量机的分类模型的输入。三批杂交验证确认了四个细胞系,其敏感性,特异性和准确性均在96%以上。我们得出的结论是,这种可重现和特异性的SERS方法为使用易于制备的银纳米颗粒进行细胞鉴定提供了前景。

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