| Literature DB >> 28685119 |
Mohamed Hassoun1,2, Iwan W Schie1, Tatiana Tolstik1,3, Sarmiza E Stanca1, Christoph Krafft1, Juergen Popp1,2.
Abstract
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.Entities:
Keywords: cell lysate; silver nanoparticles; surface-enhanced Raman spectroscopy (SERS); tumor-cell differentiation
Year: 2017 PMID: 28685119 PMCID: PMC5480329 DOI: 10.3762/bjnano.8.120
Source DB: PubMed Journal: Beilstein J Nanotechnol ISSN: 2190-4286 Impact factor: 3.649
Figure 1UV–vis absorption spectra of (a) silver nanoparticles with an absorption band at 415 nm and (b) solution of silver nanoparticles and potassium chloride. The absorption band of aggregated nanoparticles was shifted to near infrared region.
Figure 2(a) Scanning electron microscopy (SEM) image of silver nanoparticles. The nanoparticles have a high degree of polydispersity in size ranging from 10 to 100 nm with an average size close to 50 nm. (b) Transmission electron microscopy image of silver nanoparticles showing their predominantly spherical shape and polydispersity in size. (c) SEM image of intact cells mixed with nanoparticles showing the distribution of nanoparticles on the surface of the cell. (d) SEM image of cell lysate mixed with nanoparticles showing released cellular biomolecules with nanoparticles after disruption of cell membrane.
Figure 3Preprocessed mean SERS spectra and standard deviations of the different cell lines. Labeled bands are assigned to cellular biomolecules including nucleic acids, proteins and carbohydrates. The low standard deviation values (represented by the red shadow) emphasize the high reproducibility of the technique.
Figure 4First four principal components used for the support vector machine model. These loadings represent 89% of data variance between MCF-7, Capan-1, SK-Hep1 and HepG2 cell lines.
Figure 5Score values of first four principal components of different cell lines. The four cell lines, MCF-7 (red circle), Capan-1 (blue plus sign), SK-Hep1 (green cross) and HepG2 (black star) are distinguished based on the first four PCs.
Results of the identification of different cell lines. The support vector machine model (SVM) model was trained with spectra taken from three different batches of each cell line and tested with data taken from the remaining three batches. The SVM model was run for 20 different permutations.
| sample cell line | identified by SVM as | |||
| Capan-1 | HepG2 | MCF-7 | SK-Hep1 | |
| Capan-1 | 906 | 6 | 3 | 24 |
| HepG2 | 74 | 898 | 33 | 0 |
| MCF-7 | 0 | 0 | 932 | 0 |
| SK-Hep1 | 22 | 0 | 0 | 980 |
Mean sensitivity, specificity and accuracy values of support vector machine model for each cell line (in percentage).
| cell line | ||||
| Capan-1 | HepG2 | MCF-7 | SK-Hep1 | |
| mean sensitivity % | 96.5 ± 4.4 | 89.4 ± 10.5 | 100 | 97.8 ± 2.9 |
| mean specificity % | 96.7 ± 3.7 | 99.8 ± 0.5 | 98.8 ± 1.7 | 99.2 ± 1.2 |
| accuracy % | 96.7 | 97.1 | 99.1 | 98.8 |