Rapid detection of oral cancer using Ag–TiO2 nanostructured surface-enhanced Raman spectroscopic substrates

材料科学 拉曼光谱 纳米技术 化学工程 分析化学(期刊) 光电子学 光学 色谱法 化学 物理 工程类
作者
Chundayil Madathil Girish,Subramania Iyer,Krishnakumar Thankappan,Vibha Rani,Genekehal Siddaramana Gowd,Deepthy Menon,Shantikumar V. Nair,Manzoor Koyakutty
出处
期刊:Journal of Materials Chemistry B [Royal Society of Chemistry]
卷期号:2 (8): 989-998 被引量:41
标识
DOI:10.1039/c3tb21398f
摘要

The unique vibrational signatures of the biochemical changes in tissue samples may enable the Raman spectroscopic detection of diseases, like cancer. However, the Raman scattering cross-section of tissues is relatively low and hence the clinical translation of such methods faces serious challenges. In this study, we report a simple and efficient surface-enhanced Raman scattering (SERS) substrate, for the rapid and label-free detection of oral cancer. Raman active silver (Ag) surfaces were created on three distinct titania (TiO2) hierarchical nanostructures (needular, bipyramidal and leaf-like) by a process involving a hydrothermal reaction, followed by the sputter deposition of Ag nanoparticles (average size: 30 nm). The resulting SERS substrate efficiencies, measured using crystal violet (CV) as an analyte molecule, showed a highest analytical enhancement factor of ∼106, a detection limit ∼1 nM and a relative standard deviation of the Raman peak maximum of ∼13% for the nano-leafy structure. This substrate was used to analyze tissue sections of 8 oral cancer patients (squamous cell carcinoma of tongue) comprising a total of 24 normal and 32 tumor tissue sections and the recorded spectra were analyzed by principal component analysis and discriminant analysis. The tissue spectra were correctly classified into tumor and normal groups, with a diagnostic sensitivity of 100%, a specificity of 95.83% and the average processing time per patient of 15-20 min. This indicates the potential translation of the SERS method for the rapid and accurate detection of cancer.

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