| Literature DB >> 26806007 |
Po-Hsiung Chen1, Rintaro Shimada2, Sohshi Yabumoto2, Hajime Okajima2, Masahiro Ando3, Chiou-Tzu Chang4, Li-Tzu Lee4, Yong-Kie Wong4, Arthur Chiou1,5, Hiro-o Hamaguchi2,3.
Abstract
We have developed an automatic and objective method for detecting human oral squamous cell carcinoma (OSCC) tissues with Raman microspectroscopy. We measure 196 independent Raman spectra from 196 different points of one oral tissue sample and globally analyze these spectra using a Multivariate Curve Resolution (MCR) analysis. Discrimination of OSCC tissues is automatically and objectively made by spectral matching comparison of the MCR decomposed Raman spectra and the standard Raman spectrum of keratin, a well-established molecular marker of OSCC. We use a total of 24 tissue samples, 10 OSCC and 10 normal tissues from the same 10 patients, 3 OSCC and 1 normal tissues from different patients. Following the newly developed protocol presented here, we have been able to detect OSCC tissues with 77 to 92% sensitivity (depending on how to define positivity) and 100% specificity. The present approach lends itself to a reliable clinical diagnosis of OSCC substantiated by the "molecular fingerprint" of keratin.Entities:
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Year: 2016 PMID: 26806007 PMCID: PMC4726139 DOI: 10.1038/srep20097
Source DB: PubMed Journal: Sci Rep ISSN: 2045-2322 Impact factor: 4.379
Figure 1The number of principal spectral components k in 14 patients’ OSCC and normal oral tissues with signal-to-noise ratio (S/N) higher than 4.
Different k values show the variation of samples obtained from different patients.
Figure 2MCR-ALS spectral components from Patient-1 OSCC tissue sample (a–f) and the standard keratin spectrum (g); the spectral component (b) shows excellent correspondence with the standard keratin spectrum (g).
Figure 3MCR-ALS spectral components from Patient-1 normal tissue sample (a–e) and the standard keratin spectrum (f). No MCR spectral components seem to match the standard keratin spectrum.
Figure 4UNED results of ten paired-patients (including OSCC and normal tissues) with the confidence intervals of OSCC (UNED = 0.16 ~ 0.26) and normal (UNED = 0.29 ~ 0.38).
The upper bound of OSCC confidence interval (UNED = 0.26) can separate OSCC and normal tissues effectively.
Figure 5A schematic diagram of the laboratory-constructed Raman microspectrometer.
Figure 6Flow chart of data analysis.
Figure 7Signal and noise in SVD components.
Figure 8A schematic 2-dimensional model showing the principle of the UNED analysis.