Near infrared Raman spectral character and diagnostic value of squamous cell carcinoma of oral mucosa.
- Author:
Yi LI
1
;
Zhi-ning WEN
;
Long-jiang LI
;
Meng-long LI
;
Zhuang ZHANG
;
Ning GAO
Author Information
- Publication Type:Journal Article
- MeSH: Carcinoma, Squamous Cell; Humans; Leukoplakia, Oral; Mouth Mucosa; Sensitivity and Specificity; Spectrum Analysis, Raman
- From: West China Journal of Stomatology 2010;28(1):61-64
- CountryChina
- Language:Chinese
-
Abstract:
OBJECTIVETo evaluate the value of the near infrared Raman spectroscope in diagnosing oral squamous cell carcinoma (OSCC).
METHODSNear infrared Raman spectra of ten normal mucosa, twenty OSCC and thirty oral leukoplakia (OLK) cases were collected in the research. Based on the previous researches, the information of the subtracted spectra of compared group was gained by the characteristic band in them. A Gaussian radial basis function support vector machine was used to classify spectra and establish the diagnostic models. The efficacy and validity of the algorithm were evaluated.
RESULTSBy analyzing the subtracted mean spectra, the increasing peak intensity in wavenumber range of 500-2 200 cm(-1) hinted us of the high contents of DNA, protein and lipid in OSCC, which elucidate the high proliferative activity. The increasing peak intensity in the wavenumber range of 500-2 200 cm(-1) hinted us of the high contents of DNA, protein and lipid in OSCC, which elucidate the high proliferative activity, but the difference between OLK and OSCC was not as much as that between normal and OSCC. The Gaussian radial basis function support vector machine showed powerful ability in grouping and modeling of normal and OSCC, and the specificity, sensitivity and accuracy were 100%, 97.44% and 98.81% correspondingly. The algorithm showed good ability in grouping and modeling of OLK and OSCC, the specificity, sensitivity and accuracy were 95.00%, 86.36% and 96.30%.
CONCLUSIONCombined with support vector machines, near infrared Raman spectroscopy could detect the biochemical variations in oral normal, OLK and OSCC, and establish diagnostic model accurately.