| Literature DB >> 29188115 |
Luis Felipe C S Carvalho1,2, Marcelo Saito Nogueira3,4, Lázaro P M Neto1, Tanmoy T Bhattacharjee1, Airton A Martin5,6.
Abstract
Most oral injuries are diagnosed by histopathological analysis of a biopsy, which is an invasive procedure and does not give immediate results. On the other hand, Raman spectroscopy is a real time and minimally invasive analytical tool with potential for the diagnosis of diseases. The potential for diagnostics can be improved by data post-processing. Hence, this study aims to evaluate the performance of preprocessing steps and multivariate analysis methods for the classification of normal tissues and pathological oral lesion spectra. A total of 80 spectra acquired from normal and abnormal tissues using optical fiber Raman-based spectroscopy (OFRS) were subjected to PCA preprocessing in the z-scored data set, and the KNN (K-nearest neighbors), J48 (unpruned C4.5 decision tree), RBF (radial basis function), RF (random forest), and MLP (multilayer perceptron) classifiers at WEKA software (Waikato environment for knowledge analysis), after area normalization or maximum intensity normalization. Our results suggest the best classification was achieved by using maximum intensity normalization followed by MLP. Based on these results, software for automated analysis can be generated and validated using larger data sets. This would aid quick comprehension of spectroscopic data and easy diagnosis by medical practitioners in clinical settings.Entities:
Keywords: (120.3890) Medical optics instrumentation; (120.6200) Spectrometers and spectroscopic instrumentation; (170.1610) Clinical applications; (200.4560) Optical data processing; (300.6330) Spectroscopy, inelastic scattering including Raman
Year: 2017 PMID: 29188115 PMCID: PMC5695965 DOI: 10.1364/BOE.8.005218
Source DB: PubMed Journal: Biomed Opt Express ISSN: 2156-7085 Impact factor: 3.732