1. Comparison of multispectral wide-field optical imaging modalities to maximize image contrast for objective discrimination of oral neoplasia.
- Author
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Darren Roblyer, Cristina Kurachi, Vanda Stepanek, Richard A. Schwarz, Michelle D. Williams, Adel K. El-Naggar, J. Jack Lee, Ann M. Gillenwater, and Rebecca Richards-Kortum
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COMPARATIVE studies , *REMOTE-sensing images , *ORAL cancer , *IMAGING of cancer , *ALGORITHMS , *REFLECTANCE , *FLUORESCENCE spectroscopy - Abstract
Multispectral widefield optical imaging has the potential to improve early detection of oral cancer. The appropriate selection of illumination and collection conditions is required to maximize diagnostic ability. The goals of this study were to (i) evaluate image contrast between oral cancerprecancer and non-neoplastic mucosa for a variety of imaging modalities and illuminationcollection conditions, and (ii) use classification algorithms to evaluate and compare the diagnostic utility of these modalities to discriminate cancers and precancers from normal tissue. Narrowband reflectance, autofluorescence, and polarized reflectance images were obtained from 61 patients and 11 normal volunteers. Image contrast was compared to identify modalities and conditions yielding greatest contrast. Image features were extracted and used to train and evaluate classification algorithms to discriminate tissue as non-neoplastic, dysplastic, or cancer; results were compared to histologic diagnosis. Autofluorescence imaging at 405-nm excitation provided the greatest image contrast, and the ratio of red-to-green fluorescence intensity computed from these images provided the best classification of dysplasiacancer versus non-neoplastic tissue. A sensitivity of 100 and a specificity of 85 were achieved in the validation set. Multispectral widefield images can accurately distinguish neoplastic and non-neoplastic tissue; however, the ability to separate precancerous lesions from cancers with this technique was limited. [ABSTRACT FROM AUTHOR]
- Published
- 2010
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