Integrated Endoscopic System Based on Optical Imaging and Hyperspectral Data Analysis for Colorectal Cancer Detection.
نویسندگان
چکیده
BACKGROUND/AIM Two-dimensional hyperspectral data systems with enhanced area detection and diagnostic abilities are now available in gastrointestinal endoscopy for colorectal cancer. We evaluated a new hyperspectral system for diagnosis of colorectal cancer. PATIENTS AND METHODS A resected-specimen spectrum observation module (stereoscopic macroscope, hyperspectral camera, and xenon lamp) was used to evaluate 21 resected colorectal cancer specimens (ex vivo experiment). A colonoscopy spectrum observation module (imaging fiberscope and hyperspectral camera) was used to perform 24 colonoscopic spectroscopy evaluations (in vivo experiment). RESULTS An approximately 525-nm increase in spectral absorption occurred between normal mucosa and adenoma, with a tendency toward decreased absorption rates with aggravation of other tumor types. In vivo discrimination between tumorous and non-tumorous tissues showed 72.5% sensitivity and 82.1% specificity. CONCLUSION This in vivo hyperspectral diagnostic system showed that reflectance spectra intensity may discriminate between normal and abnormal colonic mucosa.
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عنوان ژورنال:
- Anticancer research
دوره 36 8 شماره
صفحات -
تاریخ انتشار 2016