Document Type
Article
Publication Date
12-28-2015
Publication Title
Journal of Biomedical Optics
Department
Thayer School of Engineering
Abstract
Hyperspectral imaging (HSI) is an imaging modality that holds strong potential for rapid cancer detection during image-guided surgery. But the data from HSI often needs to be processed appropriately in order to extract the maximum useful information that differentiates cancer from normal tissue. We proposed a framework for hyperspectral image processing and quantification, which includes a set of steps including image preprocessing, glare removal, feature extraction, and ultimately image classification. The framework has been tested on images from mice with head and neck cancer, using spectra from 450- to 900-nm wavelength. The image analysis computed Fourier coefficients, normalized reflectance, mean, and spectral derivatives for improved accuracy. The experimental results demonstrated the feasibility of the hyperspectral image processing and quantification framework for cancer detection during animal tumor surgery, in a challenging setting where sensitivity can be low due to a modest number of features present, but potential for fast image classification can be high. This HSI approach may have potential application in tumor margin assessment during image-guided surgery, where speed of assessment may be the dominant factor.
DOI
10.1117/1.JBO.20.12.126012
Dartmouth Digital Commons Citation
Lu, Guolan; Wang, Dongsheng; Qin, Xulei; Halig, Luma; Muller, Susan; Zhang, Hongzheng; Chen, Amy; Pogue, Brian W.; and Chen, Zhuo G., "Framework for Hyperspectral Image Processing and Quantification for Cancer Detection During Animal Tumor Surgery" (2015). Dartmouth Scholarship. 3622.
https://digitalcommons.dartmouth.edu/facoa/3622