Lu Guolan, Wang Dongsheng, Qin Xulei, Halig Luma, Muller Susan, Zhang Hongzheng, Chen Amy, Pogue Brian W, Chen Zhuo Georgia, Fei Baowei
Georgia Institute of Technology and Emory University, The Wallace H. Coulter Department of Biomedical Engineering, Atlanta, Georgia 30332, United States.
Emory University, School of Medicine, Department of Hematology and Medical Oncology, , Atlanta, Georgia 30332, United States.
J Biomed Opt. 2015;20(12):126012. doi: 10.1117/1.JBO.20.12.126012.
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.
高光谱成像(HSI)是一种成像方式,在图像引导手术中对快速癌症检测具有巨大潜力。但HSI数据通常需要进行适当处理,以便提取将癌症与正常组织区分开来的最大有用信息。我们提出了一个高光谱图像处理和量化框架,该框架包括一系列步骤,包括图像预处理、眩光去除、特征提取以及最终的图像分类。该框架已在患有头颈癌的小鼠图像上进行了测试,使用的光谱范围为450至900纳米波长。图像分析计算了傅里叶系数、归一化反射率、均值和光谱导数,以提高准确性。实验结果证明了高光谱图像处理和量化框架在动物肿瘤手术中进行癌症检测的可行性,在这种具有挑战性的环境中,由于存在的特征数量较少,灵敏度可能较低,但快速图像分类的潜力可能很高。这种HSI方法可能在图像引导手术中的肿瘤边缘评估中具有潜在应用,其中评估速度可能是主导因素。