Glioblastoma Classification in Hyperspectral Images by Nonlinear Unmixing

Juan Nicolás Mendoza-Chavarría, Eric R. Zavala-Sánchez, Liliana Granados-Castro, I. A. Cruz-Guerrero, H. Fabelo, S. Ortega, Gustavo Marrero Callico, D. U. Campos‐Delgado
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Abstract

Glioblastoma is considered an aggressive tumor due to its rapid growth rate and diffuse pattern in various parts of the brain. Current in-vivo classification procedures are executed under the supervision of an expert. However, this methodology could be subjective and time-consuming. In this work, we propose a classification method for in-vivo hyperspectral brain images to identify areas affected by glioblastomas based on nonlinear spectral unmixing. This methodology follows a semi-supervised approach for the estimation of the end-members in a multi-linear model. To improve the classification results, we vary the number of end-members per-class to address spectral variability of each studied type of tissue. Once the set of end-members is obtained, the classification map is generated according to the end-member with the highest abundance in each pixel, followed by morphological operations to smooth the resulting maps. The classification results demonstrate that the proposed methodology generates high performance in the regions of interest, with an accuracy above 0.75 and 0.96 in the inter and intra-patient strategies, respectively. These results indicate that the proposed methodology has the potential to be used as an assistant tool in the diagnosis of glioblastoma in hyperspectral imaging.
基于非线性解混的高光谱图像胶质母细胞瘤分类
胶质母细胞瘤被认为是一种侵袭性肿瘤,因为它的生长速度快,并且在大脑的各个部位呈弥漫性分布。目前的活体分类程序是在专家的监督下进行的。然而,这种方法可能是主观的和耗时的。在这项工作中,我们提出了一种基于非线性光谱解混的体内高光谱脑图像分类方法,以识别胶质母细胞瘤影响的区域。该方法采用半监督方法对多线性模型中的端元进行估计。为了改善分类结果,我们改变每类末端成员的数量,以解决每个研究类型的组织的光谱变异性。一旦获得端元集,根据每个像素中丰度最高的端元生成分类图,然后进行形态学操作对生成的图进行平滑处理。分类结果表明,所提出的方法在感兴趣的区域产生了高性能,在患者间和患者内策略的准确率分别高于0.75和0.96。这些结果表明,所提出的方法有可能被用作高光谱成像中胶质母细胞瘤诊断的辅助工具。
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