Automated classification of brain tissue: comparison between hyperspectral imaging and diffuse reflectance spectroscopy

Marco Lai, Simon Skyrman, Caifeng Shan, Elvira Paulussen, F. Manni, A. Swamy, D. Babic, E. Edström, Oscar Persson, Gustav Burström, Adrian Elmi Terander, B. Hendriks, P. D. With
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引用次数: 1

Abstract

In neurosurgery, technical solutions for visualizing the border between healthy brain and tumor tissue is of great value, since they enable the surgeon to achieve gross total resection while minimizing the risk of damage to eloquent areas. By using real-time non-ionizing imaging techniques, such as hyperspectral imaging (HSI), the spectral signature of the tissue is analyzed allowing tissue classification, thereby improving tumor boundary discrimination during surgery. More particularly, since infrared penetrates deeper in the tissue than visible light, the use of an imaging sensor sensitive to the near-infrared wavelength range would also allow the visualization of structures slightly beneath the tissue surface. This enables the visualization of tumors and vessel boundaries prior to surgery, thereby preventing the damaging of tissue structures. In this study, we investigate the use of Diffuse Reflectance Spectroscopy (DRS) and HSI for brain tissue classification, by extracting spectral features from the near infra-red range. The applied method for classification is the linear Support Vector Machine (SVM). The study is conducted on ex-vivo porcine brain tissue, which is analyzed and classified as either white or gray matter. The DRS combined with the proposed classification reaches a sensitivity and specificity of 96%, while HSI reaches a sensitivity of 95% and specificity of 93%. This feasibility study shows the potential of DRS and HSI for automated tissue classification, and serves as a fjrst step towards clinical use for tumor detection deeper inside the tissue.
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脑组织的自动分类:高光谱成像与漫反射光谱的比较
在神经外科中,可视化健康大脑和肿瘤组织之间边界的技术解决方案具有很大的价值,因为它们使外科医生能够在最大限度地减少对有效区域损伤的风险的同时实现总体全切除。通过使用实时非电离成像技术,如高光谱成像(HSI),可以分析组织的光谱特征,从而进行组织分类,从而提高手术过程中肿瘤边界的识别。更特别的是,由于红外线比可见光穿透组织更深,使用对近红外波长范围敏感的成像传感器也可以使组织表面略以下的结构可视化。这使得手术前肿瘤和血管边界的可视化,从而防止组织结构的破坏。在这项研究中,我们研究了漫反射光谱(DRS)和HSI在脑组织分类中的应用,通过提取近红外范围的光谱特征。应用的分类方法是线性支持向量机(SVM)。该研究是在离体猪脑组织上进行的,对其进行分析并分类为白质或灰质。DRS结合所提出的分类达到了96%的敏感性和特异性,而HSI达到了95%的敏感性和93%的特异性。这项可行性研究显示了DRS和HSI在自动组织分类方面的潜力,并作为临床应用于组织深层肿瘤检测的第一步。
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