Nerve Detection and Visualization Using Hyperspectral Imaging for Surgical Guidance.

Minh Ha Tran, Michelle Bryarly, Ling Ma, Muhammad Saad Yousuf, Theodore J Price, Baowei Fei
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Abstract

During surgery of delicate regions, differentiation between nerve and surrounding tissue is crucial. Hyperspectral imaging (HSI) techniques can enhance the contrast between types of tissue beyond what the human eye can differentiate. Whereas an RGB image captures 3 bands within the visible light range (e.g., 400 nm to 700 nm), HSI can acquire many bands in wavelength increments that highlight regions of an image across a wavelength spectrum. We developed a workflow to identify nerve tissues from other similar tissues such as fat, bone, and muscle. Our workflow uses spectral angle mapper (SAM) and endmember selection. The method is robust for different types of environment and lighting conditions. We validated our workflow on two samples of human tissues. We used a compact HSI system that can image from 400 to 1700 nm to produce HSI of the samples. On these two samples, we achieved an intersection-over-union (IoU) segmentation score of 84.15% and 76.73%, respectively. We showed that our workflow identifies nerve segments that are not easily seen in RGB images. This method is fast, does not rely on special hardware, and can be applied in real time. The hyperspectral imaging and nerve detection approach may provide a powerful tool for image-guided surgery.

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利用高光谱成像进行神经检测和可视化,为手术提供指导。
在对精细区域进行手术时,区分神经和周围组织至关重要。高光谱成像(HSI)技术可以增强组织类型之间的对比度,超出人眼的分辨能力。RGB 图像捕捉的是可见光范围内的 3 个波段(如 400 纳米到 700 纳米),而 HSI 可以捕捉波长递增的多个波段,从而突出整个波长光谱的图像区域。我们开发了一套工作流程,用于从脂肪、骨骼和肌肉等其他类似组织中识别神经组织。我们的工作流程使用了光谱角度映射器(SAM)和末端成员选择。该方法对不同类型的环境和光照条件都很稳定。我们在两个人体组织样本上验证了我们的工作流程。我们使用了一个可在 400 到 1700 nm 范围内成像的紧凑型 HSI 系统来生成样本的 HSI。在这两个样本上,我们的 "相交-重合(IoU)"分割得分率分别为 84.15% 和 76.73%。我们的结果表明,我们的工作流程可以识别在 RGB 图像中不易看到的神经节段。这种方法速度快,不依赖特殊硬件,可实时应用。高光谱成像和神经检测方法可为图像引导手术提供强有力的工具。
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