IEEE Trans Med Imaging. 2017 Sep;36(9):1845-1857. doi: 10.1109/TMI.2017.2695523. Epub 2017 Apr 24.
Recent advances in hyperspectral imaging have made it a promising solution for intra-operative tissue characterization, with the advantages of being non-contact, non-ionizing, and non-invasive. Working with hyperspectral images in vivo, however, is not straightforward as the high dimensionality of the data makes real-time processing challenging. In this paper, a novel dimensionality reduction scheme and a new processing pipeline are introduced to obtain a detailed tumor classification map for intra-operative margin definition during brain surgery. However, existing approaches to dimensionality reduction based on manifold embedding can be time consuming and may not guarantee a consistent result, thus hindering final tissue classification. The proposed framework aims to overcome these problems through a process divided into two steps: dimensionality reduction based on an extension of the T-distributed stochastic neighbor approach is first performed and then a semantic segmentation technique is applied to the embedded results by using a Semantic Texton Forest for tissue classification. Detailed in vivo validation of the proposed method has been performed to demonstrate the potential clinical value of the system.
近年来,高光谱成象技术取得了长足的发展,为术中组织特征分析提供了一种很有前途的解决方案,其优点包括非接触、非电离和非侵入性。然而,在体内处理高光谱图像并不简单,因为数据的高维性使得实时处理具有挑战性。在本文中,提出了一种新颖的降维方案和一个新的处理管道,以获得脑外科手术中用于定义术中边界的详细肿瘤分类图。然而,现有的基于流形嵌入的降维方法可能很耗时,并且不能保证一致的结果,从而阻碍最终的组织分类。所提出的框架旨在通过分为两个步骤的过程来克服这些问题:首先基于 T 分布随机邻居方法的扩展进行降维,然后通过语义文本森林将语义分割技术应用于嵌入结果,以进行组织分类。已经对所提出的方法进行了详细的体内验证,以证明该系统的潜在临床价值。