Department of Biomedical Engineering, Johns Hopkins School of Medicine, Baltimore, MD 21205, USA.
Sci Rep. 2017 Mar 22;7:44909. doi: 10.1038/srep44909.
Cancer is known to alter the local optical properties of tissues. The detection of OCT-based optical attenuation provides a quantitative method to efficiently differentiate cancer from non-cancer tissues. In particular, the intraoperative use of quantitative OCT is able to provide a direct visual guidance in real time for accurate identification of cancer tissues, especially these without any obvious structural layers, such as brain cancer. However, current methods are suboptimal in providing high-speed and accurate OCT attenuation mapping for intraoperative brain cancer detection. In this paper, we report a novel frequency-domain (FD) algorithm to enable robust and fast characterization of optical attenuation as derived from OCT intensity images. The performance of this FD algorithm was compared with traditional fitting methods by analyzing datasets containing images from freshly resected human brain cancer and from a silica phantom acquired by a 1310 nm swept-source OCT (SS-OCT) system. With graphics processing unit (GPU)-based CUDA C/C++ implementation, this new attenuation mapping algorithm can offer robust and accurate quantitative interpretation of OCT images in real time during brain surgery.
癌症已知会改变组织的局部光学特性。基于 OCT 的光衰减检测提供了一种定量方法,可以有效地将癌症与非癌症组织区分开来。特别是,定量 OCT 的术中应用能够实时提供直接的视觉指导,从而准确识别癌症组织,特别是那些没有任何明显结构层的组织,如脑癌。然而,目前的方法在提供高速和准确的 OCT 衰减映射以用于术中脑癌检测方面并不理想。在本文中,我们报告了一种新的频域 (FD) 算法,可实现对从 OCT 强度图像得出的光衰减的稳健和快速特征描述。通过分析由 1310nm 扫频源 OCT (SS-OCT) 系统获取的新鲜切除的人脑癌图像数据集和硅质体图像数据集,比较了该 FD 算法与传统拟合方法的性能。通过基于图形处理单元 (GPU) 的 CUDA C/C++ 实现,该新的衰减映射算法可以在脑外科手术期间实时提供对 OCT 图像的稳健和准确的定量解释。