Ruhr-Universität Bochum, Photonics and Terahertz Technology, Bochum, Germany.
University Hospital Knappschaftskrankenhaus Bochum-Langendreer, Department of Neurosurgery, Bochum, Germany.
J Biomed Opt. 2018 Feb;23(7):1-7. doi: 10.1117/1.JBO.23.7.071205.
Brain tissue analysis is highly desired in neurosurgery, such as tumor resection. To guarantee best life quality afterward, exact navigation within the brain during the surgery is essential. So far, no method has been established that perfectly fulfills this need. Optical coherence tomography (OCT) is a promising three-dimensional imaging tool to support neurosurgical resections. We perform a preliminary study toward in vivo brain tumor removal assistance by investigating meningioma, healthy white, and healthy gray matter. For that purpose, we utilized a commercially available OCT device (Thorlabs Callisto) and measured eight samples of meningioma, three samples of healthy white, and two samples of healthy gray matter ex vivo directly after removal. Structural variations of different tissue types, especially meningioma, can already be seen in the raw OCT images. Nevertheless, an automated differentiation approach is desired, so that neurosurgical guidance can be delivered without a-priori knowledge of the surgeon. Therefore, we employ different algorithms to extract texture features and apply pattern recognition methods for their classification. With these postprocessing steps, an accuracy of nearly 98% was found.
脑组织分析在神经外科中非常重要,例如肿瘤切除。为了保证术后的最佳生活质量,在手术过程中精确地在大脑内导航是至关重要的。到目前为止,还没有一种方法能够完全满足这一需求。光学相干断层扫描(OCT)是一种很有前途的三维成像工具,可以辅助神经外科切除。我们通过研究脑膜瘤、健康的白质和灰质进行了一项初步的活体脑肿瘤切除辅助研究。为此,我们使用了一种市售的 OCT 设备(Thorlabs Callisto),并在离体后直接测量了 8 个脑膜瘤样本、3 个健康白质样本和 2 个健康灰质样本。不同组织类型的结构变化,特别是脑膜瘤,已经可以在原始的 OCT 图像中看到。然而,需要一种自动化的区分方法,以便在没有外科医生先验知识的情况下提供神经外科指导。因此,我们使用不同的算法来提取纹理特征,并应用模式识别方法对其进行分类。通过这些后处理步骤,我们发现准确率接近 98%。