Barra Beatrice, De Momi Elena, Ferrigno Giancarlo, Pero Guglielmo, Cardinale Francesco, Baselli Giuseppe
Politecnico di Milano , Electronic Information and Bioengineering Department, Piazza Leonardo da Vinci, 32, Milano 20133, Italy.
Niguarda Hospital, "Claudio Munari" Center for Epilepsy Surgery, Piazza Ospedale Maggiore 3, Milano 20162, Italy; Niguarda Hospital, Department of Neuroradiology, Piazza Ospedale Maggiore, 3, Milano 20162, Italy.
J Med Imaging (Bellingham). 2016 Oct;3(4):044002. doi: 10.1117/1.JMI.3.4.044002. Epub 2016 Nov 29.
Preoperative three-dimensional (3-D) visualization of brain vasculature by digital subtraction angiography from computerized tomography (CT) in neurosurgery is gaining more and more importance, since vessels are the primary landmarks both for organs at risk and for navigation. Surgical embolization of cerebral aneurysms and arteriovenous malformations, epilepsy surgery, and stereoelectroencephalography are a few examples. Contrast-enhanced cone-beam computed tomography (CE-CBCT) represents a powerful facility, since it is capable of acquiring images in the operation room, shortly before surgery. However, standard 3-D reconstructions do not provide a direct distinction between arteries and veins, which is of utmost importance and is left to the surgeon's inference so far. Pioneering attempts by true four-dimensional (4-D) CT perfusion scans were already described, though at the expense of longer acquisition protocols, higher dosages, and sensible resolution losses. Hence, space is open to approaches attempting to recover the contrast dynamics from standard CE-CBCT, on the basis of anomalies overlooked in the standard 3-D approach. This paper aims at presenting algebraic reconstruction technique (ART) 3.5D, a method that overcomes the clinical limitations of 4-D CT, from standard 3-D CE-CBCT scans. The strategy works on the 3-D angiography, previously segmented in the standard way, and reprocesses the dynamics hidden in the raw data to recover an approximate dynamics in each segmented voxel. Next, a classification algorithm labels the angiographic voxels and artery or vein. Numerical simulations were performed on a digital phantom of a simplified 3-D vasculature with contrast transit. CE-CBCT projections were simulated and used for ART 3.5D testing. We achieved up to 90% classification accuracy in simulations, proving the feasibility of the presented approach for dynamic information recovery for arteries and veins segmentation.
在神经外科手术中,通过计算机断层扫描(CT)数字减影血管造影术对脑脉管系统进行术前三维(3-D)可视化变得越来越重要,因为血管是危险器官和导航的主要标志。脑动脉瘤和动静脉畸形的手术栓塞、癫痫手术以及立体脑电图检查就是一些例子。对比增强锥束计算机断层扫描(CE-CBCT)是一种强大的工具,因为它能够在手术前不久在手术室中获取图像。然而,标准的3-D重建无法直接区分动脉和静脉,这至关重要,而目前这仍需外科医生进行推断。虽然已经描述了真正的四维(4-D)CT灌注扫描的开创性尝试,但代价是更长的采集协议、更高的剂量和明显的分辨率损失。因此,基于标准3-D方法中被忽视的异常情况,尝试从标准CE-CBCT中恢复对比动力学的方法仍有发展空间。本文旨在介绍代数重建技术(ART)3.5D,这是一种从标准3-D CE-CBCT扫描中克服4-D CT临床局限性的方法。该策略基于以标准方式预先分割的3-D血管造影,并对原始数据中隐藏的动力学进行重新处理,以在每个分割体素中恢复近似的动力学。接下来,一种分类算法对血管造影体素标记为动脉或静脉。在具有对比剂通过的简化3-D脉管系统数字模型上进行了数值模拟。模拟了CE-CBCT投影并用于ART 3.5D测试。我们在模拟中实现了高达90%的分类准确率,证明了所提出的方法用于动脉和静脉分割动态信息恢复的可行性。