Forkert Nils Daniel, Säring Dennis, Handels Heinz
Department of Medical Informatics, University Medical Center Hamburg-Eppendorf, Hamburg, Germany.
Stud Health Technol Inform. 2010;160(Pt 2):1268-72.
The cerebral arteriovenous malformation (AVM) is an abnormal connection between arteries and veins without capillaries in between, leading to increased blood pressure which might result in a rupture and acute bleeding. Exact knowledge about the patient's individual anatomy of the AVM is needed for improved therapy planning. This paper describes a method for automatic extraction of the AVM and automatic recognition of its feeders and draining veins and en passage vessels based on 3D and 4D MRA image sequences. After registration of the MRA datasets the AVM is segmented using a support vector machine based on blood velocity information, a vesselness measure and the bolus arrival time. The extracted hemodynamic information is then used to detect feeders and draining veins of the AVM. The segmentation of the AVM was validated based on manual segmentations for five patient datasets, whereas a mean Dice value of 0.74 was achieved. The presented hemodynamic characterization was able to detect feeders and draining veins with an accuracy of 100%. In summary the presented approach can improve presurgical planning of AVM surgeries.
脑动静脉畸形(AVM)是动脉与静脉之间的一种异常连接,其间没有毛细血管,导致血压升高,这可能会引发破裂和急性出血。为了改进治疗方案,需要准确了解患者AVM的个体解剖结构。本文描述了一种基于3D和4D MRA图像序列自动提取AVM并自动识别其供血动脉、引流静脉和中间血管的方法。在对MRA数据集进行配准后,基于血流速度信息、血管性度量和团注到达时间,使用支持向量机对AVM进行分割。然后,利用提取的血流动力学信息来检测AVM的供血动脉和引流静脉。基于五个患者数据集的手动分割对AVM的分割进行了验证,平均Dice值达到了0.74。所呈现的血流动力学特征能够以100%的准确率检测供血动脉和引流静脉。总之,所提出的方法可以改善AVM手术的术前规划。