Bilgel Murat, Roy Snehashis, Carass Aaron, Nyquist Paul A, Prince Jerry L
Biomedical Engineering, The Johns Hopkins University School of Medicine, Baltimore, MD, USA.
Proc SPIE Int Soc Opt Eng. 2013 Mar 13;866918. doi: 10.1117/12.2006460.
Labeling of cerebral vasculature is important for characterization of anatomical variation, quantification of brain morphology with respect to specific vessels, and inter-subject comparisons of vessel properties and abnormalities. We propose an automated method to label the anterior portion of cerebral arteries using a statistical inference method on the Bayesian network representation of the vessel tree. Our approach combines the likelihoods obtained from a random forest classifier trained using vessel centerline features with a belief propagation method integrating the connection probabilities of the cerebral artery network. We evaluate our method on 30 subjects using a leave-one-out validation, and show that it achieves an average correct vessel labeling rate of over 92%.
脑血管理的标注对于解剖变异的表征、特定血管的脑形态定量以及血管特性和异常的受试者间比较都很重要。我们提出了一种自动方法,使用血管树的贝叶斯网络表示上的统计推断方法来标注脑动脉的前部。我们的方法将使用血管中心线特征训练的随机森林分类器获得的似然性与整合脑动脉网络连接概率的信念传播方法相结合。我们使用留一法验证对30名受试者评估了我们的方法,并表明它实现了超过92%的平均正确血管标注率。