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A hybrid pixel-based classification method for blood vessel segmentation and aneurysm detection on CTA

机译:基于混合像素的CTA血管分割和动脉瘤检测分类方法

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摘要

In the present study, a hybrid semi-supervised pixel-based classification algorithm is proposed for the automatic segmentation of intracranial aneurysms in Computed Tomography Angiography images. The algorithm was designed to discriminate image pixels as belonging to one of the two classes: blood vessel and brain parenchyma. Its accuracy in vessel and aneurysm detection was compared with two other reliable methods that have already been applied in vessel segmentation applications: (a) an advanced and novel thresholding technique, namely the frequency histogram of connected elements (FHCE), and (b) the gradient vector flow snake. The comparison was performed by means of the segmentation matching factor (SMF) that expressed how precise and reproducible was the vessel and aneurysm segmentation result of each method against the manual segmentation of an experienced radiologist, who was considered as the gold standard. Results showed a superior SMF for the hybrid (SMF = 88.4%) and snake (SMF = 87.2%) methods compared to the FHCE (SMF = 68.9%). The major advantage of the proposed hybrid method is that it requires no a priori knowledge of the topology of the vessels and no operator intervention, in contrast to the other methods examined. The hybrid method was efficient enough for use in 3D blood vessel reconstruction.
机译:在本研究中,提出了一种基于混合半监督像素的分类算法,用于计算机断层扫描血管造影图像中的颅内动脉瘤的自动分割。该算法旨在将图像像素区分为属于两类之一:血管和脑实质。将其在血管和动脉瘤检测中的准确性与已经在血管分割应用中应用的其他两种可靠方法进行了比较:(a)先进且新颖的阈值化技术,即连接元素的频率直方图(FHCE),以及(b)梯度矢量流蛇。通过分割匹配因子(SMF)进行比较,该匹配因子表示每种方法的血管和动脉瘤分割结果相对于经验丰富的放射科医生的手动分割(被视为黄金标准)的精确度和可重复性。结果显示,与FHCE(SMF = 68.9%)相比,混合方法(SMF = 88.4%)和蛇方法(SMF = 87.2%)的SMF更高。所提出的混合方法的主要优点是,与其他方法相比,它不需要先验的船舶拓扑知识,也不需要操作员干预。混合方法足够有效地用于3D血管重建。

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