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Blood Vessel Segmentation using Line-Direction Vector Based on Hessian Analysis

机译:基于Hessian分析的线路矢量血管分割

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For decision of the treatment strategy, grading of stenoses is important in diagnosis of vascular disease such as arterial occlusive disease or thromboembolism. It is also important to understand the vasculature in minimally invasive surgery such as laparoscopic surgery or natural orifice translumenal endoscopic surgery. Precise segmentation and recognition of blood vessel regions are indispensable tasks in medical image processing systems. Previous methods utilize only "lineness" measure, which is computed by Hessian analysis. However, difference of the intensity values between a voxel of thin blood vessel and a voxel of surrounding tissue is generally decreased by the partial volume effect. Therefore, previous methods cannot extract thin blood vessel regions precisely. This paper describes a novel blood vessel segmentation method that can extract thin blood vessels with suppressing false positives. The proposed method utilizes not only lineness measure but also line-direction vector corresponding to the largest eigenvalue in Hessian analysis. By introducing line-direction information, it is possible to distinguish between a blood vessel voxel and a voxel having a low lineness measure caused by noise. In addition, we consider the scale of blood vessel. The proposed method can reduce false positives in some line-like tissues close to blood vessel regions by utilization of iterative region growing with scale information. The experimental result shows thin blood vessel (0.5 mm in diameter, almost same as voxel spacing) can be extracted finely by the proposed method.
机译:对于治疗策略的决定,狭窄的分级在诊断血管疾病(如动脉闭塞性疾病或血栓栓塞)中都很重要。在微创手术中了解脉管系统,如腹腔镜手术或天然孔隙外镜内镜手术也很重要。血管区域的精确分割和识别是医学图像处理系统中的不可或缺的任务。以前的方法仅利用了Hessian分析来计算的“单独性”测量。然而,通过部分体积效果,通常降低薄血管血管体和周围组织体素之间的强度值的强度值的差异。因此,先前的方法不能精确提取薄血管区域。本文描述了一种新型血管分割方法,可以用抑制误报来提取薄血管。该方法不仅利用了与Hessian分析中最大的特征值相对应的线向量。通过引入线向信息,可以区分血管体素和具有由噪声引起的低含线性度量的体素。此外,我们考虑血管的规模。所提出的方法可以通过利用迭代区域生长尺度信息,减少靠近血管区域的一些线状组织中的假阳性。实验结果显示薄血管(直径为0.5mm,与体素间距几乎相同)通过该方法精细地提取。

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