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Volume-quantization-based neural network approach to 3D MR angiography image segmentation

机译:基于体积量化的神经网络3D MR血管造影图像分割

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摘要

Volume visualization of cerebral blood vessels is highly significant for diagnosis of the cerebral diseases. It is because the automated segmentation of the blood vessels from an MR angiography (MRA) image is a knotty problem that there are few works on it. This paper proposes an automated method to segment the blood vessels from 3D time of flight (TOF) MRA volume data. The method consists of : (1 ) removing the background, (2) volume quantization by watershed segmentation, and (3) classification of primitives by using an artificial neural network (NN). In the proposed method, the NN classifies each primitive, which is a clump of voxels, by evaluating the intensity and the 3D shape. The method was applied to seven MRA data sets. The evaluation was done by comparing with the manual classification results. The average classification accuracy was 80.8/100. The method also showed the volume visualizations using target maximum intensity projection (target MIP) and surface shaded display (SSD). The evaluation by a physician showed that unclear regions on the conventional image were clearly depicted on applying the method, and that the produced images were quite interesting for diagnosis of cerebral diseases such as aneurysm and encephaloma. The quantitative and qualitative evaluations showed that the method was appropriate for blood vessel segmentation.
机译:脑血管的体积可视化对于脑疾病的诊断非常重要。因为从MR血管造影(MRA)图像中自动分割血管是一个棘手的问题,因此对其进行的工作很少。本文提出了一种从3D飞行时间(TOF)MRA体积数据中分割血管的自动方法。该方法包括:(1)去除背景;(2)通过分水岭分割进行体积量化;(3)使用人工神经网络(NN)进行图元分类。在所提出的方法中,NN通过评估强度和3D形状对每个基本体进行分类,该基本体是一团体素。该方法已应用于七个MRA数据集。通过与人工分类结果进行比较来进行评估。平均分类精度为80.8 / 100。该方法还使用目标最大强度投影(目标MIP)和表面阴影显示(SSD)显示了体积可视化。由医生进行的评估表明,使用该方法可以清晰地描绘出常规图像上不清楚的区域,并且所产生的图像对于诊断脑疾病(如动脉瘤和脑瘤)非常有趣。定量和定性评估表明该方法适用于血管分割。

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