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Vascular Segmentation in TOF MRA Images of the Brain Using a Deep Convolutional Neural Network

机译:使用深卷积神经网络TOF MRA图像TOF MRA图像中的血管分割

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Cerebrovascular diseases are one of the main causes of death and disability in the world. Within this context, fast and accurate automatic cerebrovascular segmentation is important for clinicians and researchers to analyze the vessels of the brain, determine criteria of normality, and identify and study cerebrovascular diseases. Nevertheless, automatic segmentation is challenging due to the complex shape, inhomogeneous intensity, and inter-person variability of normal and malformed vessels. In this paper, a deep convolutional neural network (CNN) architecture is used to automatically segment the vessels of the brain in time-of-flight magnetic resonance angiography (TOF MRA) images of healthy subjects. Bi-dimensional manually annotated image patches are extracted in the axial, coronal, and sagittal directions and used as input for training the CNN. For segmentation, each voxel is individually analyzed using the trained CNN by considering the intensity values of neighboring voxels that belong to its patch. Experiments were performed with TOF MRA images of five healthy subjects, using varying numbers of images to train the CNN. Cross validations revealed that the proposed framework is able to segment the vessels with an average Dice coefficient ranging from 0.764 to 0.786 depending on the number of images used for training. In conclusion, the results of this work suggest that CNNs can be used to segment cerebrovascular structures with an accuracy similar to other high-level segmentation methods.
机译:脑血管病是世界死亡和残疾的主要原因之一。在这种情况下,快速准确的自动脑血管分割对于临床医生和研究人员来说是重要的,分析大脑的血管,确定正常性标准,并识别和研究脑血管疾病。尽管如此,由于复杂的形状,不均匀的强度和正常和畸形血管的互变异性,自动分割是具有挑战性的。在本文中,一个深卷积神经网络(CNN)架构用于自动段大脑的血管在健康受试者中的时间飞行磁共振血管造影(MRA TOF)图像。双维手动注释的图像贴片在轴向,冠状和矢状方向上提取,并用作训练CNN的输入。对于分段,通过考虑属于其补丁的相邻体素的强度值,使用训练的CNN单独分析每个体素。使用改变数量的图像进行5个健康受试者的TOF MRA图像进行实验,以训练CNN。交叉验证显示,所提出的框架能够将平均骰子系数的血管分段为0.764至0.786,这取决于用于培训的图像数量。总之,该工作的结果表明,CNN可用于分段脑血管结构,其精度与其他高级分割方法类似。

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