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Fully automatic segmentation of lumbar vertebrae from CT images using cascaded 3D fully convolutional networks

机译:使用级联3D全卷积网络从CT图像全自动分割腰椎

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We present a method to address the challenging problem of segmentation of lumbar vertebrae from CT images acquired with varying fields of view. Our method is based on cascaded 3D Fully Convolutional Networks (FCNs) consisting of a localization FCN and a segmentation FCN. More specifically, in the first step we train a regression 3D FCN (we call it "LocalizationNet") to find the bounding box of the lumbar region. After that, a 3D U-net like FCN (we call it "Segmentation-Net") is then developed, which after training, can perform a pixel-wise multi-class segmentation to map a cropped lumber region volumetric data to its volume-wise labels. Evaluated on publicly available datasets, our method achieved an average Dice coefficient of 95.77 ± 0.81% and an average symmetric surface distance of 0.37 ± 0.06 mm.
机译:我们提出一种方法来解决从具有不同视野的CT图像分割腰椎的挑战性问题。我们的方法基于由定位FCN和分段FCN组成的级联3D全卷积网络(FCN)。更具体地说,在第一步中,我们训练回归3D FCN(我们将其称为“ LocalizationNet”)以找到腰椎区域的边界框。之后,像FCN这样的3D U型网络(我们称其为“ Segmentation-Net”)得以开发,经过训练,该网络可以执行像素级的多类分割,以将裁剪后的木材区域体积数据映射为其体积。明智的标签。在可公开获得的数据集上进行评估,我们的方法实现了平均Dice系数为95.77±0.81 \%和平均对称表面距离为0.37±0.06 mm。

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