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Automatic Meniscus Segmentation using Cascaded Deep Convolutional Neural Networks with 2D Conditional Random Fields in Knee MR Images

机译:使用级联深度卷积神经网络和膝部MR图像二维条件随机场的半月板自动分割

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We propose an automatic segmentation method of meniscus using cascaded segmentation network consisting of 2D and 3D convolutional neural networks and 2D conditional random fields in knee MR images. First, 2D segmentation network and 2D conditional random fields are performed to narrow the field of view of the medial and lateral meniscus. Second, 3D segmentation network considering local and spatial information is performed to segment the medial and lateral meniscus. The 2D segmentation network showed under-segmentation inside the meniscus. The under-segmentation was prevented after 2D CRF, but over-segmentation occurred in nearby ligaments with similar intensity. The 3D segmentation network prevented under- and over-segmentation due to considering local and spatial information, and showed the best performance. The average dice similarity coefficients of proposed method were 92.27% and 90.27% at medial and lateral meniscus, showed better results of 4.78% and 9.96% at medial meniscus, 3.94% and 9.58% at lateral meniscus compared to the segmentation method using 2D U-Net results and combined 2D U-Net and 2D CRF, respectively. The medial meniscus shows higher accuracy than the lateral meniscus due to less leakage into the collateral ligament.
机译:我们提出了一种由2D和3D卷积神经网络以及2D条件随机场组成的级联分段网络在膝部MR图像中的半月板自动分段方法。首先,执行2D分割网络和2D条件随机场以缩小内侧和外侧半月板的视野。第二,执行考虑局部和空间信息的3D分割网络以分割内侧和外侧半月板。 2D分割网络显示弯月面内部分割不足。 2D CRF后可防止节段不足,但附近韧带强度相似时可发生节段过度。 3D分割网络可避免由于考虑本地和空间信息而导致分割不足和分割过多的情况,并表现出最佳性能。与2D U-净结果以及分别组合的2D U-Net和2D CRF。内侧半月板比外侧半月板显示出更高的准确性,这是因为较少渗入侧副韧带。

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