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首页> 外文期刊>International Journal of Pattern Recognition and Artificial Intelligence >N-Net: 3D Fully Convolution Network-Based Vertebrae Segmentation from CT Spinal Images
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N-Net: 3D Fully Convolution Network-Based Vertebrae Segmentation from CT Spinal Images

机译:N-NET:3D完全卷积网络的CT脊柱图像基于网络的椎骨分割

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Accurate vertebrae segmentation from CT spinal images is crucial for the clinical tasks of diagnosis, surgical planning, and post-operative assessment. This paper describes an N-shaped 3D fully convolution network (FCN) for vertebrae segmentation: N-net. In this network, a global structure guidance pathway is designed for fusing the high-level semantic features with the global structure information. Moreover, the residual structure and the skip connection are introduced into traditional 3D FCN framework. These schemes can significantly improve the accuracy of vertebrae segmentation. Experimental results demonstrate the effectiveness and robustness of our method. A high average DICE score of 0.9499 +/- 0.02 can be obtained, which is better than those of existing methods.
机译:来自CT脊柱图像的精确椎骨分割对于诊断,手术规划和操作后评估的临床任务至关重要。本文介绍了一种用于椎骨分割的N形3D全卷积网络(FCN):N-NET。在该网络中,全局结构引导途径被设计用于融合具有全局结构信息的高电平语义特征。此外,将残留结构和跳过连接引入传统的3D FCN框架中。这些方案可以显着提高椎骨分割的准确性。实验结果表明了我们方法的有效性和鲁棒性。可以获得0.9499 +/- 0.02的高平均骰子得分,比现有方法更好。

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