论文标题

MR成像的小腿肌肉室的全自动3D分割:邻里关系增强了完全卷积网络

Fully Automated 3D Segmentation of MR-Imaged Calf Muscle Compartments: Neighborhood Relationship Enhanced Fully Convolutional Network

论文作者

Guo, Zhihui, Zhang, Honghai, Chen, Zhi, van der Plas, Ellen, Gutmann, Laurie, Thedens, Daniel, Nopoulos, Peggy, Sonka, Milan

论文摘要

从3D磁共振(MR)图像对单个小腿肌肉室的自动分割对于开发用于肌肉疾病进展及其预测的定量生物标志物至关重要。由于肌肉形状和MR外观的差异很大,因此实现临床上可接受的结果是一项艰巨的任务。尽管深度卷积神经网络(DCNN)在各种图像分割任务中提高了准确性,但某些问题(例如使用远程信息和纳入高级约束)仍未解决。我们提出了一个新颖的完全卷积网络(FCN),称为Filternet,该网络利用上下文信息在大社区中,并嵌入了各个小腿肌肉室分段的边缘感知约束。具有柔性骨干块的编码器解码器体系结构用于系统地扩大卷积接收场并在所有分辨率下保留信息。从FCN输出肌肉概率图中得出的边缘位置使用基于内核的边缘检测在端到端优化框架中明确正规化。通过4倍的交叉验证对40个健康和30名患病受试者的40个T1加权MR图像进行了评估。对于五个3D肌肉室,达到了88.00%-88.00%-91.29%的平均骰子系数,平均骰子系数为1.04--1.66 mm。

Automated segmentation of individual calf muscle compartments from 3D magnetic resonance (MR) images is essential for developing quantitative biomarkers for muscular disease progression and its prediction. Achieving clinically acceptable results is a challenging task due to large variations in muscle shape and MR appearance. Although deep convolutional neural networks (DCNNs) achieved improved accuracy in various image segmentation tasks, certain problems such as utilizing long-range information and incorporating high-level constraints remain unsolved. We present a novel fully convolutional network (FCN), called FilterNet, that utilizes contextual information in a large neighborhood and embeds edge-aware constraints for individual calf muscle compartment segmentations. An encoder-decoder architecture with flexible backbone blocks is used to systematically enlarge convolution receptive field and preserve information at all resolutions. Edge positions derived from the FCN output muscle probability maps are explicitly regularized using kernel-based edge detection in an end-to-end optimization framework. Our FilterNet was evaluated on 40 T1-weighted MR images of 10 healthy and 30 diseased subjects by 4-fold cross-validation. Mean DICE coefficients of 88.00%--91.29% and mean absolute surface positioning errors of 1.04--1.66 mm were achieved for the five 3D muscle compartments.

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