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Research on multi-path dense networks for MRI spinal segmentation

机译:MRI脊髓分割多路径密度网络研究

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Accurate and robust segmentation of anatomical structures from magnetic resonance images is valuable in many computer-aided clinical tasks. Traditional codec networks are not satisfactory because of their low accuracy of edge segmentation, the low recognition rate of the target, and loss of detailed information. To address these problems, this study proposes a series of improved models for semantic segmentation and progressively optimizes them from the three aspects of convolution module, codec unit, and feature fusion. Instead of the standard convolution structure, we apply a new type of convolution module for the feature extraction. The networks integrate a multi-path method to obtain richer-detail edge information. Finally, a dense network is utilized to strengthen the ability of the feature fusion and integrate more different-level information. The evaluation of the Accuracy, Dice coefficient, and Jaccard index led to values of 0.9855, 0.9185, and 0.8507, respectively. These metrics of the best network increased by 1.0%, 4.0%, and 6.1%, respectively. Boundary F1-Score reached 0.9124 indicating that the proposed networks can segment smaller targets to obtain smoother edges. Our methods obtain more key information than traditional methods and achieve superiority in segmentation performance.
机译:许多计算机辅助临床任务中,来自磁共振图像的解剖结构的准确和鲁棒分割是有价值的。传统的Codec网络由于其边缘分割的低精度,目标的低识别率和详细信息丢失而不是令人满意的。为了解决这些问题,本研究提出了一系列改进的语义分割模型,并从卷积模块,编解码器单元和特征融合的三个方面逐步优化它们。我们代替标准的卷积结构,我们为特征提取应用了一种新型的卷积模块。网络集成了多路径方法以获得更丰富的边沿信息。最后,利用密集的网络来增强特征融合的能力并集成更多不同级别的信息。评估精度,骰子系数和JAccard指数的评估将分别导致0.9855,0.9185和0.8507的值。这些最佳网络的测量标准分别增加了1.0%,4.0%和6.1%。边界F1分数达到0.9124,表明所提出的网络可以将较小的目标分段为获得更平滑的边缘。我们的方法比传统方法获得更多的关键信息,并在分割性能方面取得优越性。

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