apunet:三维医学分割中小目标的轴投影注意网

Yuncheng Jiang, Zixun Zhang, Shixi Qin, Yao Guo, Zhuguo Li, Shuguang Cui
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引用次数: 3

摘要

在三维医学图像分割中,小目标分割是诊断的关键,但仍然面临挑战。在本文中,我们提出了坐标轴投影注意单元(Axis Projection Attention UNet),命名为APAUNet,用于三维医学图像的分割,特别是小目标的分割。考虑到背景在三维特征空间中所占的比例较大,我们引入了一种投影策略,将三维特征投影到三个正交的二维平面上,以从不同的角度捕捉上下文关注。这样可以过滤掉多余的特征信息,减轻3D扫描中小病灶关键信息的丢失。然后利用维数杂交策略融合不同轴上的三维特征,并通过加权求和进行合并,自适应学习不同视角的重要性。最后,在APA Decoder中,我们将二维投影过程中的高分辨率和低分辨率特征拼接在一起,从而获得更精确的多尺度信息,这对小病灶分割至关重要。在两个公共数据集(BTCV和MSD)上的定量和定性实验结果表明,我们提出的apunet优于其他方法。具体来说,我们的apunet在BTCV上的平均骰子得分为87.84,在msd -肝脏上的平均骰子得分为84.48,在msd -胰腺上的平均骰子得分为69.13,在小目标上明显超过了以前的SOTA方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
APAUNet: Axis Projection Attention UNet for Small Target in 3D Medical Segmentation
In 3D medical image segmentation, small targets segmentation is crucial for diagnosis but still faces challenges. In this paper, we propose the Axis Projection Attention UNet, named APAUNet, for 3D medical image segmentation, especially for small targets. Considering the large proportion of the background in the 3D feature space, we introduce a projection strategy to project the 3D features into three orthogonal 2D planes to capture the contextual attention from different views. In this way, we can filter out the redundant feature information and mitigate the loss of critical information for small lesions in 3D scans. Then we utilize a dimension hybridization strategy to fuse the 3D features with attention from different axes and merge them by a weighted summation to adaptively learn the importance of different perspectives. Finally, in the APA Decoder, we concatenate both high and low resolution features in the 2D projection process, thereby obtaining more precise multi-scale information, which is vital for small lesion segmentation. Quantitative and qualitative experimental results on two public datasets (BTCV and MSD) demonstrate that our proposed APAUNet outperforms the other methods. Concretely, our APAUNet achieves an average dice score of 87.84 on BTCV, 84.48 on MSD-Liver and 69.13 on MSD-Pancreas, and significantly surpass the previous SOTA methods on small targets.
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