Deep learning algorithms are preferable for rectal tumor segmentation. However, it is still a challenge task to accurately segment and identify the locations and sizes of rectal tumors by using deep learning methods. To increase the capability of extracting enough feature information for rectal tumor segmentation, we propose a Covariance Self-Attention Dual Path UNet (CSA-DPUNet). The proposed network mainly includes two improvements on UNet: 1) modify UNet that has only one path structure to consist of two contracting path and two expansive paths (nam new network as DPUNet), which can help extract more feature information from CT images; 2) employ the criss-cross self-attention module into DPUNet, meanwhile, replace the original calculation method of correlation operation with covariance operation, which can further enhances the characterization ability of DPUNet and improves the segmentation accuracy of rectal tumors. Experiments illustrate that compared with the current state-of-the-art results, CSA-DPUNet brings 15.31%, 7.2%, 11.8%, and 9.5% improvement in Dice coefficient, P, R, F1, respectively, which demonstrates that our proposed CSA-DPUNet is effective for rectal tumor segmentation.
翻译:深层学习算法更适合直肠肿瘤分离。 然而, 准确分割和通过深层学习方法确定直肠肿瘤的位置和大小仍然是一项艰巨的任务。 为了提高为直肠肿瘤分离提取足够特征信息的能力, 我们提议采用共性自控双路径UNet( CSA-DPUNet) 。 拟议网络主要包括两个改进UNet :1) 修改 UNet, 它只有一个路径结构, 包括两个合同路径和两个延伸路径( 以 DPUNet 命名的新网络), 有助于从CT 图像中提取更多特征信息; 2) 使用 Cris- 交叉自控模块到 DPUNet 中, 同时用共性操作取代最初的相关操作计算方法, 这可以进一步提高 DPUNet 的定性能力, 提高直肠肿瘤的分级精度。 实验显示, CSA 15.31%、 7.2%、 11.8% 和 9.5% 的自控自控模块, 分别显示我们DSA 的直方磁段。