IEEE Trans Med Imaging. 2021 Aug;40(8):2118-2128. doi: 10.1109/TMI.2021.3072956. Epub 2021 Jul 30.
Accurate segmentation of the prostate is a key step in external beam radiation therapy treatments. In this paper, we tackle the challenging task of prostate segmentation in CT images by a two-stage network with 1) the first stage to fast localize, and 2) the second stage to accurately segment the prostate. To precisely segment the prostate in the second stage, we formulate prostate segmentation into a multi-task learning framework, which includes a main task to segment the prostate, and an auxiliary task to delineate the prostate boundary. Here, the second task is applied to provide additional guidance of unclear prostate boundary in CT images. Besides, the conventional multi-task deep networks typically share most of the parameters (i.e., feature representations) across all tasks, which may limit their data fitting ability, as the specificity of different tasks are inevitably ignored. By contrast, we solve them by a hierarchically-fused U-Net structure, namely HF-UNet. The HF-UNet has two complementary branches for two tasks, with the novel proposed attention-based task consistency learning block to communicate at each level between the two decoding branches. Therefore, HF-UNet endows the ability to learn hierarchically the shared representations for different tasks, and preserve the specificity of learned representations for different tasks simultaneously. We did extensive evaluations of the proposed method on a large planning CT image dataset and a benchmark prostate zonal dataset. The experimental results show HF-UNet outperforms the conventional multi-task network architectures and the state-of-the-art methods.
准确的前列腺分割是外部束放射治疗的关键步骤。在本文中,我们通过一个具有 1)第一阶段快速定位和 2)第二阶段准确分割前列腺的两阶段网络来解决 CT 图像中前列腺分割的挑战性任务。为了在第二阶段精确地分割前列腺,我们将前列腺分割公式化为一个多任务学习框架,其中包括一个主要任务来分割前列腺,和一个辅助任务来描绘前列腺边界。在这里,第二个任务用于为 CT 图像中不清楚的前列腺边界提供额外的指导。此外,传统的多任务深度网络通常在所有任务之间共享大部分参数(即特征表示),这可能会限制它们的数据拟合能力,因为不同任务的特异性不可避免地被忽略。相比之下,我们通过分层融合 U-Net 结构(即 HF-UNet)来解决这个问题。HF-UNet 有两个用于两个任务的互补分支,具有新颖的基于注意力的任务一致性学习块,用于在两个解码分支之间的每个级别进行通信。因此,HF-UNet 赋予了学习不同任务的共享表示的分层能力,同时保留了不同任务的学习表示的特异性。我们在大型计划 CT 图像数据集和基准前列腺分区数据集上对所提出的方法进行了广泛的评估。实验结果表明,HF-UNet 优于传统的多任务网络结构和最先进的方法。