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Deep multi-task and task-specific feature learning network for robust shape preserved organ segmentation

机译:深度多任务和特定于任务的特征学习网络,用于稳健的形状保留器官分割

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Fully convolutional network (FCN) has shown potency in segmenting heterogeneous objects from natural images with high run-time efficiency. This technique, however, is not able to produce continuous, smooth and shape-preserved regions consistently due to complex organ structures and occasional weak appearance information commonly observed in various anatomical structures in medical images. In this paper, we propose a deep end-to-end network with two task-specific branches to ensure continuousness, smoothness and shape-preservation in segmented structure without additionally sophisticated shape adjustment, e.g., dense conditional random fields. The novelties of the proposed method lie in three aspects. First, we formulate the organ segmentation as a multi-task learning process that combines both region and boundary identification tasks, which can alleviate spatially isolated segmentation errors. Second, we use boundary distance regression to ensure the smoothness of the segmented contours, instead of formulating boundary identification as a classification problem [1]. Third, our deep network is designed to have a "Y" shape, i.e., the first half of the network is shared by both region and boundary identification tasks, while the second half is branched for each task independently. This architecture enables the task-specific feature learning for better region and boundary identification, and offers information for segmentation refinement based on a fusion scheme using energy functional. Extensive evaluations are conducted on a variety of applications across organs and modalities, e.g., MR femur, CT kidney, etc. Our proposed method shows better performance compared to the state-of-the-art methods.
机译:完全卷积网络(FCN)已显示出以高运行时间效率对自然图像中的异类对象进行分割的能力。然而,由于复杂的器官结构以及医学图像中各种解剖结构中通常观察到的偶尔的弱外观信息,该技术不能始终如一地产生连续的,光滑的和形状保留的区域。在本文中,我们提出了一个具有两个特定任务分支的深层端到端网络,以确保分段结构中的连续性,平滑性和形状保持性,而无需进行其他复杂的形状调整(例如密集条件随机场)。所提出的方法的新颖性在于三个方面。首先,我们将器官分割公式化为结合区域和边界识别任务的多任务学习过程,这可以减轻空间上孤立的分割错误。其次,我们使用边界距离回归来确保分割轮廓的平滑性,而不是将边界识别公式化为分类问题[1]。第三,我们的深层网络被设计为具有“ Y”形,即区域和边界识别任务都共享网络的前半部分,而后半部分则针对每个任务独立地分支。该架构支持特定任务的特征学习,以实现更好的区域和边界识别,并为基于能量功能融合方案的细分优化提供信息。针对跨器官和形态的多种应用进行了广泛的评估,例如MR股骨,CT肾脏等。与最新方法相比,我们提出的方法显示出更好的性能。

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