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Shape-Aware Complementary-Task Learning for Multi-organ Segmentation

机译:用于多器官分割的形状感知互补任务学习

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Multi-organ segmentation in whole-body computed tomography (CT) is a constant pre-processing step which finds its application in organ-specific image retrieval, radiotherapy planning, and interventional image analysis. We address this problem from an organ-specific shape-prior learning perspective. We introduce the idea of complementary-task learning to enforce shape-prior leveraging the existing target labels. We propose two complementary-tasks namely (ⅰ) distance map regression and (ⅱ) contour map detection to explicitly encode the geometric properties of each organ. We evaluate the proposed solution on the public VISCERAL dataset containing CT scans of multiple organs. We report a significant improvement of overall dice score from 0.8849 to 0.9018 due to the incorporation of complementary-task learning.
机译:全身计算机断层扫描(CT)中的多器官分割是一个持续的预处理步骤,可将其应用于特定器官的图像检索,放射治疗计划和介入图像分析。我们从特定于器官的形状优先学习角度解决了这个问题。我们介绍了补充任务学习的概念,以利用现有目标标签实施形状优先。我们提出两个互补任务,即(ⅰ)距离图回归和(ⅱ)轮廓图检测,以明确编码每个器官的几何特性。我们在包含多个器官CT扫描的公共VISCERAL数据集上评估提出的解决方案。我们报告说,由于结合了补充任务学习,总体骰子得分从0.8849显着提高到0.9018。

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