边界模糊医学图像的结构边界保持分割

Hong Joo Lee, Jung Uk Kim, Sangmin Lee, Hak Gu Kim, Yong Man Ro
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引用次数: 65

摘要

本文提出了一种新的医学图像分割方法,以解决医学图像域中结构边界的模糊性和分割区域在没有专业领域知识的情况下存在的不确定性。为了解决这两个问题,我们提出了一种新的结构边界保持分割框架。为此,提出了边界关键点选择算法。在该算法中,对目标物体结构边界上的关键点进行估计。然后,利用边界保持块(BPB)和边界关键点图来预测目标物体的结构边界。此外,为了将专家的知识嵌入到全自动分割中,我们提出了一种新的形状边界感知评估器(SBE),该评估器使用专家指示的真值结构信息。所提出的SBE可以根据结构边界关键点对分割网络进行反馈。该方法具有通用性和灵活性,可以建立在任何基于深度学习的分割网络之上。我们证明了所提出的方法可以超越最先进的分割网络,并提高三种不同的分割网络模型在不同类型的医学图像数据集上的准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Structure Boundary Preserving Segmentation for Medical Image With Ambiguous Boundary
In this paper, we propose a novel image segmentation method to tackle two critical problems of medical image, which are (i) ambiguity of structure boundary in the medical image domain and (ii) uncertainty of the segmented region without specialized domain knowledge. To solve those two problems in automatic medical segmentation, we propose a novel structure boundary preserving segmentation framework. To this end, the boundary key point selection algorithm is proposed. In the proposed algorithm, the key points on the structural boundary of the target object are estimated. Then, a boundary preserving block (BPB) with the boundary key point map is applied for predicting the structure boundary of the target object. Further, for embedding experts’ knowledge in the fully automatic segmentation, we propose a novel shape boundary-aware evaluator (SBE) with the ground-truth structure information indicated by experts. The proposed SBE could give feedback to the segmentation network based on the structure boundary key point. The proposed method is general and flexible enough to be built on top of any deep learning-based segmentation network. We demonstrate that the proposed method could surpass the state-of-the-art segmentation network and improve the accuracy of three different segmentation network models on different types of medical image datasets.
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