3D Segmentation of Residual Thyroid Tissue Using Constrained Region Growing and Voting Strategies

Guoqing Bao, Chaojie Zheng, Panli Li, Hui Cui, Xiuying Wang, Shaoli Song, Gang Huang, D. Feng
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Abstract

The measurement of residual thyroid tissue after thyroidectomy is crucial for the precise quantification of thyroid cancer treatment. Accurate residual thyroid tissue segmentation from CT images is challenging due to the indistinct tissue boundary. We propose a vote-in & vote-out region propagation model for residual thyroid tissue segmentation which incorporates global and local constraints and two voting strategies. The constraints were initially estimated from the given seeds and adaptively adjusted during the propagation process. The voting strategies were developed to decrease the opportunities of merging unexpected voxels around the uncertain boundaries. The experiment results over clinical patient studies demonstrated that the proposed method significantly improved the segmentation accuracy in terms of spatial overlap and shape similarity. Our method achieved an average Volume Overlap Error of 14.44±7.55 %, Relative Volume Difference of 9.42±20.31 %, Average Surface Distance of 0.12±0.05 mm and Maximum Surface Distance of 1.34±0.62 mm, with an average computation time of 2.68 seconds.
基于约束区域生长和投票策略的残留甲状腺组织三维分割
甲状腺切除术后残留甲状腺组织的测量对甲状腺癌治疗的精确量化至关重要。由于组织边界模糊,从CT图像中准确分割残余甲状腺组织具有挑战性。提出了一种结合全局约束和局部约束以及两种投票策略的甲状腺残留组织分割的投票-投票-退出区域传播模型。初始约束由给定种子估计,并在繁殖过程中自适应调整。为了减少在不确定边界周围合并意外体素的机会,开发了投票策略。临床患者实验结果表明,该方法在空间重叠和形状相似度方面显著提高了分割精度。平均体积重叠误差为14.44±7.55%,相对体积差为9.42±20.31%,平均表面距离为0.12±0.05 mm,最大表面距离为1.34±0.62 mm,平均计算时间为2.68秒。
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