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Prostate Segmentation in 3D TRUS Using Convex Optimization with Shape Constraint

机译:使用具有形状约束的凸优化在3D TRUS中进行前列腺分割

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An efficient and accurate segmentation of 3D end-firing transrectal ultrasound (TRUS) images plays a central role in the planning and treatment of 3D TRUS guided prostate biopsy. In this paper, we propose a novel convex optimization based approach to delineate prostate boundaries from 3D TRUS images. The technique makes use of the approximate rotational symmetry of prostate shapes and reduces the original 3D segmentation problem to a sequence of simple 2D segmentation sub-problems by means of rotationally reslicing the 3D TRUS images. In practice, this significantly decreases the computational load, facilitates introducing learned shape information and improves segmentation efficiency and accuracy. For each 2D resliced frame, we introduce a new convex optimization based contour evolution method to locate the 2D slicewise prostate boundary subject to the additional shape constraint. The proposed contour evolution method provides a fully time implicit scheme to move the contour to its globally optimal position at each discrete time, which allows a large evolving time step-size to accelerate convergence. Moreover, the proposed algorithm is implemented on a GPU to achieve a high performance. Quantitative validations on twenty 3D TRUS patient prostate images demonstrate that the proposed approach can obtain a DSC of 93.7 ± 2.5%, a sensitivity of 91.2 ± 3.1%, a MAD of 1.37 ± 0.3mm, and a MAXD of 3.02 ± 0.44mm. The mean segmentation time for the dataset was 18.3 ± 2.5s, in addition to 25s for initialization. Our proposed method exhibits the advantages of accuracy, efficiency and robustness compared to the level set and active contour based methods.
机译:有效而准确的3D烧灼经直肠超声(TRUS)图像分割在3D TRUS引导的前列腺活检的规划和治疗中起着核心作用。在本文中,我们提出了一种新颖的基于凸优化的方法来从3D TRUS图像描绘前列腺边界。该技术利用了前列腺形状的近似旋转对称性,并通过旋转切片3D TRUS图像,将原始3D分割问题简化为一系列简单的2D分割子问题。在实践中,这显着降低了计算负荷,有助于引入学习的形状信息,并提高了分割效率和准确性。对于每个二维切片帧,我们引入了一种新的基于凸优化的轮廓演化方法,以在附加形状约束下定位二维切片前列腺边界。所提出的轮廓演化方法提供了一种全时隐式方案,可以在每个离散时间将轮廓移至其全局最佳位置,从而允许较大的演化时间步长来加速收敛。此外,所提出的算法在GPU上实现以实现高性能。对20张3D TRUS患者前列腺图像的定量验证表明,所提出的方法可获得93.7±2.5%的DSC,91.2±3.1%的灵敏度,1.37±0.3mm的MAD和3.02±0.44mm的MAXD。数据集的平均分割时间为18.3±2.5s,初始化时间为25s。与水平集和基于主动轮廓的方法相比,我们提出的方法展现出准确性,效率和鲁棒性的优势。

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