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首页> 外文期刊>Medical image analysis >Dual optimization based prostate zonal segmentation in 3D MR images
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Dual optimization based prostate zonal segmentation in 3D MR images

机译:基于双重优化的3D MR图像中的前列腺区域分割

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Efficient and accurate segmentation of the prostate and two of its clinically meaningful sub-regions: the central gland (CG) and peripheral zone (PZ), from 3D MR images, is of great interest in image-guided prostate interventions and diagnosis of prostate cancer. In this work, a novel multi-region segmentation approach is proposed to simultaneously segment the prostate and its two major sub-regions from only a single 3D T2-weighted (T2w) MR image, which makes use of the prior spatial region consistency and incorporates a customized prostate appearance model into the segmentation task. The formulated challenging combinatorial optimization problem is solved by means of convex relaxation, for which a novel spatially continuous max-flow model is introduced as the dual optimization formulation to the studied convex relaxed optimization problem with region consistency constraints. The proposed continuous max-flow model derives an efficient duality-based algorithm that enjoys numerical advantages and can be easily implemented on GPUs. The proposed approach was validated using 18 3D prostate T2w MR images with a body-coil and 25 images with an endo-rectal coil. Experimental results demonstrate that the proposed method is capable of efficiently and accurately extracting both the prostate zones: CG and PZ, and the whole prostate gland from the input 3D prostate MR images, with a mean Dice similarity coefficient (DSC) of 89.3 ± 3.2 % for the whole gland (WG), 82.2 ± 3.0 % for the CG, and 69.1 ± 6.9 % for the PZ in 3D body-coil MR images; 89.2 ± 3.3 % for the WG, 83.0 ± 2.4 % for the CG, and 70.0 ± 6.5 % for the PZ in 3D endo-rectal coil MR images. In addition, the experiments of intra- and inter-observer variability introduced by user initialization indicate a good reproducibility of the proposed approach in terms of volume difference (VD) and coefficient-of-variation (CV) of DSC.
机译:从3D MR图像中对前列腺及其两个临床上有意义的子区域进行有效,准确的分割:中央腺体(CG)和周围区域(PZ)在图像引导的前列腺干预和前列腺癌的诊断中引起极大兴趣。在这项工作中,提出了一种新颖的多区域分割方法,以仅从单个3D T2加权(T2w)MR图像中同时分割前列腺及其两个主要子区域,该方法利用了先前的空间区域一致性并结合了将定制的前列腺外观模型纳入细分任务。通过凸松弛来解决所提出的具有挑战性的组合优化问题,为此,针对所研究的具有区域一致性约束的凸松弛优化问题,将新型空间连续最大流量模型作为对偶优化公式引入。所提出的连续最大流量模型推导了一种高效的基于偶数的算法,该算法具有数值优势,可以在GPU上轻松实现。所提出的方法已通过18幅带有身体线圈的3D前列腺T2w MR图像和25幅带有直肠内线圈的图像进行了验证。实验结果表明,该方法能够有效,准确地从输入的3D前列腺MR图像中提取出CG和PZ前列腺区域以及整个前列腺,其Dice相似系数(DSC)平均为89.3±3.2%对于3D体线圈MR图像,整个腺体(WG),CG的82.2±3.0%和PZ的69.1±6.9%;在3D直肠内线圈MR图像中,WG为89.2±3.3%,CG为83.0±2.4%,PZ为70.0±6.5%。另外,由用户初始化引入的观察者内和观察者间变异性的实验表明,在DSC的体积差异(VD)和变异系数(CV)方面,该方法具有良好的可重复性。

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