Prostate Segmentation in CT Images via Spatial-Constrained Transductive Lasso.

Yinghuan Shi, Shu Liao, Yaozong Gao, Daoqiang Zhang, Yang Gao, Dinggang Shen
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引用次数: 34

Abstract

Accurate prostate segmentation in CT images is a significant yet challenging task for image guided radiotherapy. In this paper, a novel semi-automated prostate segmentation method is presented. Specifically, to segment the prostate in the current treatment image, the physician first takes a few seconds to manually specify the first and last slices of the prostate in the image space. Then, the prostate is segmented automatically by the proposed two steps: (i) The first step of prostate-likelihood estimation to predict the prostate likelihood for each voxel in the current treatment image, aiming to generate the 3-D prostate-likelihood map by the proposed Spatial-COnstrained Transductive LassO (SCOTO); (ii) The second step of multi-atlases based label fusion to generate the final segmentation result by using the prostate shape information obtained from the planning and previous treatment images. The experimental result shows that the proposed method outperforms several state-of-the-art methods on prostate segmentation in a real prostate CT dataset, consisting of 24 patients with 330 images. Moreover, it is also clinically feasible since our method just requires the physician to spend a few seconds on manual specification of the first and last slices of the prostate.

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基于空间约束转导套索的CT图像前列腺分割。
CT图像中前列腺的准确分割是图像引导放射治疗的重要而又具有挑战性的任务。本文提出了一种新的半自动前列腺分割方法。具体来说,为了在当前治疗图像中分割前列腺,医生首先需要花几秒钟的时间手动指定图像空间中前列腺的第一个和最后一个切片。然后,通过提出的两步对前列腺进行自动分割:(i)第一步进行前列腺似然估计,预测当前治疗图像中每个体素的前列腺似然,目的是利用提出的空间约束转导LassO (Spatial-COnstrained Transductive LassO, SCOTO)算法生成三维前列腺似然图;(ii)第二步基于多地图集的标签融合,利用规划图像和先前治疗图像获得的前列腺形状信息生成最终的分割结果。实验结果表明,该方法在真实的前列腺CT数据集(包含24名患者和330张图像)上的分割效果优于现有的几种方法。此外,我们的方法在临床上也是可行的,因为我们的方法只需要医生花几秒钟的时间来手动指定前列腺的第一片和最后一片。
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