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Sparse Patch-Based Label Propagation for Accurate Prostate Localization in CT Images

机译:基于稀疏补丁的标签传播在CT图像中精确定位前列腺

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In this paper, we propose a new prostate computed tomography (CT) segmentation method for image guided radiation therapy. The main contributions of our method lie in the following aspects. 1) Instead of using voxel intensity information alone, patch-based representation in the discriminative feature space with logistic sparse LASSO is used as anatomical signature to deal with low contrast problem in prostate CT images. 2) Based on the proposed patch-based signature, a new multi-atlases label fusion method formulated under sparse representation framework is designed to segment prostate in the new treatment images, with guidance from the previous segmented images of the same patient. This method estimates the prostate likelihood of each voxel in the new treatment image from its nearby candidate voxels in the previous segmented images, based on the nonlocal mean principle and sparsity constraint. 3) A hierarchical labeling strategy is further designed to perform label fusion, where voxels with high confidence are first labeled for providing useful context information in the same image for aiding the labeling of the remaining voxels. 4) An online update mechanism is finally adopted to progressively collect more patient-specific information from newly segmented treatment images of the same patient, for adaptive and more accurate segmentation. The proposed method has been extensively evaluated on a prostate CT image database consisting of 24 patients where each patient has more than 10 treatment images, and further compared with several state-of-the-art prostate CT segmentation algorithms using various evaluation metrics. Experimental results demonstrate that the proposed method consistently achieves higher segmentation accuracy than any other methods under comparison.
机译:在本文中,我们提出了一种新的前列腺计算机断层扫描(CT)分割方法,用于图像引导放射治疗。我们方法的主要贡献在于以下几个方面。 1)代替单独使用体素强度信息,将具有逻辑稀疏LASSO的判别特征空间中基于补丁的表示用作解剖特征,以处理前列腺CT图像中的低对比度问题。 2)基于提出的基于补丁的签名,设计了一种在稀疏表示框架下制定的新的多图谱标签融合方法,以在同一患者之前的分割图像的指导下分割新治疗图像中的前列腺。该方法基于非局部均值原理和稀疏性约束,根据先前分割图像中附近的候选体素来估计新治疗图像中每个体素的前列腺癌可能性。 3)进一步设计了分层标签策略来执行标签融合,其中首先对高置信度的体素进行标记,以在同一图像中提供有用的上下文信息,以帮助标记其余的体素。 4)最后采用在线更新机制,从同一患者的新分割的治疗图像中逐步收集更多的患者特定信息,以进行自适应且更准确的分割。所提出的方法已在由24位患者组成的前列腺CT图像数据库上进行了广泛评估,其中每位患者拥有10幅以上的治疗图像,并使用各种评估指标与几种最新的前列腺CT分割算法进行了比较。实验结果表明,与所比较的任何其他方法相比,该方法始终可以实现更高的分割精度。

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