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Prostate segmentation based on variant scale patch and local independent projection

机译:基于变尺度补丁和局部独立投影的前列腺分割

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Accurate segmentation of the prostate in computed tomography (CT) images is very important in image-guided radiotherapy. In the current study, an automatic framework is proposed for prostate segmentation in CT images: first, we propose a novel image feature extraction method, namely, variant scale patch, which can provide rich image information in a low dimensional feature space; second, we take the general idea of sparse representation and design a new segmentation criterion called local independent projection (LIP); third, we use an online update strategy to construct a dictionary to utilize the latest image information. Furthermore, in the proposed LIP, we emphasize locality rather than sparsity, and use local anchor embedding to solve the dictionary coefficients. The proposed method is evaluated based on 201 3D images of 12 patients. Results show that the proposed method is robust in segmenting prostates in CT images.
机译:在计算机断层扫描(CT)图像中对前列腺进行准确的分割在图像引导的放射治疗中非常重要。在当前的研究中,提出了一种自动框架,用于CT图像中的前列腺分割:首先,我们提出了一种新颖的图像特征提取方法,即变尺度补丁,它可以在低维特征空间中提供丰富的图像信息。其次,我们采用稀疏表示的一般思想,并设计一个新的分割标准,称为局部独立投影(LIP)。第三,我们使用在线更新策略来构建字典,以利用最新的图像信息。此外,在提出的LIP中,我们强调局部性而不是稀疏性,并使用局部锚点嵌入来求解字典系数。基于12位患者的201张3D图像对提出的方法进行了评估。结果表明,所提出的方法在分割CT图像中的前列腺方面是可靠的。

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