首页> 外文会议>2011 8th IEEE International Symposium on Biomedical Imaging: From Nano to Macro >Evaluation of multi-atlas-based segmentation of CT scans in prostate cancer radiotherapy
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Evaluation of multi-atlas-based segmentation of CT scans in prostate cancer radiotherapy

机译:前列腺癌放疗中基于多图谱的CT扫描分割的评估

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In prostate cancer radiotherapy, accurate segmentation of prostate and organs at risk in planning CT and follow-up CBCT images is an essential part of the therapy planning and optimization. Automatic segmentation is challenging because of the poor constrast in soft tissues. Although atlas-based approaches may provide a priori structural information by propagating manual expert delineations to a new individual space, the interindividual variability and registration errors can introduce bias in the results. Multi-atlas approaches can partly overcome some of these difficulties by selecting the most similar atlases among a large data base but the definition of similarity measure between the available atlases and the query individual has still to be addressed. The purpose of this paper is the evaluation of different strategies to simultaneously segment prostate, bladder and rectum from CT images, by selecting the most similar atlases from a prebuilt 24 atlas subset. Three similarity measures were considered: cross-correlation (CC), sum of squared differences (SSD) and mutual information (MI). Experiments on atlas ranking, selection strategies and fusion decision rules were carried out. Propagation of labels using the diffeomorphic demons non-rigid registration were used and the results were compared with manual delineations. Results suggest that CC and SSD are the best predictors for selecting similar atlases and that a vote decision rule is better suited to cope with large variabilities.
机译:在前列腺癌放射治疗中,在计划CT和后续CBCT图像时准确分割有风险的前列腺和器官是治疗计划和优化的重要组成部分。由于软组织中的造影剂不良,因此自动分割具有挑战性。尽管基于图集的方法可以通过将手动专家的描述传播到新的个体空间来提供先验结构信息,但是个体间的可变性和配准误差会在结果中引入偏差。通过在大型数据库中选择最相似的地图集,多地图集方法可以部分克服其中的一些困难,但是仍然需要解决可用地图集和查询个体之间相似度度量的定义。本文的目的是通过从预建的24个图集子集中选择最相似的图集,评估从CT图像同时分割前列腺,膀胱和直肠的不同策略。考虑了三个相似性度量:互相关(CC),平方差之和(SSD)和互信息(MI)。进行了图集排名,选择策略和融合决策规则的实验。使用非刚性配准的变态魔鬼传播标签,并将结果与​​人工描述进行比较。结果表明,CC和SSD是选择相似地图集的最佳预测器,并且投票决策规则更适合应对较大的差异。

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