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Design of a Benchmark Dataset, Similarity Metrics, and Tools for Liver Segmentation

机译:基准数据集,相似度指标和肝细分工具的设计

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Reliable segmentation of the liver has been acknowledged as a significant step in several computational and diagnostic processes. While several methods have been designed for liver segmentation, comparative analysis of reported methods is limited by the unavailability of annotated datasets of the abdominal area. Currently available generic data-sets constitute a small sample set, and most academic work utilizes closed datasets. We have collected a dataset containing abdominal CT scans of 50 patients, with coordinates for the liver boundary. The dataset will be publicly distributed free of cost with software to provide similarity metrics, and a liver segmentation technique that uses Markov Random Fields and Active Contours. In this paper we discuss our data collection methodology, implementation of similarity metrics, and the liver segmentation algorithm.
机译:肝脏的可靠分割被认为是几种计算和诊断过程中的重要步骤。虽然为肝脏分割设计了几种方法,但报道的方法的比较分析受到腹部区域注释数据集的不可用。目前可用的通用数据集构成一个小样本集,大多数学术工作利用封闭数据集。我们收集了包含50名患者的腹部CT扫描的数据集,肝边界坐标。数据集将通过软件公开分发,以提供相似度量,以及使用Markov随机字段和活动轮廓的肝脏分段技术。在本文中,我们讨论了我们的数据收集方法,相似度量的实现和肝分段算法。

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