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MULTI-ORGAN SEGMENTATION OF CT IMAGES USING STATISTICAL REGION MERGING

机译:使用统计区域合并的CT图像多器官分割

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Segmentation is one of the key steps in the process of developing anatomical models for calculation of safe medical dose of radiation for children. This study explores the potential of the Statistical Region Merging segmentation technique for tissue segmentation in CT images. An analytical criterion allowing for an automatic tuning of the method is developed. The experiments are performed using a data set of 54 images from one patient, demonstrating the validity of the proposed criterion. The results are evaluated using the Jaccard index and a measure of border error with tolerance which addresses, application-dependant, acceptable error. The outcome shows that the technique has a great potential to become a method of choice for segmentation of CT images with an overall average boundary precison, for six representative tissues, equal to 0.937.
机译:分割是开发用于计算儿童辐射的安全药剂量的解剖模型过程中的关键步骤之一。本研究探讨了CT图像中组织分割统计区域合并分段技术的潜力。开发了允许自动调谐该方法的分析标准。使用来自一个患者的54个图像的数据集进行实验,证明了所提出的标准的有效性。使用Jaccard索引和具有容忍度的边界误差的度量来评估结果,可容忍解决,应用程序依赖性,可接受的错误。结果表明,该技术具有巨大的潜力,使得具有整体平均边界精确的CT图像分割的选择方法,六个代表性组织,等于0.937。

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