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An automated liver segmentation in liver iron concentration map using fuzzy c-means clustering combined with anatomical landmark data

机译:利用模糊C-MEACLENTING结合解剖标志性数据,肝脏铁浓度图中的自动肝脏分段

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To estimate median liver iron concentration (LIC) calculated from magnetic resonance imaging, excluded vessels of the liver parenchyma region were defined manually. Previous works proposed the automated method for excluding vessels from the liver region. However, only user-defined liver region remained a manual process. Therefore, this work aimed to develop an automated liver region segmentation technique to automate the whole process of median LIC calculation. 553 MR examinations from 471 thalassemia major patients were used in this study. LIC maps (in mg/g dry weight) were calculated and used as the input of segmentation procedures. Anatomical landmark data were detected and used to restrict ROI. After that, the liver region was segmented using fuzzy c-means clustering and reduced segmentation errors by morphological processes. According to the clinical application, erosion with a suitable size of the structuring element was applied to reduce the segmented liver region to avoid uncertainty around the edge of the liver. The segmentation results were evaluated by comparing with manual segmentation performed by a board-certified radiologist. The proposed method was able to produce a good grade output in approximately 81% of all data. Approximately 11% of all data required an easy modification step. The rest of the output, approximately 8%, was an unsuccessful grade and required manual intervention by a user. For the evaluation matrices, percent dice similarity coefficient (%DSC) was in the range 86–92, percent Jaccard index (%JC) was 78–86, and Hausdorff distance (H) was 14–28?mm, respectively. In this study, percent false positive (%FP) and percent false negative (%FN) were applied to evaluate under- and over-segmentation that other evaluation matrices could not handle. The average of operation times could be reduced from 10?s per case using traditional method, to 1.5?s per case using our proposed method. The experimental results showed that the proposed method provided an effective automated liver segmentation technique, which can be applied clinically for automated median LIC calculation in thalassemia major patients.
机译:为了估计由磁共振成像计算的中值肝脏浓度(LIC),手动定义肝脏实质区域的排除血管。以前的作品提出了从肝脏区域排除血管的自动化方法。但是,只有用户定义的肝脏区域仍然是手动过程。因此,这项工作旨在开发自动肝脏区分割技术,以自动化中位数LIC计算的整个过程。 553本研究中使用了来自471名上半年的主要患者的先生。 LIC MAPS(以mg / g干重)计算并用作分段程序的输入。检测解剖标志性数据并用于限制ROI。之后,使用模糊C-Means聚类和通过形态学过程来分割肝脏区域。根据临床应用,施加具有合适尺寸的结构元素的腐蚀以减少分段的肝脏区域以避免肝脏边缘周围的不确定性。通过与由董事会认证放射科医师执行的手动分段进行比较来评估分段结果。该方法能够以大约81%的所有数据产生良好的等级输出。大约11%的所有数据都需要一个简单的修改步骤。其余产出,大约8%,是一个不成功的等级和用户所需的手动干预。对于评估矩阵,百分比相似度系数(%DSC)百分比在86-92范围内,jaccard指数百分比(%JC)为78-86,分别为78-86距离(H)分别为14-28Ωmm。在本研究中,应用假阳性(%FP)和百分比假阴性(%FN)来评估和过分分割,即其他评估矩阵无法处理。操作时间的平均值可以在每种情况下使用传统方法减少10次,以使用我们提出的方法为1.5?秒。实验结果表明,该方法提供了一种有效的自动肝脏分段技术,可临床上应用于中西血症主要患者的自动中位数。

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