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Threshold algorithm for pancreas segmentation in Dixon water magnetic resonance images

机译:Dixon水磁共振图像中胰腺分割的阈值算法

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Pancreas segmentation is crucial for a computer-aided diagnosis (CAD) system to provide cancer detection and radiation therapy of pancreatic cancer. Because of anatomically high-variability between subjects, achieving high accuracies in pancreas segmentation remains a challenging task. In this work, based on Otsu threshold method and morphological method, we first proposed a segmentation pipeline for pancreas, using Dixon water magnetic resonance image (MRI) data from five healthy volunteers. The threshold method was used to obtain the approximate outline of the pancreas, and the morphological method was used to separate the pancreas from the surrounding tissues. The segmentation results were compared with manual contours using Dice Index (DI) and we achieved DI: 0.80 ± 0.08 which was better than the level Set Methods (LSMs) DI: 0.64 ± 0.08. The proposed method was simple and easy to integrate with the Medical Imaging Interaction Toolkit (MITK) workbench, so it provided an efficient and simple segmentation method for processing large clinical datasets.
机译:胰腺分割对于计算机辅助诊断(CAD)系统提供胰腺癌的癌症检测和放射治疗至关重要。由于受试者之间在解剖学上的高变异性,在胰腺分割中实现高精度仍是一项艰巨的任务。在这项工作中,我们基于Otsu阈值法和形态学方法,首先使用来自五名健康志愿者的Dixon水磁共振图像(MRI)数据,提出了一种针对胰腺的分割管线。使用阈值方法获得胰腺的大致轮廓,并使用形态学方法将胰腺与周围组织分离。使用Dice Index(DI)将分割结果与手动轮廓进行比较,我们获得的DI为0.80±0.08,优于水平设置方法(LSMs)的DI为0.64±0.08。该方法既简单又易于与医学影像交互工具包(MITK)工作台集成,因此为处理大型临床数据集提供了一种有效而简单的分割方法。

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