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Hierarchical Framework for Automatic Pancreas Segmentation in MRI Using Continuous Max-Flow and Min-Cuts Approach

机译:使用连续最大流量和MIN-CUTS方法MRI中自动胰腺分段的分层框架

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Accurate, automatic and robust segmentation of the pancreas in medical image scans remains a challenging but important prerequisite for computer-aided diagnosis (CADx). This paper presents a tool for automatic pancreas segmentation in magnetic resonance imaging (MRI) scans. Proposed is a framework that employs a hierarchical pooling of information as follows: identify major pancreas region and apply contrast enhancement to differentiate between pancreatic and surrounding tissue; perform 3D segmentation by employing continuous max-flow and min-cuts approach, structured forest edge detection, and a training dataset of annotated pancreata; eliminate non-pancreatic contours from resultant segmentation via morphological operations on area, curvature and position between distinct contours. The proposed method is evaluated on a dataset of 20 MRI volumes, achieving a mean Dice Similarity coefficient of 75.5 ± 7.0% and a mean Jaccard Index coefficient of 61.2 ± 9.2%.
机译:医学图像扫描中胰腺的准确性,自动和强大的细分仍然是计算机辅助诊断(CADX)的具有挑战性,但重要的先决条件。本文介绍了磁共振成像(MRI)扫描中自动胰腺分段的工具。提出的是一种框架,该框架采用分层信息,如下所示:识别主要胰腺区域,并施加对比度增强以区分胰腺和周围组织;通过采用连续的最大流量和最小剪切方法,结构化的森林边缘检测和注释的胰腺训练数据集进行3D分割;通过对面积,曲率和不同轮廓之间的形态操作来消除来自所得分割的非胰腺轮廓。该方法在20MRI体积的数据集上评估了275.5±7.0%的平均骰子相似度系数,平均jaccard指数系数为61.2±9.2%。

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