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Liver segmentation using superpixel-based graph cuts and restricted regions of shape constrains

机译:使用基于超像素的图割和形状约束的受限区域进行肝分割

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Liver segmentation is one of the most fundamental and challenging tasks in computer aided diagnosis (CAD) system for liver diseases. Graph cut algorithms have been successfully applied to medical image segmentation of different organs for 3D volume data, which not only leads to very large-scale graph due to the same node number as voxel number, but also completely ignore some available organ shape priors. Thus, a slice by slice liver segmentation method by combining shape constraints according to previously slice segmentation has been proposed based on graph cut. However, the constructed graph scale is still large, and the computation of distance map from all voxel to the segmented shape leads to high cost. In order to explore an efficient and effective slice by slice segmentation method for liver, this paper proposes to apply clustering algorithm to firstly group slice pixels into superpixels as nodes for constructing graph, which not only greatly reduce the graph scale but also significantly speed up the optimization procedure of the graph. Furthermore, we restrict the regions near organ boundary as shape constraints, which can further reduce computational time. To validate effectiveness and efficiency of our proposed method, we conduct experiments on 10 CT volumes, most of which have tumors inside liver, and abnormal deformed shape of liver. Our method can yield an average dice coefficient: 0.94, about 659.22 second in computation, and take only 1.5GB in memory usage.
机译:肝脏分割是肝脏疾病的计算机辅助诊断(CAD)系统中最基本和最具挑战性的任务之一。图切算法已成功应用于3D体数据的不同器官的医学图像分割中,由于节点号与体素数相同,这不仅导致了非常大的图绘制,而且还完全忽略了一些可用的器官形状先验。因此,已经提出了一种基于图割的,通过根据先前的切片分割结合形状约束的逐切片肝脏分割方法。但是,构造的图形比例仍然很大,并且从所有体素到分段形状的距离图的计算导致高成本。为了探索一种高效的逐层肝分割方法,本文提出应用聚类算法,首先将切片像素分组为超像素作为构建图的节点,不仅大大减小了图的比例,而且大大加快了图的分割速度。图的优化过程。此外,我们将器官边界附近的区域限制为形状约束,这可以进一步减少计算时间。为了验证我们提出的方法的有效性和效率,我们在10个CT体积上进行了实验,其中大多数体积在肝脏内有肿瘤,并且肝脏的畸形形状异常。我们的方法可以产生平均骰子系数:0.94,约659.22秒的计算量,并且仅占用1.5GB的内存。

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