结合检测网络和水平集模型的CT图像左心房分割框架

Yashu Liu, Kuanquan Wang, Gongning Luo, Henggui Zhang
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引用次数: 1

摘要

本文提出了一种结合检测网络和水平集模型的CT左心房分割框架。提议的框架包括两个步骤。首先,我们训练了一个更快的RCNN来生成洛杉矶的位置框。得到的位置框可以去除不相关的区域,减少背景和相似组织的干扰。其次,我们利用位置框上的自适应阈值对水平集模型进行初始化,这比随机和固定初始化更接近于LA,并且更具鲁棒性。然后,我们提出了一个基于DRLSE的三维水平集模型,该模型具有新的边缘指标,用于最终的LA分割。该边缘指示器结合了数据梯度的数值和方向信息。因此,当物体周围有许多边界时,所提出的水平集模型可以将轮廓引导到正确的边界。该框架在MICCAI 2013 LA分割挑战中进行了训练和评估。该分割方法的Dice得分为86.46%。与最初的DRLSE相比,它在Dice得分上提高了2.72%。
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A Framework of Left Atrium Segmentation on CT Images with Combined Detection Network and Level Set Model
In this paper, we proposed a framework for left atrium (LA) segmentation on CT with combined detection network and level set model. The proposed framework consists of two steps. Firstly, we trained a Faster RCNN to generate location boxes for LA. The obtained location box can remove unrelated regions to reduce the interference of background and similarity tissues. Secondly, we utilized a self-adapted threshold on the location box to get the initialization for the level set model, which is nearer the LA and more robust than the random and fixed initialization. Then we proposed a 3D level set model with a new edge indicator based on DRLSE for the final LA segmentation. This edge indicator incorporated both numerical and direction information of the data gradient. Hence, the proposed level set model can guide the contour to the correct boundary when there are many boundaries surrounded the object. The framework was trained and evaluated on MICCAI 2013 LA segmentation challenge. The proposed segmentation method achieved the Dice score of 86.46%. Comparing to the original DRLSE, it achieved a 2.72% improvement on the Dice score.
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