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首页> 外文期刊>Journal of Biomedical Science and Engineering >An Efficient Liver-Segmentation System Based on a Level-Set Method and Consequent Processes
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An Efficient Liver-Segmentation System Based on a Level-Set Method and Consequent Processes

机译:基于水平集方法和后续过程的高效肝分割系统

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摘要

This paper presents an efficient liver-segmentation system developed by combining three ideas under the operations of a level-set method and consequent processes. First, an effective initial process creates mask and seed regions. The mask regions assist in prevention of leakage regions due to an overlap of gray-intensities between liver and another soft-tissue around ribs and verte-brae. The seed regions are allocated inside the liver to measure statistical values of its gray-intensities. Second, we introduce liver-corrective images to represent statistical regions of the liver and preserve edge information. These images help a geodesic active contour (GAC) to move without obstruction from high level of image noises. Lastly, the computation time in a level-set based on reaction-diffusion evolution and the GAC method is reduced by using a concept of multi-resolution. We applied the proposed system to 40 sets of 3D CT-liver data, which were acquired from four patients (10 different sets per patient) by a 4D-CT imaging system. The segmentation results showed 86.38% ± 4.26% (DSC: 91.38% ± 2.99%) of similarities to outlines of manual delineation provided by a radiologist. Meanwhile, the results of liver segmentation only using edge images presented 79.17% ± 5.15% or statistical regions showed 74.04% ± 9.77% of similarities.
机译:本文提出了一种有效的肝脏分割系统,该系统是通过在水平设定方法和后续过程的操作下结合三种思路而开发的。首先,有效的初始过程会创建遮罩和种子区域。遮罩区域有助于防止由于肝脏与肋骨和椎骨周围的另一软组织之间的灰度强度重叠而导致的泄漏区域。将种子区域分配在肝脏内部,以测量其灰度强度的统计值。其次,我们引入肝脏校正图像来代表肝脏的统计区域并保留边缘信息。这些图像帮助测地线活动轮廓线(GAC)移动而不会受到高水平图像噪声的干扰。最后,通过使用多分辨率的概念,减少了基于反应扩散演化和GAC方法的水平集中的计算时间。我们将拟议的系统应用于40套3D CT肝脏数据,这些数据是通过4D-CT成像系统从四名患者(每名患者10套不同)中获取的。分割结果显示与放射科医生提供的手动轮廓概述有86.38%±4.26%(DSC:91.38%±2.99%)的相似性。同时,仅使用边缘图像进行肝分割的结果呈现出79.17%±5.15%或统计区域显示出74.04%±9.77%的相似性。

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