Before analy z ing the CT image, it is very important to segment the heart image, and the left ve ntricular (LV) inner and outer membrane segmentation is one of the most important contents. However, manual segmentation is tedious and time consuming. In order to facilitate doctors to focus on high tech tasks such as disease analysis and diagnosis, it is crucial to develop a fast and accurate segmentation method [1]. In view of this phenomenon, this paper uses distance regularized level set (DRL SE) to explore the segmentation effect of epicardium and endocardium 2 ]], which includes a distance regula riz ed t erm and an external energy term. Finally, five CT images are used to verify the proposed method, and image quality evaluation indexes such as dice score and Hausdorff distance are used to evaluate the segmentation effect. The results showed that the me tho d could separate the inner and outer membrane very well (endocardium dice = 0.9253, Hausdorff = 7.8740; epicardium Hausdorff = 0.9687, Hausdorff = 6 .
翻译:CT图像之前,切分心脏图像非常重要,左侧脊椎(LV)内外膜断裂是最重要的内容之一。然而,人工分解是乏味和耗时的。为了方便医生关注高技术任务,如疾病分析和诊断,至关重要的是开发一种快速和准确的分解方法[1. 鉴于这一现象,本文使用距离固定水平集(DRL SE)来探索中心和心内膜2的分解效应]],其中包括一个远程 regula Rized t erm 和外部能源术语。最后,使用了五张CT图像来核实拟议方法,并使用像狄氏分分分和Hausdorf距离这样的图像质量评估指数来评估分解效应。结果显示,我Thod可以将内和外膜分解得非常清楚(心心肌=0.9253,Hausdorf=7.8740;震动休夫多夫=0.97,Hasdorf=0.97,Hafdorf=0.97。