Article ID | Journal | Published Year | Pages | File Type |
---|---|---|---|---|
10351718 | Computers in Biology and Medicine | 2012 | 15 Pages |
Abstract
In this paper, we present a new segmentation method using the level set framework for medical volume images. The method was implemented using the surface evolution principle based on the geometric deformable model and the level set theory. And, the speed function in the level set approach consists of a hybrid combination of three integral measures derived from the calculus of variation principle. The terms are defined as robust alignment, active region, and smoothing. These terms can help to obtain the precise surface of the target object and prevent the boundary leakage problem. The proposed method has been tested on synthetic and various medical volume images with normal tissue and tumor regions in order to evaluate its performance on visual and quantitative data. The quantitative validation of the proposed segmentation is shown with higher Jaccard's measure score (72.52%-94.17%) and lower Hausdorff distance (1.2654Â mm-3.1527Â mm) than the other methods such as mean speed (67.67%-93.36% and 1.3361Â mm-3.4463Â mm), mean-variance speed (63.44%-94.72% and 1.3361Â mm-3.4616Â mm), and edge-based speed (0.76%-42.44% and 3.8010Â mm-6.5389Â mm). The experimental results confirm that the effectiveness and performance of our method is excellent compared with traditional approaches.
Keywords
Related Topics
Physical Sciences and Engineering
Computer Science
Computer Science Applications
Authors
Myungeun Lee, Wanhyun Cho, Sunworl Kim, Soonyoung Park, Jong Hyo Kim,