基于动态轮廓模型和区域生长的海马轮廓检测

D. Jang, D.S. Lee, S.I. Kim
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引用次数: 14

摘要

在海马形态中,包括单侧或双侧体积损失在内的异常已知可引起癫痫、阿尔茨海默病和某些遗忘综合征。海马轮廓的准确分割是诊断的关键。然而,在磁共振图像中提取与海马区完全匹配的轮廓是非常困难的。海马区的亮度呈线性变化,大小较小。为了准确、一致地检测海马区域,提出了一种结合区域生长和动态轮廓模型的MRI脑图像海马检测方法。分割过程分两个步骤进行。首先,在海马区进行带种子点的区域生长,其输出用于动态轮廓模型的初始轮廓;其次,根据能量与轮廓平滑度和沿轮廓的图像梯度相结合的准则对初始轮廓进行修正;结果表明,该方法提高了初始种子点选择的灵敏度,能够准确地从MRI脑图像中提取海马。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Contour detection of hippocampus using dynamic contour model and region growing
In hippocampal morphology, abnormalities including unilateral or bilateral volume loss are known to cause epilepsy, Alzheimer's disease, and certain amnestic syndromes. The accurate segmentation of the hippocampal contour is critical for the diagnosis. However, it is very difficult to extract the contour that matches exactly the hippocampal region in magnetic resonance images (MRI). The brightness of the hippocampal region varies linearly and it's size is small. For the accurate and consistent detection of the hippocampal region, a method which combines region growing and a dynamic contour model to detect the hippocampus from MRI brain images is presented. The segmentation process is performed in two steps. First, region growing with a seed point is performed in the hippocampal region and its output is used for the initial contour of the dynamic contour model. Second, the initial contour is modified on the basis of criteria which integrate energy with contour smoothness and image gradient along the contour. As a result, this method improves the sensitivity of the choice of the initial seed point and precisely extracts the hippocampus from the MRI brain image.
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